Automated detection and monitoring of methane super-emitters using satellite data

被引:43
作者
Schuit, Berend J. [1 ,2 ]
Maasakkers, Joannes D. [1 ]
Bijl, Pieter [1 ]
Mahapatra, Gourav [1 ]
van den Berg, Anne-Wil [1 ,10 ]
Pandey, Sudhanshu [1 ,11 ]
Lorente, Alba [1 ]
Borsdorff, Tobias [1 ]
Houweling, Sander [1 ,3 ]
Varon, Daniel J. [2 ,4 ]
Mckeever, Jason [2 ]
Jervis, Dylan [2 ]
Girard, Marianne [2 ]
Irakulis-Loitxate, Itziar [5 ,6 ]
Gorrono, Javier [5 ]
Guanter, Luis [5 ,7 ]
Cusworth, Daniel H. [8 ,9 ]
Aben, Ilse [1 ,3 ]
机构
[1] SRON Netherlands Inst Space Res, Leiden, Netherlands
[2] GHGSat Inc, Montreal, PQ, Canada
[3] Vrije Univ Amsterdam, Dept Earth Sci, Amsterdam, Netherlands
[4] Harvard Univ, Sch Engn & Appl Sci, Cambridge, MA USA
[5] Univ Politecn Valencia UPV, Res Inst Water & Environm Engn IIAMA, Valencia, Spain
[6] United Nations Environm Program, Int Methane Emiss Observ, Paris, France
[7] Environm Def Fund, Amsterdam, Netherlands
[8] Carbon Mapper Inc, Pasadena, CA USA
[9] Univ Arizona, Arizona Inst Resilience, Tucson, AZ USA
[10] Wageningen Univ, Dept Meteorol & Air Qual, Wageningen, Netherlands
[11] CALTECH, Jet Prop Lab, Pasadena, CA USA
关键词
NATURAL-GAS; ATMOSPHERIC METHANE; QUANTIFYING METHANE; POINT SOURCES; EMISSIONS; TROPOMI; QUANTIFICATION; SENTINEL-2; RESOLUTION; CITY;
D O I
10.5194/acp-23-9071-2023
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A reduction in anthropogenic methane emissions is vital to limit near-term global warming. A small number of so-called super-emitters is responsible for a disproportionally large fraction of total methane emissions. Since late 2017, the TROPOspheric Monitoring Instrument (TROPOMI) has been in orbit, providing daily global coverage of methane mixing ratios at a resolution of up to 7x5.5 km2, enabling the detection of these super-emitters. However, TROPOMI produces millions of observations each day, which together with the complexity of the methane data, makes manual inspection infeasible. We have therefore designed a two-step machine learning approach using a convolutional neural network to detect plume-like structures in the methane data and subsequently apply a support vector classifier to distinguish the emission plumes from retrieval artifacts. The models are trained on pre-2021 data and subsequently applied to all 2021 observations. We detect 2974 plumes in 2021, with a mean estimated source rate of 44 t h-1 and 5-95th percentile range of 8-122 t h-1. These emissions originate from 94 persistent emission clusters and hundreds of transient sources. Based on bottom-up emission inventories, we find that most detected plumes are related to urban areas and/or landfills (35 %), followed by plumes from gas infrastructure (24 %), oil infrastructure (21 %), and coal mines (20 %). For 12 (clusters of) TROPOMI detections, we tip and cue the targeted observations and analysis of high-resolution satellite instruments to identify the exact sources responsible for these plumes. Using high-resolution observations from GHGSat, PRISMA, and Sentinel-2, we detect and analyze both persistent and transient facility-level emissions underlying the TROPOMI detections. We find emissions from landfills and fossil fuel exploitation facilities, and for the latter, we find up to 10 facilities contributing to one TROPOMI detection. Our automated TROPOMI-based monitoring system in combination with high-resolution satellite data allows for the detection, precise identification, and monitoring of these methane super-emitters, which is essential for mitigating their emissions.
引用
收藏
页码:9071 / 9098
页数:28
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