Abstract
The dramatic increase of natural gas use in China, as a substitute for coal, helps to reduce CO2 emissions and air pollution, but the climate mitigation benefit can be offset by methane leakage into the atmosphere. We estimate methane emissions from 2010 to 2018 in four regions of China using the GOSAT satellite data and in-situ observations with a high-resolution (0.1° × 0.1°) inverse model and analyze interannual changes of emissions by source sectors. We find that estimated methane emission over the north-eastern China region contributes the largest part (0.77 Tg CH4 yr−1) of the methane emission growth rate of China (0.87 Tg CH4 yr−1) and is largely attributable to the growth in natural gas use. The results provide evidence of a detectable impact on atmospheric methane observations by the increasing natural gas use in China and call for methane emission reductions throughout the gas supply chain and promotion of low emission end-use facilities.
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Over the last decade, natural gas (NG) has become the fastest-growing fossil energy in China as a result of coal-to-gas switch action to reduce air pollution and carbon dioxide (CO2) emissions. The NG consumption increased dramatically from 108.5 billion standard cubic meters (bcm) in 2010 (4% of primary energy consumption) to a record level of 306.4 bcm in 2019 (8.1% of primary energy consumption), and it will keep increasing according to China’s energy plan, and the share of gas in the energy mix is expected to reach 15% by 2030, while coal and oil consumption will decline1. Domestic production of natural gas has increased approximately twofold from 94.8 to 176.2 bcm, and the imported NG also increased dramatically. Methane (CH4) is the primary component of NG and the second most important anthropogenic greenhouse gas after CO2 with an estimated 20-year global warming potential 84–86 times greater than CO22. Oil and natural gas production is one of the major sources of CH4 in the atmosphere3,4. The CH4 leakage rate from NG upstream (extraction and gathering, processing, transmission and storage, distribution) and end-use combustion to the atmosphere is the key factor determining climatic advantage of the coal-to-gas shift5,6. Atmospheric measurements studies found that a large amount of methane emissions from oil and gas production are unaccounted for the bottom-up inventories7,8. Chan et al.9 reported eight-year estimates of methane emissions from oil and gas operations in western Canada and found that they are nearly twice of those from inventories. Zhang et al.10 estimated a leakage equivalent to 3.7% (~ 60% higher than the national average leakage rate) of the gross gas extracted from the largest oil-producing basin in the United States (US) using high-resolution satellite observations. Moreover, basin-wide estimates of emissions using in situ airborne data reported an inverse relationship between the basin-level leakage rate and gas production11.
Emissions from NG distribution network were found to be the major CH4 contributor (56%) accounting for the detectable CH4 emissions in Paris, as evidenced from CH4 and its isotopic composition by mobile measurement on the ground12. Leaks from the NG pipelines were identified as the main source of CH4 in emissions in London13 and several US cities and the leak rates vary in a large range (from 0.004 leaks/km to 0.63 leaks/km)14,15,16. Advanced mobile leak detection (AMLD) platform combined with GIS information of utility pipeline is used to estimate CH4 leakage from pipelines from the local distribution systems in the United States. It is found that the leakage from those pipelines is approximately 5 times greater than inventories based on self-reported utility leakage data17. It was also found that the chances of leakage increase with the aging of the pipeline infrastructure irrespective of the material types.
From 2010 to 2019, the length of the gas supply pipelines in the urban areas of China has increased approximately threefold from 298.6 to 935.6 million meters including 82% in the city and 18% in the county seat18. The CH4 leakage from those pipelines is not actively monitored, which might be a potential threat to the net carbon reduction of China’s energy switch strategy to reach the carbon–neutral goal in 206019. China is the biggest methane emitting country3 and many studies report increases in methane emissions from China in the past decade considering China as one region (eg. Zhang et al.20, Jackson et al.21, Sheng et al.22). But there is limited data publicly available on upstream emissions and local distribution of natural gas emissions in China among different subregions. To overcome the limited access to the proprietary data, the combination of surface observations and satellite observations of column-averaged dry-mol fractions of methane provide an opportunity to discover the leaks and to estimate emissions through top-down approaches. Here we use nine years of observations by the GOSAT satellite and the WDCGG (World Data Centre for Greenhouse Gases) surface stations, for the first time to estimate methane emissions in subregions of China from 2010 to 2018 using a high-resolution inverse model and find an impact of increasing natural gas use in China on CH4 emissions, signaling a need for effective mitigation strategies.
Results and discussions
Regional inversion of CH4 emission
The NIES-TM-FLEXPART-VAR (NTFVAR) global inverse model23,24 is used to estimate the CH4 emissions constrained by GOSAT and surface observations from 2010 to 2018. Here we focus on the analysis of inverse model results over China and its subregions. There are several ways of regional division of China. In this study, we use a four-region division, based on different geographical features, that is, the north-eastern China (NE), the south-eastern China (SE), the north-western China (NW), and the Qinghai-Tibetan Plateau (TP) areas (Fig. 1). These regions differ in climate, agriculture type, also differ in the major economic activities and CH4 emission sources. The NE and SE regions are in the Eastern monsoon area and are divided by the Qingling Mountains-Huai River, which is also the dividing line of 800 mm mean annual precipitation, with the SE region experiencing more precipitation. Daxinganling-Yinshan-Helan mountain is the physical geographic boundary of North and Northwest, which is also the dividing line of 400 mm mean annual precipitation. The Northwest region is a non-monsoon area with mean annual precipitation of less than 400 mm, including Xinjiang and Inner Mongolia where the main agriculture is animal husbandry25. TP is a region at an average elevation over 4000 m, with the Kunlunshan range, Qilianshan range, and Hengduan mountain chain as the division to other three regions.
Our optimized estimate of the average Chinese emissions is 58 Tg CH4 yr−1 during 2010–2018 (with model uncertainty of 8.6 Tg CH4 yr−1), around 12% lower than the average prior emission of 65.6 Tg CH4 yr−1, and our estimate is consistent with Sheng’s22 top-down study with 57.6 Tg CH4 yr−1 over 2010–2017. The optimized average CH4 budgets from the four subregions over 2010–2018 are 30.0 \(\pm\) 1.0 (average \(\pm\) standard deviation) Tg CH4 yr−1 from SE, 23.3 \(\pm\) 2.7 Tg CH4 yr−1 from NE, 2.9 \(\pm\) 0.2 Tg CH4 yr−1 from NW, and 1.7 \(\pm\) 0.1 Tg CH4 yr−1 from TP. NE and SE emit an order of magnitude more CH4 compared to NW and TP. The inverse model corrections are opposite in western and eastern China as illustrated in Fig. 1. Prior emissions in TP are underestimated, especially in the west part of TP by 15–30%. Emissions are also underestimated in the west part of NW where main flux hotspots depict the oil production sites. Prior emissions in the eastern coastal regions, however, are overestimated by 15–25%, where high density and a large quantity of fluxes are shown. The scale of the adjustment in different regions are within the uncertainty range estimated for other countries26. The overestimation of anthropogenic emissions from China has been reported by previous inversion studies using former versions of EDGAR inventories20,27,28,29. Our high-resolution inversion suggests that the overestimation originates from the western part of China while its eastern part is underestimated. The improvement of model fit to the observations by the inverse model is confirmed by an independent model evaluation with in-situ measurement and airplane observations (shown in Supplementary Table 1).
Interannual changes in CH4 emissions
Figure 2 shows the seasonal variation and anomalies of prior and posterior total emissions in the four regions. The seasonal variability in TP and SE with maximum emissions in summer and minimum in winter corresponds to wetlands and rice paddies, since SE is the main rice production area of China30. A pronounced peak in summer and the second peak in winter is evident both in NW and NE, where residential heat is supplied in winter. The posterior fluxes in NW, TP, and NE show large variability compared to the prior fluxes.
The anomalies in interannual variability are calculated by subtracting the long-term monthly mean flux from the raw time series and centred running mean (11-month) is constructed on the resultant time series to smooth out short-term (monthly) fluctuations and highlight longer-term (yearly) trends. The posterior flux of TP shows a notable positive anomaly in 2011 in response to the La Nina event during 2010–2011 and a negative anomaly in response to the strong El Nino event during 2015–2016. A decreasing trend is detected during the transition from 2011 La Nina to 2016 El Nino in the posterior flux in TP where the natural emissions are dominated, and similar trend was reported in Southern Asia during the period31. An observation study also found that the atmospheric CH4 concentration in TP increased rapidly during 2010–2012 and slowly during 2013–201532. The rapid increases in the latter half of 2018 in all regions may be due to using 11-month running mean instead of signal from the inversion and the variation in NW need to be further investigated.
Statistically significant increase trends in 2010–2018 are detected in NE for both prior and posterior flux anomalies of total CH4 emissions (95% confidence P ≤ 0.05 by Mann–Kendall approach33). The increasing trend in SE is weaker but still significant (95% confidence). No trends in TP and NW are found. We estimate a yearly increase rate of 0.87 Tg CH4 yr−1 for the whole of China during 2010–2018, which is consistent with Zhang’s20 simulation of 0.72 Tg CH4 yr−1 for China during 2010–2016, but lower than the estimate of Miller’s28 with 1.1 Tg CH4 yr−1 over 2010–2015. NE contributes the most to the growth rate (0.77 Tg CH4 yr−1) followed by SE (0.13 Tg CH4 yr−1), which is stronger compared to the increase of the prior fluxes (0.35 Tg CH4 yr−1).
Trends in regional emission sectors
Anthropogenic CH4 emission is about 90% of the total CH4 emission in China31,34. Figure 3 shows the relative contributions of major CH4 emission sources in China and related productions percentage in the four regions analysed in this study using data from EDGAR v5 and China National Statistic Yearbook18. The major anthropogenic emission sources are solid fuel (31%), rice production (24%), waste (18%), and livestock (15%). NE is the most energy production region producing 55, 77, and 40% of Chinese national coal, oil, and natural gas each year, followed by NW which produces 29, 14, and 23% of Chinese national coal, oil and natural gas each year. 77% of rice is produced in SE and 21% in NE. The total volume of collected municipal solid waste and wastewater discharged are mainly in SE (60%) and NE (35%) due to its large population in SE (58% of national population) and NE (36% of national population). Ruminant population spreads in the four regions with 33% in NE, 31% in NW, 26% in SE, and 10% in TP.
Coal production in China peaked in 2012 and declined since then from 41 to 37 Gt yr−1 until 2018 with a significant decrease in SE (decrease from 7.5 to 4 Gt yr−1).18 Rice production, ruminant population, and crude oil production remain relatively stable (Supplementary Fig. S1). Waste (volume of discharged sewage and domestic removed solid waste) and natural gas production show a dramatic increase during 2010–2018, which might be the major contributors to CH4 emission changes. The increase of CH4 emissions from waste in China is 0.40 \(\pm\) 0.08 Tg CH4 yr−1 during 2010–2018 (according to EDGAR v6.03), with 60% occurring in SE counterweighing the decrease in emissions caused by coal production. The increase in total CH4 emissions in SE is not as significant as it is in NE since CH4 emission in SE from coal production decrease significantly and counterweighs the emissions from increasing waste and NG. The estimated CH4 emission from coal production in SE is 0.36 Tg CH4 yr−1 with a national average emission factor of 9.3 m3 t−1, while previous studies suggested that the coal mines with high methane content have emission factors over 20 m3 t−1 in SE, which indicates that both the coal emissions and their decline can be even larger35,36.
Contribution of natural gas emission in north-eastern China
Estimation of CH4 emissions from NG includes leakage from energy extraction, processing, transport, and leakage at end-use applicant according to site measurements and province-level data on pipeline distribution leakage provided by NG suppliers (see Methods). The left panel in Fig. 4 shows the upper and lower bounds of the estimates of CH4 emission from NG and the total CH4 emission trend with proportioned uncertainty during 2010–2018 in NE, both of which depict statistically significant increasing trends. The variation of total CH4 emission increase closely follows the changes of CH4 emissions from NG (Fig. 4 right panel), indicating NG leakage of CH4 emissions is a notable driver of CH4 emission increase in NE. Removing the waste sector increment (0.14 Tg CH4 yr−1) estimated by EDGAR v6.0 from the total increase in NE, we estimate an average CH4 emission growth of 0.63 Tg CH4 yr−1 in NE. The estimated NG leakage contributes 0.14 ~ 0.23 Tg CH4 yr−1, and the changes of pipeline leakage dominate the variation of CH4 emissions from NG which is accounted from province-level loss amount from gas supply pipeline. Natural gas pipeline leaks (estimated by the difference between the amount of gas purchased and the amount of gas sold) is 3.4% in NE and 2.7% in China during 2010–2018, which is higher than the estimate of ~ 1.4% in Russia37 and within the range of British estimate between 1.9 and 10.8%38. Taking 2018 year as example, in NE region the NG production is 63 bcm, and the NG consumption is 101.5 bcm18. The estimated total NG emission is 5.2 ~ 8.6% of the regional NG production or 3.2 ~ 5.3% of the regional NG consumption. A previous study39 has found that the self-accounting by NG supplies potentially can be lower than the actual leakage. The discrepancy between top-down and bottom-up estimations of CH4 emissions implies that a significant amount of CH4 leaks are not accounted for. Our estimates of the growing trend are higher than it in the inventory, and some other studies suggest that CH4 emissions from NG use can be underestimated by the bottom-up approach in China40. The analysis shows a strong correlation between the trend in NG use and the increase of the CH4 concentration over NE China, translated into emission changes by the inverse model.
Implications for natural gas emission mitigation
Our analysis shows that the top-down approach based on inversion modeling can support an observation-driven assessment of methane emissions from methane leakage, especially GOSAT data providing a long-term trend. Results highlight the relevance of NG use and pipeline expansion to methane emissions. Such an increase of leaking methane from NG production and use chain will cause potential danger to diverse stakeholders despite introducing a net carbon reduction.
Given the large NG distribution pipelines 935.6 million meters in China, NG leakage can be a significant waste of energy and money. It can also accelerates ozone formation in urban areas41, especially in North China where surface ozone is already a severe air pollution problem42,43. Increase the monitoring of NG CH4 emissions through a number of methods from facility-level measurements44 to city-scale surveys39,45,46 is a pressing task to successful mitigation strategy. Advanced leak reduction technologies in the NG end-use sector can also bring economic, environmental, and health benefits17,46.
Methods
Methane observations
Atmospheric CH4 observations from satellite, surface, aircraft, and ship platforms are used in this study. Greenhouse Gases Observing Satellite (GOSAT) is the first satellite dedicated to observing greenhouse gases from space launched in January 200947. The orbit overpasses at around 12:49 (local time) every three days, and the diameter of the footprint in nadir is approximately 10.5 km. The Thermal and Near-infrared Sensor for carbon Observation-Fourier Transform Spectrometer (TANSO-FTS) is the main instrument of GOSAT, measuring short-wavelength infrared (SWIR) radiance reflected from the Earth’s surface and atmosphere. We use column-averaged dry-air mole fraction of methane (XCH4) data from the NIES GOSAT Level 2 retrievals (v. 02.81)48. The GOSAT XCH4 data is further corrected by subtracting the monthly mean difference for each 5° latitude band between GOSAT observations and the model simulated XCH4 optimized with inversion that uses only surface observations31. Ground-based atmospheric CH4 observation data are obtained from WDCGG, and aircraft and ships observations are from NIES (map shown in Supplementary Fig. S2). Weekly flask-air samples and continuous measurements are contained in the ground-based atmospheric CH4 observation data. The data from the flask sampling sites are used as an average concentration for a pair of flasks. For the discrete flask-air measurements with pair sampling, average mole fraction for the pair is used. The continuous observations are first averaged at hourly scale. Hourly data within 12:00–16:00 LT with well-mixed conditions (except for mountain sites, where 0:00–4:00 LT) is used to represent daily averages as model inputs. Rejection thresholds are set for data of GOSAT and the ground-based sites to filter out outliers (detailed description at Wang et al.23).
Atmospheric inverse model
We use the joint Eulerian three-dimensional transport model coupled with a Lagrangian model FLEXPART (FLEXible PARTicle dispersion model) as the Lagrangian Particle Dispersion Model (LPDM)49,50. The coupled model NIES-TM-FLEXPART-VAR (NTFVAR) combines National Institute for Environmental Studies Transport Model (NIES-TM) v08.1i with a horizontal resolution of 2.5° and 32 hybrid-isentropic vertical levels51 and FLEXPART model v.8.052. The transport model is driven by the meteorological data from the Japanese Meteorological Agency (JMA) Climate Data Assimilation System (JCDAS)53,54. In this study, variational inversion scheme is combined with the high-resolution variant of the transport model and its adjoint described by Maksyutov et al.24, and applied to inverse modelling of methane emissions in a number of studies4,21,31. The inverse modeling problem is formulated and solved to find the optimal value of corrections to prior fluxes considering mismatches of observations and modelled concentrations. Variational optimization is applied to obtain flux corrections as anthropogenic and wetland scaling factors to vary prior uncertainty fields on a monthly basis at a 0.1° × 0.1° resolution separately for anthropogenic and natural wetland emissions with bi-weekly time steps. The inverse model operates at the resolution of coupled transport model of 0.1° × 0.1° and applies spatial flux covariance length of 500 km. Uncertainty tests for the inverse model have been performed using randomly perturbed observations and perturbed fluxes for different regions. We perturbed five sets of observations consistently with the observation uncertainty at each site and produced five sets of perturbed monthly Emissions Database for Global Atmospheric Research (EDGAR) and VISIT fluxes with a random scaling factor applied separately for regions and each month. We then performed an inversion using the perturbed pseudo-observations as measurement data and the perturbed fluxes (perturbed EDGAR and VISIT combined with the non-perturbed soil sink, biomass burning, and other natural emissions from the ocean, geological sources, and termites) as the prior fluxes and compared the inversion results to get the standard deviation of the estimated emissions. The uncertainty of inverse simulation in China is 16.5%23,24. Independent evaluation of the inverse model was made by observations at Dongsha Island (DSI) (20.7 N, 116.7E) and Novosibirsk (NOV) (55 N, 83E). DSI is located to the south of China and NOV is to the north of China (shown in Supplementary Fig. S1). Bias and Root Mean Squared Error (RMSE) between observed and modelled concentrations with posterior fluxes decrease in both sites, compared to the modelled concentrations with prior fluxes (Supplementary S2).
A combination of emission inventories is used as prior fluxes. Annual anthropogenic emissions are from the EDGAR v5. EDGAR provides a grid map at 0.1° × 0.1° resolution at the global level, and emissions of CH4 include all sources, such as fossil fuel production, agriculture, wastes and so on55,56. The monthly variation of anthropogenic emissions is based on the EDGAR climatology data of 2015. EDGAR v5 updates emissions until 2015. Data beyond 2015 are extended by proportional scaling of EDGAR values of 2015 to the respective yearly values in the report of PBL Netherlands Environmental Assessment Agency57. Wetlands emissions are from VISIT model simulations58. Biomass burning emissions are from the daily Global Fire Assimilation System (GFASv1.2)59. Climatological emissions from the oceanic60, geological61, and termite62 sources are also included.
Estimation of natural gas emissions
As a comparison, fugitive CH4 emissions from NG systems are estimated on the basis of the 2006 IPCC Guidelines for Greenhouse Gas Inventories, and recent measurements. The province-level annual natural gas production data is collected from the China Statistical Yearbook18 (2010–2018) (see Supplementary Fig. S3 for more details). The fugitive emissions rates (FERs) for NG systems upstream (energy extraction, processing, transport, and distribution) in China is set as constant at 1.8% (0.35kt CH4 PJ−1) for the 2010–2018 period taken from Schwietzke’s63 study. There exist only limited measurements of gas leakage in China. The conventional gas methane leakage rates reported in the latest U.S. field studies are applied to China. Alvarez et al.8 found agreement between site-level results and top-down results, with the best estimate of supply chain emissions. This estimate of oil/NG CH4 emissions can also be expressed as a production-normalized emission rate of 2.3% (+ 0.4%/− 0.3%) by normalizing annual gross natural gas production, which is mainly from production, gathering, and processing sources. Zhang et al.10 estimated natural gas production emission rate (or methane leakage rate) of 3.7 \(\pm\) 0.7% by a high-resolution satellite data-based atmospheric inversion framework which is ~ 60% higher than the national average of 2.3 \(\pm\) 0.3% in the largest oil and gas production basin in the US. The leakage rate is even higher for the rapidly developing Delaware sub-basin (4.1%). The emission distribution is based on province-level loss amount from gas supply pipeline, defined as the difference between the amount of gas purchased (e.g., what enters the gateway to a province) and the amount of gas sold (e.g., what is metered to consumers), obtained from the China City Statistical Yearbook (2010–2018)64 (see Supplementary Fig. S3 for more details). End-use (power generation, residential cooking, and industrial boilers) processes included in the estimation is 0.4–0.9% following by Lebel’s65 estimation of appliance level leakage. Taking the upstream and end-use EFs into account, the CH4 emission is estimated as the sum of low FERs (1.8%) and high FERs (4.4%) for production, 0.4–0.9% of end-user combustion, and the accounted province-level loss.
Data availability
The inverse model and forward transport model code can be made available to potential research collaborators upon reasonable request. The XCH4 retrievals (NIES Level 2 retrievals) are available at: https://data2.gosat.nies.go.jp. Furthermore, in-situ data are archived on the WDCGG Global Network: https://gaw.kishou.go.jp (more details on data file information and references see Supplementary S4). Other data products used in the study like the EDGAR emissions inventory and GFAS Database are available for download at http://edgar.jrc.ec.europa.eu/ and https://www.ecmwf.int/en/forecasts/dataset/global-fire-assimilation-system. Wetland emission VISIT are available at https://www.nies.go.jp/doi/10.17595/20210521.001-e.html, and the NIES airborne and JR STATION (Japan-Russia Siberian Tall Tower Inland Observation network) data are available at https://db.cger.nies.go.jp/portal/geds/atmosphericAndOceanicMonitoring. Ship data are available by request to NIES observation group.
Change history
02 February 2023
A Correction to this paper has been published: https://doi.org/10.1038/s41598-023-28548-6
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Acknowledgements
We thank the Ministry of the Environment, Japan for the financial support for the GOSAT project. We are grateful for all methane data contributors at WDCGG, the Environment and Climate Change Canada and other institutions worldwide, including Adelaide Dinoi, Andrea Lanza, Claudia Calidonna, Dagmar Kubistin, Doug Worthy, Emilio Cuevas, Frank Meinhardt, Haeyoung Lee, Jgor Arduini, Kazuyuki Saito, Luciana Vanni Gatti, Ludwig Ries, Luigi Caracciolo di Torchiarolo, Martin Steinbacher, Michel Ramonet, Nahas, Alberth Christian, Nina Paramonova, Paolo Cristofanelli, Paul Krummel, Ronald Spoor, Salvatore Piacentino, Seung-Yeon Kim, Shuji Aoki, Simon O'Doherty, Sylvia Nichol, Thumeka Mkololo, Toshinobu Machida, Tuomas Laurila, Motoki Sasakawa, Mikhail Arshinov and their colleagues, as well as the funding agencies supporting their measurements.
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F.W., S.M. and T.M. led the study and wrote the manuscript with inputs from all co-authors; F.W. performed inversion simulations, conducted evaluation experiments and analysed the results with inputs from S.M.; S.M, A.T. and R.J. contributed to model set up and testing; A.I. provided wetland emission simulations; I.M., Y.Y. and T.M. contributed to satellite data analysis; Y.T., X.L., Y.Z., J.W.K., I.M. and J.V.L. provided measurements data curation; all authors reviewed and commented on the manuscript.
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The original online version of this Article was revised: The original version of this Article contained an error in the upper panel of Figure 4, where the Total CH4 emission was inadvertently shown in three lines instead of in a solid line with the uncertainty displayed in orange shadow.
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Wang, F., Maksyutov, S., Janardanan, R. et al. Atmospheric observations suggest methane emissions in north-eastern China growing with natural gas use. Sci Rep 12, 18587 (2022). https://doi.org/10.1038/s41598-022-19462-4
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DOI: https://doi.org/10.1038/s41598-022-19462-4
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