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. 2017 May 31;77(6):361. doi: 10.1140/epjc/s10052-017-4900-z

Measurements of the production cross section of a Z boson in association with jets in pp collisions at s=13 TeV with the ATLAS detector

M Aaboud 180, G Aad 115, B Abbott 144, J Abdallah 10, O Abdinov 14, B Abeloos 148, R Aben 138, 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 104, 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, G Anders 45, 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 1,128, 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 1,203, 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 1,113, 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 16, 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 45, 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 63, 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, 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, K Chen 198, 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 1,36, 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, G Compostella 131, 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 224, 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, 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 1,11, 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 11, E L Gkougkousis 148, 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, E Gornicki 62, 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, 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, A Hadef 115, S Hageböck 29, M Hagihara 214, Z Hajduk 62, H Hakobyan 1,232, 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, 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 18, 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, R R Hinman 18, M Hirose 71, D Hirschbuehl 230, 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, 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, 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 1,11, M Iodice 175, K Iordanidou 56, V Ippolito 81, N Ishijima 149, M Ishino 205, M Ishitsuka 207, R Ishmukhametov 142, C Issever 151, S Istin 22, F Ito 214, J M Iturbe Ponce 114, R Iuppa 210,211, W Iwanski 91, H Iwasaki 95, J M Izen 64, V Izzo 134, S Jabbar 3, B Jackson 154, P Jackson 1, V Jain 2, K B Jakobi 113, K Jakobs 71, S Jakobsen 45, T Jakoubek 166, D O Jamin 145, D K Jana 109, R Jansky 91, J Janssen 29, M Janus 79, P A Janus 60, G Jarlskog 111, N Javadov 94, T Javůrek 71, M Javurkova 71, F Jeanneau 182, L Jeanty 18, J Jejelava 75, G-Y Jeng 200, D Jennens 118, P Jenni 71, C Jeske 225, S Jézéquel 7, H Ji 228, J Jia 198, H Jiang 93, Y Jiang 52, Z Jiang 189, S Jiggins 108, J Jimenez Pena 222, S Jin 49, A Jinaru 38, O Jinnouchi 207, H Jivan 194, P Johansson 185, K A Johns 9, W J Johnson 184, K Jon-And 195,196, G Jones 225, R W L Jones 101, S Jones 9, T J Jones 104, J Jongmanns 82, P M Jorge 159,160, J Jovicevic 212, X Ju 228, A Juste Rozas 15, M K Köhler 227, A Kaczmarska 62, M Kado 148, H Kagan 142, M Kagan 189, S J Kahn 115, T Kaji 226, E Kajomovitz 68, C W Kalderon 151, A Kaluza 113, S Kama 63, A Kamenshchikov 169, N Kanaya 205, S Kaneti 43, L Kanjir 105, V A Kantserov 128, J Kanzaki 95, B Kaplan 141, L S Kaplan 228, A Kapliy 46, D Kar 194, K Karakostas 12, A Karamaoun 3, N Karastathis 12, M J Kareem 79, E Karentzos 12, M Karnevskiy 113, S N Karpov 94, Z M Karpova 94, K Karthik 141, V Kartvelishvili 101, A N Karyukhin 169, K Kasahara 214, L Kashif 228, R D Kass 142, A Kastanas 197, Y Kataoka 205, C Kato 205, A Katre 72, J Katzy 65, K Kawade 133, K Kawagoe 99, T Kawamoto 205, G Kawamura 79, V F Kazanin 140, R Keeler 224, R Kehoe 63, J S Keller 65, J J Kempster 107, H Keoshkerian 209, O Kepka 166, B P Kerševan 105, S Kersten 230, R A Keyes 117, M Khader 221, F Khalil-zada 14, A Khanov 145, A G Kharlamov 140, T Kharlamova 140, T J Khoo 72, V Khovanskiy 127, E Khramov 94, J Khubua 76, S Kido 96, C R Kilby 107, H Y Kim 10, S H Kim 214, Y K Kim 46, N Kimura 204, O M Kind 19, B T King 104, M King 222, J Kirk 170, A E Kiryunin 131, T Kishimoto 205, D 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221, P E Sidebo 197, E 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, 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 167, V Sorin 15, D Sosa 83, C L Sotiropoulou 156,157, R Soualah 217,219, A M Soukharev 140, D South 65, B C Sowden 107, S Spagnolo 102,103, M Spalla 156,157, M Spangenberg 225, F Spanò 107, D Sperlich 19, F Spettel 131, R Spighi 27, G Spigo 45, L A Spiller 118, M Spousta 168, R D St Denis 1,78, A Stabile 121, R Stamen 82, S Stamm 19, E Stanecka 62, R W Stanek 8, C Stanescu 175, M Stanescu-Bellu 65, M M Stanitzki 65, S Stapnes 150, E A Starchenko 169, G H Stark 46, J Stark 80, S H Stark 57, P Staroba 166, P Starovoitov 82, S Stärz 45, R Staszewski 62, P Steinberg 36, B Stelzer 188, H J Stelzer 45, O Stelzer-Chilton 212, H Stenzel 77, G A Stewart 78, J A Stillings 29, M C Stockton 117, M Stoebe 117, G Stoicea 38, P Stolte 79, S Stonjek 131, A R Stradling 10, A Straessner 67, M E Stramaglia 20, J Strandberg 197, S Strandberg 195,196, A Strandlie 150, M Strauss 144, P Strizenec 191, R Ströhmer 229, D M Strom 147, R Stroynowski 63, A Strubig 137, S A Stucci 36, B Stugu 17, N A Styles 65, D Su 189, J Su 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, C Taccini 175,176, K Tackmann 65, J Taenzer 209, 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, K G Tan 118, 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 1,7, 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, J C-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 1,221, 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, 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, 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, G Zacharis 12, 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 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: PMC5689544  PMID: 29200941

Abstract

Measurements of the production cross section of a Z boson in association with jets in proton–proton collisions at s=13 TeV are presented, using data corresponding to an integrated luminosity of 3.16 fb-1 collected by the ATLAS experiment at the CERN Large Hadron Collider in 2015. Inclusive and differential cross sections are measured for events containing a Z boson decaying to electrons or muons and produced in association with up to seven jets with pT>30 GeV and |y|<2.5. Predictions from different Monte Carlo generators based on leading-order and next-to-leading-order matrix elements for up to two additional partons interfaced with parton shower and fixed-order predictions at next-to-leading order and next-to-next-to-leading order are compared with the measured cross sections. Good agreement within the uncertainties is observed for most of the modelled quantities, in particular with the generators which use next-to-leading-order matrix elements and the more recent next-to-next-to-leading-order fixed-order predictions.

Introduction

The measurement of the production of a Z boson1 in association with jets, Z+jets, constitutes a powerful test of perturbative quantum chromodynamics (QCD) [1, 2]. The large production cross section and easily identifiable decays of the Z boson to charged leptonic final states offer clean experimental signatures which can be precisely measured. Such processes also constitute a non-negligible background for studies of the Higgs boson and in searches for new phenomena; typically in these studies, the multiplicity and kinematics of the jets are exploited to achieve a separation of the signal of interest from the Standard Model (SM) Z+jets process. These quantities are often measured in control regions and subsequently extrapolated to the signal region with the use of Monte Carlo (MC) generators, which are themselves subject to systematic uncertainty and must be tuned and validated using data. Predictions from the most recent generators combine next-to-leading-order (NLO) multi-leg matrix elements with a parton shower (PS) and a hadronisation model. Fixed-order parton-level predictions for Z+jets production at next-to-next-to-leading order (NNLO) are also available [36].

The Z+jets production differential cross section was previously measured by the ATLAS [7], CMS [8], and LHCb [9] collaborations at the CERN Large Hadron Collider (LHC) [10] at centre-of-mass energies of s=7 TeV [1115] and 8 TeV [1618], and by the CDF and D0 collaborations at the Tevatron collider at s=1.96 TeV [19, 20]. In this paper, proton–proton (pp) collision data corresponding to an integrated luminosity of 3.16 fb-1, collected at s=13 TeV with the ATLAS detector during 2015, are used for measurements of the Z-boson production cross section in association with up to seven jets within a fiducial region defined by the detector acceptance. The Z boson is identified using its decays to electron or muon pairs (Ze+e-, Zμ+μ-). Cross sections are measured separately for these two channels, and for their combination, as a function of the inclusive and exclusive jet multiplicity Njets and the ratio of successive inclusive jet multiplicities (Njets+1)/Njets, the transverse momentum of the leading jet pTjet for several jet multiplicities, the jet rapidity yjet, the azimuthal separation between the two leading jets Δϕjj, the two leading jet invariant mass mjj, and the scalar sum HT of the transverse momenta of all selected leptons and jets.

The paper is organised as follows. Section 2 contains a brief description of the ATLAS detector. The data and simulated samples as well as the Z+jets predictions used in the analysis are described in Sect. 3. The event selection and its associated uncertainties are presented in Sect. 4, while the methods employed to estimate the backgrounds are shown in Sect. 5. Comparisons between data and Monte Carlo predictions for reconstructed distributions are found in Sect. 6, while the unfolding procedure is described in Sect. 7. Section 8 presents the analysis results, the comparisons to predictions, and a discussion of their interpretation. Conclusions are provided in Sect. 9.

The ATLAS detector

The ATLAS experiment at the LHC is a multi-purpose particle detector with a forward-backward symmetric cylindrical geometry and nearly 4π coverage in solid angle.2 It consists of an inner tracking detector, electromagnetic and hadronic calorimeters, and a muon spectrometer. The inner tracker is surrounded by a thin superconducting solenoid magnet and provides precision tracking of charged particles and momentum measurements in the pseudorapidity range |η|<2.5. This region is matched to a high-granularity electromagnetic (EM) sampling calorimeter covering the pseudorapidity range |η|<3.2, and a coarser granularity calorimeter up to |η|=4.9. The hadronic calorimeter system covers the entire pseudorapidity range up to |η|=4.9. The muon spectrometer consists of three large superconducting toroids each containing eight coils, a system of trigger chambers, and precision tracking chambers, which provide trigger and tracking capabilities in the range |η|<2.4 and |η|<2.7, respectively. A two-level trigger system [21] is used to select events. The first-level trigger is implemented in hardware and uses a subset of the detector information. This is followed by the software-based high-level trigger system, which runs offline reconstruction, reducing the event rate to approximately 1 kHz.

Data set, simulated event samples, and predictions

Data set

The data used in this analysis were collected by the ATLAS detector during August to November 2015. During this period, the LHC circulated 6.5 TeVproton beams with a 25 ns bunch spacing. The peak delivered instantaneous luminosity was L=5×1033 cm-2 s1 and the mean number of pp interactions per bunch crossing (hard scattering and pile-up events) was μ=13. The data set used in this measurement corresponds to a total integrated luminosity of 3.16 fb-1.

Simulated event samples

Monte Carlo simulations, normalised to higher-order calculations, are used to estimate most of the contributions from background events, to unfold the data to the particle level, and to compare with the unfolded data distributions. All samples are processed with a Geant4-based simulation [22] of the ATLAS detector [23]. An overview of all signal and background processes considered and of the generators used for the simulation is given in Table 1. Total production cross sections for the samples, their respective uncertainties (mainly coming from parton distribution function (PDF) and factorisation and renormalisation scale variations), and references to higher-order QCD corrections, where available, are also listed in Table 1.

Table 1.

Signal and background Monte Carlo samples and the generators used in the simulation. Each sample is normalised to the appropriate production cross section σ and multiplied by the relevant branching ratios (BR) per lepton flavour for this sample, as shown in the third column. For W-boson and top-quark production, contributions from higher-order QCD corrections were calculated following the references given in the fifth column for the stated order. Similarly, for Z-boson production, higher-order QCD corrections were evaluated in the dilepton invariant mass range 66<m<116 GeV following the references given in the fifth column for the stated order, and extrapolation scaling factors were applied to match mass ranges used by each simulation as given in the first column. The theory uncertainties as given in the final column correspond to PDF and scale variations. The diboson samples include on-shell and off-shell WW, WZ and ZZ production. Recently, NNLO QCD predictions have been made available for the diboson processes [32, 33]. However, these higher-order corrections have a negligible impact on this analysis

Process Generator (σ·BR) [pb] Normalisation order References Theory uncert. (%)
Z(+-)+jets (=e,μ;m>40 GeV) Sherpa 2.2 2106 NNLO [2427] 5
Z(+-)+jets (=e,μ,τ;m>40 GeV) MG5_aMC@NLO+Py8 2103 NNLO [2427] 5
Wν (=e,μ) MG5_aMC@NLO+Py8 20,080 NNLO [2427] 5
tt¯ (mt=172.5 GeV)
Perugia2012(radHi/radLo) Powheg+Py6 831 NNLO+NNLL [28] 6
UE-EE-5 MG5_aMC@NLO+Herwig++ 831 NNLO+NNLL [28] 6
Single top quark (Wt) Powheg+Py6 72 NLO+NNLL [29] 6
Single top quark (t-channel) Powheg+Py6 136 NLO+NNLL [30] 6
Single top anti-quark(t-channel) Powheg+Py6 81 NLO+NNLL [30] 6
Dibosons Sherpa 2.1 97 NLO [31] 6

Signal events (i.e. containing a Z boson with associated jets) are simulated using the Sherpa  v2.2.1 [31] generator, denoted by Sherpa 2.2. Matrix elements (ME) are calculated for up to two additional partons at NLO and up to four partons at leading order (LO) using the Comix [34] and OpenLoops [35] matrix element generators. They are merged with the Sherpa parton shower [36] (with a matching scale of 20 GeV) using the ME+PS@NLO prescription [37]. A five-flavour scheme is used for these predictions. The NNPDF30NLO PDF set [38] is used in conjunction with a dedicated set of parton-shower-generator parameters (tune) developed by the Sherpa authors. This sample is used for the nominal unfolding of the data distributions, to compare to the cross-section measurements, and to estimate the systematic uncertainties.

A simulated sample of Z+jets production is also produced with the MADGRAPH_aMC@NLO (denoted by MG5_aMC@NLO) v2.2.2 generator [39], using matrix elements including up to four partons at leading order and employing the NNPDF30NLO PDF set, interfaced to Pythia  v8.186 [40] to model the parton shower, using the CKKWL merging scheme [41] (with a matching scale of 30 GeV). A five-flavour scheme is used. The A14 [42] parton-shower tune is used together with the NNPDF23LO PDF set [43]. The sample is denoted by MG5_aMC+Py8 CKKWL and is used to provide cross-checks of the systematic uncertainty in the unfolding and to model the small Zττ background. In addition, a MG5_aMC@NLO sample with matrix elements for up to two jets and with parton showers beyond this, employing the NNPDF30NLO PDF set and interfaced to Pythia  v8.186 to model the parton shower, is generated using the FxFx merging scheme [44] (with a matching scale of 25 GeV [45]) and is denoted by MG5_aMC+Py8 FxFx. This sample also uses a five-flavour scheme and the A14 parton-shower tune with the NNPDF23LO PDF set. Both MG5_aMC@NLO samples are used for comparison with the unfolded cross-section measurements.

The measured cross sections are also compared to predictions from the leading-order matrix element generator Alpgen v2.14 [46] interfaced to Pythia  v6.426 [47] to model the parton shower, denoted by Alpgen+Py6, using the Perugia2011C [48] parton-shower tune and the CTEQ6L1 PDF set [49]. A four-flavour scheme is used. Up to five additional partons are modelled by the matrix elements merged with the MLM prescription [46] (with a matching scale of 20 GeV). The matrix elements for the production of Z+bb¯ and Z+cc¯ events are explicitly included and a heavy-flavour overlap procedure is used to remove the double counting of heavy quarks from gluon splitting in the parton shower.

The Z-boson samples are normalised to the NNLO prediction calculated with the Fewz 3.1 program [2427] with CT10nnlo PDFs [50].

Contributions from the top-quark, single-boson, and diboson components of the background (described in Sect. 5) are estimated from the following Monte Carlo samples. Samples of top-quark pair and single top-quark production are generated at NLO with the Powheg-Box generator [5153] [versions v2 (r3026) for top-quark pairs and v1 for single top quarks (r2556 and r2819 for t-and Wt-channels, respectively)] and Pythia  v6.428 (Perugia2012 tune [48]). Samples with enhanced or suppressed additional radiation are generated with the Perugia2012radHi/Lo tunes [48]. An alternative top-quark pair sample is produced using the MG5_aMC@NLO generator interfaced with Herwig++  v2.7.1 [39, 54], using the UE-EE-5 tune [55]. The samples are normalised to the cross section calculated at NNLO+NNLL (next-to-next-to-leading log) with the Top++2.0 program [28].

The W-boson backgrounds are modelled using the MG5_aMC+Py8 CKKWL  v2.2.2 generator, interfaced to Pythia  v8.186 and are normalised to the NNLO values given in Table 1. Diboson processes with fully leptonic and semileptonic decays are simulated [56] using the Sherpa  v2.1.1 generator with the CT10nlo PDF set. The matrix elements contain the doubly resonant WW, WZ and ZZ processes, and all other diagrams with four electroweak vertices. They are calculated for one or zero additional partons at NLO and up to three additional partons at LO and merged with the Sherpa parton shower using the ME+PS@NLO prescription.

Events involving semileptonic decays of heavy quarks, hadrons misidentified as leptons, and, in the case of the electron channel, electrons from photon conversions are referred to collectively as “multijet events”. The multijet background was estimated using data-driven techniques, as described in Sect. 5.

Multiple overlaid pp collisions are simulated with the soft QCD processes of Pythia  v.8.186 using the A2 tune [57] and the MSTW2008LO PDF set [58]. All Monte Carlo samples are reweighted so that the pile-up distribution matches that observed in the data.

Fixed-order predictions

In addition to these Monte Carlo samples, parton-level fixed-order predictions at NLO are calculated by the BlackHat+Sherpa collaboration for the production of Z bosons with up to four partons [59, 60]. The BlackHat+Sherpa predictions use the CT14 PDF set [61] including variations of its eigenvectors at the 68% confidence level, rescaled from 90% confidence level using a factor of 1 / 1.645. The nominal predictions use a factorisation and renormalisation scale of HT/2 with uncertainties derived from the envelope of a common variation of the scales by factors of 0.5,1/2,2, and 2. The effects of PDF and scale uncertainties range from 1 to 4% and from 0.1 to 10%, respectively, for the cross sections of Z-boson production in association with at least one to four partons, and are included in the predictions which are provided by the BlackHat+Sherpa authors for the fiducial phase space of this analysis. Since these predictions are defined before the decay leptons emit photons via final-state radiation (Born-level FSR), corrections to the dressed level (where all photons found within a cone of size ΔR=0.1 of the lepton from the decay of the Z boson are included) are derived from MG5_aMC+Py8 CKKWL, separately for each kinematic observable used to measure cross sections, with associated systematic uncertainties obtained by comparing to the Alpgen+Py6 generator. This correction is needed in order to match the prediction to the lepton definition used in the measurements. The average size of these corrections is approximately -2%. To bring the prediction from parton to particle level, corrections for the non-perturbative effects of hadronisation and the underlying event are also calculated separately for each observable using the Sherpa  v2.2 generator by turning on and off in the simulation both the fragmentation and the interactions between the proton remnants. The net size of the corrections is up to approximately 10% at small values of pTjet and vanishes for large values of pTjet. An uncertainty of approximately 2% for this correction is included in the total systematic uncertainty of the prediction.

Calculations of cross sections at NNLO QCD have recently become available [36]. In this paper, the results are compared to the calculation, denoted by Z+1jetNjetti NNLO [3, 4], which uses a new subtraction technique based on N-jettiness [62] and relies on the theoretical formalism provided in soft-collinear effective theory. The predictions, which are provided by the authors of this calculation for the fiducial phase space of this analysis, use a factorisation and renormalisation scale of m2+pTjet2 (where m is the invariant mass of the dilepton system) and the CT14 PDF set. The QCD renormalisation and factorisation scales were jointly varied by a common factor of two, and are included in the uncertainties. Non-perturbative and FSR corrections and their associated uncertainties as discussed above are also included in the predictions.

Event selection

Electron- and muon-candidate events are selected using triggers which require at least one electron or muon with transverse momentum thresholds of pT=24GeV or 20 GeV, respectively, with some isolation requirements for the muon trigger. To recover possible efficiency losses at high momenta, additional electron and muon triggers which do not make any isolation requirements are included with thresholds of pT60GeV and pT=50GeV, respectively. Candidate events are required to have a primary vertex, defined as the vertex with the highest sum of track pT2, with at least two associated tracks with pT>400MeV.

Electron candidates are required to have pT>25GeV and to pass “medium” likelihood-based identification requirements [63, 64] optimised for the 2015 operating conditions, within the fiducial region of |η|<2.47, excluding candidates in the transition region between the barrel and endcap electromagnetic calorimeters, 1.37<|η|<1.52. Muons are reconstructed for |η|<2.4 with pT>25GeV and must pass “medium” identification requirements [65] also optimised for the 2015 operating conditions. At least one of the lepton candidates is required to match the lepton that triggered the event. The electrons and muons must also satisfy pT-dependent cone-based isolation requirements, using both tracking detector and calorimeter information (described in Refs. [66, 67], respectively). The isolation requirements are tuned so that the lepton isolation efficiency is at least 90% for pT>25GeV, increasing to 99% at 60 GeV. Both the electron and muon tracks are required to be associated with the primary vertex, using constraints on the transverse impact parameter significance |d0|/Δd0, where d0 is the transverse impact parameter and Δd0 is its uncertainty, and on the longitudinal impact parameter z0 corrected for the reconstructed position of the primary vertex. The transverse impact parameter significance is required to be less than five for electrons and three for muons, while the absolute value of the corrected z0 multiplied by the sine of the track polar angle is required to be less than 0.5 mm.

Jets of hadrons are reconstructed with the anti-kt algorithm [68] with radius parameter R=0.4 using topological clusters of energy deposited in the calorimeters [69]. Jets are calibrated using a simulation-based calibration scheme, followed by in situ corrections to account for differences between simulation and data [70]. In order to reduce the effects of pile-up contributions, jets with pseudorapidity |η|<2.4 and pT<60GeV are required to have a significant fraction of their tracks with an origin compatible with the primary vertex, as defined by the jet vertex tagger algorithm [71]. In addition, the expected average energy contribution from pile-up clusters is subtracted according to the ηϕ catchment area of the jet [72]. Jets used in the analysis are required to have pT greater than 30 GeV and rapidity |y|<2.5.

The overlap between leptons and jets is removed in a two-step process. The first step removes jets closer than ΔR=0.2 to a selected electron, and jets closer than ΔR=0.2 to a selected muon, if they are likely to be reconstructed from photons radiated by the muon. In a second step, electrons and muons are discarded if they are located closer than ΔR=0.4 to a remaining selected jet. This requirement effectively removes events with leptons and jets which are not reliably simulated in the Monte Carlo simulation.

Events containing a Z-boson candidate are selected by requiring exactly two leptons of the same flavour but of opposite charge with dilepton invariant mass in the range 71<m<111 GeV. The expected and observed numbers of Z-boson candidates selected for each inclusive jet multiplicity, for Njets0-7, are summarised in Table 2, separately for the Ze+e- and the Zμ+μ- channels. The background evaluation that appears in this table is discussed in Sect. 5. After all requirements, 248,816 and 311,183 Z+1jet events are selected in the electron and muon channels, respectively.

Table 2.

Fraction of signal and background processes in % in the final selection and expected and observed numbers of events for the various inclusive jet multiplicities considered in the electron (top) and muon (bottom) channels

+0jets +1jet +2jets +3jets +4jets +5jets +6jets +7jets
Electron channel
Ze+e- (%) 99.3 97.6 93.9 90.3 87.3 85.2 83.3 81.2
Top quark (%) 0.2 1.2 3.8 6.5 8.6 9.7 10.5 11.6
Diboson (%) 0.2 0.8 1.6 2.4 3.4 4.4 5.5 6.6
Zτ+τ- (%) <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1
Weν (%) <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1
Multijet (%) 0.2 0.4 0.6 0.7 0.7 0.7 0.7 0.7
Expected 1,327,900 239,500 57,310 14,080 3637 978 252 63
Observed 1,347,900 248,816 59,998 14,377 3587 898 217 48
Muon channel
Zμ+μ- (%) 99.3 97.5 94.0 90.7 88.3 86.7 84.8 84.6
Top quark (%) 0.2 1.1 3.6 6.0 7.7 8.1 8.7 7.7
Diboson (%) 0.2 0.7 1.6 2.4 3.4 4.5 5.9 7.0
Zτ+τ- (%) <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1
Wμν (%) <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1 <0.1
Multijet (%) 0.3 0.6 0.9 0.9 0.7 0.7 0.7 0.7
Expected 1,693,000 300,600 71,230 17,740 4523 1187 307 76
Observed 1,708,602 311,183 74,510 17,865 4387 1081 240 57

Correction factors and related systematic uncertainties

Some of the object and event selection efficiencies as well as the energy and momentum calibrations modelled by the simulation must be corrected with simulation-to-data correction factors to better match those observed in the data. These corrections and their corresponding uncertainties fall into the following two categories: dependent and not dependent on lepton flavour.

The corrections and uncertainties specific to each leptonic final state (Ze+e- and Zμ+μ-) are as follows:

  • Trigger: The lepton trigger efficiency is estimated in simulation, with a separate data-driven analysis performed to obtain the simulation-to-data trigger correction factors and their corresponding uncertainties [21].

  • Lepton reconstruction, identification, and isolation: The lepton selection efficiencies as determined from simulation are also corrected with simulation-to-data correction factors, with corresponding uncertainties [64, 65].

  • Energy, momentum scale/resolution: Uncertainties in the lepton calibrations are estimated [65] because they can cause a change of acceptance because of migration of events across the pT threshold and m boundaries.

The corrections and uncertainties common to the electron and muon final states are as follows:

  • Jet energy scale and resolution: Uncertainties in the jet energy-scale calibration and resolution have a significant impact on the measurements, especially for the higher jet multiplicities. The jet energy-scale calibration is based on 13 TeV simulation and on in situ corrections obtained from data [70]. The uncertainties are estimated using a decorrelation scheme, resulting in a set of 19 independent parameters which cover all of the relevant calibration uncertainties. The jet energy scale is the dominant systematic uncertainty for all bins with at least one jet. The jet energy-resolution uncertainty is derived by over-smearing the jet energy in the simulation and using the symmetrised variations as the uncertainty.

  • Jet vertex tagger: The modelling of the output variable from the jet vertex tagger is validated using data events where the Z boson recoils against a jet. A percent-level correction is derived and its statistical and systematic uncertainties are used as additional uncertainties in the efficiency to select jets from the primary vertex [71].

  • Pile-up: The imperfect modelling of the effects of pile-up leads to acceptance changes at the percent level for different jet multiplicities. To assess this uncertainty, the average number of interactions per bunch crossing μ is varied in simulation so that the behaviour of variables sensitive to pile-up matches that observed in data.

  • Luminosity: The cross sections have a 2.1% uncertainty from the measurement of the integrated luminosity, which is derived, following a methodology similar to that detailed in Refs. [73, 74], from a calibration of the luminosity using xy beam-separation scans performed in August 2015.

Background estimation

Contributions from the electroweak (single boson and diboson) and top-quark (single top-quark and top-quark pair) components of the background are estimated using the Monte Carlo samples described in Sect. 3 with corresponding uncertainties as listed in Table 1. Contributions from multijet events are evaluated with data-driven techniques as described below. A summary of the composition and relative importance of the backgrounds in the candidate Z+jets events is given in Table 2. The overall purity of the Z+jets selections (fraction of signal events in the final selection) ranges from 99% in the inclusive sample to 80–85% in the 7jets bin.

Top-quark and electroweak backgrounds

The dominant contribution to the background at high jet multiplicities comes from tt¯ production, with the subsequent leptonic decays of the W bosons originating from the top quarks and is evaluated from simulation. An overall uncertainty of 6%, corresponding to the PDF and scale variations on the theoretical predictions of the inclusive cross sections, is assigned (see Table 1). The tt¯ background estimate is validated through a cross-section measurement of tt¯ production in the dilepton channel at s=13 TeV [75] as a function of the jet multiplicity, and the modelling of the additional parton radiation in tt¯ events by Powheg+Py6 was found to be in good agreement with this measurement. In addition, a systematic uncertainty in the modelling of the shape of the distributions is derived by modifying the parton-shower intensity in the nominal simulation sample and by comparing to the predictions from the alternative generator MG5_aMC@NLO+Herwig++ (both listed in Table 1). The small contribution from single-top-quark events is also estimated using Powheg+Py6 samples and assigned a 6% uncertainty.

Diboson production in leptonic and semileptonic final states with at least two leptons of the same flavour constitutes a co-dominant background for high jet multiplicities (see Table 2). The production of WZ bosons in association with jets at s=13 TeV was found to be well modelled by the Sherpa 2.1 generator [76]. A 6% uncertainty, again corresponding to PDF and scale variations on the predictions, is assessed. Since in Ref. [76] the measurement is limited by the statistical precision for dibosons +4 jets (resulting in 6 hadronic jets for semileptonic diboson decays), an additional systematic uncertainty of 50% in the normalisation of the diboson background is added for Z+6jets.

Minor background contributions also arise from single-W-boson production decaying to leptonic final states and from single-Z-boson production in the Zτ+τ- process, both estimated with simulation and assigned a 5% uncertainty (as given in Table 1).

Multijet background

Background-enriched data control regions are used to estimate the multijet contribution in both the electron and muon channels. They are constructed by loosening the lepton identification and isolation requirements. Templates are built from the dilepton invariant mass distribution, a variable that shows discrimination between multijet background and other processes in regions of its kinematic range, but is largely uncorrelated with the variables used to build the multijet control regions. The templates are subsequently normalised to events passing the Z-boson signal selection.

In the electron channel, the multijet templates are built for each jet multiplicity from events with two same-charge leptons with no isolation requirement, whose identification criteria are looser than those of the signal selection, which the leptons must not satisfy. In the muon channel, the control region is similarly built from events with two leptons which are selected with looser identification requirements than the signal selection and also fail the nominal isolation requirement. In both cases, dedicated triggers better suited to this purpose are used to populate the templates. The small electroweak and top-quark contamination is subtracted using simulated events.

The normalisation of the multijet template is estimated with a log-likelihood fit to the measured dilepton invariant mass distribution for the inclusive Z selection, using templates for Z+- and for the electroweak and top-quark background derived from simulation. The fit is performed in the invariant mass windows of 52<mee<148 GeV and 40<mμμ<80 GeV for the electron and muon channels, respectively, in order to benefit from the larger multijet contribution in the mass sidebands. The normalisation of the multijet template is allowed to float freely while the remaining non-multijet templates are constrained to be within 6% of the predicted cross sections for these processes as given in Table 1. The multijet fractions are evaluated separately for each jet multiplicity, except for very high jet multiplicities where the templates are statistically limited, and so these fractions are taken from the estimates of the 5jets and 4jets bins in the electron and muon channels, respectively.

The systematic uncertainties on the multijet background are derived by varying the mass range and bin width of the nominal fit, using the lepton transverse impact parameter d0 as the fitting variable instead of the invariant mass, using alternative simulation samples for the templates, allowing the normalisations of the non-multijet components to vary independently or within a wider range, and varying the lepton resolution and energy/momentum scales. In addition, given the multiple sources of multijet background in the electron channel, an alternative template is constructed by requiring that the electrons fail to meet an isolation criterion instead of failing to meet the nominal signal selection electron identification criterion.

The resulting estimated multijet fractions in each jet multiplicity bin are given in Table 2. Their corresponding total uncertainties are dominated by their systematic components. These systematic components are approximately 70% of the multijet fraction as estimated in the electron and muon channels.

Kinematic distributions

The level of agreement between data and predictions is evaluated from the comparison of kinematic distributions. Figure 1, which presents the dilepton mass for the Z+1jet topology and the inclusive jet multiplicity, shows how well the Sherpa 2.2 and MG5_aMC+Py8 CKKWL predictions agree with data. The uncertainty bands shown in these distributions include the statistical uncertainties due to the simulation sample sizes, the event-selection uncertainties described in Sect. 4.1 (omitting the common 2.1% luminosity uncertainty), and the background normalisation uncertainties described in Sect. 5.

Fig. 1.

Fig. 1

Dilepton invariant mass for Z+1jet (top) and inclusive jet multiplicity (bottom) in the Z(e+e-)+jets (left) and the Z(μ+μ-)+jets (right) channels. All backgrounds and the signal samples are stacked to produce the figures. Systematic uncertainties for the signal and background distributions are combined in the hatched band, and the statistical uncertainty is shown on the data points. The uncertainty in the luminosity and the theory uncertainty in the signal prediction are not included in the uncertainty band

Unfolding of detector effects

The cross-section measurements presented in this paper are performed within the fiducial acceptance region defined by the following requirements:

  • pT>25 GeV, |η|<2.5

  • pTjet>30 GeV, |yjet|<2.5

  • ΔR(,jet)>0.4

  • 71<m<111 GeV.

The cross sections are defined at particle (“truth”) level, corresponding to dressed electrons and muons from the Z bosons. The particle level also includes jets clustered using the anti-kt algorithm [68] with radius parameter R=0.4 for final-state particles with decay length cτ>10 mm, excluding the dressed Z-boson decay products.

The fiducial cross sections are estimated from the reconstructed kinematic observables: jet multiplicity, pTjet for different jet multiplicities, yjet, Δϕjj, mjj, and HT, for events that pass the selection described in Sect. 4. The expected background components as described in Sect. 5 are subtracted from the distributions in data. A variable-width binning of these observables is used, such that the purity is at least 50% in each bin and the size of the statistical uncertainty in most of the bins remains below 10%.

An iterative Bayesian unfolding technique [77], as implemented in the RooUnfold package [78], is used to unfold the measurements to the particle level, thereby accounting for detector effects related to inefficiencies, resolution, and systematic biases in the central values of the kinematic variables describing both the leptons and the jets. The iterative unfolding technique updates the initial estimators for the generated (“truth”) distribution in consecutive steps, using Bayes’ theorem in each iteration to derive an unfolding matrix from the initial response matrix (which relates truth and reconstructed distributions of given observables) and the current truth estimator.

The response matrices are constructed using the Sherpa 2.2 Z(+-)+jets samples. Sherpa 2.2 is also used to derive the initial truth estimator. In order to enter the response matrix, events must pass the Z-boson selection at generator level and at detector level and contain the number of jets required by the preselection for a given observable at both generator and detector level. Reconstructed jets are required to match the corresponding generator-level jets within a cone of size ΔR=0.4 for all distributions except global quantities such as the jet multiplicity and HT. A given bin (ij) in the response matrix therefore corresponds to the probability that a true jet object in bin j is reconstructed in bin i of the distribution. Figure 2 illustrates two examples of response matrices. The resulting ratios of detector-level to truth-level event yields are typically 0.65 and 0.8 for the electron and muon channels, respectively.

Fig. 2.

Fig. 2

Response matrices corresponding to the exclusive jet multiplicity for Z+jets events in the electron channel (left) and to the HT for Z+1jet events in the muon channel (right). The sum of the entries in each row is normalised to unity. Both matrices are obtained from Sherpa 2.2

The background-subtracted data are corrected for the expected fraction of events with reconstructed objects unmatched to any generator object before entering the iterative unfolding. The number of iterations used for the iterative unfolding of each distribution (two) is chosen by unfolding the Sherpa 2.2 samples reweighted to data and comparing to the generated reweighted distribution. The unfolded event yields are divided by the integrated luminosity of the data sample and the bin width of the distribution in question to provide the final fiducial cross sections. The final result is given by

σi=1ϵiLjUijNjdata1-fjunmatched, 1

where L is the integrated luminosity, ϵi is the reconstruction efficiency for truth bin i, Njdata corresponds to the number of events observed in data in reconstructed bin j and fjunmatched is its fraction of unmatched events calculated from simulation, and Uij is the unfolding matrix calculated after two iterations, using the updated prior from the first iteration and the response matrix.

Systematic uncertainties associated with the unfolding procedure

The limited size of a simulation sample can create biases in the distributions. Systematic uncertainties account for possible residual biases in the unfolding procedure due to, e.g. modelling of the hadronisation in the simulation, migrations into other kinematic distributions not explicitly part of the unfolding, or the finite bin width used in each distribution. The following uncertainties arise from the unfolding procedure.

  • The statistical uncertainties of the response matrices derived from Sherpa 2.2 are propagated to the unfolded cross sections with a toy simulation method. A total of 5000 ensembles (pseudo-experiments) of unfolded samples are generated. For each sample, the number of reconstructed events in each bin is generated randomly according to a Gaussian distribution, where the mean is the nominal number of events before unfolding and the width is its corresponding statistical uncertainty. Unfolding is performed for each ensemble. The widths of resulting distributions are taken as a systematic uncertainty of the unfolding.

  • The Sherpa 2.2 samples are reweighted at generator level, such that the distribution of the leading jet pT at detector level matches that observed in the data. The modified Sherpa 2.2 samples are then used to unfold the data again and the variations in the resulting cross sections are used to derive a systematic uncertainty.

  • An additional check is performed by unfolding reconstructed MG5_aMC+Py8 CKKWL events using Sherpa 2.2 response matrices. The residual non-closure is accounted for by an additional flat uncertainty of 3% for all distributions.

Results

The measured cross sections, presented in Sect. 8.1, are calculated in the electron and muon channels separately and the compatibility of the results of the two channels is evaluated. In order to improve the precision of the measurement, these results are then combined, taking into account the correlations of the systematic uncertainties. The comparisons of the combined results to the predictions are presented in Sect. 8.2.

Results in the individual channels and the combination

The fiducial cross-section measurements in the Z(e+e-)+jets and Z(μ+μ-)+jets channels as a function of the inclusive jet multiplicities are presented in Table 3. The data statistical uncertainties are propagated through the unfolding by using pseudo-experiments. As mentioned in Sect. 7, the systematic uncertainties are propagated through the unfolding via the migration matrices and via the variation of the subtracted background. Table 4 shows the resulting total relative statistical and systematic uncertainties as well as the systematic components [lepton trigger, lepton selection, jet energy scale and resolution, jet vertex tagging, pile-up, luminosity (all described in Sect. 4.1)], unfolding (described in Sect. 7), and background (described in Sect. 5) as a function of the inclusive jet multiplicity, presented separately for the electron and muon channels. The jet energy scale is the dominant systematic uncertainty for all bins with at least one jet.

Table 3.

Measured fiducial cross sections in the electron and muon channels for successive inclusive jet multiplicities. The total statistical and systematic uncertainties are given, along with the uncertainty in the luminosity

Jet multiplicity Measured cross section ± (stat.) ± (syst.) ± (lumi.) [pb]
Zee Zμμ
0 jets 743± 1± 24± 16 738± 1± 23± 16
1 jets 116.6 ± 0.3± 9.9± 2.5 115.7± 0.2± 9.7± 2.5
2 jets 27.1± 0.1± 2.9± 0.6 27.0± 0.1± 2.8± 0.6
3 jets 6.20± 0.06± 0.82± 0.14 6.22± 0.05± 0.83± 0.14
4 jets 1.49± 0.03± 0.23± 0.04 1.48± 0.03± 0.23± 0.04
5 jets 0.357± 0.013± 0.069± 0.009 0.354 ± 0.012 ± 0.068± 0.009
6 jets 0.082± 0.006± 0.019± 0.002 0.076 ± 0.005± 0.019± 0.002
7 jets 0.0180± 0.0029± 0.0051± 0.0005 0.0166± 0.0027± 0.0060± 0.0004

Table 4.

Relative statistical and systematic uncertainties (in %) in the measured cross sections of Z+jets production for successive inclusive jet multiplicities in the electron (top) and muon (bottom) channels

Systematic source Relative uncertainty in σ(Z(+-)+Njets) (%)
+ 0 jet + 1 jet + 2 jets + 3 jets + 4 jets + 5 jets + 6 jets + 7 jets
Ze+e-
Electron trigger 0.1 0.1 0.1 0.2 0.2 0.2 0.3 0.3
Electron selection 1.2 1.6 1.8 1.9 2.3 2.7 2.9 3.8
Jet energy scale <0.1 6.6 9.2 11.5 13.8 17.3 20.6 23.7
Jet energy resolution <0.1 3.7 3.7 4.4 5.3 5.2 6.2 7.3
Jet vertex tagger <0.1 1.3 2.1 2.8 3.6 4.5 5.5 6.3
Pile-up 0.4 0.2 0.1 0.2 0.2 0.1 0.4 0.8
Luminosity 2.1 2.1 2.2 2.3 2.4 2.5 2.6 2.8
Unfolding 3.0 3.0 3.0 3.0 3.0 3.1 3.1 3.2
Background 0.1 0.3 0.6 1.0 1.6 3.3 6.0 11.6
Total syst. Uncertainty 3.9 8.7 11.0 13.4 15.9 19.5 23.6 28.7
Stat. uncertainty 0.1 0.2 0.5 0.9 1.9 3.7 7.7 15.9
Zμ+μ-
Muon trigger 0.4 0.5 0.4 0.5 0.4 0.5 0.9 0.6
Muon selection 0.8 0.9 1.0 1.0 1.0 1.5 4.2 16.6
Jet energy scale <0.1 6.8 9.1 11.9 14.0 17.0 20.9 23.7
Jet energy resolution <0.1 3.6 3.6 4.1 5.0 5.9 6.2 9.3
Jet vertex tagger <0.1 1.3 2.1 3.1 3.6 4.4 5.6 6.6
Pile-up 0.4 0.1 0.0 0.3 0.5 0.1 0.4 0.9
Luminosity 2.1 2.1 2.2 2.3 2.4 2.5 2.6 2.7
Unfolding 3.0 3.0 3.0 3.0 3.0 3.1 3.1 3.2
Background 0.2 0.4 0.6 0.9 1.7 4.0 7.4 12.9
Total syst. Uncertainty 3.8 8.7 10.8 13.6 16.0 19.4 24.6 36.3
Stat. uncertainty 0.1 0.2 0.4 0.8 1.7 3.4 7.2 16.3

Figure 3 shows a comparison of the electron and muon channels for the measured fiducial cross section as a function of the inclusive jet multiplicity and of the leading jet pT for inclusive Z+1jet events. This figure demonstrates that the results in the electron and muon channels are compatible and hence can be combined to improve the precision of the measurement. This figure also shows the result of this combination described below.

Fig. 3.

Fig. 3

Measured fiducial cross section as a function of the inclusive jet multiplicity (left) and the leading jet pT for inclusive Z+1jet events (right) in the electron and the muon channels and compared to their combined value. The ratios of the two measurements to the combined results are also shown in the bottom panels. The error bars indicate the statistical uncertainty, and the hatched bands the statistical and the flavour-uncorrelated systematic uncertainties of the combined result, added in quadrature

The results from the electron and muon channels are combined at dressed level for each distribution separately: inclusive and exclusive jet multiplicities, ratio for successive inclusive jet multiplicities, leading jet pT for Z+1,2,3,4jet events and jet pT for exclusive Z+1jet events, leading jet rapidity for inclusive Z+1jet events, HT, Δϕjj, and mjj. A χ2 function whose sum runs over all measurement sets (electrons and muons), measurement points, and some of the uncertainty sources, is used for the combination [79, 80] and distinguishes between bin-to-bin correlated and uncorrelated sources of uncertainties, the latter comprising the statistical uncertainty of the data and the statistical unfolding uncertainty. Uncertainties specific to the lepton flavour and to the background are included in the χ2 function, while the remaining, flavour-uncorrelated, systematic uncertainties related to jets, pile-up, luminosity, and unfolding are averaged after the combination.

Comparisons of results to predictions

The cross-section measurement for different inclusive Z+jets multiplicities and their ratios obtained from the combination are found in Tables 5 and 6. Figure 4 shows the comparison of these results with the NLO QCD fixed-order calculations from BlackHat+Sherpa and with the predictions from Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. The plots show the particle-level cross section with the generator predictions normalised to the inclusive NNLO cross sections in the top panel, accompanied by the ratios of the various predictions with respect to the data in the bottom panels. Uncertainties from the parton distributions functions and QCD scale variations are included in the BlackHat+Sherpa predictions, as described in Sect. 3.3. A constant 5% theoretical uncertainty is used for Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx, as described in Table 1. The inclusive jet multiplicity decreases logarithmically while the ratio is flat in the presence of at least one jet. The predictions are in agreement with the observed cross sections and their ratios, except for Sherpa 2.2, Alpgen+Py6 and MG5_aMC+Py8 FxFx for high jet multiplicity, where a non-negligible fraction of the jets are produced by the parton shower.

Table 5.

Measured combined fiducial cross sections for successive inclusive jet multiplicities. The statistical, systematic, and luminosity uncertainties are given

Jet multiplicity Measured cross section ± (stat.) ± (syst.) ± (lumi.) [pb]
Z
0 jets 740 ± 1 ± 23 ± 16
1 jets 116.0 ± 0.3 ± 9.7 ± 2.5
2 jets 27.0 ± 0.1 ± 2.8 ± 0.6
3 jets 6.20 ± 0.04 ± 0.82 ± 0.14
4 jets 1.48 ± 0.02 ± 0.23 ± 0.04
5 jets 0.36 ± 0.01 ± 0.07 ± 0.01
6 jets 0.079 ± 0.004 ± 0.018 ± 0.002
7 jets 0.0178 ± 0.0019 ± 0.0049 ± 0.0005

Table 6.

Measured combined ratios of the fiducial cross sections for successive inclusive jet multiplicities. The statistical, systematic, and luminosity uncertainties are given

Jet multiplicity Measured cross-section ratio ± (stat.) ± (syst.) ± (lumi.)
Z
1 jets/0 jets 0.1568 ± 0.0004 ± 0.0131 ± 0.0001
2 jets/1 jets 0.2327 ± 0.0011 ± 0.0093 ± 0.0002
3 jets/2 jets 0.2299 ± 0.0018 ± 0.0095 ± 0.0002
4 jets/3 jets 0.2390 ± 0.0035 ± 0.0094 ± 0.0002
5 jets/4 jets 0.2397 ± 0.0068 ± 0.0111 ± 0.0002
6 jets/5 jets 0.2213 ± 0.0127 ± 0.0123 ± 0.0003
7 jets/6 jets 0.2240 ± 0.0264 ± 0.0222 ± 0.0003

Fig. 4.

Fig. 4

Measured cross section as a function of the inclusive jet multiplicity (left) and ratio for successive inclusive jet multiplicities (right) for inclusive Z+jets events. The data are compared to the predictions from BlackHat+Sherpa, Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. The error bars correspond to the statistical uncertainty, and the hatched bands to the data statistical and systematic uncertainties (including luminosity) added in quadrature. A constant 5% theoretical uncertainty is used for Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. Uncertainties from the parton distribution functions and QCD scale variations are included in the BlackHat+Sherpa predictions, as described in Sect. 3.3

The jet transverse momentum is a fundamental observable of the Z+jets process and probes pQCD over a wide range of scales. Moreover, understanding the kinematics of jets in events with vector bosons associated with several jets is essential for the modelling of backgrounds for other SM processes and searches beyond the SM. The leading jet pT distribution (which is correlated with the pT of the Z boson) in inclusive Z+1,2,3,4jet events is shown in Fig. 5 and ranges up to 700 GeV. The LO generator MG5_aMC+Py8 CKKWL models a too-hard jet pT spectrum. This feature is known from studies of LO generators in pp collisions at lower centre-of-mass energies [11], and can be interpreted as an indication that the dynamic factorisation and renormalisation scale used in the generation is not appropriate for the full jet pT range. In contrast, the predictions from BlackHat+Sherpa, Sherpa 2.2, and MG5_aMC+Py8 FxFx, which are based on NLO matrix elements, are in agreement with the measured cross section within the systematic uncertainties over the full leading jet pT range. Alpgen+Py6 also shows good agreement with the measured data. The Z+1jetNjetti NNLO prediction models the spectrum for the Z+1jet events well. Uncertainties from the QCD scale variations for the Z+1jetNjetti NNLO predictions are included in the uncertainty band, as described in Sect. 3.3. For the leading jet rapidity distribution in inclusive Z+1jet events, also shown in this figure, all predictions show good agreement with the measured data within the uncertainties.

Fig. 5.

Fig. 5

Measured cross section as a function of the leading jet pT for inclusive Z+1,2,3,4jet events (left) and absolute value of the leading jet rapidity for inclusive Z+1jet events (right). The data are compared to the predictions from Z+1jetNjetti NNLO, BlackHat+Sherpa, Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. The error bars correspond to the statistical uncertainty, and the hatched bands to the data statistical and systematic uncertainties (including luminosity) added in quadrature. The details of the prediction uncertainties are given in the text. For clarity, uncertainty bands are not shown for the Monte Carlo predictions in the left-hand plot. Uncertainties from the QCD scale variations for the Z+1jetNjetti NNLO predictions are included, as described in Sect. 3.3

The exclusive jet pT distribution probes the validity of Z+1jet predictions at increasing QCD scales represented by the jet pT in the presence of a jet veto at a constant low scale; for a jet pT range of several hundred GeV, accessible with the current data set, the jet scale is of order ten times larger than the veto scale (30 GeV). Figure 6 demonstrates that all predictions studied are consistent with the data within systematic uncertainties over the full jet pT range (up to 500 GeV). This figure also shows the measured cross section as a function of the exclusive jet multiplicity, which decreases logarithmically. Similar trends as for the inclusive jet multiplicity (Fig. 4) are observed.

Fig. 6.

Fig. 6

Measured cross section as a function of jet pT for exclusive Z+1jet events (left) and exclusive jet multiplicity (right). The data are compared to the predictions from BlackHat+Sherpa, Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. The error bars correspond to the statistical uncertainty, and the hatched bands to the data statistical and systematic uncertainties (including luminosity) added in quadrature. The details of the prediction uncertainties are given in the text

Quantities based on inclusive pT sums of final-state objects, such as HT, the scalar pT sum of all visible objects in the final state, are often employed in searches for physics beyond the Standard Model, to enrich final states resulting from the decay of heavy particles. The values HT or HT/2 are also commonly used choices for scales for higher-order perturbative QCD calculations. Large values for this quantity can result either from a small number of very energetic particles or from a large number of less energetic particles. Figure 7 shows the measured cross sections as a function of the HT distribution (up to 1400 GeV) in inclusive Z+1jet events. The predictions from Sherpa 2.2, Alpgen+Py6 and MG5_aMC+Py8 FxFx describe well the HT distribution. The prediction from MG5_aMC+Py8 CKKWL describes well the turn-over in the softer part of the HT spectrum, but overestimates the contribution at large values of HT, in line with the overestimate of the cross sections for hard jets. The fixed-order Z+1jet prediction from BlackHat+Sherpa underestimates the cross section for values of HT>300 GeV, as observed in similar measurements at lower centre-of-mass energies [11, 81], due to the missing contributions from events with higher parton multiplicities, which for large values of HT constitute a substantial portion of the data. Agreement is recovered by adding higher orders in perturbative QCD, as demonstrated by the good description of HT by Z+1jetNjetti NNLO.

Fig. 7.

Fig. 7

Measured cross section as a function of HT for inclusive Z+1jet events. The data are compared to the predictions from Z+1jetNjetti NNLO, BlackHat+Sherpa, Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. The error bars correspond to the statistical uncertainty, and the hatched bands to the data statistical and systematic uncertainties (including luminosity) added in quadrature. The details of the prediction uncertainties are given in the text

Angular relations between the two leading jets and the dijet mass are frequently used to separate either heavier SM particles or beyond-SM physics from the Z+jets process. Figure 8 shows the differential cross section as a function of azimuthal angular difference between the two leading jets for Z+2jet events, Δϕjj. The tendency of the two jets to be back-to-back in the transverse plane is well modelled by all predictions. This figure also shows the measured cross sections as a function of the invariant mass mjj of the two leading jets for Z+2jet events. The shape of the dijet mass is modelled well by BlackHat+Sherpa, Sherpa 2.2, Alpgen+Py6, and MG5_aMC+Py8 FxFx, whereas MG5_aMC+Py8 CKKWL shows a harder spectrum.

Fig. 8.

Fig. 8

Measured cross section as a function of Δϕjj (left) and mjj (right) for inclusive Z+2jet events. The data are compared to the predictions from BlackHat+Sherpa, Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. The error bars correspond to the statistical uncertainty, and the hatched bands to the data statistical and systematic uncertainties (including luminosity) added in quadrature. The details of the prediction uncertainties are given in the text

Conclusion

Proton–proton collision data at s=13 TeV from the LHC, corresponding to a total integrated luminosity of 3.16 fb-1, have been analysed by the ATLAS collaboration to study events with Z bosons decaying to electron or muon pairs, produced in association with one or more jets. The fiducial production cross sections for Z+0–7 jets have been measured, within the acceptance region defined by pT>25 GeV, |η|<2.5, 71<m<111 GeV, pTjet>30 GeV, |yjet|<2.5, and ΔR(,jet)>0.4, with a precision ranging from 4 to 30%. Ratios of cross sections for successive jet multiplicities and cross-section measurements as a function of different key variables such as the jet multiplicities, jet pT for exclusive Z+1 jet events, leading jet pT for Z+1,2,3,4jet events, leading jet rapidity for Z+1jet events, HT, Δϕjj and mjj have also been derived.

The measurements have been compared to fixed-order calculations at NLO from BlackHat+Sherpa and at NNLO from the Z+1jetNjetti NNLO calculation, and to predictions from the generators Sherpa 2.2, Alpgen+Py6, MG5_aMC+Py8 CKKWL, and MG5_aMC+Py8 FxFx. In general, the predictions are in good agreement with the observed cross sections and cross-section ratios within the uncertainties. Distributions which are dominated by a single jet multiplicity are modelled well by fixed-order NLO calculations, even in the presence of a jet veto at a low scale. The ME+PS generator MG5_aMC+Py8 CKKWL, which is based on LO matrix elements, models a too-hard jet spectrum, as observed in s=7 TeV pp collisions. It however models well the inclusive jet multiplicity distribution over the full multiplicity range. The modelling of the jet pT and related observables is significantly improved by the ME+PS@NLO generators Sherpa 2.2 and MG5_aMC+Py8 FxFx, which use NLO matrix elements for up to two additional partons. The recent Z+1jetNjetti NNLO predictions describe well key distributions such as the leading jet pT and HT. The results presented in this paper provide essential input for the further optimisation of the Monte Carlo generators of Z+jets production and constitute a powerful test of perturbative QCD for processes with a higher number of partons in the final state.

Acknowledgements

The results presented in this paper provide essential input for the further optimisation of the Monte Carlo generators of Z+jets production and constitute a powerful test of perturbative QCD for processes with a higher number of partons in the final state. 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, United Kingdom; DOE and NSF, United States of America. 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, United Kingdom. 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. [82].

Footnotes

1

Throughout this paper, Z/γ-boson production is denoted simply by Z-boson production.

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. When dealing with massive jets and particles, the rapidity y=12lnE+pzE-pz is used, where E is the jet/particle energy and pz is the z-component of the jet/particle momentum.

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