2022
DOI: 10.1007/s00376-022-1434-6
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Decadal Methane Emission Trend Inferred from Proxy GOSAT XCH4 Retrievals: Impacts of Transport Model Spatial Resolution

Abstract: In recent studies, proxy XCH4 retrievals from the Japanese Greenhouse gases Observing SATellite (GOSAT) have been used to constrain top-down estimation of CH4 emissions. Still, the resulting interannual variations often show significant discrepancies over some of the most important CH4 source regions, such as China and Tropical South America, by causes yet to be determined. This study compares monthly CH4 flux estimates from two parallel assimilations of GOSAT XCH4 retrievals from 2010 to 2019 based on the sam… Show more

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Cited by 3 publications
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“…LETKF has been used extensively in chemical data assimilation, and has benefits compared with other algorithms, most notably the ease of implementation for a wide variety of simulations. LETKF and related ensemble Kalman filter methods have been used for CO2 flux inversions [Liu et al, 2016;Kong et al, 2022], single-species studies of NO2, SO2, and NH3 emissions [Miyazaki et al, 2012a;Dai et al, 2021;van der Graaf et al, 2022], and analysis of methane emission trends [Zhu et al, 2022]. Multispecies assimilation, 4D assimilation of temporally scattered observations, and flexibility in state vector definition are easy to implement under the LETKF framework; the algorithm also provides detailed error characterization including correlations as part of the solution.…”
Section: Introductionmentioning
confidence: 99%
“…LETKF has been used extensively in chemical data assimilation, and has benefits compared with other algorithms, most notably the ease of implementation for a wide variety of simulations. LETKF and related ensemble Kalman filter methods have been used for CO2 flux inversions [Liu et al, 2016;Kong et al, 2022], single-species studies of NO2, SO2, and NH3 emissions [Miyazaki et al, 2012a;Dai et al, 2021;van der Graaf et al, 2022], and analysis of methane emission trends [Zhu et al, 2022]. Multispecies assimilation, 4D assimilation of temporally scattered observations, and flexibility in state vector definition are easy to implement under the LETKF framework; the algorithm also provides detailed error characterization including correlations as part of the solution.…”
Section: Introductionmentioning
confidence: 99%