Skip to main content
Scientific Reports logoLink to Scientific Reports
. 2018 Feb 26;8:3656. doi: 10.1038/s41598-018-22024-2

Soil organic carbon and total nitrogen pools in permafrost zones of the Qinghai-Tibetan Plateau

Lin Zhao 1,✉,#, Xiaodong Wu 1,✉,#, Zhiwei Wang 1,2, Yu Sheng 1, Hongbing Fang 1, Yonghua Zhao 1, Guojie Hu 1, Wangping Li 3, Qiangqiang Pang 1, Jianzong Shi 1, Bentian Mo 2, Qian Wang 2, Xirui Ruan 2, Xiaodong Li 2, Yongjian Ding 1,4,5
PMCID: PMC5827726  PMID: 29483565

Abstract

There are several publications related to the soil organic carbon (SOC) on the Qinghai-Tibetan Plateau (QTP). However, most of these reports were from different parts of the plateau with various sampling depth. Here, we present the results from a systematic sampling and analysis of 200 soil pits. Most of the pits were deeper than 2 m from an east-west transect across the plateau. The SOC and total nitrogen (TN) pools of the 148 × 104 km2, the area of the permafrost zone, for the upper 2 m soils calculated from the vegetation map were estimated to be 17.07 Pg (interquartile range: 11.34–25.33 Pg) and 1.72 Pg (interquartile range: 1.08–2.06 Pg), respectively. We also predicted the distribution of land cover types in 2050 and 2070 using decision tree rules and climate scenarios, and then predicted SOC and TN pools of this region. The results suggested that the SOC and TN pools will decrease in the future. The results not only contribute to the carbon and nitrogen storage and stocks in the permafrost regions as a whole but most importantly, to our knowledge of the possible changes of C and N storage on the QTP in the future.

Introduction

Soil carbon and nitrogen cycles are associated with terrestrial ecosystem succession and climate change. Small changes in the SOC pool could have dramatic impacts on the concentration of CO2 in the atmosphere1. Soil nitrogen is a key element controlling terrestrial ecosystems, and the decomposition of nitrogen may also produce an important greenhouse gas2. Spatial data for SOC and TN are extremely important because they are basic input parameters for many models, including land surface, vegetation, and greenhouse gas models35.Therefore, the size and dynamics of carbon and nitrogen pools are of great importance for recognizing the relationships among global change, terrestrial ecosystems, and the carbon cycles.

About half of the global SOC is stored in the permafrost regions6. Several studies on the SOC and TN in circum-Arctic permafrost regions79 indicated that large amount of greenhouse gases may be emitted from the decomposition of soil organic matter (SOM) in these regions due to permafrost degradation10,11. The largest high altitudinal permafrost on earth is distributed in the Qinghai-Tibetan Plateau (QTP), which is called ‘the Roof of the World’. Continuous permafrost underlies 1.06 × 106 km2 of the permafrost area, and the total permafrost-affected zone12, including the discontinuous and island permafrost zone, is about 1.48 × 106 km2 13. Due to the low latitude, degradation of the permafrost in this area has received more attention14 because the degradation processes are more pronounced than in high latitude regions15.

The cold and arid grassland is the main ecosystem in permafrost zone on the QTP, and much more carbon is stored in soils than that in vegetation16. These soils contain a high proportion of labile SOM, which is mainly mineralizable17,18. A modelling study using the CENTURY (version 4.5) suggested that the SOC pools on the QTP, especially for the high temperature permafrost zones, are sensitive to environmental changes19,20. Under global warming scenarios, permafrost degradation might lead to the land degradation and a rapid loss of labile SOM, and further affect the permafrost ecosystems21 as well as carbon cycle22,23.

Previous publications on SOC pools on the QTP were estimated mostly based on the data from either global soil database or China’s national soil survey, combined with sparse field samples24,25. Total SOC for the top 0.7 m was estimated as approximately 30–40 Pg in the grassland of the plateau with the area of 1.67 × 106 km2, which is much larger than the extent of permafrost zone24. The SOC pool in the permafrost regions was calculated as 17.3 ± 5.3 Pg for the 0–1 m depth and 10.6 ± 2.7 Pg for the 1–2 m depth based on similar database26. However, the filed data used in these studies were mainly collected from the upper 1 m depth or even less than 1 m depth, and at limited numbers of sites in the permafrost regions. The most recent result showed that the SOC pool in the upper 3 m soils was 15.31 Pg (with interquartile range of 13.03–17.77 Pg) based on a dataset from 342 soil cores27. The median and mean elevation of these cores was 4292 and 4124 m asl, while the average value of the lower limit of permafrost is higher than 4400 m asl14. In addition, these estimations were based on the 1:1,000,000 vegetation map of China28, which defined the land cover types as alpine steppe, meadow, and desert, without the consideration of wet meadow or the barren land. In fact, wet meadow and barren land constitute 3.4% and 19% of the total area, respectively29, and the soils under these two land cover types have very different SOC and TN stocks compared to other land cover types30,31.

Increasing temperature will accelerate decomposition of SOM. On the other hand, it can enhance primary production as if the soil moisture met the requirement of plant growth32. Since permafrost degradation alters the soil temperature and moisture conditions33, even forms thermokarst terrains, such as thaw slump and thermokarst lake3436, it would significantly affect the SOC pools3740. Despite the uncertainties in the changes of SOM along with the climate, the close relationship between land cover and SOC and TN stocks has been widely recognized6,33,41,42. We hypothesized that such relationship could be used to estimate the changes of SOC and TN storage along with the changes of land cover types.

During 2009–2013, we performed a large-scale field-sampling programme covering representative permafrost zones from the bioclimatic gradient of the QTP, including a large unpopulated area with harsh natural conditions. A total of 200 soil pits (pedons) were excavated; most of these pits were deeper than 2 m. The median and mean elevation of these sampling sites were 4467 and 4521 m asl (supplementary materials dataset 1). Based on this dataset, we calculated the SOC and TN stocks at specific soil layers (0–30 cm, 30–50 cm, 50–100 cm, and 100–200 cm). Then, we used a recently updated vegetation map (including the wet meadow and barren land in permafrost zone on the QTP) to assess the SOC and TN pools29. Finally, we projected the possible changes in SOC and TN pools according to changes of land cover using decision trees and the bioclimatic data for 2050 and 2070 provided by IPCC5. The aim of this study was to provide information about SOC and TN pools in this permafrost region based on our original data and to show their possible changes in the future.

Results

SOC and TN pools

According to the SOC and TN stocks at different depths and sites (Supplementary Table 1), we calculated the SOC and TN densities for the different layers. The alpine wet meadow (AWM) and alpine meadow (AM) were mainly distributed in the eastern part, whereas the alpine desert (AD) and barren land (BL) were distributed in the western part of the plateau (Fig. 1). The highest SOC densities occurred in the soils of AWM at the 0–30 cm layer (51.57 kg m−3), followed by the AWM at 30–50 cm (40.19 kg m−3). In the soils under alpine steppe (AS), the SOC densities at different layers were about half of those of meadow. For the soils of BL, the SOC densities were the lowest. SOC densities largely decreased with depth, except for the soils of BL, which showed similar values at different layers. The TN densities showed similar patterns to those of SOC, i.e., the highest TN densities were recorded in the soils under AWM, and the lowest values under BL (Fig. 2).

Figure 1.

Figure 1

Distribution of soil pits and land cover types in the permafrost zone of Qinghai-Tibetan Plateau by using ArcGIS 9.3. The dataset of land cover types in permafrost regions of Qinghai-Tibetan Plateau was cited from the literature of Wang et al.29. The grey area is non-permafrost zone and was not studied.

Figure 2.

Figure 2

Soil organic carbon (a) and total nitrogen densities (b) for different layers in the permafrost regions on the Qinghai-Tibetan Plateau. The boxes are shown as 25th, 75th percentiles, and the lines within the boxes show the median values. The small boxes are the mean values. The whiskers indicate the 90th and 10th percentile, and the asterisks indicate the outliers.

The vegetation map of the QTP permafrost zone covered an area of 148 × 104 km2. The AWM, AM, and AS accounted for 3.4%, 39.3%, and 22.4%, respectively. The AD and BL covered 15.8% and 19.0% of the total area, respectively. Using these areas and the SOC and TN stocks at different depths, the SOC and TN storages could be calculated according to land cover types (Table 1). For the different layers, both the SOC and TN showed similar spatial patterns (Supplementary materials dataset 1). The uncertainty ranges for SOC and TN stocks increased markedly along with the depth, indicating that the SOC and TN stocks varied greatly. Overall, the SOC and TN storages for the upper 200 cm soils in the permafrost regions on the QTP were 17.07 Pg (interquartile: 11.34–25.33 Pg) and 1.72 Pg (interquartile: 1.08–2.06 Pg), respectively. The median values of C/N ratios ranged from 8.13 to 15.00 (with an average value of 12 for all the median values) in the upper 200 cm soils under all land cover types. The upper soil layers (0–50 cm) showed higher values than lower soil layers.

Table 1.

SOC and TN stocks and storages (median values with interquartile range) in permafrost zones of the QTP under different land cover types.

Depths Vegetation SOC (kg/m2) TN (kg/m2) C/N ratios SOC storage (Pg) TN storage (Pg) Total SOC (Pg) Total TN (Pg)
0–30 (cm) AWM 15.48 (14.15–17.09) 1.17 (1.11–1.21) 15.00 (14.62–15.61) 0.78 (0.73–0.86) 0.06 (0.05–0.06) 6.05 (5.74–6.39) 0.61 (0.58–0.65)
AM 7.25 (6.84–7.43) 0.77 (0.71–0.81) 10.39 (10.23–10.68) 3.81(3.60–3.99) 0.41(0.39–0.43)
AS 2.85 (2.77–2.91) 0.27 (0.25–0.34) 9.97 (9.83–10.09) 0.95 (0.92–0.97) 0.09 (0.09–0.11)
AD 1.27 (1.13–1.45) 0.12 (0.10–0.13) 10.71 (10.33–11.02) 0.30 (0.28–0.35) 0.03 (0.03–0.03)
BL 0.74 (0.73–0.76) 0.07 (0.06–0.08) 10.42 (10.11–11.25) 0.21 (0.21–0.22) 0.02 (0.02–0.02)
30–50 (cm) AWM 8.04 (6.21–13.12) 0.73 (0.46–0.88) 14.94 (12.99–15.70) 0.41 (0.31–0.66) 0.04 (0.02–0.04) 2.81 (2.14–3.73) 0.26 (0.20–0.32)
AM 3.33 (2.98–3.58) 0.30 (0.28–0.33) 10.05 (9.66–10.27) 1.74 (1.47–1.92) 0.15 (0.14–0.16)
AS 1.07 (0.51–2.08) 0.16 (0.06–0.23) 9.34 (9.17–9.67) 0.36 (0.17–0.69) 0.04 (0.02–0.08)
AD 0.70 (0.40–1.17) 0.06 (0.04–0.11) 10.20 (10.05–10.95) 0.16 (0.10–0.28) 0.02 (0.01–0.02)
BL 0.50 (0.31–0.64) 0.04 (0.03–0.07) 10.36 (9.44–12.53) 0.14 (0.09–0.18) 0.01 (0.01–0.02)
50–100 (cm) AWM 14.82 (7.03–19.01) 1.12 (0.53–1.90) 12.76 (10.64–14.96) 0.745 (0.36–0.96) 0.06 (0.03–0.10) 3.86 (1.84–7.10) 0.39 (0.19–0.71)
AM 3.49 (1.33–7.35) 0.41 (0.19–0.71) 8.99 (7.22–11.75) 1.80 (0.70–4.04) 0.21 (0.08–0.40)
AS 1.60 (0.82–3.36) 0.16 (0.10–0.33) 10.26 (7.60–11.47) 0.53 (0.28–1.12) 0.05 (0.03–0.11)
AD 1.90 (1.05–2.30) 0.17 (0.12–0.27) 10.10 (8.59–11.75) 0.45 (0.25–0.54) 0.04 (0.03–0.06)
BL 1.16 (0.89–1.54) 0.11 (0.07–0.14) 11.00 (9.79–12.16) 0.33 (0.25–0.44) 0.03 (0.02–0.04)
100–200 (cm) AWM 9.04 (2.57–19.16) 0.82 (0.25–1.34) 12.97 (9.84–16.02) 0.46 (0.13–0.97) 0.04 (0.01–0.07) 3.57 (1.30–6.66) 0.35 (0.12–0.71)
AM 2.59 (0.05–6.19) 0.26 (0.01–0.73) 8.13 (6.56–11.76) 1.23 (0.02–2.71) 0.13 (0–0.34)
AS 1.99 (1.07–3.82) 0.19 (0.10–0.36) 9.25 (7.60–13.79) 0.66 (0.36–1.27) 0.06 (0.03–0.12)
AD 2.56 (1.11–4.15) 0.26 (0.18–0.42) 8.59 (7.86–10.95) 0.60 (0.26–0.97) 0.06 (0.04–0.10)
BL 2.21 (1.89–2.63) 0.21 (0.15–0.27) 11.29 (9.65–12.50) 0.62 (0.53–0.74) 0.06 (0.04–0.08)
0–200 (cm) AWM 53.03 (26.27–66.12) 3.83 (2.19–5.53) 13.39 (11.45–15.15) 2.67 (1.32–3.32) 0.20 (0.11–0.28) 17.07 (11.34–25.33) 1.72 (1.08–2.06)
AM 17.49 (11.37–25.23) 1.83 (1.21–2.78) 9.90 (7.96–11.50) 8.79 (6.38–14.14) 1.00 (0.60–1.49)
AS 7.66 (4.80–13.13) 0.76 (0.52–1.35) 9.73 (8.45–11.42) 2.55 (1.60–4.26) 0.25 (0.17–0.44)
AD 7.40 (4.08–8.94) 0.63 (0.45–1.01) 9.89 (8.62–11.54) 1.74 (0.96–2.10) 0.15 (0.11–0.24)
BL 4.65 (3.80–5.34) 0.41 (0.33–0.54) 10.67 (9.89–12.82) 1.32 (1.08–1.51) 0.12 (0.09–0.15)

The detailed information of the SOC and TN stocks for each pit was shown in supplementary information (dataset S1). AWM: Alpine wet meadow (50260 km2); AM: Alpine meadow (583909 km2); AS: Alpine steppe (332754 km2); AD: Alpine desert (234828 km2); BL: Barren land (282657 km2). The land cover types were defined according to the field evidence including vegetation cover and the dominant species.

Changes of SOC and TN pools in 2050 and 2070

Through analysis of the bioclimatic data using the decision tree rules, the land cover types showed different changes in areas (Supplementary material dataset 2); and the changes of SOC and TN for different climate scenarios derived from the different GCMs varied considerably at 2050 and 2070 (Supplementary material Figs S1S4). Most of the results suggested that the SOC and TN pools would decrease under four representative concentration pathways (RCPs), although those from HadGEM2-ES and MRI-CGCM3 suggested increases of SOC and TN pools for 2050 and 2070. For 2050 and 2070, 72% and 72.5% of the GCMs showed decrease in the SOC pools, and 62.5% and 67.5% of the GCMs showed decrease in the TN pools.

The statistical results of the changes of SOC and TN storages from the GCMs are shown in Fig. 3. The SOC under the four RCPs decreased by approximately 3% for both 2050 and 2070. TN pools showed a decrease of approximately 2%.

Figure 3.

Figure 3

Changes of (a) soil organic carbon and (b) total nitrogen pools (%) according to land cover changes under different emission scenarios. The boxes are shown as 25th, 75th percentiles, and the lines within the boxes show the median values. The small boxes are the mean values. The whiskers indicate the 90th and 10th percentile, and the asterisks indicate the outliers.

Discussion

Although altitude affects the distribution of SOC on the QTP43, the land cover types have the most important effects on SOC since the altitude has been included as an input parameter in the mapping of the land cover on the QTP29. The AWM and AM contained over 10 times the SOC and TN stocks of BL, and 4 to 5 times those of AD and AS. The SOC and TN stocks were significantly different among land cover types, which fit the pattern of land cover types affecting the SOM density42,44. The AWM, which is usually accompanied by high SOM due to high primary production and favourable conditions for perseverance of SOM such as high moisture content45, only covers small areas in the eastern permafrost region, while it contributes large amounts of SOC relative to its covering area. The SOC stocks for AM and AD were comparable to those in previous reports on the northern and eastern part of the permafrost regions in the QTP33,46.

The circum-Arctic regions largely have high SOC stocks (15–50 kg.m−2) for 0–1 m soils47. The lower SOC stocks on the QTP could be explained by the pedogenesis, vegetation cover, moisture, and permafrost conditions. The QTP is overall characterized by a low vegetation cover and weak soil development48, leading to much lower carbon accumulation rates than that in circum-Arctic regions. In the western QTP that is mainly covered by AS and BL, the climate is arid and cold49, which results in thin A horizons and without O horizons. The eastern part of QTP is characterized by a subhumid climate. Therefore, the O and A horizons are thicker than the western QTP50. In our study, several soil pits reached to the bedrock within 2 m, and the SOC and TN stocks were only calculated within the solum layers. This caused the greater uncertainties in deeper soils (Table 1), suggesting that it is extremely important to map the soil thickness on the QTP in the future. In addition to the weak soil development, the QTP is considered as “warm” permafrost and the active layers are usually deeper than 2 m except the AWM that has permafrost tables shallow than 2 m51,52. Thus, it would be reasonable to expect that the active layers are too deep to affect the SOM perseverance in the upper part of the soils53, which is a possible explanation for the lower SOC and TN stocks for the QTP. In many soils, the SOC and TN showed similar spatial distribution patterns under different land cover types54. In our study, the highest and lowest stocks of TN were observed in AWM and BL soils.

The permafrost carbon pools on the QTP for the upper 2 m soils were 2~3% of that in circum-Arctic regions, whereas the permafrost region in the QTP was approximately 8% of that in circum-Arctic regions47. Since the AM is mainly distributed in the eastern part of the QTP, the eastern QTP area stores approximately 80% of the SOC. The biomass and net primary production is high in eastern but much lower in the western part55. The main reason for the spatial distributions of SOC and land cover types is the annual precipitation. The higher precipitation favours to vegetation growth and development of permafrost, subsequently leading to high SOC and TN contents.

There are some reports regarding the SOC pools on the QTP and even the permafrost regions on the QTP24,27,56. However, it is difficult to cross-reference or compare the results and estimate SOC pools at specific depth intervals since previous studies were based on data from in which the SOC was measured with different methods (dichromate or loss on ignition) and different sampling depths. In the present study, sampling at all of the sites was conducted using the same procedure, and the SOC pools at different depths were provided at a resolution of 1 km × 1 km. We also provided the spatial distribution of permafrost N stocks and pool of QTP. This result forms a useful database for research such as land-surface processes modelling.

In the upper 1 m soils, the median values of C/N ratios showed decreasing trends with depth in different land cover types57. We found the C/N ratios decreasing from the upper to lower soil layers in many pits (Table 1 and supplementary materials dataset 1), which indicates an increased degree of decomposition58,59. For the different land cover types, the highest mean values appeared at different depths. This was caused by the high SOM content in some pits where cryoturbation existed as in most AWM and AM soils; these layers usually had high contents of SOC with low decomposition rates and large weights in the calculation of the mean C/N ratios. The C/N ratios for different vegetation types showed a similar pattern to that of SOM content, indicating that SOM stored in the AWM had the lowest decomposition rate, followed by that in the AM and AS. The BL showed higher C/N ratios than those of AS and AD, which could be explained by the fact that the BL was mainly distributed in higher altitude regions characterized by lower temperature and thus lower microbial decomposition rates. The BL areas were usually higher than 4900 m asl, whereas the AWM, AM, AS and AD were usually distributed in the areas between 4600–4800 m asl.

The predicted losses of SOC and TN in permafrost regions will be 3% and 2%, respectively, till 2070 in assumption of that the relationship between land cover type and SOM content is unchanged under global warming scenarios. In fact, global warming significantly affects the SOM contents via multiple processes. The rising temperature can increase the decomposition of SOM. Meanwhile, climate warming can enhance plant growth and increase primary production, and thus provide more input of carbon to soils5. In permafrost regions, this process is more complicated because there is the interaction between SOM and permafrost: permafrost can prevent the decomposition of SOM and translocate the surface SOM to deeper soil by cryoturbation60,61. On the QTP, deepening of active layer can decrease soil water content in upper soils and further decrease vegetation biomass62. Therefore, permafrost degradation affects the litter input to soils, which is a main pathway for the SOM formation. In this study, we primarily showed the possible changes of SOC and TN according to the land cover. Due to the great differences in bioclimatic data produced by different GCMs, the predicted land cover types varied greatly (supplementary material dataset S2), but the predicted SOC and TN storage showed overall decreasing trends under global warming scenarios. This result was in agreement with the findings from experimental warming in permafrost ecosystems6365.

In conclusion, the present study estimates the SOC and TN stocks and storages in permafrost regions of the QTP using data from soil pits. For all land cover types, the SOC and TN pools for the upper 2 m were 17.07 Pg (interquartile range: 11.34–25.33 Pg) and 1.72 Pg (interquartile range: 1.08–2.0 6 Pg), respectively. There are wide uncertainties in the SOC and TN storages in the permafrost zone on the QTP because the soil thicknesses varied greatly under different topographic conditions. The SOC and TN were mainly distributed in the eastern part of the plateau. Approximate 51.5% of SOC and 58.1% of TN were stored in the soils under the meadow. Based on bioclimatic data provided by the IPCC5, the total SOC and TN pools would decrease under global warming scenarios. These results will update the global carbon and nitrogen database and provide a basis for further research on global warming and greenhouse emission, as well as ecology succession studies.

Methods

Sampling and Analysis

The field work was performed between 2009 and 2013. A total of 200 soil pits were excavated. Seventy-two soil pits were manually dug in 2009, and 128 soil pits were excavated using a hydraulic excavator (Doosan 331) in 2010 and 2011. In our study, the active layer thickness is deeper than 2 m at most of sampling sites, but there were still some pits encountered the permafrost within 2 m. For these sites, we used a diesel rig to drill boreholes and collected the permafrost samples. Most of the pits were deeper than 2 m, unless rock layers were detected. As shown in Fig. 1, the sampling sites were distributed both in eastern and western parts of the plateau. It has been shown that SOC stocks in permafrost areas varied greatly with depths and soil samples should be collected according to soil horizons66. On the QTP, the soils have weak pedogenesis and the organic layers were only found in the AWM areas30,45. In the eastern part, where the soil horizons were thinner than the depth increments, we collected soil samples according to the soil horizons and then calculated the SOC and TN stocks for different depths. For the soil pits which had simple horizons, we collected soil samples at depth intervals as 0–10 cm, 10–20 cm, 20–30 cm, 30–50 cm, 50–100 cm, and 100–200 cm. The entire profiles were collected using a spade. At each depth, at least 1 kg soils (dried weight) were collected from the bottom layers to upper layers. The SOC and TN pools according to depth interval were reported in this study. In addition, since many permafrost areas on the QTP have active layers deeper than 2 m, we did not separate the SOC and TN pools in the active layers and permafrost layers. The land cover types were defined according to the field evidence including vegetation cover and the dominant species. These study areas covered the typical land cover types and permafrost conditions (different active layer thickness, different ground temperature) on the QTP. The vast area of the plateau could be divided into eastern and western parts, according to the land cover types. The eastern part was predominantly alpine meadow and wet meadow, whereas the western was alpine steppe and desert steppe. According to precipitation data from the China Meteorological Administration (http://data.cma.cn/data/cdcdetail/dataCode/SURF_CLI_CHN_MUL_DAY_V3.0.html), the eastern parts were characterized by a sub-humid climate and the western part was composed of arid and semi-arid regions. Thus, our sampling sites could be representative of the eastern and western parts of the plateau. In fact, our dataset probably reached the maximum representation possibility in this area under present conditions because most parts of the permafrost regions are considered “no man’s land,” with harsh natural conditions and limited road access.

For most soils, the field bulk density was determined using metal-ring method. For the permafrost samples, which were collected from the drilling method, the bulk density was measured using core sampler method67. The rock fragment (mineral particles > 2 mm) content was calculated from the oven-dried samples in a field laboratory using a sieving method. The SOC and TN were measured with K2Cr2O7—H2SO4 and the micro-Kjeldahl method, respectively31.

Vegetation map

The areas which were underlain by permafrost are smaller than the areas of permafrost zone since permafrost free areas are common in the discontinuous and sporadic zones (https://ipa.arcticportal.org/publications/occasional-publications/what-is-permafrost). In our study, we used the areas of permafrost zone on the QTP since the permafrost carbon in the circum-arctic regions refers to the areas of the permafrost zone47. The most updated vegetation map for the permafrost regions on the QTP29 was applied in the present study. In short, a decision tree classification algorithm was constructed using the field monitoring data to classify alpine grassland types with the statistical software See 5.0 (http://www.rulequest.com). The results from analysis of the EVI (Enhanced Vegetation Index, MOD13A2, 2009–2013), LST (Land Surface Temperatures, MOD11A2, 2009–2013), and DEM (Digital Elevation Model) datasets with 1 km × 1 km resolution, which were obtained from NASA (National Aeronautics and Space Administration) (https://ladsweb.modaps.eosdis.nasa.gov/ or ftp://ladsweb.nascom.nasa.gov/) and the EESDC (Environmental and Ecological Science Data Centre for West China) (http://westdc.westgis.ac.cn/), were used to build the vegetation map. The new vegetation map contained more detailed information about the vegetation distribution than the 1:1,000,000 vegetation map of China28 and also included the wet meadow and barren land types29. Based on the rules of this decision tree, the vegetation distributions in 2050 and 2070 were mapped using the bioclimatic data (BIO1-BIO19) provided by IPCC 5 (http://www.worldclim.org/cmip5_30s). Bioclimatic data from GCMs, including BCC-CSM1-1,CCSM4, GISS-E2-R, HadGEM2-AO, HadGEM2-ES, IPSL-CM5A-LR, MIROC-ESM, MIROC5, MRI-CGCM3, and NorESM1-M, were selected to predict the changes in land cover areas and to calculate the SOC and TN pools. Note that the areas of the land cover types from the current bioclimatic data have some differences with that we used to report the SOC and TN storages. We reported the SOC and TN storages based on the land cover types from Wang et al. (2016) because this map is more accurate by the validation29. We used the land cover areas from the current bioclimatic data to predict the future changes of SOC and TN storages since the data were produced by same procedure and thus it is possible to predict the changes in the areas of different land cover types. The land cover areas used in the GCMs were shown in supplementary materials dataset 2.

SOC and TN calculation

All of the analyses were carried out in triplicate using subsamples. Total SOC stocks per square metre were calculated as:

P=riHibi(1gi)×103 1

where P (kg m−2) was the SOC stock at the given soil layer, r was the soil bulk density (kg m−3), H was the mean soil layer thickness (m) and b was the mean organic carbon content (g kg−1), g was the rock fragment content (%), and i was the depth interval being analysed. The stock of TN was determined using the same calculation but by substituting TN in place of SOC content. The SOC and TN stocks were calculated for following intervals: 0–30 cm, 30–50 cm, 50–100 cm, and 100–200 cm.

The data are presented as median values. The uncertainty analysis was conducted using the Percentile Method, and we used a quartile confidence interval to find the range of SOC and TN stocks and storages for different soil layers. All the data analysis was performed using R statistical software (version 3.3.3, www.r-project.org).

Electronic supplementary material

Supplementary information (546.5KB, doc)
Dataset 1 (61.2KB, csv)
Dataset 2 (3.6KB, csv)

Acknowledgements

This work was financially supported by the National Natural Science Foundation of China (41721091, 91547119), the foundation of State Key Laboratory of Cryospheric Science (SKLCS-ZZ-2018). This work was also supported in part by National Natural Science Foundation of China (41601066, 41701077) and the Guizhou Academy of the Agricultural Sciences Foundation ([2016]0032). We also acknowledge Dr. Matthias Siewert and other three reviewers for their constructive comments and suggestions.

Author Contributions

L.Z. designed the study. L.Z., X.W., Z.W., Y.S., H.F., Y.Z., G.H., W.L., Q.P., J.S. performed the field work and data analysis and wrote the paper. B.M., Q.W., X.R., X.L. Y.D. wrote the paper.

Competing Interests

The authors declare no competing interests.

Footnotes

Lin Zhao and Xiaodong Wu contributed equally to this work.

Electronic supplementary material

Supplementary information accompanies this paper at 10.1038/s41598-018-22024-2.

Publisher's note: Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Contributor Information

Lin Zhao, Email: linzhao@lzb.ac.cn.

Xiaodong Wu, Email: wuxd@lzb.ac.cn.

References

  • 1.Kirschbaum MU. Will changes in soil organic carbon act as a positive or negative feedback on global warming? Biogeochemistry. 2000;48:21–51. doi: 10.1023/A:1006238902976. [DOI] [Google Scholar]
  • 2.Vitousek PM, Farrington H. Nutrient limitation and soil development: experimental test of a biogeochemical theory. Biogeochemistry. 1997;37:63–75. doi: 10.1023/A:1005757218475. [DOI] [Google Scholar]
  • 3.Koven CD, et al. Permafrost carbon-climate feedbacks accelerate global warming. Proceedings of the National Academy of Sciences. 2011;108:14769–14774. doi: 10.1073/pnas.1103910108. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 4.Mishra U, Torn MS, Fingerman K. Miscanthus biomass productivity within US croplands and its potential impact on soil organic carbon. GCB Bioenergy. 2013;5:391–399. doi: 10.1111/j.1757-1707.2012.01201.x. [DOI] [Google Scholar]
  • 5.Todd-Brown K, et al. Changes in soil organic carbon storage predicted by Earth system models during the 21st century. Biogeosciences. 2014;11:2341–2356. doi: 10.5194/bg-11-2341-2014. [DOI] [Google Scholar]
  • 6.Ping C, Jastrow J, Jorgenson M, Michaelson G, Shur Y. Permafrost soils and carbon cycling. Soil. 2015;1:147–171. doi: 10.5194/soil-1-147-2015. [DOI] [Google Scholar]
  • 7.Bockheim JG, Everett LR, Hinkel KM, Nelson FE, Brown J. Soil organic carbon storage and distribution in Arctic Tundra, Barrow, Alaska. Soil Science Society of America Journal. 1999;63:934–940. doi: 10.2136/sssaj1999.634934x. [DOI] [Google Scholar]
  • 8.Li X, et al. Cryospheric change in China. Global and Planetary Change. 2008;62:210–218. doi: 10.1016/j.gloplacha.2008.02.001. [DOI] [Google Scholar]
  • 9.Dutta K, Schuur E, Neff J, Zimov S. Potential carbon release from permafrost soils of Northeastern Siberia. Global Change Biology. 2006;12:2336–2351. doi: 10.1111/j.1365-2486.2006.01259.x. [DOI] [Google Scholar]
  • 10.Schuur EA, et al. Vulnerability of permafrost carbon to climate change: Implications for the global carbon cycle. BioScience. 2008;58:701–714. doi: 10.1641/B580807. [DOI] [Google Scholar]
  • 11.Hoffmann U, Hoffmann T, Johnson E, Kuhn NJ. Assessment of variability and uncertainty of soil organic carbon in a mountainous boreal forest (Canadian Rocky Mountains, Alberta) Catena. 2014;113:107–121. doi: 10.1016/j.catena.2013.09.009. [DOI] [Google Scholar]
  • 12.Brown, J., Ferrians O. Jr, Heginbottom, J. & Melnikov, E. Circum-Arctic map of permafrost and ground-ice conditions. (US Geological Survey Reston, VA, 1997).
  • 13.Zou, D. et al. A new map of permafrost distribution on the Tibetan Plateau. The Cryosphere11, 2527–2542, 10.5194/tc-11-2527-2017 (2017).
  • 14.Zhao L, Wu Q, Marchenko S, Sharkhuu N. Thermal state of permafrost and active layer in Central Asia during the International Polar Year. Permafrost and Periglacial Processes. 2010;21:198–207. doi: 10.1002/ppp.688. [DOI] [Google Scholar]
  • 15.Qin, Y. et al. Using ERA-Interim reanalysis dataset to assess the changes of ground surface freezing and thawing condition on the Qinghai–Tibet Plateau. Environmental Earth Sciences75, 826, 10.1007/s12665-016-5633-2 (2016).
  • 16.Ni J. Carbon storage in grasslands of China. Journal of Arid Environments. 2002;50:205–218. doi: 10.1006/jare.2001.0902. [DOI] [Google Scholar]
  • 17.Mu C, et al. Stable carbon isotopes as indicators for permafrost carbon vulnerability in upper reach of Heihe River basin, northwestern China. Quaternary International. 2014;321:71–77. doi: 10.1016/j.quaint.2013.12.001. [DOI] [Google Scholar]
  • 18.Daniel JH, et al. The impacts of recent permafrost thaw on land?atmosphere greenhouse gas exchange. Environmental Research Letters. 2014;9:045005. doi: 10.1088/1748-9326/9/4/045005. [DOI] [Google Scholar]
  • 19.Zhang YQ, Tang YH, Jie J, Yang YH. Characterizing the dynamics of soil organic carbon in grasslands on the Qinghai-Tibetan Plateau. Science in China Series D: Earth Sciences. 2007;50:113–120. doi: 10.1007/s11430-007-2032-2. [DOI] [Google Scholar]
  • 20.Dorfer C, Kuhn P, Baumann F, He JS, Scholten T. Soil organic carbon pools and stocks in permafrost-affected soils on the Tibetan plateau. PloS one. 2013;8:e57024. doi: 10.1371/journal.pone.0057024. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 21.Wang WY, Wang QJ, Lu ZY. Soil organic carbon and nitrogen content of density fractions and effect of meadow degradation to soil carbon and nitrogen of fractions in alpine Kobresia meadow. Science in China Series D: Earth Sciences. 2009;52:660–668. doi: 10.1007/s11430-009-0056-5. [DOI] [Google Scholar]
  • 22.Wang G, Li Y, Wang Y, Wu Q. Effects of permafrost thawing on vegetation and soil carbon pool losses on the Qinghai–Tibet Plateau, China. Geoderma. 2008;143:143–152. doi: 10.1016/j.geoderma.2007.10.023. [DOI] [Google Scholar]
  • 23.Genxu W, Yibo W, Ju Q, Qingbo W. Land cover change and its impacts on soil c and n in two watersheds in the Center of the Qinghai-Tibetan Plateau. Mountain Research and Development. 2006;26:153–162. doi: 10.1659/0276-4741(2006)26[153:LCCAII]2.0.CO;2. [DOI] [Google Scholar]
  • 24.Genxu W, Ju Q, Guodong C, Yuanmin L. Soil organic carbon pool of grassland soils on the Qinghai-Tibetan Plateau and its global implication. Science of the Total Environment. 2002;291:207–217. doi: 10.1016/S0048-9697(01)01100-7. [DOI] [PubMed] [Google Scholar]
  • 25.Ding J, et al. Decadal soil carbon accumulation across Tibetan permafrost regions. Nature Geoscience. 2017;10:420–424. doi: 10.1038/ngeo2945. [DOI] [Google Scholar]
  • 26.Aerts R, Verhoeven JTA, Whigham DF. Plant-mediated controls on nutrient cycling in temperate fens and bogs. Ecology. 1999;80:2170–2181. doi: 10.1890/0012-9658(1999)080[2170:PMCONC]2.0.CO;2. [DOI] [Google Scholar]
  • 27.Ding J, et al. The permafrost carbon inventory on the Tibetan Plateau: a new evaluation using deep sediment cores. Global Change Biology. 2016;22:2688–2701. doi: 10.1111/gcb.13257. [DOI] [PubMed] [Google Scholar]
  • 28.Zhang, X., Sun, S., Yong, S., Zhou, Z. & Wang, R. Vegetation map of the People’s Republic of China (1:1000000). (Geological Publishing House, 2007).
  • 29.Wang Z, et al. Mapping the vegetation distribution of the permafrost zone on theQinghai-Tibet Plateau. Journal of Mountain Science. 2016;13:1035–1046. doi: 10.1007/s11629-015-3485-y. [DOI] [Google Scholar]
  • 30.Hu G, et al. Soil carbon and nitrogen in the active layers of the permafrost regions in the Three Rivers’ Headstream. Environ Earth Sci. 2014;72:5113–5122. doi: 10.1007/s12665-014-3382-7. [DOI] [Google Scholar]
  • 31.Shang W, et al. Seasonal variations in labile soil organic matter fractions in permafrost soils with different vegetation types in the central Qinghai–Tibet Plateau. CATENA. 2016;137:670–678. doi: 10.1016/j.catena.2015.07.012. [DOI] [Google Scholar]
  • 32.Lupascu M, et al. High Arctic wetting reduces permafrost carbon feedbacks to climate warming. Nature Climate Change. 2014;4:51–55. doi: 10.1038/nclimate2058. [DOI] [Google Scholar]
  • 33.Wu X, et al. Soil organic carbon and its relationship to vegetation communities and soil properties in permafrost areas of the Central Western Qinghai-Tibet Plateau, China. Permafrost and Periglacial Processes. 2012;23:162–169. doi: 10.1002/ppp.1740. [DOI] [Google Scholar]
  • 34.Mu C, et al. Dissolved organic carbon, CO2, and CH4 concentrations and their stable isotope ratios in thermokarst lakes on the Qinghai-Tibetan Plateau. J. Limnol. 2016;75:313–319. [Google Scholar]
  • 35.Mu C, et al. Carbon loss and chemical changes from permafrost collapse in the northern Tibetan Plateau. Journal of Geophysical Research: Biogeosciences. 2016;121:1781–1791. [Google Scholar]
  • 36.Mu, C. C. et al. Permafrost collapse shifts alpine tundra to a carbon source but reduces N2O and CH4 release on the northern Qinghai-Tibetan Plateau. Geophysical Research Letters, 10.1002/2017gl074338, (2017).
  • 37.Kokelj SV, Jorgenson MT. Advances in Thermokarst Research. Permafrost and Periglacial Processes. 2013;24:108–119. doi: 10.1002/ppp.1779. [DOI] [Google Scholar]
  • 38.Tanski G, Couture N, Lantuit H, Eulenburg A, Fritz M. Eroding permafrost coasts release low amounts of dissolved organic carbon (DOC) from ground ice into the nearshore zone of the Arctic Ocean. Global Biogeochemical Cycles. 2016;30:1054–1068. doi: 10.1002/2015GB005337. [DOI] [Google Scholar]
  • 39.Grosse G, et al. Vulnerability of high‐latitude soil organic carbon in North America to disturbance. Journal of Geophysical Research: Biogeosciences. 2011;116:G00K06. doi: 10.1029/2010JG001507. [DOI] [Google Scholar]
  • 40.Olefeldt D, et al. Circumpolar distribution and carbon storage of thermokarst landscapes. Nature communications. 2016;7:13043. doi: 10.1038/ncomms13043. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 41.Ping CL, et al. High stocks of soil organic carbon in the North American Arctic region. Nature Geoscience. 2008;1:615–619. doi: 10.1038/ngeo284. [DOI] [Google Scholar]
  • 42.Mu C, et al. Controls on the distribution of the soil organic matter in mountain permafrost regions on the north Qinghai-Tibet Plateau. The Cryosphere Discuss. 2016;2016:1–19. doi: 10.5194/tc-2016-65. [DOI] [Google Scholar]
  • 43.Ohtsuka T, et al. Soil organic carbon pools in alpine to nival zones along an altitudinal gradient (4400–5300 m) on the Tibetan Plateau. Polar Science. 2008;2:277–285. doi: 10.1016/j.polar.2008.08.003. [DOI] [Google Scholar]
  • 44.Jobbágy EG, Jackson RB. The vertical distribution of soil organic carbon and its relation to climate and vegetation. Ecological Applications. 2000;10:423–436. doi: 10.1890/1051-0761(2000)010[0423:TVDOSO]2.0.CO;2. [DOI] [Google Scholar]
  • 45.Wu X, et al. A conceptual model of the controlling factors of soil organic carbon and nitrogen densities in a permafrost-affected region on the eastern Qinghai-Tibetan Plateau. Journal of Geophysical Research: Biogeosciences. 2017;122:1705–1717. [Google Scholar]
  • 46.Liu W, et al. Storage, patterns, and control of soil organic carbon and nitrogen in the northeastern margin of the Qinghai–Tibetan Plateau. Environmental Research Letters. 2012;7:035401. doi: 10.1088/1748-9326/7/3/035401. [DOI] [Google Scholar]
  • 47.Hugelius G, et al. Estimated stocks of circumpolar permafrost carbon with quantified uncertainty ranges and identified data gaps. Biogeosciences. 2014;11:6573–6593. doi: 10.5194/bg-11-6573-2014. [DOI] [Google Scholar]
  • 48.Kaiser K, et al. Turf-bearing topsoils on the central Tibetan Plateau, China: Pedology, botany, geochronology. CATENA. 2008;73:300–311. doi: 10.1016/j.catena.2007.12.001. [DOI] [Google Scholar]
  • 49.Wu X, et al. Environmental controls on soil organic carbon and nitrogen stocks in the high-altitude arid western Qinghai-Tibetan Plateau permafrost region. Journal of Geophysical Research: Biogeosciences. 2016;121:176–187. [Google Scholar]
  • 50.Zheng D, Zhang R, Yang Q. On the natural zonation in the Qinghai-Xizang Plateau. Acta Geographica Sinica. 1979;34:1–11. [Google Scholar]
  • 51.Cheng, G. & Wu, T. Responses of permafrost to climate change and their environmental significance, Qinghai‐Tibet Plateau. Journal of Geophysical Research: Earth Surface (2003–2012)112 (2007).
  • 52.Wu, Q. & Zhang, T. Changes in active layer thickness over the Qinghai‐Tibetan Plateau from 1995 to 2007. Journal of Geophysical Research: Atmospheres (1984–2012)115 (2010).
  • 53.Wu, X. et al. Environmental controls on soil organic carbon and nitrogen stocks in the high‐altitude‐arid western Qinghai‐Tibetan Plateau permafrost region. Journal of Geophysical Research: Biogeosciences, 10.1002/2015JG003138 (2015).
  • 54.Finzi AC, et al. Responses and feedbacks of coupled biogeochemical cycles to climate change: examples from terrestrial ecosystems. Frontiers in Ecology & the Environment. 2011;9:61–67. doi: 10.1890/100001. [DOI] [Google Scholar]
  • 55.Luo T, Li W, Zhu H. Estimated biomass and productivity of natural vegetation on the Tibetan Plateau. Ecological Applications. 2002;12:980–997. doi: 10.1890/1051-0761(2002)012[0980:EBAPON]2.0.CO;2. [DOI] [Google Scholar]
  • 56.Mu C, et al. Organic carbon pools in permafrost regions on the Qinghai–Xizang (Tibetan) Plateau. The Cryosphere. 2015;9:479–486. doi: 10.5194/tc-9-479-2015. [DOI] [Google Scholar]
  • 57.Yang YH, Fang JY, Guo DL, Ji CJ, Ma WH. Vertical patterns of soil carbon, nitrogen and carbon: nitrogen stoichiometry in Tibetan grasslands. Biogeosciences Discuss. 2010;2010:1–24. doi: 10.5194/bgd-7-1-2010. [DOI] [Google Scholar]
  • 58.Gregorich E, Monreal C, Carter M, Angers D, Ellert B. Towards a minimum data set to assess soil organic matter quality in agricultural soils. Canadian journal of soil science. 1994;74:367–385. doi: 10.4141/cjss94-051. [DOI] [Google Scholar]
  • 59.Xu, C., Guo, L., Ping, C. L. & White, D. M. Chemical and isotopic characterization of size‐fractionated organic matter from cryoturbated tundra soils, northern Alaska. Journal of Geophysical Research: Biogeosciences (2005–2012)114 (2009).
  • 60.Ping CL, et al. Cryogenesis and soil formation along a bioclimate gradient in Arctic North America. Journal of Geophysical Research: Biogeosciences. 2008;113:G03S12. doi: 10.1029/2008JG000744. [DOI] [Google Scholar]
  • 61.Michaelson, G. J., Dai, X. Y. & Ping, C. L. in Cryosols (ed J. M. Kimble) Ch. 1, 463–477 (Springer-Verlag, 2004).
  • 62.Geng Y, et al. Soil respiration in Tibetan alpine grasslands: Belowground biomass and soil moisture, but not soil temperature, best explain the large-scale patterns. PloS one. 2012;7:e34968. doi: 10.1371/journal.pone.0034968. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 63.Biasi C, et al. Initial effects of experimental warming on carbon exchange rates, plant growth and microbial dynamics of a lichen-rich dwarf shrub tundra in Siberia. Plant and Soil. 2008;307:191–205. doi: 10.1007/s11104-008-9596-2. [DOI] [Google Scholar]
  • 64.Oberbauer SF, et al. Tundra CO2 fluxes in response to experimental warming across latitudinal and moisture gradients. Ecological Monographs. 2007;77:221–238. doi: 10.1890/06-0649. [DOI] [Google Scholar]
  • 65.Strebel D, Elberling B, Morgner E, Knicker HE, Cooper EJ. Cold‐season soil respiration in response to grazing and warming in High‐Arctic Svalbard. Polar Research. 2010;29:46–57. doi: 10.1111/j.1751-8369.2010.00154.x. [DOI] [Google Scholar]
  • 66.Siewert MB, Hugelius G, Heim B, Faucherre S. Landscape controls and vertical variability of soil organic carbon storage in permafrost-affected soils of the Lena River Delta. Catena. 2016;147:725–741. doi: 10.1016/j.catena.2016.07.048. [DOI] [Google Scholar]
  • 67.Prihar SS, Hundal SS. Determination of bulk density of soil clod by saturation. Geoderma. 1971;5:283–286. doi: 10.1016/0016-7061(71)90039-5. [DOI] [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Supplementary information (546.5KB, doc)
Dataset 1 (61.2KB, csv)
Dataset 2 (3.6KB, csv)

Articles from Scientific Reports are provided here courtesy of Nature Publishing Group

RESOURCES