4.5 Article

Can a regional-scale reduction of atmospheric CO2 during the COVID-19 pandemic be detected from space? A case study for East China using satellite XCO2 retrievals

期刊

ATMOSPHERIC MEASUREMENT TECHNIQUES
卷 14, 期 3, 页码 2141-2166

出版社

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/amt-14-2141-2021

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资金

  1. European Space Agency [4000127610/19/I-NS]
  2. GHG-CCI+ [4000126450/19/I-NB]
  3. Natural Environment Research Council [nceo020005, NE/R016518/1] Funding Source: researchfish

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The study examined the reduction of anthropogenic CO2 emissions in East China during the COVID-19 pandemic by analyzing space-based observations of atmospheric CO2. Results showed a decrease in emissions by approximately 10% in March and April 2020, but with significant variability and differences across the satellite data products analyzed. Challenges in accurately detecting and quantifying emission reductions with current satellite datasets were highlighted, suggesting a need for more sophisticated analysis methods incorporating transport modeling and a priori information on CO2 surface fluxes.
The COVID-19 pandemic resulted in reduced anthropogenic carbon dioxide (CO2) emissions during 2020 in large parts of the world. To investigate whether a regionalscale reduction of anthropogenic CO2 emissions during the COVID-19 pandemic can be detected using space-based observations of atmospheric CO2, we have analysed a small ensemble of 000-2 and GOSAT satellite retrievals of columnaveraged dry-air mole fractions of CO2, i.e. XCO2. We focus on East China and use a simple data-driven analysis method. We present estimates of the relative change of East China monthly emissions in 2020 relative to previous periods, limiting the analysis to October-to-May periods to minimize the impact of biogenic CO2 fluxes. The ensemble mean indicates an emission reduction by approximately 10 % +/- 10 % in March and April 2020. However, our results show considerable month-to-month variability and significant differences across the ensemble of satellite data products analysed. For example, 000-2 suggests a much smaller reduction (similar to 1 %2 % +/- 2 %). This indicates that it is challenging to reliably detect and to accurately quantify the emission reduction with current satellite data sets. There are several reasons for this, including the sparseness of the satellite data but also the weak signal; the expected regional XCO2 reduction is only on the order of 0.1-0.2 ppm. Inferring COVID-19-related information on regional-scale CO2 emissions using current satellite XCO2 retrievals likely requires, if at all possible, a more sophisticated analysis method including detailed transport modelling and considering a priori information on anthropogenic and natural CO2 surface fluxes.

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