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Using Space‐Based Observations and Lagrangian Modeling to Evaluate Urban Carbon Dioxide Emissions in the Middle East
Author(s) -
Yang Emily G.,
Kort Eric A.,
Wu Dien,
Lin John C.,
Oda Tomohiro,
Ye Xinxin,
Lauvaux Thomas
Publication year - 2020
Publication title -
journal of geophysical research: atmospheres
Language(s) - English
Resource type - Journals
eISSN - 2169-8996
pISSN - 2169-897X
DOI - 10.1029/2019jd031922
Subject(s) - lagrangian , emission inventory , environmental science , greenhouse gas , satellite , middle east , climatology , meteorology , geography , atmospheric sciences , mathematics , air quality index , geology , physics , oceanography , astronomy , mathematical physics , archaeology
Improved observational understanding of urban CO 2 emissions, a large and dynamic global source of fossil CO 2 , can provide essential insights for both carbon cycle science and mitigation decision making. Here we compare three distinct global CO 2 emissions inventory representations of urban CO 2 emissions for five Middle Eastern cities (Riyadh, Mecca, Tabuk, Jeddah, and Baghdad) and use independent satellite observations from the Orbiting Carbon Observatory‐2 (OCO‐2) satellite to evaluate the inventory representations of afternoon emissions. We use the column version of the Stochastic Time‐Inverted Lagrangian Transport (X‐STILT) model to account for atmospheric transport and link emissions to observations. We compare XCO 2 simulations with observations to determine optimum inventory scaling factors. Applying these factors, we find that the average summed emissions for all five cities are 100 MtC year −1 (50–151, 90% CI), which is 2.0 (1.0, 3.0) times the average prior inventory magnitudes. The total adjustment of the emissions of these cities comes out to ~7% (0%, 14%) of total Middle Eastern emissions (~700 MtC year −1 ). We find our results to be insensitive to the prior spatial distributions in inventories of the cities' emissions, facilitating robust quantitative assessments of urban emission magnitudes without accurate high‐resolution gridded inventories.