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. 2017 Aug 9;77(8):531. doi: 10.1140/epjc/s10052-017-5061-9

Fiducial, total and differential cross-section measurements of t-channel single top-quark production in pp collisions at 8 TeV using data collected by the ATLAS detector

M Aaboud 180, G Aad 115, B Abbott 144, J Abdallah 10, O Abdinov 14, B Abeloos 148, O S AbouZeid 183, N L Abraham 199, H Abramowicz 203, H Abreu 202, R Abreu 147, Y Abulaiti 195,196, B S Acharya 217,218, S Adachi 205, L Adamczyk 60, D L Adams 36, J Adelman 139, S Adomeit 130, T Adye 170, A A Affolder 183, T Agatonovic-Jovin 16, J A Aguilar-Saavedra 159,164, S P Ahlen 30, F Ahmadov 94, G Aielli 173,174, H Akerstedt 195,196, T P A Åkesson 111, A V Akimov 126, G L Alberghi 27,28, J Albert 224, S Albrand 80, M J Alconada Verzini 100, M Aleksa 45, I N Aleksandrov 94, C Alexa 38, G Alexander 203, T Alexopoulos 12, M Alhroob 144, B Ali 167, M Aliev 102,103, G Alimonti 121, J Alison 46, S P Alkire 56, B M M Allbrooke 199, B W Allen 147, P P Allport 21, A Aloisio 134,135, A Alonso 57, F Alonso 100, C Alpigiani 184, A A Alshehri 78, M Alstaty 115, B Alvarez Gonzalez 45, D Álvarez Piqueras 222, M G Alviggi 134,135, B T Amadio 18, Y Amaral Coutinho 32, C Amelung 31, D Amidei 119, S P Amor Dos Santos 159,161, A Amorim 159,160, S Amoroso 45, G Amundsen 31, C Anastopoulos 185, L S Ancu 72, N Andari 21, T Andeen 13, C F Anders 83, J K Anders 104, K J Anderson 46, A Andreazza 121,122, V Andrei 82, S Angelidakis 11, I Angelozzi 138, A Angerami 56, F Anghinolfi 45, A V Anisenkov 140, N Anjos 15, A Annovi 156,157, C Antel 82, M Antonelli 70, A Antonov 128, D J Antrim 216, F Anulli 171, M Aoki 95, L Aperio Bella 21, G Arabidze 120, Y Arai 95, J P Araque 159, A T H Arce 68, F A Arduh 100, J-F Arguin 125, S Argyropoulos 92, M Arik 22, A J Armbruster 189, L J Armitage 106, O Arnaez 45, H Arnold 71, M Arratia 43, O Arslan 29, A Artamonov 127, G Artoni 151, S Artz 113, S Asai 205, N Asbah 65, A Ashkenazi 203, B Åsman 195,196, L Asquith 199, K Assamagan 36, R Astalos 190, M Atkinson 221, N B Atlay 187, K Augsten 167, G Avolio 45, B Axen 18, M K Ayoub 148, G Azuelos 125, M A Baak 45, A E Baas 82, M J Baca 21, H Bachacou 182, K Bachas 102,103, M Backes 151, M Backhaus 45, P Bagiacchi 171,172, P Bagnaia 171,172, Y Bai 49, J T Baines 170, M Bajic 57, O K Baker 231, E M Baldin 140, P Balek 227, T Balestri 198, F Balli 182, W K Balunas 154, E Banas 62, Sw Banerjee 228, A A E Bannoura 230, L Barak 45, E L Barberio 118, D Barberis 73,74, M Barbero 115, T Barillari 131, M-S Barisits 45, T Barklow 189, N Barlow 43, S L Barnes 114, B M Barnett 170, R M Barnett 18, Z Barnovska-Blenessy 52, A Baroncelli 175, G Barone 31, A J Barr 151, L Barranco Navarro 222, F Barreiro 112, J Barreiro Guimarães da Costa 49, R Bartoldus 189, A E Barton 101, P Bartos 190, A Basalaev 155, A Bassalat 148, R L Bates 78, S J Batista 209, J R Batley 43, M Battaglia 183, M Bauce 171,172, F Bauer 182, H S Bawa 189, J B Beacham 142, M D Beattie 101, T Beau 110, P H Beauchemin 215, P Bechtle 29, H P Beck 20, K Becker 151, M Becker 113, M Beckingham 225, C Becot 141, A J Beddall 25, A Beddall 23, V A Bednyakov 94, M Bedognetti 138, C P Bee 198, L J Beemster 138, T A Beermann 45, M Begel 36, J K Behr 65, A S Bell 108, G Bella 203, L Bellagamba 27, A Bellerive 44, M Bellomo 116, K Belotskiy 128, O Beltramello 45, N L Belyaev 128, O Benary 203, D Benchekroun 177, M Bender 130, K Bendtz 195,196, N Benekos 12, Y Benhammou 203, E Benhar Noccioli 231, J Benitez 92, D P Benjamin 68, J R Bensinger 31, S Bentvelsen 138, L Beresford 151, M Beretta 70, D Berge 138, E Bergeaas Kuutmann 220, N Berger 7, J Beringer 18, S Berlendis 80, N R Bernard 116, C Bernius 141, F U Bernlochner 29, T Berry 107, P Berta 168, C Bertella 113, G Bertoli 195,196, F Bertolucci 156,157, I A Bertram 101, C Bertsche 65, D Bertsche 144, G J Besjes 57, O Bessidskaia Bylund 195,196, M Bessner 65, N Besson 182, C Betancourt 71, A Bethani 80, S Bethke 131, A J Bevan 106, R M Bianchi 158, M Bianco 45, O Biebel 130, D Biedermann 19, R Bielski 114, N V Biesuz 156,157, M Biglietti 175, J Bilbao De Mendizabal 72, T R V Billoud 125, H Bilokon 70, M Bindi 79, A Bingul 23, C Bini 171,172, S Biondi 27,28, T Bisanz 79, D M Bjergaard 68, C W Black 200, J E Black 189, K M Black 30, D Blackburn 184, R E Blair 8, T Blazek 190, I Bloch 65, C Blocker 31, A Blue 78, W Blum 113, U Blumenschein 79, S Blunier 47, G J Bobbink 138, V S Bobrovnikov 140, S S Bocchetta 111, A Bocci 68, C Bock 130, M Boehler 71, D Boerner 230, J A Bogaerts 45, D Bogavac 130, A G Bogdanchikov 140, C Bohm 195, V Boisvert 107, P Bokan 16, T Bold 60, A S Boldyrev 129, M Bomben 110, M Bona 106, M Boonekamp 182, A Borisov 169, G Borissov 101, J Bortfeldt 45, D Bortoletto 151, V Bortolotto 86,87,88, K Bos 138, D Boscherini 27, M Bosman 15, J D Bossio Sola 42, J Boudreau 158, J Bouffard 2, E V Bouhova-Thacker 101, D Boumediene 55, C Bourdarios 148, S K Boutle 78, A Boveia 142, J Boyd 45, I R Boyko 94, J Bracinik 21, A Brandt 10, G Brandt 79, O Brandt 82, U Bratzler 206, B Brau 116, J E Brau 147, W D Breaden Madden 78, K Brendlinger 154, A J Brennan 118, L Brenner 138, R Brenner 220, S Bressler 227, T M Bristow 69, D Britton 78, D Britzger 65, F M Brochu 43, I Brock 29, R Brock 120, G Brooijmans 56, T Brooks 107, W K Brooks 48, J Brosamer 18, E Brost 139, J H Broughton 21, P A Bruckman de Renstrom 62, D Bruncko 191, R Bruneliere 71, A Bruni 27, G Bruni 27, L S Bruni 138, BH Brunt 43, M Bruschi 27, N Bruscino 29, P Bryant 46, L Bryngemark 111, T Buanes 17, Q Buat 188, P Buchholz 187, A G Buckley 78, I A Budagov 94, F Buehrer 71, M K Bugge 150, O Bulekov 128, D Bullock 10, H Burckhart 45, S Burdin 104, C D Burgard 71, A M Burger 7, B Burghgrave 139, K Burka 62, S Burke 170, I Burmeister 66, J T P Burr 151, E Busato 55, D Büscher 71, V Büscher 113, P Bussey 78, J M Butler 30, C M Buttar 78, J M Butterworth 108, P Butti 138, W Buttinger 36, A Buzatu 78, A R Buzykaev 140, S Cabrera Urbán 222, D Caforio 167, V M Cairo 58,59, O Cakir 4, N Calace 72, P Calafiura 18, A Calandri 115, G Calderini 110, P Calfayan 90, G Callea 58,59, L P Caloba 32, S Calvente Lopez 112, D Calvet 55, S Calvet 55, T P Calvet 115, R Camacho Toro 46, S Camarda 45, P Camarri 173,174, D Cameron 150, R Caminal Armadans 221, C Camincher 80, S Campana 45, M Campanelli 108, A Camplani 121,122, A Campoverde 187, V Canale 134,135, A Canepa 212, M Cano Bret 54, J Cantero 145, T Cao 203, M D M Capeans Garrido 45, I Caprini 38, M Caprini 38, M Capua 58,59, R M Carbone 56, R Cardarelli 173, F Cardillo 71, I Carli 168, T Carli 45, G Carlino 134, B T Carlson 158, L Carminati 121,122, R M D Carney 195,196, S Caron 137, E Carquin 48, G D Carrillo-Montoya 45, J R Carter 43, J Carvalho 159,161, D Casadei 21, M P Casado 15, M Casolino 15, D W Casper 216, E Castaneda-Miranda 192, R Castelijn 138, A Castelli 138, V Castillo Gimenez 222, N F Castro 159, A Catinaccio 45, J R Catmore 150, A Cattai 45, J Caudron 29, V Cavaliere 221, E Cavallaro 15, D Cavalli 121, M Cavalli-Sforza 15, V Cavasinni 156,157, F Ceradini 175,176, L Cerda Alberich 222, A S Cerqueira 33, A Cerri 199, L Cerrito 173,174, F Cerutti 18, A Cervelli 20, S A Cetin 24, A Chafaq 177, D Chakraborty 139, S K Chan 81, Y L Chan 86, P Chang 221, J D Chapman 43, D G Charlton 21, A Chatterjee 72, C C Chau 209, C A Chavez Barajas 199, S Che 142, S Cheatham 217,219, A Chegwidden 120, S Chekanov 8, S V Chekulaev 212, G A Chelkov 94, M A Chelstowska 119, C Chen 93, H Chen 36, S Chen 50, S Chen 205, X Chen 51, Y Chen 96, H C Cheng 119, H J Cheng 49, Y Cheng 46, A Cheplakov 94, E Cheremushkina 169, R Cherkaoui El Moursli 181, V Chernyatin 36, E Cheu 9, L Chevalier 182, V Chiarella 70, G Chiarelli 156,157, G Chiodini 102, A S Chisholm 45, A Chitan 38, M V Chizhov 94, K Choi 90, A R Chomont 55, S Chouridou 11, B K B Chow 130, V Christodoulou 108, D Chromek-Burckhart 45, J Chudoba 166, A J Chuinard 117, J J Chwastowski 62, L Chytka 146, G Ciapetti 171,172, A K Ciftci 4, D Cinca 66, V Cindro 105, I A Cioara 29, C Ciocca 27,28, A Ciocio 18, F Cirotto 134,135, Z H Citron 227, M Citterio 121, M Ciubancan 38, A Clark 72, B L Clark 81, M R Clark 56, P J Clark 69, R N Clarke 18, C Clement 195,196, Y Coadou 115, M Cobal 217,219, A Coccaro 72, J Cochran 93, L Colasurdo 137, B Cole 56, A P Colijn 138, J Collot 80, T Colombo 216, P Conde Muiño 159,160, E Coniavitis 71, S H Connell 193, I A Connelly 107, V Consorti 71, S Constantinescu 38, G Conti 45, F Conventi 134, M Cooke 18, B D Cooper 108, A M Cooper-Sarkar 151, F Cormier 223, K J R Cormier 209, T Cornelissen 230, M Corradi 171,172, F Corriveau 117, A Cortes-Gonzalez 45, G Cortiana 131, G Costa 121, M J Costa 222, D Costanzo 185, G Cottin 43, G Cowan 107, B E Cox 114, K Cranmer 141, S J Crawley 78, G Cree 44, S Crépé-Renaudin 80, F Crescioli 110, W A Cribbs 195,196, M Crispin Ortuzar 151, M Cristinziani 29, V Croft 137, G Crosetti 58,59, A Cueto 112, T Cuhadar Donszelmann 185, J Cummings 231, M Curatolo 70, J Cúth 113, H Czirr 187, P Czodrowski 3, G D’amen 27,28, S D’Auria 78, M D’Onofrio 104, M J Da Cunha Sargedas De Sousa 159,160, C Da Via 114, W Dabrowski 60, T Dado 190, T Dai 119, O Dale 17, F Dallaire 125, C Dallapiccola 116, M Dam 57, J R Dandoy 46, N P Dang 71, A C Daniells 21, N S Dann 114, M Danninger 223, M Dano Hoffmann 182, V Dao 71, G Darbo 73, S Darmora 10, J Dassoulas 3, A Dattagupta 147, W Davey 29, C David 65, T Davidek 168, M Davies 203, P Davison 108, E Dawe 118, I Dawson 185, K De 10, R de Asmundis 134, A De Benedetti 144, S De Castro 27,28, S De Cecco 110, N De Groot 137, P de Jong 138, H De la Torre 120, F De Lorenzi 93, A De Maria 79, D De Pedis 171, A De Salvo 171, U De Sanctis 199, A De Santo 199, J B De Vivie De Regie 148, W J Dearnaley 101, R Debbe 36, C Debenedetti 183, D V Dedovich 94, N Dehghanian 3, I Deigaard 138, M Del Gaudio 58,59, J Del Peso 112, T Del Prete 156,157, D Delgove 148, F Deliot 182, C M Delitzsch 72, A Dell’Acqua 45, L Dell’Asta 30, M Dell’Orso 156,157, M Della Pietra 134, D della Volpe 72, M Delmastro 7, P A Delsart 80, D A DeMarco 209, S Demers 231, M Demichev 94, A Demilly 110, S P Denisov 169, D Denysiuk 182, D Derendarz 62, J E Derkaoui 180, F Derue 110, P Dervan 104, K Desch 29, C Deterre 65, K Dette 66, P O Deviveiros 45, A Dewhurst 170, S Dhaliwal 31, A Di Ciaccio 173,174, L Di Ciaccio 7, W K Di Clemente 154, C Di Donato 134,135, A Di Girolamo 45, B Di Girolamo 45, B Di Micco 175,176, R Di Nardo 45, K F Di Petrillo 81, A Di Simone 71, R Di Sipio 209, D Di Valentino 44, C Diaconu 115, M Diamond 209, F A Dias 69, M A Diaz 47, E B Diehl 119, J Dietrich 19, S Díez Cornell 65, A Dimitrievska 16, J Dingfelder 29, P Dita 38, S Dita 38, F Dittus 45, F Djama 115, T Djobava 76, J I Djuvsland 82, M A B do Vale 34, D Dobos 45, M Dobre 38, C Doglioni 111, J Dolejsi 168, Z Dolezal 168, M Donadelli 35, S Donati 156,157, P Dondero 152,153, J Donini 55, J Dopke 170, A Doria 134, M T Dova 100, A T Doyle 78, E Drechsler 79, M Dris 12, Y Du 53, J Duarte-Campderros 203, E Duchovni 227, G Duckeck 130, O A Ducu 125, D Duda 138, A Dudarev 45, A Chr Dudder 113, E M Duffield 18, L Duflot 148, M Dührssen 45, M Dumancic 227, A K Duncan 78, M Dunford 82, H Duran Yildiz 4, M Düren 77, A Durglishvili 76, D Duschinger 67, B Dutta 65, M Dyndal 65, C Eckardt 65, K M Ecker 131, R C Edgar 119, N C Edwards 69, T Eifert 45, G Eigen 17, K Einsweiler 18, T Ekelof 220, M El Kacimi 179, V Ellajosyula 115, M Ellert 220, S Elles 7, F Ellinghaus 230, A A Elliot 224, N Ellis 45, J Elmsheuser 36, M Elsing 45, D Emeliyanov 170, Y Enari 205, O C Endner 113, J S Ennis 225, J Erdmann 66, A Ereditato 20, G Ernis 230, J Ernst 2, M Ernst 36, S Errede 221, E Ertel 113, M Escalier 148, H Esch 66, C Escobar 158, B Esposito 70, A I Etienvre 182, E Etzion 203, H Evans 90, A Ezhilov 155, M Ezzi 181, F Fabbri 27,28, L Fabbri 27,28, G Facini 46, R M Fakhrutdinov 169, S Falciano 171, R J Falla 108, J Faltova 45, Y Fang 49, M Fanti 121,122, A Farbin 10, A Farilla 175, C Farina 158, E M Farina 152,153, T Farooque 15, S Farrell 18, S M Farrington 225, P Farthouat 45, F Fassi 181, P Fassnacht 45, D Fassouliotis 11, M Faucci Giannelli 107, A Favareto 73,74, W J Fawcett 151, L Fayard 148, O L Fedin 155, W Fedorko 223, S Feigl 150, L Feligioni 115, C Feng 53, E J Feng 45, H Feng 119, A B Fenyuk 169, L Feremenga 10, P Fernandez Martinez 222, S Fernandez Perez 15, J Ferrando 65, A Ferrari 220, P Ferrari 138, R Ferrari 152, D E Ferreira de Lima 83, A Ferrer 222, D Ferrere 72, C Ferretti 119, F Fiedler 113, A Filipčič 105, M Filipuzzi 65, F Filthaut 137, M Fincke-Keeler 224, K D Finelli 200, M C N Fiolhais 159,161, L Fiorini 222, A Fischer 2, C Fischer 15, J Fischer 230, W C Fisher 120, N Flaschel 65, I Fleck 187, P Fleischmann 119, G T Fletcher 185, R R M Fletcher 154, T Flick 230, B M Flierl 130, L R Flores Castillo 86, M J Flowerdew 131, G T Forcolin 114, A Formica 182, A Forti 114, A G Foster 21, D Fournier 148, H Fox 101, S Fracchia 15, P Francavilla 110, M Franchini 27,28, D Francis 45, L Franconi 150, M Franklin 81, M Frate 216, M Fraternali 152,153, D Freeborn 108, S M Fressard-Batraneanu 45, F Friedrich 67, D Froidevaux 45, J A Frost 151, C Fukunaga 206, E Fullana Torregrosa 113, T Fusayasu 132, J Fuster 222, C Gabaldon 80, O Gabizon 202, A Gabrielli 27,28, A Gabrielli 18, G P Gach 60, S Gadatsch 45, G Gagliardi 73,74, L G Gagnon 125, P Gagnon 90, C Galea 137, B Galhardo 159,161, E J Gallas 151, B J Gallop 170, P Gallus 167, G Galster 57, K K Gan 142, S Ganguly 55, J Gao 52, Y Gao 69, Y S Gao 189, F M Garay Walls 69, C García 222, J E García Navarro 222, M Garcia-Sciveres 18, R W Gardner 46, N Garelli 189, V Garonne 150, A Gascon Bravo 65, K Gasnikova 65, C Gatti 70, A Gaudiello 73,74, G Gaudio 152, L Gauthier 125, I L Gavrilenko 126, C Gay 223, G Gaycken 29, E N Gazis 12, Z Gecse 223, C N P Gee 170, Ch Geich-Gimbel 29, M Geisen 113, M P Geisler 82, K Gellerstedt 195,196, C Gemme 73, M H Genest 80, C Geng 52, S Gentile 171,172, C Gentsos 204, S George 107, D Gerbaudo 15, A Gershon 203, S Ghasemi 187, M Ghneimat 29, B Giacobbe 27, S Giagu 171,172, P Giannetti 156,157, S M Gibson 107, M Gignac 223, M Gilchriese 18, T P S Gillam 43, D Gillberg 44, G Gilles 230, D M Gingrich 3, N Giokaris 11, M P Giordani 217,219, F M Giorgi 27, P F Giraud 182, P Giromini 81, D Giugni 121, F Giuli 151, C Giuliani 131, M Giulini 83, B K Gjelsten 150, S Gkaitatzis 204, I Gkialas 204, E L Gkougkousis 183, L K Gladilin 129, C Glasman 112, J Glatzer 15, P C F Glaysher 69, A Glazov 65, M Goblirsch-Kolb 31, J Godlewski 62, S Goldfarb 118, T Golling 72, D Golubkov 169, A Gomes 159,160,162, R Gonçalo 159, J Goncalves Pinto Firmino Da Costa 182, G Gonella 71, L Gonella 21, A Gongadze 94, S González de la Hoz 222, S Gonzalez-Sevilla 72, L Goossens 45, P A Gorbounov 127, H A Gordon 36, I Gorelov 136, B Gorini 45, E Gorini 102,103, A Gorišek 105, A T Goshaw 68, C Gössling 66, M I Gostkin 94, C R Goudet 148, D Goujdami 179, A G Goussiou 184, N Govender 193, E Gozani 202, L Graber 79, I Grabowska-Bold 60, P O J Gradin 80, P Grafström 27,28, J Gramling 72, E Gramstad 150, S Grancagnolo 19, V Gratchev 155, P M Gravila 41, H M Gray 45, E Graziani 175, Z D Greenwood 109, C Grefe 29, K Gregersen 108, I M Gregor 65, P Grenier 189, K Grevtsov 7, J Griffiths 10, A A Grillo 183, K Grimm 101, S Grinstein 15, Ph Gris 55, J-F Grivaz 148, S Groh 113, E Gross 227, J Grosse-Knetter 79, G C Grossi 109, Z J Grout 108, L Guan 119, W Guan 228, J Guenther 91, F Guescini 72, D Guest 216, O Gueta 203, B Gui 142, E Guido 73,74, T Guillemin 7, S Guindon 2, U Gul 78, C Gumpert 45, J Guo 54, W Guo 119, Y Guo 52, R Gupta 63, S Gupta 151, G Gustavino 171,172, P Gutierrez 144, N G Gutierrez Ortiz 108, C Gutschow 108, C Guyot 182, C Gwenlan 151, C B Gwilliam 104, A Haas 141, C Haber 18, H K Hadavand 10, N Haddad 181, A Hadef 115, S Hageböck 29, M Hagihara 214, H Hakobyan 232, M Haleem 65, J Haley 145, G Halladjian 120, G D Hallewell 115, K Hamacher 230, P Hamal 146, K Hamano 224, A Hamilton 192, G N Hamity 185, P G Hamnett 65, L Han 52, S Han 49, K Hanagaki 95, K Hanawa 205, M Hance 183, B Haney 154, P Hanke 82, R Hanna 182, J B Hansen 57, J D Hansen 57, M C Hansen 29, P H Hansen 57, K Hara 214, A S Hard 228, T Harenberg 230, F Hariri 148, S Harkusha 123, R D Harrington 69, P F Harrison 225, F Hartjes 138, N M Hartmann 130, M Hasegawa 96, Y Hasegawa 186, A Hasib 144, S Hassani 182, S Haug 20, R Hauser 120, L Hauswald 67, M Havranek 166, C M Hawkes 21, R J Hawkings 45, D Hayakawa 207, D Hayden 120, C P Hays 151, J M Hays 106, H S Hayward 104, S J Haywood 170, S J Head 21, T Heck 113, V Hedberg 111, L Heelan 10, S Heim 154, T Heim 18, B Heinemann 65, J J Heinrich 130, L Heinrich 141, C Heinz 77, J Hejbal 166, L Helary 45, S Hellman 195,196, C Helsens 45, J Henderson 151, R C W Henderson 101, Y Heng 228, S Henkelmann 223, A M Henriques Correia 45, S Henrot-Versille 148, G H Herbert 19, H Herde 31, V Herget 229, Y Hernández Jiménez 194, G Herten 71, R Hertenberger 130, L Hervas 45, G G Hesketh 108, N P Hessey 138, J W Hetherly 63, E Higón-Rodriguez 222, E Hill 224, J C Hill 43, K H Hiller 65, S J Hillier 21, I Hinchliffe 18, E Hines 154, M Hirose 71, D Hirschbuehl 230, O Hladik 166, X Hoad 69, J Hobbs 198, N Hod 212, M C Hodgkinson 185, P Hodgson 185, A Hoecker 45, M R Hoeferkamp 136, F Hoenig 130, D Hohn 29, T R Holmes 18, M Homann 66, S Honda 214, T Honda 95, T M Hong 158, B H Hooberman 221, W H Hopkins 147, Y Horii 133, A J Horton 188, J-Y Hostachy 80, S Hou 201, A Hoummada 177, J Howarth 65, J Hoya 100, M Hrabovsky 146, I Hristova 19, J Hrivnac 148, T Hryn’ova 7, A Hrynevich 124, P J Hsu 89, S-C Hsu 184, Q Hu 52, S Hu 54, Y Huang 65, Z Hubacek 167, F Hubaut 115, F Huegging 29, T B Huffman 151, E W Hughes 56, G Hughes 101, M Huhtinen 45, P Huo 198, N Huseynov 94, J Huston 120, J Huth 81, G Iacobucci 72, G Iakovidis 36, I Ibragimov 187, L Iconomidou-Fayard 148, E Ideal 231, Z Idrissi 181, P Iengo 45, O Igonkina 138, T Iizawa 226, Y Ikegami 95, M Ikeno 95, Y Ilchenko 13, D Iliadis 204, N Ilic 189, G Introzzi 152,153, P Ioannou 11, M Iodice 175, K Iordanidou 56, V Ippolito 81, N Ishijima 149, M Ishino 205, M Ishitsuka 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Sideras Haddad 194, O Sidiropoulou 229, D Sidorov 145, A Sidoti 27,28, F Siegert 67, Dj Sijacki 16, J Silva 159,162, S B Silverstein 195, V Simak 167, Lj Simic 16, S Simion 148, E Simioni 113, B Simmons 108, D Simon 55, M Simon 113, P Sinervo 209, N B Sinev 147, M Sioli 27,28, G Siragusa 229, I Siral 119, S Yu Sivoklokov 129, J Sjölin 195,196, M B Skinner 101, H P Skottowe 81, P Skubic 144, M Slater 21, T Slavicek 167, M Slawinska 138, K Sliwa 215, R Slovak 168, V Smakhtin 227, B H Smart 7, L Smestad 17, J Smiesko 190, S Yu Smirnov 128, Y Smirnov 128, L N Smirnova 129, O Smirnova 111, J W Smith 79, M N K Smith 56, R W Smith 56, M Smizanska 101, K Smolek 167, A A Snesarev 126, I M Snyder 147, S Snyder 36, R Sobie 224, F Socher 67, A Soffer 203, D A Soh 201, G Sokhrannyi 105, C A Solans Sanchez 45, M Solar 167, E Yu Soldatov 128, U Soldevila 222, A A Solodkov 169, A Soloshenko 94, O V Solovyanov 169, V Solovyev 155, P Sommer 71, H Son 215, H Y Song 52, A Sood 18, A Sopczak 167, V Sopko 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158, S Suchek 82, Y Sugaya 149, M Suk 167, V V Sulin 126, S Sultansoy 6, T Sumida 97, S Sun 81, X Sun 49, J E Sundermann 71, K Suruliz 199, C J E Suster 200, M R Sutton 199, S Suzuki 95, M Svatos 166, M Swiatlowski 46, S P Swift 2, I Sykora 190, T Sykora 168, D Ta 71, K Tackmann 65, J Taenzer 203, A Taffard 216, R Tafirout 212, N Taiblum 203, H Takai 36, R Takashima 98, T Takeshita 186, Y Takubo 95, M Talby 115, A A Talyshev 140, J Tanaka 205, M Tanaka 207, R Tanaka 148, S Tanaka 95, R Tanioka 96, B B Tannenwald 142, S Tapia Araya 48, S Tapprogge 113, S Tarem 202, G F Tartarelli 121, P Tas 168, M Tasevsky 166, T Tashiro 97, E Tassi 58,59, A Tavares Delgado 159,160, Y Tayalati 181, A C Taylor 136, G N Taylor 118, P T E Taylor 118, W Taylor 213, F A Teischinger 45, P Teixeira-Dias 107, K K Temming 71, D Temple 188, H Ten Kate 45, P K Teng 201, J J Teoh 149, F Tepel 230, S Terada 95, K Terashi 205, J Terron 112, S Terzo 15, M Testa 70, R J Teuscher 209, T Theveneaux-Pelzer 115, J P Thomas 21, J Thomas-Wilsker 107, P D Thompson 21, A S Thompson 78, L A Thomsen 231, E Thomson 154, M J Tibbetts 18, R E Ticse Torres 115, V O Tikhomirov 126, Yu A Tikhonov 140, S Timoshenko 128, P Tipton 231, S Tisserant 115, K Todome 207, T Todorov 7, S Todorova-Nova 168, J Tojo 99, S Tokár 190, K Tokushuku 95, E Tolley 81, L Tomlinson 114, M Tomoto 133, L Tompkins 189, K Toms 136, B Tong 81, P Tornambe 71, E Torrence 147, H Torres 188, E Torró Pastor 184, J Toth 115, F Touchard 115, D R Tovey 185, T Trefzger 229, A Tricoli 36, I M Trigger 212, S Trincaz-Duvoid 110, M F Tripiana 15, W Trischuk 209, B Trocmé 80, A Trofymov 65, C Troncon 121, M Trottier-McDonald 18, M Trovatelli 224, L Truong 217,219, M Trzebinski 62, A Trzupek 62, JC-L Tseng 151, P V Tsiareshka 123, G Tsipolitis 12, N Tsirintanis 11, S Tsiskaridze 15, V Tsiskaridze 71, E G Tskhadadze 75, K M Tsui 86, I I Tsukerman 127, V Tsulaia 18, S Tsuno 95, D Tsybychev 198, Y Tu 87, A Tudorache 38, V Tudorache 38, T T Tulbure 37, A N Tuna 81, S A Tupputi 27,28, S Turchikhin 94, D Turgeman 227, I Turk Cakir 5, R Turra 121,122, P M Tuts 56, G Ucchielli 27,28, I Ueda 205, M Ughetto 195,196, F Ukegawa 214, G Unal 45, A Undrus 36, G Unel 216, F C Ungaro 118, Y Unno 95, C Unverdorben 130, J Urban 191, P Urquijo 118, P Urrejola 113, G Usai 10, J Usui 95, L Vacavant 115, V Vacek 167, B Vachon 117, C Valderanis 130, E Valdes Santurio 195,196, N Valencic 138, S Valentinetti 27,28, A Valero 222, L Valery 15, S Valkar 168, J A Valls Ferrer 222, W Van Den Wollenberg 138, P C Van Der Deijl 138, H van der Graaf 138, N van Eldik 202, P van Gemmeren 8, J Van Nieuwkoop 188, I van Vulpen 138, M C van Woerden 138, M Vanadia 171,172, W Vandelli 45, R Vanguri 154, A Vaniachine 208, P Vankov 138, G Vardanyan 232, R Vari 171, E W Varnes 9, T Varol 63, D Varouchas 110, A Vartapetian 10, K E Varvell 200, J G Vasquez 231, G A Vasquez 48, F Vazeille 55, T Vazquez Schroeder 117, J Veatch 79, V Veeraraghavan 9, L M Veloce 209, F Veloso 159,161, S Veneziano 171, A Ventura 102,103, M Venturi 224, N Venturi 209, A Venturini 31, V Vercesi 152, M Verducci 171,172, W Verkerke 138, J C Vermeulen 138, A Vest 67, M C Vetterli 188, O Viazlo 111, I Vichou 221, T Vickey 185, O E Vickey Boeriu 185, G H A Viehhauser 151, S Viel 18, L Vigani 151, M Villa 27,28, M Villaplana Perez 121,122, E Vilucchi 70, M G Vincter 44, V B Vinogradov 94, C Vittori 27,28, I Vivarelli 199, S Vlachos 12, M Vlasak 167, M Vogel 230, P Vokac 167, G Volpi 156,157, M Volpi 118, H von der Schmitt 131, E von Toerne 29, V Vorobel 168, K Vorobev 128, M Vos 222, R Voss 45, J H Vossebeld 104, N Vranjes 16, M Vranjes Milosavljevic 16, V Vrba 166, M Vreeswijk 138, R Vuillermet 45, I Vukotic 46, P Wagner 29, W Wagner 230, H Wahlberg 100, S Wahrmund 67, J Wakabayashi 133, J Walder 101, R Walker 130, W Walkowiak 187, V Wallangen 195,196, C Wang 50, C Wang 53,115, F Wang 228, H Wang 18, H Wang 63, J Wang 65, J Wang 200, K Wang 117, R Wang 8, S M Wang 201, T Wang 56, W Wang 52, C Wanotayaroj 147, A Warburton 117, C P Ward 43, D R Wardrope 108, A Washbrook 69, P M Watkins 21, A T Watson 21, M F Watson 21, G Watts 184, S Watts 114, B M Waugh 108, S Webb 113, M S Weber 20, S W Weber 229, S A Weber 44, J S Webster 8, A R Weidberg 151, B Weinert 90, J Weingarten 79, C Weiser 71, H Weits 138, P S Wells 45, T Wenaus 36, T Wengler 45, S Wenig 45, N Wermes 29, M D Werner 93, P Werner 45, M Wessels 82, J Wetter 215, K Whalen 147, N L Whallon 184, A M Wharton 101, A White 10, M J White 1, R White 48, D Whiteson 216, F J Wickens 170, W Wiedenmann 228, M Wielers 170, C Wiglesworth 57, L A M Wiik-Fuchs 29, A Wildauer 131, F Wilk 114, H G Wilkens 45, H H Williams 154, S Williams 138, C Willis 120, S Willocq 116, J A Wilson 21, I Wingerter-Seez 7, F Winklmeier 147, O J Winston 199, B T Winter 29, M Wittgen 189, M Wobisch 109, T M H Wolf 138, R Wolff 115, M W Wolter 62, H Wolters 159,161, S D Worm 170, B K Wosiek 62, J Wotschack 45, M J Woudstra 114, K W Wozniak 62, M Wu 80, M Wu 46, S L Wu 228, X Wu 72, Y Wu 119, T R Wyatt 114, B M Wynne 69, S Xella 57, Z Xi 119, D Xu 49, L Xu 36, B Yabsley 200, S Yacoob 192, D Yamaguchi 207, Y Yamaguchi 149, A Yamamoto 95, S Yamamoto 205, T Yamanaka 205, K Yamauchi 133, Y Yamazaki 96, Z Yan 30, H Yang 54, H Yang 228, Y Yang 201, Z Yang 17, W-M Yao 18, Y C Yap 110, Y Yasu 95, E Yatsenko 7, K H Yau Wong 29, J Ye 63, S Ye 36, I Yeletskikh 94, E Yildirim 113, K Yorita 226, R Yoshida 8, K Yoshihara 154, C Young 189, C J S Young 45, S Youssef 30, D R Yu 18, J Yu 10, J M Yu 119, J Yu 93, L Yuan 96, S P Y Yuen 29, I Yusuff 43, B Zabinski 62, R Zaidan 92, A M Zaitsev 169, N Zakharchuk 65, J Zalieckas 17, A Zaman 198, S Zambito 81, L Zanello 171,172, D Zanzi 118, C Zeitnitz 230, M Zeman 167, A Zemla 60, J C Zeng 221, Q Zeng 189, O Zenin 169, T Ženiš 190, D Zerwas 148, D Zhang 119, F Zhang 228, G Zhang 52, H Zhang 50, J Zhang 8, L Zhang 71, L Zhang 52, M Zhang 221, R Zhang 29, R Zhang 52, X Zhang 53, Z Zhang 148, X Zhao 63, Y Zhao 53, Z Zhao 52, A Zhemchugov 94, J Zhong 151, B Zhou 119, C Zhou 228, L Zhou 56, L Zhou 63, M Zhou 49, M Zhou 198, N Zhou 51, C G Zhu 53, H Zhu 49, J Zhu 119, Y Zhu 52, X Zhuang 49, K Zhukov 126, A Zibell 229, D Zieminska 90, N I Zimine 94, C Zimmermann 113, S Zimmermann 71, Z Zinonos 79, M Zinser 113, M Ziolkowski 187, L Živković 16, G Zobernig 228, A Zoccoli 27,28, M zur Nedden 19, L Zwalinski 45; ATLAS Collaboration40,165,178,234
PMCID: PMC5589447  PMID: 28943801

Abstract

Detailed measurements of t-channel single top-quark production are presented. They use 20.2 fb-1 of data collected by the ATLAS experiment in proton–proton collisions at a centre-of-mass energy of 8 TeV at the LHC. Total, fiducial and differential cross-sections are measured for both top-quark and top-antiquark production. The fiducial cross-section is measured with a precision of 5.8% (top quark) and 7.8% (top antiquark), respectively. The total cross-sections are measured to be σtot(tq)=56.7-3.8+4.3pb for top-quark production and σtot(t¯q)=32.9-2.7+3.0pb for top-antiquark production, in agreement with the Standard Model prediction. In addition, the ratio of top-quark to top-antiquark production cross-sections is determined to be Rt=1.72±0.09. The differential cross-sections as a function of the transverse momentum and rapidity of both the top quark and the top antiquark are measured at both the parton and particle levels. The transverse momentum and rapidity differential cross-sections of the accompanying jet from the t-channel scattering are measured at particle level. All measurements are compared to various Monte Carlo predictions as well as to fixed-order QCD calculations where available.

Introduction

Top quarks are produced singly in proton–proton (pp) collisions via electroweak charged-current interactions. In leading-order (LO) perturbation theory, single top-quark production is described by three subprocesses that are distinguished by the virtuality of the exchanged W boson. The dominant process is the t-channel exchange depicted in Fig. 1, where a light quark from one of the colliding protons interacts with a b-quark from another proton by exchanging a virtual W boson (W). Since the valence u-quark density of the proton is about twice as high as the valence d-quark density, the production cross-section of single top quarks, σ(tq), is expected to be about twice as high as the cross-section of top-antiquark production, σ(t¯q). At LO, subdominant single-top-quark processes are the associated production of a W boson and a top quark (Wt) and the s-channel production of tb¯. The t-channel and s-channel processes do not interfere even at next-to-leading order (NLO) in perturbation theory and are thus well defined with that precision.

Fig. 1.

Fig. 1

Representative leading-order Feynman diagrams for a single top-quark production and b single top-antiquark production via the t-channel exchange of a virtual W boson, including the decay of the top quark and top antiquark, respectively

This paper presents measurements of σ(tq) and σ(t¯q) in pp collisions at a centre-of-mass energy of s=8TeV at the Large Hadron Collider (LHC). The analysis is based on the full ATLAS dataset collected in 2012, corresponding to an integrated luminosity of 20.2 fb-1. Separate measurements of tq and t¯q production provide sensitivity to the parton distribution functions (PDFs) of the u-quark and the d-quark, exploiting the different initial states of the two processes as shown in Fig. 1. In addition, the cross-section ratio Rtσ(tq)/σ(t¯q) is measured, which has smaller systematic uncertainties than the individual cross-sections, because of partial cancellations of common uncertainties. Investigating Rt also provides a way of searching for new-physics contributions in single top-quark (top-antiquark) production [1] and of elucidating the nature of physics beyond the Standard Model (SM) if it were to be observed [2].

In general, measurements of single top-quark production provide insights into the properties of the Wtb interaction. The cross-sections are proportional to the square of the coupling at the Wtb production vertex. In the SM, the coupling is given by the Cabibbo–Kobayashi–Maskawa (CKM) matrix element Vtb [3, 4] multiplied by the universal electroweak coupling constant. All measurements presented in this paper are based on the assumption that the production and the decay of top quarks via Wts and Wtd vertices are suppressed due to the fact that the CKM matrix elements Vts and Vtd are much smaller than Vtb. Potential new-physics contributions to the Wtb vertex are parameterised by an additional left-handed form factor fLV  [5], assumed to be real. In this approach the Lorentz structure is assumed to be the same as in the SM, that is vector–axial-vector (V-A). The inclusive cross-section σ(tq+t¯q) is determined as the sum of σ(tq) and σ(t¯q) and used to determine fLV·|Vtb|. Alternatively, the measurement of σ(tq+t¯q) can be used to constrain the b-quark PDF. The measurement of σ(tq+t¯q) is also sensitive to various models of new-physics phenomena [6], such as extra heavy quarks, gauge bosons, or scalar bosons. Studies of differential cross-sections allow the modelling of the process to be probed in more detail and provide a more sensitive search for effects of new physics.

Single top-quark production in the t-channel was first established in pp¯ collisions at s=1.96TeV at the Tevatron [7, 8]. Measurements of t-channel single top-quark production at the LHC at s=7TeV were performed by the ATLAS Collaboration [9, 10] and the CMS Collaboration [11, 12]. At s=8TeV the CMS Collaboration measured the t-channel cross-sections and the cross-section ratio, Rt [13].

The total inclusive cross-sections of top-quark and top-antiquark production in the t-channel in pp collisions at s=8TeV are predicted to be

σ(tq)=54.9-1.9+2.3pb, 1a
σ(t¯q)=29.7-1.5+1.7pb, 1b
σ(tq+t¯q)=84.6-3.4+3.9pb, 1c

at NLO accuracy in QCD. The cross-sections are calculated with the HatHor  v2.1 [14] tool, which is based on work documented in Ref. [15]. The top-quark mass mt is assumed to be 172.5 GeV, the same value which is used for the samples of simulated events in this analysis. The central values quoted in Eqs. (1a)–(1c) are determined following the PDF4LHC prescription [16], which defines the central value as the midpoint of the uncertainty envelope of three PDF sets: MSTW2008  [17, 18], CT10  NLO [19] and NNPDF 3.0  [20]. The uncertainty due to the PDFs and their αS dependence is given by half of the width of the envelope defined by these PDFs and is added in quadrature to the scale uncertainty to obtain the total uncertainties quoted in Eqs. (1a)–(1c). The sensitivity of σ(tq) and σ(t¯q) to the PDFs has recently gained attention in the literature [21]. The scale uncertainties in the predictions are determined following a prescription referred to as independent restricted scale variations, in which the renormalisation scale (μr) and the factorisation scale (μf) are varied independently, considering the default choices μrdefand μfdef, half the default scales and two times the default scales. The combinations (0.5μrdef, 2.0μfdef) and (2.0μrdef, 0.5μfdef) are excluded, thus “restricted variations”. The maximum deviations in the predicted cross-sections for the six probed variations define the uncertainty.

Predictions of σ(tq) and σ(t¯q) have recently been calculated at next-to-next-to-leading order (NNLO) [22]. The calculation uses mt=173.2GeV and μr=μf=mt, and results in a cross-section which is 1.5% lower than the NLO value calculated with the same settings. Only a limited number of scale variations are presented in Ref. [22]; however, they do indicate a reduction in the scale uncertainties compared to the NLO result. Since the NLO computation implemented in HatHor allows a complete treatment of the scale and PDF uncertainties, which is not currently available for the NNLO calculation, the NLO computation is used when extracting fLV·|Vtb| and for comparing the Rt measurement to different PDF sets. The NLO results have been augmented by including the resummation of soft-gluon terms at next-to-next-to-leading logarithmic (NNLL) accuracy [2325], leading to fixed-order predictions at the so-called NLO + NNLL level.

Cross-sections are measured in two ways: over the full kinematic range and within a fiducial phase space, defined to be as close as possible to the experimental measurement range. The definition of the fiducial phase space is based on stable particles output by Monte Carlo (MC) generators, with which reconstructed objects, such as primary leptons, jets and missing transverse momentum, are defined. The advantage of the fiducial cross-section measurements is a substantial reduction of the size of the applied acceptance corrections, leading to reduced systematic uncertainties.

Differential cross-sections are measured as a function of the transverse momentum of the top (anti)quark, pT(t), and as a function of the absolute value of its rapidity, |y(t)|. The measured cross-sections are unfolded to both parton level and particle level. Parton-level measurements can be directly compared to theory predictions that use stable top quarks. Particle-level measurements make use of a top-quark proxy which is constructed with the objects used in the fiducial cross-section measurements. At particle level, it is also possible to measure differential cross-sections as a function of the pT and rapidity of the jet formed by the scattered light quark in the t-channel exchange of a W boson.

Events are selected targeting the tνb decay mode of the top quark where the lepton can be either an electron or a muon originating from a W-boson decay.1 The experimental signature of candidate events is thus given by one charged lepton (electron or muon), large values of the magnitude of the missing transverse momentum, ETmiss, and two hadronic jets with high transverse momentum. Exactly one of the two hadronic jets is required to be identified as a jet containing b-hadrons (b-jet). The other hadronic jet is referred to as the untagged jet and is assumed to be the accompanying jet in the t-channel exchange.

Several other processes feature the same signature as single-top-quark events; the main backgrounds being W + jets production and top-quark–top-antiquark (tt¯) pair production. Since a typical signature-based event selection yields only a relatively low signal purity, a dedicated analysis strategy is developed to separate signal and background events. Several observables discriminating between signal and background events are combined by an artificial neural network (NN) into one discriminant, ONN, with improved signal-to-background separation. The cross-section measurements are based on a maximum-likelihood fit to the ONN distribution. In addition, a cut on ONN is applied to obtain a sample of events enriched in t-channel single-top-quark events. These events are used to extract differential cross-sections as a function of both the top-quark and untagged-jet variables.

This paper is organised as follows. The ATLAS detector is introduced in Sect. 2; details of both the data set and simulated event samples are given in Sect. 3. The objects used to select events are introduced in Sect. 4, while Sect. 5 discusses the event selection criteria. In Sect. 6 the background estimation is described. The measured cross-sections are defined in detail in Sect. 7 before turning to the separation of signal from background using a neural network in Sect. 8. The sources of systematic uncertainty considered in the analyses are covered in Sect. 9. The fiducial and inclusive cross-section measurements are the subject of Sect. 10, including the measurement of Rt and fLV·|Vtb|. This is followed by the differential cross-section measurements in Sect. 11, which also explains the method used to unfold the cross-sections. Finally, the conclusion is given in Sect. 12.

ATLAS detector

The ATLAS experiment [26] at the LHC is a multi-purpose particle detector with a forward-backward symmetric cylindrical geometry and a near 4π coverage in solid angle.2 It consists of an inner tracking detector (ID) surrounded by a thin superconducting solenoid providing a 2 T axial magnetic field, electromagnetic and hadron calorimeters, and a muon spectrometer. The ID covers the pseudorapidity range |η|<2.5. It consists of silicon pixel, silicon microstrip, and transition-radiation tracking detectors. Lead/liquid-argon (LAr) sampling calorimeters provide electromagnetic (EM) energy measurements with high granularity. A hadron (steel/scintillator-tile) calorimeter covers the central pseudorapidity range (|η|<1.7). The endcap (1.5<|η|<3.2) and forward regions (3.1<|η|<4.9) are instrumented with LAr calorimeters for both the EM and hadronic energy measurements. The muon spectrometer (MS) surrounds the calorimeters and is based on three large air-core toroid superconducting magnets with eight coils each. Its bending power ranges from 2.0 to 7.5 Tm. It includes a system of precision tracking chambers and fast detectors for triggering. A three-level trigger system is used to select events. The first-level trigger is implemented in hardware and uses a subset of the detector information to reduce the accepted rate to at most 75 kHz. This is followed by two software-based trigger levels that together reduce the accepted event rate to 400 Hz on average, depending on the data-taking conditions during 2012.

Data sample and simulation

This analysis is performed using pp collision data recorded at a centre-of-mass energy of s=8TeV with the ATLAS detector at the LHC. Only the data-taking periods in which all the subdetectors were operational are considered. The data sets used in this analysis are defined by high-pT single-electron or single-muon triggers [27, 28], resulting in a data sample with an integrated luminosity of Lint=20.2 fb-1 [29].

In the first-level trigger, electron-channel events are triggered by a cluster of energy depositions in the electromagnetic calorimeter. In the software-based triggers, a cluster of energy depositions in the calorimeter needs to be matched to a track and the trigger electron candidate is required to have transverse energy ET>60GeV, or ET>24GeV with additional isolation requirements.

The single-muon trigger is based on muon candidates reconstructed in the muon spectrometer. Muon-channel events are accepted by the trigger if they have either a muon with transverse momentum pT>36GeV or an isolated muon with pT>24GeV.

Simulated signal and background samples were generated with an MC technique. Detector and trigger simulations are performed within the dedicated ATLAS simulation software infrastructure utilizing the GEANT4 framework [30, 31]. The same offline reconstruction methods used with data events are applied to the samples of simulated events. Multiple inelastic pp collisions (referred to as pile-up) are simulated with Pythia 8  [32], and are overlaid on each MC event. Weights are assigned to the simulated events such that the distribution of the number of pile-up interactions in the simulation matches the corresponding distribution in the data, which has an average of 21 [29].

Single-top-quark events from t-channel production are generated using the Powheg-Box  (r2556) [33] generator. This generator uses the four-flavour scheme (4FS) for the NLO matrix element (ME) calculations, since the 4FS leads to a more precise description of the event kinematics compared to the five-flavour scheme (5FS). Events are generated with the fixed four-flavour PDF set CT10f4  [19] and the renormalisation and factorisation scales are set to the recommendation given in Ref. [33]. Top quarks are decayed at LO using MadSpin  [34], preserving all spin correlations. The parton shower, hadronisation and the underlying event are modelled using the Pythia 6  (v6.428) [35] generator and a set of tuned parameters called the Perugia2012 tune (P2012) [36].

For the generation of single top-quarks in the Wt and the s-channel the Powheg-Box (r2819) generator [37, 38] with the CT10 PDF set is used. Samples of tt¯ events are generated with the Powheg-Box (r3026) [39] and the CT10 PDF set. In the event generation of tt¯, the hdamp parameter, which controls the pT spectrum of the first additional emission beyond the Born configuration, is set to the mass of the top quark. The main effect of this is to regulate the high-pT emission against which the tt¯ system recoils. The parton shower, hadronisation and the underlying event are added using Pythia 6 and the P2011C set of tuned parameters [36].

All top-quark processes are generated assuming a top-quark mass of 172.5 GeV. The decay of the top quark is assumed to be exclusively tWb.

For studies of systematic uncertainties in all processes involving top quarks, either alternative generators or parameter variations in the Powheg-Box + Pythia 6 setup are used. To study the hadronisation modelling, the Powheg-Box generator interfaced to Herwig (v6.5.20)  [40] is used. The underlying event is simulated using the Jimmy  (v4.31) [41] model with the ATLAS AUET2 [42] set of tuned parameters. For studies of the NLO matching method, MadGraph5_aMC@NLO  (v2.2.2) [43] interfaced to Herwig is used. Samples are generated using the CT10f4 PDF set in the ME calculations and the renormalisation and factorisation scales are set to be the same as those implemented in Powheg-Box. Again, the top quarks produced in the ME are decayed using MadSpin, preserving all spin correlations. Variations of the amount of additional radiation are studied by generating samples using Powheg-Box + Pythia 6 after changing the hard-scatter scales and the scales in the parton shower simultaneously. In these samples, a variation of the factorisation and renormalisation scales by a factor of 2.0 is combined with the Perugia2012radLo parameters and a variation of both parameters by a factor of 0.5 is combined with the Perugia2012radHi parameters [36]. In the case of the up-variation, the hdamp parameter is also changed and set to two times the top-quark mass [44].

Vector-boson production in association with jets, V + jets, is simulated using the multi-leg LO generator Sherpa (v1.4.1)  [45] with its own parameter tune and the CT10 PDF set. Sherpa is used not only to generate the hard process, but also for the parton shower and the modelling of the underlying event. Samples of W + jets and Z + jets events with up to four additional partons are generated. The CKKW method [46] is used to remove overlap between partonic configurations generated by the matrix element and by parton shower evolution. Double counting between the inclusive V+n parton samples and samples with associated heavy-quark pair production is avoided consistently by applying the CKKW method also to heavy quarks [46]. In Sherpa, massive c- and b-quarks are used in the ME as well as in the shower.

Diboson events, denoted VV, are also simulated using the Sherpa (v1.4.1) generator. The matrix elements contain all diagrams with four electroweak vertices. They are calculated for zero additional partons at NLO and up to three additional partons at LO using the same methodology as for V + jets production. Only decay modes where one boson decays leptonically and the other boson decays hadronically are considered. The CT10 PDF set is used in conjunction with a dedicated set of parton-shower parameters developed by the Sherpa authors.

Object definitions

Electron candidates are selected from energy deposits (clusters) in the LAr EM calorimeter associated with a well-measured track fulfilling strict quality requirements [47, 48]. Electron candidates are required to satisfy pT>25GeV and |ηclus|<2.47, where ηclus denotes the pseudorapidity of the cluster. Clusters in the calorimeter barrel–endcap transition region, corresponding to 1.37<|ηclus|<1.52, are ignored. High-pT  electrons associated with the W-boson decay can be mimicked by hadronic jets reconstructed as electrons, electrons from the decay of heavy quarks, and photon conversions. Since electrons from the W-boson decay are typically isolated from hadronic jet activity, backgrounds are suppressed by isolation criteria, which require minimal calorimeter activity and only allow low-pT tracks in an ηϕ cone around the electron candidate. Isolation criteria are optimised to achieve a uniform selection efficiency of 90% as a function of ηclus and transverse energy, ET. The direction of the electron candidate is taken as that of the associated track. Electron candidates are isolated by imposing thresholds on the scalar sum of the transverse momenta of calorimeter energy deposits within a surrounding cone of size ΔR=0.2. In addition, the scalar sum of all track transverse momenta within a cone of size ΔR=0.3 around the electron direction is required to be below a pT-dependent threshold in the range between 0.9 and 2.5 GeV. The track belonging to the electron candidate is excluded from the sum.

Muon candidates are reconstructed by matching track segments or complete tracks in the MS with tracks found in the ID [49]. The candidates are required to have pT>25GeV and to be in the pseudorapidity region |η|<2.5. Isolation criteria are applied to reduce background events in which a high-pT muon is produced in the decay of a heavy-flavour quark. An isolation variable is defined as the scalar sum of the transverse momenta of all tracks with pT above 1 GeV, excluding the one matched to the muon, within a cone of size ΔRiso=10GeV/pT(μ). The definition of ΔRiso is inspired by the one used in Ref. [50]. Muon candidates are accepted if they have an isolation to pT(μ) ratio of less than 0.05. Events are rejected if the selected electron and the muon candidate share the same ID track.

Jets are reconstructed using the anti-kt algorithm [51] with a radius parameter of R=0.4, using topological clusters [52] as inputs to the jet finding. The clusters are calibrated with a local cluster weighting method [52]. The jet energy is further corrected for the effect of multiple pp interactions, both in data and in simulated events. Calibrated jets [53] using a transverse momentum- and η-dependent simulation-based calibration scheme, with in situ corrections based on data, are required to have pT>30GeV and |η|<4.5. The minimum jet pT is raised to 35 GeV within the transition region from the endcap to the forward calorimeter, corresponding to 2.7<|η|<3.5.

If any jet is within ΔR=0.2 of an electron, the closest jet is removed, since in these cases the jet and the electron are very likely to correspond to the same object. Remaining electron candidates overlapping with jets within a distance ΔR=0.4 are subsequently rejected.

To reject jets from pile-up events, a so-called jet-vertex-fraction criterion [54] is applied for jets with pT<50GeV and |η|<2.4: at least 50% of the scalar sum of the pT of tracks within a jet is required to be from tracks compatible with the primary vertex3 associated with the hard-scattering collision.

Since W+c production is a major background, a b-tagging algorithm optimised to improve the rejection of c-quark jets is used. A neural-network-based algorithm is employed, which combines three different algorithms exploiting the properties of a b-hadron decay in a jet [55]. The resulting NN discriminant ranges from zero to one and is required to be larger than 0.8349 for a jet to be considered b-tagged. This requirement corresponds to a b-tagging efficiency of 50% and a c-quark jet and light-parton jet mistag acceptance of 3.9 and 0.07%, respectively. These efficiencies are determined in simulated tt¯ events.

The missing transverse momentum (with magnitude ETmiss) is calculated based on the vector sum of energy deposits in the calorimeter projected onto the transverse plane [56]. All cluster energies are corrected using the local cluster weighting method. Clusters associated with a high-pT jet or electron are further calibrated using their respective energy corrections. In addition, the pT of muons with pT>5GeV is included in the calculation of ETmiss. The muon energy deposited in the calorimeter is taken into account to avoid double counting.

Event selection

The event selection requires exactly one charged lepton (), e or μ, exactly two jets, and ETmiss>30GeV. Exactly one of the jets must be b-tagged. The selected lepton must be within ΔR=0.15 of the lepton selected by the trigger. Candidate events are selected if they contain at least one good primary vertex candidate with at least five associated tracks, each of which has pT>400MeV. Events containing misreconstructed jets are rejected. Misreconstructed jets are jets with pT>20GeV failing to satisfy quality criteria defined in Ref. [57].

Multijet events produced in hard QCD processes may be selected, even though there is no primary lepton from a weak-boson decay. This may happen if a jet is misidentified as an isolated lepton, leading to a so-called fake lepton, or if the event has a non-prompt lepton from a hadron decay which appears to be isolated. The misidentification of jets as leptons is difficult to model in the detector simulation, which is why two specific requirements are included in the event selection to reduce the multijet background without significantly reducing the signal efficiency. The first such requirement uses the transverse mass of the lepton–ETmiss system,

mTETmiss=2pT()·ETmiss1-cosΔϕ,ETmiss, 2

and requires it to be larger than 50 GeV. Further reduction of the multijet background is achieved by placing an additional requirement on events with a charged lepton that is back-to-back with the highest-pT (leading) jet. This is realised by the following requirement between the lepton pT() and Δϕj1,:

pT>max25GeV,40GeV·1-π-|Δϕj1,|π-1, 3

where j1 denotes the leading jet.

Events with an additional lepton are vetoed to suppress Z + jets and tt¯ dilepton backgrounds. Only leptons with opposite charge to the primary lepton are considered for this purpose. These additional leptons are identified with less stringent quality criteria than the primary lepton. Additional leptons are not required to be isolated and must have pT>10GeV. The pseudorapidity region in which additional electrons are identified includes |η(e)|<4.9, and for additional muons |η(μ)|<2.5. Beyond the acceptance of the ID, forward electrons are identified within the pseudorapidity range of 2.5<|η|<4.9 based on calorimeter measurements only [47].

Two separate vetoes are applied, depending on the flavour of the additional lepton with respect to the primary lepton. If the additional lepton has the same flavour as the primary lepton and the invariant mass of the lepton pair is between 80 and 100  GeV, the event is rejected. If the additional lepton has a different flavour than the primary lepton, the event is rejected unless the additional lepton is within ΔR=0.4 to the selected b-jet.

A requirement of m(b)<160GeV, where m(b) is the invariant mass of the lepton and the b-tagged jet, is imposed, in order to exclude the off-shell region of top-quark decay beyond the kinematic limit of m(b)2=mt2-mW2. The off-shell region is not modelled well by the currently available MC generators since off-shell effects are not included in the underlying matrix-element calculation.

Selected events are divided into two different signal regions (SRs) according to the sign of the lepton charge. These two regions are denoted + SR and - SR.

In addition, two validation regions (VRs) are defined to be orthogonal to the SRs in the same kinematic phase space to validate the modelling of the main backgrounds, W + jets and tt¯. Events in the W + jets VR pass the same requirements as events in the SR except for the b-tagging. Exactly one b-tagged jet is required, which is identified with a less stringent b-tagging criterion than used to define the SR. The NN-b-tagging discriminant must be in the interval (0.4051, 0.8349), thereby excluding the SR beyond the higher threshold. The tt¯ VR is defined by requiring both jets to pass the same b-tagging requirement that is used for the SR.

Background estimation

For all background processes, except the multijet background, the normalisations are initially estimated by using MC simulation scaled to the theoretical cross-section predictions. The associated production of an on-shell W boson and a top quark (Wt) has a predicted production cross-section of 22.3 pb [58], calculated at NLO + NNLL accuracy. The uncertainty in this cross-section is 7.6%. Predictions of the s-channel production are calculated at NLO using the same methodology as for the t-channel production based on Ref. [59] and yield a predicted cross-section of 5.2 pb with a total uncertainty of 4.2%.

The predicted tt¯ cross-section is 253 pb. It is calculated with Top++ (v2.0) [6065] at NNLO in QCD, including the resummation of NNLL soft-gluon terms. The uncertainties due to the PDFs and αS are calculated using the PDF4LHC prescription [16] with the MSTW2008 68% CL NNLO, CT10 NNLO and NNPDF 3.0 PDF sets and are added in quadrature to the scale uncertainty, leading to a total uncertainty in the cross-section of 6%.

The cross-sections for inclusive W- and Z-boson production are predicted with NNLO accuracy using the FEWZ program [66, 67] to be 37.0 nb and 3.83 nb, respectively. The uncertainty is 4% and comprises the PDF and scale uncertainties.

VV events are normalised to the NLO cross-section of 26.9 pb provided by MCFM  [68]. The uncertainty in the inclusive cross-section for these processes is 5%.

The normalisation of the multijet background is obtained from a fit to the observed ETmiss  distribution, performed independently in the signal and in the validation regions. In order to select a pure sample of multijet background events, different methods are adopted for the electron and muon channels. The “jet-lepton” model is used in the electron channel while the “anti-muon” model is used in the muon channel [69]. In case of the “jet-lepton” model, a dedicated selection is imposed on MC simulated dijet events, in order to enrich events with jets that are likely to resemble a lepton in the detector. The jet candidates are treated as a lepton henceforth. The “anti-muon” model imposes a dedicated selection on data to enrich events that contain fake muons.

To determine the normalisation of the multijet background, a binned maximum-likelihood fit is performed on the ETmiss  distribution using the observed data, after applying all selection criteria except for the cut on ETmiss. Fits are performed separately in two η regions for electrons: in the barrel (|η|<1.37) and endcap (|η|>1.52) region of the electromagnetic calorimeter, i.e. the transition region is excluded. For muons, the complete η region is used. For the purpose of this fit, the contributions from W + jets, the contributions from tt¯ and single top-quark production, and the contributions from Z + jets and VV production, are combined into one template. The normalisation of Z + jets and VV backgrounds is fixed during the fit, as their contribution is small.

The ETmiss  distributions, after rescaling the different backgrounds and the multijets template to their respective fit results, are shown in Fig. 2 for both the e+ channel and μ+ channel. The estimated event rates obtained from the binned maximum-likelihood fit for the combined contributions of W + jets, tt¯ and single top-quark production are not used in the later analysis and are only applied to scale the respective backgrounds in order to check the modelling of the kinematic distributions. For the later NN training, as well as for the final statistical analysis, the normalisation for all but the multijets background is taken solely from MC simulations scaled to their respective cross-section predictions. Based on comparisons of the rates using an alternative method, namely the matrix method [69], a systematic uncertainty of  15% is assigned to the estimated multijet yields.

Fig. 2.

Fig. 2

Observed distributions of the missing transverse momentum, ETmiss, in the signal region (SR), including events with ETmiss<30GeV, for a events in the e+ channel with an electron in the barrel region and for b events in the μ+ channel, compared to the model obtained from simulated events. The normalisation is obtained from the binned maximum-likelihood fit to the full ETmiss distributions, and applied to the SR. The hatched uncertainty band represents the MC statistical uncertainty and the normalisation of the multijet background. The ratio of observed (Data) to predicted (Pred.) number of events in each bin is shown in the lower panel. Events beyond the x-axis range are included in the last bin

Table 1 summarises the event yields in the signal region for each of the background processes considered, together with the event yields for the signal process. The quoted uncertainties are statistical uncertainties and the uncertainty in the number of multijet events. The yields are calculated using the acceptance from MC samples normalised to their respective theoretical cross-sections.

Table 1.

Predicted and observed event yields for the signal region (SR). The multijet background prediction is obtained from a binned maximum-likelihood fit to the ETmiss distribution. All the other predictions are derived using theoretical cross-sections, given for the backgrounds in Sect. 6 and for the signal in Sect. 1. The quoted uncertainties are in the predicted cross-sections or in the number of multijet events, in case of the multijet process

Process + SR - SR
tq 11400 ± 470 17 ± 1
t¯q 10 ± 1 6290 ± 350
tt¯,Wt,tb¯/t¯b 18,400 ± 1100 18,000 ± 1100
W+ + jets 18700 ± 3700 47 ± 10
W- + jets 25± 5 14,000 ± 2800
Z,VV+jets 1290 ± 260 1190 ± 240
Multijet 4520 ± 710 4520 ± 660
Total expected 54,300 ±4000 44,100 ± 3100
Data 55,800 44,687

Measurement definitions

The paragraphs below describe the concepts and definitions on which the cross-section measurements are based.

Fiducial and total cross-sections

Measuring a production cross-section with respect to a fiducial volume (σfid) has the benefit of reducing systematic uncertainties related to MC generators, since the extrapolation to the full phase space is avoided. In the usual case of a total cross-section measurement the measured cross-section is given by

σtot=ν^ϵ·Lintwithϵ=NselNtotal, 4

where ν^ is the measured expectation value of the number of signal events and ϵ is the event selection efficiency, defined as the ratio of Nsel, the number of events after applying all selection cuts on a sample of simulated signal events, and Ntotal, the total number of events in that sample before any cut.

When defining a fiducial phase space, which is typically chosen to be close to the phase space of the selected data set, the fiducial acceptance is given by

Afid=NfidNtotal, 5

with Nfid being the number of generated events after applying the definition of the fiducial volume. The fiducial cross-section can be defined with respect to the fiducial phase space as

σfid=NfidNsel·ν^Lint. 6

From Eq. (6) it is apparent that systematic effects which alter Nfid and Nsel by the same factor do not lead to an uncertainty in σfid since the changes cancel. Using σfid and Afid, Eq. (4) can be written as

σtot=1Afid·σfid, 7

corresponding to the extrapolation of the fiducial cross-section to the full phase space.

Particle-level objects

The definition of a fiducial phase space requires the implementation of the event selection at generator level. The corresponding particle-level objects are constructed from stable particles of the MC event record with a lifetime larger than 0.3E−10 s, using the following criteria.

Particle-level leptons are defined as electrons, muons or neutrinos that originate from a W-boson decay, including those emerging from a subsequent τ-lepton decay. However, since certain MC generators do not include W bosons in the MC record, an implicit W-boson match is employed to achieve general applicability. This implicit requirement excludes leptons from hadronic decays, either directly or via a τ decay. The remaining leptons are assumed to come from a W-boson decay. In t-channel single-top-quark events, exactly one such electron or muon and the corresponding neutrino are present. The selected charged-lepton four-momentum is calculated including photons within a cone of size ΔR=0.1.

Particle-level jets are reconstructed using the anti-kt algorithm with a radius parameter of R=0.4. All stable particles are used to reconstruct the jets, except for the selected electron or muon and the photons associated with them. Particle-level jets are identified as b-jets, if the jet is within |η|<2.5 and a b-hadron is associated with a ghost-matching technique as described in Ref. [70]. Events are rejected, if a selected particle-level lepton is identified within a cone of size ΔR=0.4 around a selected particle-level jet.

The particle-level event selection is designed to be close to the one used at reconstruction level. Exactly one particle-level electron or muon with pT>25GeV and |η|<2.5 is required. There must be two particle-level jets with pT>30GeV and |η|<4.5; exactly one of these jets must be a b-jet. The invariant mass of the lepton–b-jet system must fulfil m(b)<160GeV.

Pseudo top quarks

Differential cross-sections characterise the top-quark kinematics. To facilitate the comparison between measurements and predictions, the top-quark objects have to closely correspond in both cases. While parton-level definitions of the top-quark are affected by ambiguities at NLO accuracy in calculations and incur related uncertainties, top-quark definitions based on stable particles in MC generators form a solid foundation. On the other hand, some calculations are only available at parton level. Following this logic, a top-quark proxy called a pseudo top quark is defined [71], based on the particle-level objects given in Sect. 7.2. Variables calculated using the pseudo top quark are denoted by t^, while the untagged jet is written as j^.

The reconstruction of the pseudo top quark starts from its decay products: the W boson and the b-tagged jet. The W boson is reconstructed from the charged lepton and the neutrino at particle level. The z component of the neutrino momentum, pz(ν), is calculated using the W-boson mass as a constraint. If the resulting quadratic equation has two real solutions, the one with smallest absolute value of |pz(ν)| is chosen. In case of complex solutions, which can occur due to the low ETmiss resolution, a kinematic fit is performed that rescales the neutrino px and py such that the imaginary part vanishes and at the same time the transverse components of the neutrino momentum are kept as close as possible to the ETmiss. There are two jets in the events considered and exactly one of the jets is required to be b-tagged. The pseudo top quark is then formed by adding the four-momenta of the W boson and the b-tagged jet.

Separation of signal from background

A neural network (NN) [72] is employed to separate signal from background events, by combining several kinematic variables into an optimised NN discriminant (ONN). The reconstruction of top-quark-related kinematic variables, the ranking of input variables according to their discriminating power, and the training process of the NN follow closely the procedures used in previous ATLAS publications about t-channel single top-quark production [9, 10].

The input variables used for the NN are determined by a study in which the expected uncertainties in the cross-section measurements are computed for different sets of variables. The procedure starts from an initial set of 17 variables used in previous analyses [9, 10]. These variables are ranked based on the algorithm described in Ref. [9]. One variable after the other is removed from the network according to the ranking, starting with the lowest-ranked one, followed by the next-lowest-ranked one, and so forth. In each iteration step the full analysis is performed and the expected uncertainty of the measurement is determined. As a result of the study, it is found that the reduction from the set of six highest-ranking variables to a set of five highest-ranking variables leads to a significant increase in the uncertainty in the cross-sections. Finally, the seven highest-ranking input variables are chosen, in order to avoid sudden changes in the uncertainty due to statistical fluctuations. The input variables to the NN and their definitions are given in Table 2.

Table 2.

The seven input variables to the NN ordered by their discriminating power. The jet that is not b-tagged is referred to as untagged jet

Variable symbol Definition
m(jb) The invariant mass of the untagged jet (j) and the b-tagged jet (b)
|η(j)| The absolute value of the pseudorapidity of the untagged jet
m(νb) The invariant mass of the reconstructed top quark
mT(ETmiss) The transverse mass of the lepton–ETmiss system, as defined in Eq. (2)
|Δη(ν,b)| The absolute value of Δη between the reconstructed W boson and the b-tagged jet
m(b) The invariant mass of the charged lepton () and the b-tagged jet
cosθ(,j) The cosine of the angle, θ, between the charged lepton and the untagged jet in the rest frame of the reconstructed top quark

The separation between signal and the two most important backgrounds, i.e. the top-quark background and the W + jets background, is illustrated in Fig. 3 for the two most discriminating variables.

Fig. 3.

Fig. 3

Probability densities of the two most discriminating input variables to the NN: a the invariant mass m(jb) of the untagged jet and the b-tagged jet, and b the absolute value of the pseudorapidity of the untagged jet |η(j)|. The distributions are shown for the tq signal process, the W+ + jets background and the top-quark background in the + SR. Events beyond the x-axis range are included in the last bin

The training of the NN is done with a sample of simulated events that comprises events with leptons of positive and negative charge. This approach gives the same sensitivity as a scenario in which separate NNs are trained in the + SR and in the - SR. The modelling of the input variables is checked in the W + jets VR and in the tt¯ VR; see Sect. 5 for the definition. In the tt¯ VR both jets are b-tagged, which poses the question how to define variables which are using the untagged jet in the SR. The two b-jets are sorted in |η| and the jet with the highest |η| is assigned to mimic the untagged jet of the SR. The distributions of all input variables are found to be well modelled in the VRs.

In Fig. 4, the probability densities of the resulting ONN distributions are shown for the signal, the top-quark background, and the W + jets  background.

Fig. 4.

Fig. 4

Probability densities of the NN discriminants in the signal region (SR) for the tq and t¯q signal processes, the W + jets background and the top-quark background: a in the + SR and b in the - SR

The modelling of collision data with simulated events is further tested by applying the NNs in the validation regions. The corresponding distributions are shown in Fig. 5. Good agreement between the model and the measured distributions is found.

Fig. 5.

Fig. 5

Observed ONN distributions (a, b) in the W + jets VR and (c, d) in the tt¯ VR compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fits of the ETmiss distributions as described in Sect. 6. The hatched uncertainty band represents the uncertainty in the pre-fit process cross-sections and the bin-by-bin MC statistical uncertainty, added in quadrature. The lower panels show the ratio of the observed to the expected number of events in each bin

Systematic uncertainties

Many sources of systematic uncertainty affect the individual top-quark and top-antiquark cross-section measurements and their ratio. The uncertainties are split into the following categories:

Object modelling Systematic uncertainties due to the residual differences between data and MC simulation, for reconstructed jets, electrons and muons after calibration, and uncertainties in corrective scale factors are propagated through the entire analysis. The main source of object modelling uncertainty is the jet energy scale (JES).

Uncertainties in the lepton trigger, reconstruction, and selection efficiencies in simulations are estimated from measurements of the efficiency using Z+- decays. To evaluate uncertainties in the lepton momentum scale and resolution, the same processes are used [73]. The uncertainty in the charge misidentification rates was studied and found to be negligible for this analysis.

The jet energy scale was derived using information from test-beam data, LHC collision data and simulation. Its uncertainty increases with η and decreases with the pT of the reconstructed jet [53].

The JES uncertainty has various components originating from the calibration method, the calorimeter response, the detector simulation, and the specific choice of parameters in the parton shower and fragmentation models employed in the MC event generator. Additional contributions come from the modelling of pile-up effects, differences between b-quark-induced jets and light-quark or gluon-induced jets. Included in the JES components are also uncertainties in the flavour composition of the jets and the calorimeter response to jets of different flavours. Both JES flavour uncertainties are reduced by using actual gluon-fractions of the untagged jet obtained from simulated signal samples. A parameterisation with 22 uncorrelated components is used, as described in Ref. [53].

Small uncertainties arise from the modelling of the jet energy resolution and the missing transverse momentum, which accounts for contributions of calorimeter cells not matched to any jets, low-pT jets, and pile-up. The effect of uncertainties associated with the jet-vertex fraction is also considered for each jet.

Since the analysis makes use of b-tagging, the uncertainties in the b- and c-tagging efficiencies and the mistag rates [74, 75] are taken into account and called flavour tagging uncertainty. Since the interaction of matter and antimatter with the detector material is different, the difference in the b-tagging efficiency between jets initiated by a b-quark and a b-antiquark is estimated and results to be 1% based on simulated tq and t¯q events .

Monte Carlo generators and parton densities Systematic uncertainties from MC modelling are estimated by comparing different generators and varying parameters for the event generation. These uncertainties are estimated for all processes involving top quarks, and taken to be correlated among the tq and t¯q processes and uncorrelated between these two and the top-quark background (tt¯, Wt, tb¯, and t¯b).

The uncertainty due to the choice of factorisation scale and renormalisation scale in the ME computation of the MC generators is estimated by varying these scales independently by factors of one half and two using the Powheg-Box generator. In addition, a different set of tuned parameters of the Pythia parton shower with modified αS is used to match the scale variation in the ME. The detailed list of modified parameters is given in Ref. [36]. The uncertainty is defined by the envelope of all independent variations.

Systematic uncertainties in the matching of the NLO matrix calculation and the parton shower are estimated by comparing samples produced with MC@NLO and with Powheg-Box, in both cases interfaced to the Herwig parton shower. For the tq and t¯q processes, MadGraph5_aMC@NLO is used instead of MC@NLO.

The uncertainty from the parton shower and hadronisation modelling is estimated by comparing samples produced with Powheg-Box  + Herwig and Powheg-Box  + Pythia.

Systematic uncertainties related to the PDFs are taken into account for all processes, except for the Z + jets, due to the small yield, and multijet contributions. The uncertainty is estimated following the PDF4LHC recommendation [76], using the PDF4LHC15_NLO PDF set. In addition, the acceptance difference between PDF4LHC15_NLO and CT10 is considered, since the latter PDF set is not covered by the uncertainty obtained with PDF4LHC15_NLO. The total PDF uncertainties are dominated by the acceptance differences between CT10 and PDF4LHC15_NLO. For the two signal processes the correlation coefficient of the total PDF uncertainties is found to be close to one.

Modelling uncertainties in the W + jets sample are investigated using particle-level distributions obtained with the Sherpa event generator by varying simultaneously the factorisation and renormalisation scales. The corresponding fractional changes with respect to the nominal particle-level pT(W) distribution are applied to the reconstructed pT(W) distribution and modified ONN distributions are obtained. The effect on the measured t-channel cross section is found to be negligible.

Finally, the MC statistical uncertainty is included.

Background normalisation The uncertainties in the normalisation of the various background processes are estimated by using the uncertainties in the theoretical cross-section predictions as detailed in Sect. 6.

For the W + jets and Z + jets backgrounds, an uncertainty of 21% is assigned. This uncertainty is estimated based on parameter variations in the generation of the Sherpa samples. It was found that a correlated variation of the factorisation and renormalisation scales has the biggest impact on the kinematic distributions and produces variations covering the unfolded Z / W + jets data and their uncertainties [77].

The multijet background estimate has an uncertainty of 15%, based on comparisons of the default method with the yield obtained with the matrix method [69]. Additionally an uncertainty in the shape of distributions is defined in the same way.

Luminosity The absolute luminosity scale is derived from beam-separation scans performed in November 2012. The uncertainty in the integrated luminosity is 1.9% [29].

Fiducial and total cross-section measurements

The signal yields ν^(tq) and ν^(t¯q) (see Eq. (4)) are extracted by performing a binned maximum-likelihood fit to the ONN distributions in the + SR and in the - SR. The production of tq and t¯q are treated independently. The signal rates, the rate of the combined top-quark background (tt¯, Wt, tb¯, and t¯b), and the rate of the combined W + light-jets, W+cc¯, and W+bb¯ background, are fitted simultaneously. The rates of W++ jets and W-+ jets are independent parameters in the fit. The event yields of the multijet background and the Z,VV+jets background are fixed to the estimates given in Table 1. The multijet background is determined in a data-driven way, see Sect. 6, and is therefore not subject to the fit of the signal yields. The Z,VV+jets background is relatively small and cannot be further constrained by the fit.

The maximum-likelihood function is given by the product of Poisson probability terms for the individual histogram bins (see Ref. [9]). Gaussian prior probability distributions are included multiplicatively in the maximum-likelihood function to constrain the background rates, which are subject to the fit, to their predictions given the associated uncertainties. The event yields estimated in the fit are given in Table 3.

Table 3.

Event yields for the different processes estimated with the fit to the ONN distribution compared to the numbers of observed events. Only the statistical uncertainties are quoted. The Z,VV+jets contributions and the multijet background are fixed in the fit; therefore no uncertainty is quoted for these processes

Process ν^(+) ν^(-)
tq 11,800 ± 200 17 ± 1
t¯q 11 ± 1 6920 ± 170
tt¯,Wt,tb¯/t¯b 19,300 ± 740 18,900 ± 730
W++ jets 18,800 ± 780 48 ± 2
W-+ jets 23 ± 1 13,100 ± 740
Z,VV+jets 1290 1190
Multijet 4520 4520
Total estimated 55,800 ± 1100 44,700 ± 1100
Data 55,800 44,687

In Fig. 6, the observed ONN distributions are shown and are compared to the compound model of signal and background normalised to the fit result.

Fig. 6.

Fig. 6

Observed ONN distributions in a the + SR and in b the - SR compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fit to the discriminants. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature. The lower panels show the ratio of the observed to the expected number of events in each bin to illustrate the goodness-of-fit.

Figure 7 displays the observed distributions of the three most discriminating variables compared to the distributions obtained with simulated events normalised to the fit result. Differences between data and prediction are covered by the normalisation uncertainty of the different fitted processes.

Fig. 7.

Fig. 7

Observed distributions of the three most important input variables to the NN in the SR compared to the model obtained with simulated events. The definitions of the variables can be found in Table 2. The simulated distributions are normalised to the event rates obtained by the maximum-likelihood fit to the NN discriminants. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature. The lower panels show the ratio of the observed to the expected number of events in each bin to illustrate the goodness-of-fit. Events beyond the x-axis range in (a), (b), (e) and (f)

Since single top-quarks are produced via the charged–current weak interaction (W-boson exchange), they are polarised. The polarisation is most prominently visible in the distribution of cosθ(,j) shown in Fig. 8. The good modelling of the observed distribution of this characteristic variable by simulated distributions scaled to the fitted event rates serves as further confirmation of the fit result.

Fig. 8.

Fig. 8

Observed distributions of cosθ(,j) in a the + SR and in b the - SR compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fit to the ONN distributions. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature. The lower panels show the ratio of the observed to the expected number of events in each bin to illustrate the goodness-of-fit.

Fiducial cross-section measurements

The fiducial cross-sections are calculated using Eq. (6), yielding

σfid(tq)=9.78±0.16(stat.)±0.52(syst.)±0.19(lumi.)pb=9.78±0.57pb 8

and

σfid(t¯q)=5.77±0.14(stat.)±0.41(syst.)±0.11(lumi.)pb=5.77±0.45pb. 9

The uncertainties in the measured expectation values of the number of signal events, ν^(tq) and ν^(t¯q) in Eq. (6), are obtained from pseudo-experiments, employing the same technique as in Ref. [10], and are propagated to the measured cross-sections. The systematic uncertainties discussed in Sect. 9 cause variations of the signal acceptance, the background rates and the shape of the NN discriminant. Only significant shape uncertainties are taken into account in the statistical analysis. Shape uncertainties are considered significant if their magnitude exceeds the statistical uncertainty in at least one bin of the ONN distribution. In order to dampen statistical fluctuations a median filter is applied to the distribution of the bin-wise relative uncertainty. The filter uses a five-bin-wide sliding window and is by construction not applied to the first and the last two bins of a histogram. After applying this procedure, shape uncertainties are considered for the following sources: two JES uncertainty components, jet energy resolution, ETmiss modelling, the modelling of the multijet background, and all MC-generator-related uncertainties.

Since the tq and t¯q production cross-sections are measured in a fiducial region, systematic uncertainties in the event rates affect only Nsel/Nfid  in Eq. (6), thereby reducing the uncertainties related to the choice of PDF, signal MC generator and parton-shower by about 1 percentage point each. The uncertainties in the scale choice of the signal generator and the NLO matching are reduced by about 2 percentage points each. Contributions of the various sources of systematic uncertainty to the measured values of σfid(tq) and σfid(t¯q) are shown in Table 4.

Table 4.

Detailed list of the contribution from each source of uncertainty to the total uncertainty in the measured values of σfid(tq) and σfid(t¯q). The estimation of the systematic uncertainties has a statistical uncertainty of 0.3%. Uncertainties contributing less than 0.5% are marked with ‘<0.5

Source Δσfid(tq)/σfid(tq) Δσfid(t¯q)/σfid(t¯q)
(%) (%)
Data statistics ±1.7 ±2.5
Monte Carlo statistics ±1.0 ±1.4
Background normalisation <0.5 <0.5
Background modelling ±1.0 ±1.6
Lepton reconstruction ±2.1 ±2.5
Jet reconstruction ±1.2 ±1.5
Jet energy scale ±3.1 ±3.6
Flavour tagging ±1.5 ±1.8
ETmiss modelling ±1.1 ±1.6
b/b¯ tagging efficiency ±0.9 ±0.9
PDF ±1.3 ±2.2
tq (t¯q) NLO matching ±0.5 <0.5
tq (t¯q) parton shower ±1.1 ±0.8
tq (t¯q) scale variations ±2.0 ±1.7
tt¯ NLO matching ±2.1 ±4.3
tt¯ parton shower ±0.8 ±2.5
tt¯ scale variations <0.5 <0.5
Luminosity ±1.9 ±1.9
Total systematic ±5.6 ±7.3
Total (stat.  +  syst.) ±5.8 ±7.8

The relative combined uncertainties, including the statistical and systematic uncertainties, are ± 5.8% for σfid(tq) and ± 7.8% for σfid(t¯q). The three largest sources of uncertainty are the uncertainty in the JES calibration, the choice of matching method used for the NLO generator of the top-quark background and the uncertainty in the lepton reconstruction.

Figure 9 shows the measured fiducial cross-sections in comparison to the predictions by the NLO MC generators Powheg-Box and MadGraph5_aMC@NLO combined with the parton-shower programs Pythia 6  (v6.428), Pythia 8 (v8.2) [32], Herwig (v6.5.20) and Herwig 7 (v7.0.1) [78].

Fig. 9.

Fig. 9

Measured t-channel a single-top-quark and b single-top-antiquark fiducial cross-sections compared to predictions by the NLO MC generators Powheg-Box and MadGraph5_aMC@NLO in the four-flavour scheme (4FS) and five-flavour scheme (5FS) combined with different parton-shower models. The uncertainties in the predictions include the uncertainty due to the scale choice using the method of independent restricted scale variations and the intra-PDF uncertainty in the CT10 PDF set

The 4FS and the 5FS are explored. The predictions are computed with the CT10 PDF set and include the uncertainty in the scale choice using the method of independent restricted scale variations as described in Sect. 1 and the uncertainty in the PDFs, using the intra-PDF uncertainties of CT10. The predictions based on the 5FS feature strongly reduced scale uncertainties compared to those based on the 4FS. When computing the predictions of σfid based on Eq. (7), the uncertainties in the predictions of σtot are treated as correlated with the scale and PDF uncertainties in Afid. For the Pythia 6 parton shower the value of αS in the set of tuned parameters is also modified consistently with the change of the scale in the ME. PDF uncertainties are obtained by reweighting to eigenvectors of their respective error sets. The predictions of all setups agree with each other and also with the measured values.

Total cross-section measurements

Using the predictions of Afid by different MC generators, the fiducial cross-sections are extrapolated to the full phase space and compared to fixed-order calculations. The PDF and scale uncertainties in Afid are included and correlated with the PDF and scale uncertainty in σfid. Figure 10 shows the total cross-sections obtained by the extrapolation, based on Afid from Powheg-Box and MadGraph5_aMC@NLO for the 4FS and 5FS and for different parton-shower MC programs. Since the extrapolation from the fiducial to the total cross-sections is performed for different MC generators, the uncertainty in the NLO-matching method and the uncertainty due to the choice of the parton-shower program are not considered for the extrapolation part, but these uncertainties are kept for the fiducial cross-sections entering the extrapolation. The measured values are compared with fixed-order perturbative QCD calculations [14, 15, 22, 23].

Fig. 10.

Fig. 10

Extrapolated t-channel a single-top-quark and b single-top-antiquark production cross-sections for different MC-generator setups compared to fixed-order NLO calculations. For the three calculations, the uncertainty from the renormalisation and factorisation scales are indicated in darker shading, and the total uncertainties, including the renormalisation and factorisation scale as well as the PDF + αS uncertainties, are indicated in lighter shading. For the NNLO prediction, only the renormalisation and factorisation scale uncertainty is provided in Ref. [22]. For comparison, the PDF + αS uncertainties from the NLO prediction [14] are added to the NNLO renormalisation and factorisation scale uncertainty reflected in the lighter shaded uncertainty band. For this comparison, the uncertainty in the extrapolation does not include the contribution from the NLO-matching method and from the choice of parton-shower model

For the default generator Powheg-Box + Pythia 6 the fiducial acceptances are determined to be Afid(tq)=(17.26-0.21+0.46)% and Afid(t¯q)=(17.52-0.20+0.45)%, thereby yielding

σtot(tq)=56.7±0.9(stat.)±2.7(exp.)-1.7+2.7(scale)±0.4(PDF)±1.0(NLO-matching method)±1.1(parton shower)±1.1(lumi.)pb=56.7-3.8+4.3pb 10

and

σtot(t¯q)=32.9±0.8(stat.)±2.3(exp.)-0.8+1.4(scale)±0.3(PDF)±-0.6+0.7(NLO-matching method)±0.6(parton shower)±0.6(lumi.)pb=32.9-2.7+3.0pb. 11

The experimental systematic uncertainty (exp.) contains the uncertainty in the fiducial cross-sections, without the scale, PDF, NLO-matching method and parton-shower components, which are quoted separately and include both the uncertainties in σfid and Afid. The relative total uncertainty is -6.7+7.6% for σtot(tq) and -8.4+9.1% for σtot(t¯q).

The total inclusive cross-section is obtained by adding σtot(tq) and σtot(t¯q) in Eqs. (10) and (11):

σtot(tq+t¯q)=89.6±1.2(stat.)±5.1(exp.)-2.5+4.1(scale)±0.7(PDF)±-1.6+1.7(NLO-matching method)±1.6(parton shower)±1.7(lumi.)pb=89.6-6.3+7.1pb. 12

The systematic uncertainties are assumed to be 100% correlated between tq and t¯q, except for the MC statistical uncertainty. Therefore, the uncertainties are added linearly component by component. The data statistical uncertainties of σtot(tq) and σtot(t¯q) are added in quadrature to obtain the data statistical uncertainty of σtot(tq+t¯q). The same is done for the MC statistical uncertainty. The experimental systematic uncertainty (exp.) contains the uncertainty in the fiducial cross-sections, without the scale, PDF, NLO-matching method and parton-shower components.

Rt measurement

The ratio of the measured total cross-sections for top-quark and top-antiquark production in the t-channel is determined to be

Rt=σtot(tq)σtot(t¯q)=1.72±0.05(stat.)±0.07(exp.)=1.72±0.09. 13

The correlation of uncertainties in σtot(tq) and σtot(t¯q) is taken into account in the pseudo-experiments used to determine the uncertainties in ν^(tq) and ν^(t¯q), see Sect. 10.1. Significant sources of systematic uncertainty in the measured values of Rt are shown in Table 5.

Table 5.

Significant contributions to the total relative uncertainty in the measured value of Rt. The estimation of the systematic uncertainties has a statistical uncertainty of 0.3%. Uncertainties contributing less than 0.5% are not shown

Source ΔRt/Rt (%)
Data statistics ±3.0
Monte Carlo statistics ±1.8
Background modelling ±0.7
Jet reconstruction ±0.5
ETmiss modelling ±0.6
tq (t¯q) NLO matching ±0.5
tq (t¯q) scale variations ±0.7
tt¯ NLO matching ±2.3
tt¯ parton shower ±1.7
PDF ±0.7
Total systematic ±3.9
Total (stat. + syst.) ±5.0

Figure 11 compares the observed value of Rt to predictions based on several different PDFs. For this comparison the uncertainty in the measured Rt value does not include the PDF components. The uncertainties in the predictions include the uncertainty in the renormalisation and factorisation scales and the combined internal PDF and αS uncertainty. Most predictions agree at the 1σ level with the measured value; only the prediction based on ABM (5 flav.) [79] is about 2.5σ above the measurement. The main differences of the ABM PDF set compared to the other sets are the treatment of the b-quark PDF and the value of αS.

Fig. 11.

Fig. 11

Predicted values of Rt=σtot(tq)/σtot(t¯q) calculated with HatHor  [14] at NLO accuracy in QCD [15] in the 5FS using different NLO PDF sets [7985] compared to the measured value. The error bars on the predictions include the uncertainty in the renormalisation and factorisation scales and the combined internal PDF and αS uncertainty. The dashed black line indicates the central value of the measured Rt value. The combined statistical and systematic uncertainty of the measurement is shown in green, while the statistical uncertainty is represented by the yellow error band. The uncertainty in the measured Rt value does not include the PDF components for this comparison

Estimation of top-quark mass dependence

The t-channel cross-section results given above are obtained for a top-quark mass of mt=172.5GeV. The dependence of the measured cross-sections on mt is estimated by repeating the measurement with different mass assumptions. The MC samples for all processes containing top quarks are reproduced for six different values of mt, namely 165, 167.5, 170, 175, 177.5 and 180 GeV. The samples comprise the tq and t¯q signal as well as the background samples for tt¯,Wt,tb¯ production. The dependences of the resulting cross-sections on mt are fitted with a first-order polynomial, for which the constant term is given by the central value at mt=172.5GeV

σ(mt)=σ(172.5GeV)+a·Δmt[GeV], 14

where Δmt=mt-172.5GeV. The fitted parameters a, the slopes, are given in Table 6 for all measured cross-sections.

Table 6.

Slopes a of the mass dependence of the measured cross-sections

Measurement apbGeV
σfid(tq) -0.06±0.01
σfid(t¯q) -0.04±0.01
σtot(tq) -0.59±0.08
σtot(t¯q) -0.37±0.06
σtot(tq+t¯q) -0.96±0.13

Determination of |Vtb|

Single top-quark production in the t-channel proceeds via a Wtb vertex and the measured cross-section is proportional to fLV2·|Vtb|2. In the SM, |Vtb| is very close to one and fLV is exactly one, but new-physics contributions could alter the value of fLV significantly. The determination of fLV·|Vtb| based on single-top-quark cross-section measurements is independent of assumptions about the number of quark generations and the unitarity of the CKM matrix. The only assumptions required are that |Vtb||Vtd|,|Vts| and that the Wtb interaction involves a left-handed weak coupling as in the SM.

The value of fLV2·|Vtb|2 is extracted by dividing the measured total inclusive cross-section σtot(tq+t¯q) by the SM expectation given in Eq. (1c). When calculating fLV2·|Vtb|2, the experimental and theoretical uncertainties are added in quadrature. The uncertainty in mt is also considered, assuming Δmt=±1GeV. The result obtained is

fLV·|Vtb|=1.029±0.007(stat.)±0.029(exp.)-0.014+0.023(scale)±0.004(PDF)±0.010(NLO-matching method)±0.009(parton shower)±0.010(lumi.)±0.005(mt)±0.024(theor.)=1.029±0.048. 15

The uncertainty in fLV·|Vtb| is broken down in the first terms, reflecting the uncertainties in the combined total cross-section, as well as the uncertainty in the top-quark mass and the uncertainty in the theoretical cross-section calculation. The result is in full agreement with the SM prediction. Restricting the range of |Vtb| to the interval [0, 1] and assuming fLV=1, as required by the SM, a lower limit on |Vtb| is extracted: |Vtb|>0.92 at 95% confidence level.

Differential cross-section measurements

The measured differential distributions are unfolded, so that they can be directly compared to theoretical predictions. Two sets of unfolded cross-sections are derived: particle level and parton level. Particle-level cross-sections are measured in the fiducial volume defined in Sect. 7. Parton-level cross-sections are measured in the whole kinematic range using the MC simulation to extrapolate from the acceptance phase space. Particle-level cross-sections are measured as a function of the transverse momentum, pT(t^), and absolute value of the rapidity, |y(t^)|, of the pseudo top quark and pseudo top antiquark. In addition, they are measured as a function of the transverse momentum, pT(j^), and the absolute value of the rapidity, |y(j^)|, of the accompanying jet in the t-channel exchange, by assuming this jet is the untagged jet in the event. Parton-level cross-sections are measured as a function of the transverse momentum, pT(t), and absolute value of the rapidity, |y(t)|, of the top quark and top antiquark.

Differential cross-sections are extracted from an event sample enriched in signal events, which is obtained by cutting on ONN. The cut value is set to ONN>0.8 (see Fig. 6), which achieves a good signal-to-background ratio and thereby reduces the impact of the systematic uncertainties on the backgrounds, while maintaining enough data events to keep the data statistical uncertainties at an acceptable level.

Table 7 lists the numbers of events after the selection, including the cut on ONN, separated into the + SR and the - SR. Both signal and backgrounds, except for the multijet background, are normalised to their fit value resulting from the binned maximum-likelihood fit to the whole ONN distribution, which was used to extract the total t-channel cross-sections described in Sect. 10. The multijet background normalisation is derived from the fit to the ETmiss distribution described in Sect. 6. Distributions of the three most discriminating input variables to the default NN (introduced in Sect. 8) after the cut on ONN are shown in Fig. 12.

Table 7.

Predicted (post-fit) and observed event yields for the signal region (SR), after the requirement on the neural network discriminant, ONN>0.8. The multijet background prediction is obtained from the fit to the ETmiss distribution described in Sect. 6, while all the other predictions and uncertainties are derived from the total cross-section measurement. An uncertainty of 0 means that the value is <0.5

Process + SR (ONN>0.8) - SR (ONN>0.8)
tq 4470 ± 180 5 ± 0
t¯q 3 ± 0 2270 ± 130
tt¯,Wt,tb¯/t¯b 754 ± 45 753 ± 45
W+ + jets 960 ± 190 1 ± 0
W- + jets 1 ± 0 610 ± 120
ZVV + jets 52 ± 10 60 ± 12
Multijet 291 ± 46 267 ± 39
Total estimated 6540 ± 270 3960 ± 190
Data 6567 4007

Fig. 12.

Fig. 12

Observed distributions of the first three input variables to the default neural network in the signal region (SR), after a cut of ONN>0.8 on the network output. The distributions are compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fit to the discriminants. The definitions of the variables can be found in Table 2. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature. Events beyond the x-axis range in a and b are included in the last bin. The lower panels show the ratio of the observed to the expected number of events in each bin to illustrate the goodness-of-fit

For the measurement of the |y(j^)| distribution, a second neural network (NN2) is trained omitting the variable |η(j)|, in order to reduce the distortion of the |y(j^)| distribution as a result of cutting on the NN output. The distribution of the neutral network output variable ONN2 is shown in Fig. 13 for both the + and - signal regions.

Fig. 13.

Fig. 13

Neural network output distribution (ONN2) of the neural network without |η(j)| normalised to the fit results of the default network for a the + and b the - signal region (SR). The distributions are compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fit to the discriminants. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature.

A cut ONN2>0.8 is placed on the NN output to select the events used in the unfolding. The event yields after the event selection with this network are shown in Table 8.

Table 8.

Predicted (post-fit) and observed event yields for the signal region (SR), after the requirement on the second neural network discriminant, ONN2>0.8. The multijet background prediction is obtained from the fit to the ETmiss distribution described in Sect. 6, while all the other predictions and uncertainties are taken from the total cross-section measurement. An uncertainty of 0 means that the value is <0.5

Process + SR (ONN2>0.8) - SR (ONN2>0.8)
tq 3440 ± 140 3 ± 0
t¯q 2 ± 0 1860 ± 100
tt¯,Wt,tb¯/t¯b 1072 ± 64 1057 ± 63
W+ + jets 770 ± 150 0 ± 0
W- + jets 0 ± 0 494 ± 99
ZVV + jets 43 ± 9 48 ± 10
Multijet 192 ± 30 186 ± 27
Total estimated 5520 ± 220 3650 ± 160
Data 5546 3647

Very good agreement between the data and the predictions can be seen for both networks, indicating that the variables are also well described in the region where signal dominates.

The measured differential distributions used in the unfolding are shown in Figs. 14 and 15.

Fig. 14.

Fig. 14

Measured distributions of (a, b) pT(νb) and (c, d) |y(νb)| for (a, c) + and (b, d) - events in the signal region (SR) after a cut of ONN>0.8. The distributions are compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fit to the discriminants. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature. The lower panels show the ratio of the observed to the expected number of events in each bin to illustrate the goodness-of-fit

Fig. 15.

Fig. 15

Measured distributions of (a, b) pT(j) and (c, d) |y(j)| at reconstruction level for (a, c) + and (b, d) - events in the signal region (SR) after a cut of ONN(ONN2)>0.8 The distributions are compared to the model obtained from simulated events. The simulated distributions are normalised to the event rates obtained by the fit to the discriminants. The hatched uncertainty band represents the total uncertainty in the rates of all processes after the fit and the bin-by-bin MC statistical uncertainty, added in quadrature. The lower panels show the ratio of the observed to the expected number of events in each bin to illustrate the goodness-of-fit

Normalised differential cross-sections are evaluated by dividing the cross-section in each bin by the sum of the cross-sections in all bins for a given variable. The uncertainty in the normalised cross-section in each bin is determined from the coherent variation of the cross-section in that bin and the total cross-section when a variation reflecting a systematic uncertainty is applied.

Unfolding technique

D’Agostini’s iterative approach [86], implemented in RooUnfold [87], is used to unfold the distributions. The method is based on picturing the problem with an “effect” and a “cause”. The number of reconstructed measured t-channel single-top-(anti)quark events in bin j is the effect, while the number of produced t-channel events in a pp collision in bin k, Nk, corresponds to the cause. As indicated, the bins of the measured distribution are labelled with j, while the bins of the generator-level distribution are labelled with k.

The unfolding starts from the reconstructed measured distributions. The aim is to correct these distributions for resolution and efficiency effects. The observed number of events in each bin j of the measured distribution can be described by:

Njdata=kMjkϵkLint·dσ^k+B^j, 16

where dσ^k is the estimated cross-section in each bin k, Mjk is the migration matrix, ϵk is the efficiency for an event to be selected in bin k and B^j is the sum of all background contributions.

The migration matrix describes the probability of migration of generator-level events in bin k to bin j after detector reconstruction of the event. Migration matrices, determined with the Powheg-Box + Pythia 6 MC sample, for pT(t^) and |y(t^)| at particle level and pT(t) and |y(t)| at parton level are shown in Figure 16.

Fig. 16.

Fig. 16

Migration matrices for a pT(t^), b pT(t), c |y(t^)| and d |y(t)|. a, c Particle level, while b and d are for parton level. The pseudo top quark or parton-level quark is shown on the y-axis and the reconstructed variable is shown on the x-axis

The advantage of unfolding to particle level can clearly be seen; the sizes of the off-diagonal elements in the particle-level migration matrices are much smaller, which makes the unfolding less sensitive to the effect of systematic uncertainties.

The efficiency, ϵk, includes signal acceptance, detector efficiencies due to e.g. trigger and b-tagging, as well as the efficiency of the cut on the NN output:

ϵk=Sksel,MCSktot,MC, 17

where Sktot,MC is the number of generated MC events in bin k and Sksel,MC is the number of selected MC events in bin k after all cuts are applied.

B^j is calculated from the estimated number of background events, ν~jb, resulting from the binned maximum-likelihood fit of the total cross-section measurement:

B^j=ball backgroundν~jb. 18

Unfolding to particle level

The reconstructed observables of both top quarks and untagged jets are unfolded to the particle level within the fiducial volume. The detector efficiency and resolution effects are corrected using

ν^kptcl=Ckptcl!recojMjk-1Cjreco!ptcl(Njdata-B^j), 19

where ν^kptcl is the measured expectation value for the number of signal events at particle level in bin k of the fiducial volume, Mjk-1 represents the Bayesian unfolding procedure, and Cjreco!ptcl is a correction factor for signal events that pass the reconstruction-level selection but not the particle-level selection. It is defined as

Cjreco!ptcl=Sjreco-Sjreco!ptclSjreco, 20

where Sjreco is the number of reconstructed signal events in bin j and Sjreco!ptcl is the number of events that pass the reconstruction-level selection but not the particle-level selection. Ckptcl!reco is a correction factor that accounts for signal events that pass the particle-level selection but not the reconstruction-level selection:

Ckptcl!reco=1ϵk=SkptclSkptcl-Skptcl!reco, 21

where Skptcl is the number of signal events at particle level and Sjptcl!reco is the number of events that pass the particle-level selection but not the reconstruction-level selection. The cross-section in bin k is evaluated from

dσ^k=ν^kptcl/Lint. 22

For following iterations, the estimated number of events, ν^kptcl, is used as input.

Unfolding to parton level

The differential cross-section at parton level is determined in a way similar to that for particle level using

dσ^k=jMjk-1(Njdata-B^j)ϵkLint, 23

which can be obtained from Eqs. (19) and (22) by replacing the particle-level quantity Ckptcl!reco by 1/ϵk and by omitting Cjreco!ptcl, since the parton-level cross-section is fully inclusive and such a correction is not needed.

Binning and convergence of unfolding

The migration matrices and efficiencies determined with the Powheg-Box + Pythia 6 MC sample are used to extract the central values of the differential cross-sections. A number of criteria are used to optimise the binning chosen for each differential cross-section. These include the resolution of the measured quantity, the number of events available in the bin and the size of the diagonal elements in the migration matrix. In general, the same binning is used for tq and t¯q cross-sections, except in a few cases when two bins are combined for t¯q cross-sections due to large statistical uncertainties. The resolution of kinematic quantities of the pseudo top quark is better than the resolution of the corresponding quantities at parton level. Hence more bins are usually used for the particle-level cross-sections.

The number of iterations needed before the unfolding converges depends on both the shape of the distribution being measured and the resolution of the variable. The cross-sections as a function of rapidity usually require fewer iterations before convergence, while the cross-sections as a function of pT(t^) need the largest number of iterations, as the cross-section falls steeply and has a peak at low pT. The criterion chosen for convergence is that the bias of the unfolded cross-section, i.e. the difference between the unfolded result and the true distribution, should be less than 1% in all bins. The bias is determined from the difference between the unfolded result using the MadGraph5_aMC@NLO + Herwig MC sample for unfolding and its generated distribution, while using the nominal Powheg-Box + Pythia 6 MC sample for the migration matrix and efficiency. Depending on the distribution being unfolded between three and nine iterations are used.

Uncertainties

This section describes how the statistical and systematic uncertainties are propagated through the unfolding. The uncertainty from each source is estimated individually and separately for signal and background, taking correlations into account. In addition, an uncertainty is assigned to the unfolding process. All uncertainties are added in quadrature in each bin.

Systematic uncertainties enter the analysis in several places. First, they affect the background yield and therefore the expected signal-to-background ratio. The expected background is subtracted from data leading to a change in the input to the unfolding. The migration matrix and differential efficiency measured using the signal MC sample are also affected by systematic uncertainties.

For uncertainties associated with the modelling of the t-channel process, the bias is taken as the uncertainty. The bias is defined as the difference between the measured unfolded cross-section using a particular combination of signal, migration matrix and efficiency, and the generator-level cross-section.

Statistical uncertainties

The statistical uncertainty of the unfolded data result is determined by running over an ensemble of pseudo-experiments, varying the content of each bin according to its expected statistical uncertainty. Each pseudo-experiment is unfolded and the spread (RMS) of the result in each bin is taken as the measure of the statistical uncertainty.

For the statistical uncertainty due to the size of the signal MC sample, the migration matrix and efficiency are fluctuated in pseudo-experiments with a Gaussian function whose spread corresponds to the number of MC events in the sample. The unfolding is performed with each varied migration matrix and efficiency. Again the RMS of the unfolded results in each bin is taken as the uncertainty.

Systematic uncertainties

The list of systematic uncertainties considered and their definition is given in Sect. 9. Different uncertainties need to be treated in different ways in the unfolding. If an uncertainty is correlated between signal and background, the effect is added linearly. The methods used are described below.

Detector-related uncertainties affecting the signal The effects of the detector-related uncertainties affecting the signal are evaluated by unfolding the varied MC signal distributions using the nominal migration matrix and efficiency. The difference from the unfolded distribution using the nominal signal MC sample as an input is taken as the uncertainty and propagated binwise to the measurement. Thus, rate and shape uncertainties are taken into account simultaneously.

PDF uncertainties affecting the signal The effect of the PDF uncertainty on the t-channel MC simulation is evaluated by unfolding the MC signal distribution, using migration matrices and efficiencies created from different PDF MC signal sets: CT10 and the PDF4LHC15 combined PDF set. The bias of each PDF is then calculated and the largest difference is taken as both the negative and positive PDF uncertainty bin by bin. The difference between the bias of each eigenvector of the PDF4LHC15 and the bias of the central PDF4LHC15 is taken as an additional uncertainty.

Signal modelling uncertainties To evaluate the effect of different MC generators for the t-channel production, the MC signal distribution is unfolded using a migration matrix and efficiency created using either the MC signal of MadGraph5_aMC@NLO + Herwig or the MC signal of Powheg-Box + Herwig. The full difference between the bias of MadGraph5_aMC@NLO + Herwig and the bias of Powheg-Box + Herwig is assigned as systematic uncertainty. For the uncertainty associated with the parton-shower model, the full difference between the bias of Powheg-Box + Pythia 6 and the bias of Powheg-Box + Herwig is assigned as the final uncertainty. The bias of the up/down scale choice with Powheg-Box + Pythia 6 is used to estimate the uncertainty due to the scale variations.

Uncertainties in background rates The normalisation uncertainties of all backgrounds are taken from the total cross-section measurements. These uncertainties are listed in Table 9. The uncertainty in the sum of backgrounds is estimated using pseudo-experiments, and thus takes correlations into account. The rate uncertainty of the background sum is applied by varying the background sum up and down by the amount estimated in the total fiducial cross-section measurements. The modified background-subtracted data is unfolded with the nominal migration matrix and efficiency. The difference from the default unfolded distribution is taken as the rate uncertainty.

Table 9.

Uncertainties in the normalisations of the different backgrounds for all processes, as derived from the total cross-section measurement

Process ΔN/N (%)
tt¯,Wt,tb¯ 7.5
W+ + jets 7.1
W- + jets 7.3
ZVV + jets 20
Multijets 16

Uncertainties in shape of backgrounds The uncertainty in the differential cross-sections due to the uncertainty in the shape of the background is determined by evaluating the effect of the uncertainty in the NN output for each background contribution. Some of the systematic uncertainties have a very small effect on the analysis. Hence, the shifts due to the variations reflecting the systematic uncertainties are compared to the MC statistical error in each bin of each distribution, in order to avoid counting statistical fluctuations as a systematic uncertainty. If the change in the bin content in at least two bins is larger than the MC statistical error in those bins, the background shape uncertainty is taken into account. The shifted backgrounds are subtracted from the data and the resulting distribution is unfolded using the nominal migration matrix and efficiency. The difference from the measured unfolded distribution in each bin is assigned as the systematic uncertainty due to shape. The main contribution to the shape uncertainty comes from the tt¯ modelling.

Unfolding uncertainty In order to estimate the uncertainty due to the unfolding method, the Powheg-Box + Pythia 6 sample is divided into two. One half is used to determine the migration matrix, while the other half is used to unfold the cross-section. The full difference between the unfolded MC t-channel distribution and the MC t-channel generator-level distribution is taken as the uncertainty in the unfolding process.

As a cross-check, the results are compared with using a bin-by-bin correction factor and the single value decomposition (SVD) method [88], which is an extension of a simple matrix inversion. Consistent results are found and no extra uncertainty is assigned.

Particle-level cross-sections

The absolute unfolded particle-level cross-sections for top quarks and top antiquarks as a function of pT(t^) are shown in Fig. 17, while the cross-sections as a function of |y(t^)| are shown in Fig. 18. The numerical values of both the absolute and normalised unfolded cross-sections are given in Tables 10, 11, 12, 13. The measurements are compared to MC predictions using the Powheg-Box and MadGraph5_aMC@NLO generators. Good agreement between the measured differential cross-sections and the predictions is seen. Separate predictions using Pythia or Herwig interfaced to Powheg-Box are shown. The ratio plots show that the hadronisation model has a very small effect on the predictions.

Fig. 17.

Fig. 17

Absolute unfolded differential cross-sections as a function of pT(t^) for a top quarks and b top antiquarks. The unfolded distributions are compared to various MC predictions. The vertical error bars on the data points denote the total uncertainty. The inner (yellow) band in the bottom part of each figure represents the statistical uncertainty of the measurement, and the outer (green) band the total uncertainty.

Fig. 18.

Fig. 18

Absolute unfolded differential cross-sections as a function of |y(t^)| for a top quarks and b top antiquarks. The unfolded distributions are compared to various MC predictions. The vertical error bars on the data points denote the total uncertainty. The inner (yellow) band in the bottom part of each figure represents the statistical uncertainty of the measurement, and the outer (green) band the total uncertainty.

Table 10.

Absolute and normalised unfolded differential tq production cross-section as a function of pT(t^) at particle level

pT(t^) dσ(tq)/dpT(t^) (1/σ)dσ(tq)/dpT(t^)
[GeV] [fb GeV-1] [10-3 GeV-1]
Stat. Syst. Stat. Syst.
0–35 38.0±3.1 +3.3/-3.4 3.85±0.29 +0.22/-0.22
35–50 120.9±8.4 +8.0/-8.2 12.24±0.82 +0.61/-0.59
50 - 75 125.2 ± 5.3 +7.7/-7.9 12.67 ± 0.49 +0.54/-0.54
75–100 68.1 ± 3.9 +5.1/-5.0 6.89 ± 0.38 +0.36/-0.34
100–150 27.5 ± 1.5 +2.1/-2.1 2.78 ± 0.15 +0.18/-0.18
150–200 7.55 ± 0.76 +0.67/-0.56 0.765 ± 0.076 +0.056/-0.046
200–300 1.50 ± 0.24 +0.23/-0.23 0.152 ± 0.023 +0.022/-0.022

Table 11.

Absolute and normalised unfolded differential t¯q production cross-section as a function of pT(t^) at particle level

pT(t^) dσ(t¯q)/dpT(t^) (1/σ)dσ(t¯q)/dpT(t^)
[GeV] [fb GeV-1] [10-3 GeV-1]
Stat. Syst. Stat. Syst.
0–35 22.5 ± 2.7 +2.5/-2.4 3.82 ± 0.44 +0.27/-0.24
35–50 85.6 ± 7.8 +7.2/-6.3 14.6 ± 1.3 +1.0/-0.8
50–75 84.7 ± 4.7 +5.4/-6.9 14.41 ± 0.74 +0.51/-0.81
75–100 30.9 ± 3.3 +4.6/-4.4 5.25 ± 0.54 +0.65/-0.62
100–150 14.4 ± 1.3 +1.2/-1.24 2.44 ± 0.21 +0.13/-0.13
150–300 1.35 ± 0.23 +0.35/-0.30 0.230 ± 0.038 +0.055/-0.046

Table 12.

Absolute and normalised unfolded differential tq production cross-section as a function of |y(t^)| at particle level

|y(t^)| dσ(tq)/d|y(t^)| (1/σ)dσ(tq)/d|y(t^)|
[pb] [10-3]
Stat. Syst. Stat. Syst.
0.00–0.15 9.00 ±0.45 +0.43/-0.43 914 ± 43 +19/-18
0.15–0.30 8.99 ±0.47 +0.47/-0.49 913 ± 46 +41/-43
0.30–0.45 8.15 ± 0.48 +0.59/-0.60 828 ± 46 +44/-46
0.45–0.70 6.88 ± 0.32 +0.38/-0.37 699 ± 30 +19/-17
0.70–1.00 5.70 ± 0.26 +0.49/-0.48 579 ± 24 +36/-36
1.00–1.30 3.47 ± 0.22 +0.26/-0.25 353 ± 21 +13/-11
1.30–2.20 1.61 ± 0.08 +0.11/-0.11 164 ± 8 +4/-4

Table 13.

Absolute and normalised unfolded differential t¯q production cross-section as a function of |y(t^)| at particle level

|y(t^)| dσ(t¯q)/d|y(t^)| (1/σ)dσ(t¯q)/d|y(t^)|
[pb] [10-3]
Stat. Syst. Stat. Syst.
0.00–0.15 6.65 ± 0.44 +0.50/-0.49 1145 ± 70 +57/-55
0.15–0.30 4.68 ± 0.43 +0.41/-0.43 806 ± 71 +51/-57
0.30–0.45 4.97 ± 0.42 +0.40/-0.39 856 ± 69 +44/-40
0.45–0.70 4.08 ± 0.29 +0.34/-0.33 703 ± 46 +38/-39
0.70–1.00 3.21 ± 0.23 +0.27/-0.27 553 ± 37 +28/-30
1.00–1.30 2.30 ± 0.20 +0.20/-0.20 396 ± 32 +17/-17
1.30–2.20 0.76 ± 0.07 +0.08/-0.07 132 ± 11 +8/-7

The absolute cross-sections for the untagged jet as a function of the same variables are shown in Figures 19 and 20 and both the absolute and normalised cross-sections are tabulated in Tables 14 ,15, 16, 17. The measurement as a function of |y(j^)| uses the neural network without |η(j)|, while all other measurements use the default network. The measured cross-sections are again well described by the predictions, although there is a tendency for the prediction to be somewhat harder than the data as a function of pT(j^).

Fig. 19.

Fig. 19

Absolute unfolded differential cross-sections as a function of pT(j^) for a top quarks b top antiquarks. The unfolded distributions are compared to various MC predictions. The vertical error bars on the data points denote the total uncertainty. The inner (yellow) band in the bottom part of each figure represents the statistical uncertainty of the measurement, and the outer (green) band the total uncertainty.

Fig. 20.

Fig. 20

Absolute unfolded differential cross-sections as a function of |y(j^)| for a top quarks and b top antiquarks. The unfolded distributions are compared to various MC predictions. The vertical error bars on the data points denote the total uncertainty. The inner (yellow) band in the bottom part of each figure represents the statistical uncertainty of the measurement, and the outer (green) band the total uncertainty.

Table 14.

Absolute and normalised unfolded differential tq production cross-section as a function of pT(j^) at particle level

pT(j^) dσ(tq)/dpT(j^) (1/σ)dσ(tq)/dpT(j^)
[GeV] [fb GeV-1] [10-3 GeV-1]
Stat. Syst. Stat. Syst.
30–45 199 ± 10 +18/-19 20.1 ± 0.8 +1.2/-1.2
45–60 151 ± 9 +13/-14 15.26 ± 0.85 +0.91/-0.94
60–75 102.3 ±7.0 +6.8/-5.8 10.36 ± 0.69 +0.46/-0.35
75–100 58.5 ± 3.5 +3.5/-3.9 5.92 ± 0.35 +0.24/-0.27
100–150 22.8 ± 1.3 +1.4/-1.4 2.31 ± 0.13 +0.11/-0.11
150–300 3.29 ± 0.26 +0.24/-0.22 0.333 ± 0.026 +0.019/-0.015

Table 15.

Absolute and normalised unfolded differential t¯q production cross-section as a function of pT(j^) at particle level

pT(j^) dσ(t¯q)/dpT(j^) (1/σ)dσ(t¯q)/dpT(j^)
[GeV] [fb GeV-1] [10-3 GeV-1]
Stat. Syst. Stat. Syst.
30–45 147 ± 9 +12/-12 25.0 ± 1.2 +1.1/-1.0
45–60 86.4 ± 7.8 +8.3/-8.5 14.7 ±1.3 +1.0/-1.0
60–75 54.2 ±6.2 +5.1/-6.0 9.21 ± 1.03 +0.68/-0.88
75–100 33.0 ± 3.1 +3.7/-3.9 5.62 ±0.51 +0.36/-0.41
100–150 10.7 ± 1.1 +1.3/-1.2 1.82 ± 0.19 +0.14/-0.11
150–300 1.36 ± 0.22 +0.26/-0.22 0.231 ± 0.036 +0.044/-0.038

Table 16.

Absolute and normalised unfolded differential tq production cross-section as a function of |y(j^)| at particle level

|y(j^)| dσ(tq)/d|y(j^)| (1/σ)dσ(tq)/d|y(j^)|
[pb] [10-3]
Stat. Syst. Stat. Syst.
0.0–1.2 1.62 ± 0.14 +0.28/-0.28 164 ± 12 +22/-22
1.2–1.7 2.40 ± 0.18 +0.22/-0.20 244 ± 17 +15/-11
1.7–2.2 2.21 ± 0.15 +0.19/-0.20 224 ± 15 +10/-11
2.2–2.7 3.72 ± 0.16 +0.19/-0.19 378 ± 16 +16/-16
2.7–3.3 3.23 ± 0.13 +0.16/-0.17 328 ± 13 +15/-15
3.3–4.5 1.50 ± 0.06 +0.10/-0.10 152.5 ± 6.0 +9.2/-9.3

Table 17.

Absolute and normalised unfolded differential t¯q production cross-section as a function of |y(j^)| at particle level

|y(j^)| dσ(t¯q)/d|y(j^)| (1/σ)dσ(t¯q)/d|y(j^)|
[pb] [10-3]
Stat. Syst. Stat. Syst.
0.0–1.2 1.17 ± 0.14 +0.27/-0.27 205 ± 20 +31/-31
1.2–1.7 1.39 ± 0.17 +0.18/-0.18 243 ± 27 +14/-16
1.7–2.2 1.85 ± 0.14 +0.16/-0.16 324 ± 25 +20/-17
2.2–2.7 1.73 ± 0.13 +0.12/-0.12 305 ± 22 +20/-19
2.7–3.3 1.70 ± 0.10 +0.12/-0.12 299 ± 19 +26/-26
3.3–4.5 0.655 ± 0.04 +0.053/-0.051 115 ± 8 +11/-11

In general, the main sources of uncertainty in the differential cross-sections are similar to those for the fiducial cross-section measurements: the JES calibration and uncertainties associated with the modelling of both the signal and the tt¯ background. The background normalisation uncertainty is typically about half of the total systematic uncertainty, while the statistical uncertainty in each bin is similar to the total systematic uncertainty for the absolute cross-section measurements. For the normalised cross-sections, the luminosity and b/b¯ efficiency uncertainties cancel and the size of many other systematic uncertainty contributions is reduced. Uncertainties due to the unfolding are small compared to the total uncertainty.

Parton-level cross-sections

Differential cross-sections for the top quark and antiquark at parton level are measured as a function of pT(t) and y(t). The absolute cross-sections are shown in Figs. 21 and 22 and the numerical values for both the absolute and normalised cross-sections are given in Tables 18, 19, 20, 21. The measured cross-sections are compared to both NLO QCD predictions as well as the same MC predictions used for the comparison of the particle-level cross-sections. A calculation at NLO + NNLL QCD is available for the top-quark pT  [89]. This is compared to the data in Fig. 21. All predictions agree well with the data, with the same tendency for almost all MC predictions to be somewhat harder than the data as a function of pT(t). The NLO + NNLL prediction describes the data better than the MC predictions as a function of pT(t).

Fig. 21.

Fig. 21

Absolute unfolded differential cross-sections as a function of pT(t) for a top quarks and b top antiquarks. The unfolded distributions are compared to QCD NLO and NLO + NNLL calculations as well as various MC predictions. The vertical error bars on the data points denote the total uncertainty. The dashed (red) line in the central distribution shows the NLO prediction calculated using MCFM. The dash-dot (blue) line is the NLO + NNLL prediction [25]. The bottom distribution compares the data with the MC predictions from Powheg-Box (orange dashed line) and MadGraph5_aMC@NLO (purple dash-dotted line). The inner (yellow) band in the bottom part of each figure represents the statistical uncertainty of the measurement, and the outer (green) band the total uncertainty.

Fig. 22.

Fig. 22

Absolute unfolded differential cross-sections as a function of |y(t)| for a top quarks and b top antiquarks. The unfolded distributions are compared to a QCD NLO calculation and various MC predictions The vertical error bars on the data points denote the total uncertainty. The dashed (red) line in the central distribution shows the NLO prediction calculated using MCFM. The bottom distribution compares the data with the MC predictions from Powheg-Box (orange dashed line) and MadGraph5_aMC@NLO (purple dash-dotted line). The inner (yellow) band in the bottom part of each figure represents the statistical uncertainty of the measurement, and the outer (green) band the total uncertainty

Table 18.

Absolute and normalised unfolded differential tq production cross-section as a function of pT(t) at parton level

pT(t) dσ(tq)/dpT(t) (1/σ)dσ(tq)/dpT(t)
[GeV] [fb GeV-1] [10-3 GeV-1]
Stat. Syst. Stat. Syst.
0–50 467 ± 25 +34/-39 8.57 ± 0.33 +0.32/-0.43
50–100 404 ± 15 +28/-27 7.42 ± 0.32 +0.47/-0.40
100–150 149 ± 10 +17/-18 2.73 ± 0.18 +0.27/-0.29
150–200 49.2 ± 6.3 +5.0/-4.1 0.90 ± 0.12 +0.08/-0.07
200–300 10.2 ± 1.9 +1.2/-1.3 0.187 ± 0.035 +0.019/-0.022

Table 19.

Absolute and normalised unfolded differential t¯q production cross-section as a function of pT(t) at parton level

pT(t) dσ(t¯q)/dpT(t) (1/σ)dσ(t¯q)/dpT(t)
[GeV] [fb GeV-1] [10-3 GeV-1]
Stat. Syst. Stat. Syst.
0–50 310 ± 21 +36/-35 9.67 ± 0.48 +0.77/-0.76
50–100 228 ± 13 +19/-20 7.11 ± 0.47 +0.49/-0.51
100–150 76 ± 9 +14/-14 2.36 ± 0.27 +0.45/-0.46
150–300 9.1 ± 1.8 +3.1/-2.6 0.284 ± 0.057 +0.089/-0.076

Table 20.

Absolute and normalised unfolded differential tq production cross-sections as a function of |y(t)| at parton level

|y(t)| dσ(tq)/d|y(t)| (1/σ)dσ(tq)/d|y(t)|
[pb] [10-3]
Stat. Syst. Stat. Syst.
0.0–0.3 32.7 ± 1.8 +2.5/-2.1 636 ± 35 +47/-39
0.3–0.7 31.5 ± 1.8 +2.2/-2.4 613 ± 34 +31/-33
0.7–1.3 25.3 ± 1.3 +1.9/-1.9 492 ± 24 +26/-27
1.3–2.2 15.4 ± 0.9 +1.2/-1.2 299 ± 14 +14/-15

Table 21.

Absolute and normalised unfolded differential t¯q production cross-sections as a function of |y(t)| at parton level

|y(t)| dσ(t¯q)/d|y(t)| (1/σ)dσ(t¯q)/d|y(t)|
[pb] [10-3]
Stat. Syst. Stat. Syst.
0.0–0.3 21.5 ± 1.7 +1.8/-1.9 714 ± 55 +41/-46
0.3–0.7 18.8 ± 1.6 +1.7/-1.7 626 ± 53 +46/-46
0.7–1.3 16.3 ± 1.2 +1.6/-1.6 543 ± 37 +44/-43
1.3–2.2 7.0 ± 0.8 +1.2/-1.1 233 ± 23 +30/-29

Conclusion

Measurements of t-channel single top-quark production using data collected by the ATLAS experiment in pp collisions at 8 TeV at the LHC are presented. The data set corresponds to an integrated luminosity of 20.2 fb-1. An artificial neural network is used to separate signal from background. Total and fiducial cross-sections are measured for both top quark and top antiquark production. The fiducial cross-section is measured with a precision of 5.8% (top quark) and 7.8% (top antiquark), respectively. In addition, the cross-section ratio of top-quark to top-antiquark production is measured, resulting in a precise value to compare with predictions, Rt=1.72±0.09. The total cross-section is used to extract the Wtb coupling: fLV·|Vtb|=1.029±0.048, which corresponds to |Vtb|>0.92 at the 95 % confidence level, when assuming fLV=1 and restricting the range of |Vtb| to the interval [0, 1].

Requiring a high value of the neural-network discriminant leads to relatively pure t-channel samples, which are used to measure differential cross-sections for both tq and t¯q production. Differential cross-sections as a function of the transverse momentum and absolute value of the rapidity of the top quark, the top antiquark, as well as the accompanying jet from the t-channel scattering are measured at particle level. The measurements of cross-sections as a function of the accompanying-jet transverse momentum and absolute value of the rapidity extend previous results, which only measured top-quark and top-antiquark distributions. Differential cross-sections as a function of the transverse momentum and rapidity of the top quark and top antiquark are also measured at parton level. All measurements are compared to different Monte Carlo predictions as well as to fixed-order QCD calculations where these are available. The SM predictions provide good descriptions of the data.

Acknowledgements

We thank CERN for the very successful operation of the LHC, as well as the support staff from our institutions without whom ATLAS could not be operated efficiently. We acknowledge the support of ANPCyT, Argentina; YerPhI, Armenia; ARC, Australia; BMWFW and FWF, Austria; ANAS, Azerbaijan; SSTC, Belarus; CNPq and FAPESP, Brazil; NSERC, NRC and CFI, Canada; CERN; CONICYT, Chile; CAS, MOST and NSFC, China; COLCIENCIAS, Colombia; MSMT CR, MPO CR and VSC CR, Czech Republic; DNRF and DNSRC, Denmark; IN2P3-CNRS, CEA-DSM/IRFU, France; SRNSF, Georgia; BMBF, HGF, and MPG, Germany; GSRT, Greece; RGC, Hong Kong SAR, China; ISF, I-CORE and Benoziyo Center, Israel; INFN, Italy; MEXT and JSPS, Japan; CNRST, Morocco; NWO, Netherlands; RCN, Norway; MNiSW and NCN, Poland; FCT, Portugal; MNE/IFA, Romania; MES of Russia and NRC KI, Russian Federation; JINR; MESTD, Serbia; MSSR, Slovakia; ARRS and MIZŠ, Slovenia; DST/NRF, South Africa; MINECO, Spain; SRC and Wallenberg Foundation, Sweden; SERI, SNSF and Cantons of Bern and Geneva, Switzerland; MOST, Taiwan; TAEK, Turkey; STFC, UK; DOE and NSF, USA. In addition, individual groups and members have received support from BCKDF, the Canada Council, CANARIE, CRC, Compute Canada, FQRNT, and the Ontario Innovation Trust, Canada; EPLANET, ERC, ERDF, FP7, Horizon 2020 and Marie Skłodowska-Curie Actions, European Union; Investissements d’Avenir Labex and Idex, ANR, Région Auvergne and Fondation Partager le Savoir, France; DFG and AvH Foundation, Germany; Herakleitos, Thales and Aristeia programmes co-financed by EU-ESF and the Greek NSRF; BSF, GIF and Minerva, Israel; BRF, Norway; CERCA Programme Generalitat de Catalunya, Generalitat Valenciana, Spain; the Royal Society and Leverhulme Trust, UK. The crucial computing support from all WLCG partners is acknowledged gratefully, in particular from CERN, the ATLAS Tier-1 facilities at TRIUMF (Canada), NDGF (Denmark, Norway, Sweden), CC-IN2P3 (France), KIT/GridKA (Germany), INFN-CNAF (Italy), NL-T1 (Netherlands), PIC (Spain), ASGC (Taiwan), RAL (UK) and BNL (USA), the Tier-2 facilities worldwide and large non-WLCG resource providers. Major contributors of computing resources are listed in Ref. [90].

Footnotes

1

Events involving Wτν decays with a subsequent decay of the τ lepton to either eνeντ or μνμντ are included in the signal.

2

ATLAS uses a right-handed coordinate system with its origin at the nominal interaction point (IP) in the centre of the detector and the z-axis along the beam pipe. The x-axis points from the IP to the centre of the LHC ring, and the y-axis points upwards. Cylindrical coordinates (r,ϕ) are used in the transverse plane, ϕ being the azimuthal angle around the z-axis. The pseudorapidity is defined in terms of the polar angle θ as η=-lntan(θ/2). Angular distance is measured in units of ΔR(Δη)2+(Δϕ)2.

3

The primary vertex is defined as the vertex with the largest pT2 of the associated tracks.

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