Articles | Volume 15, issue 21
https://doi.org/10.5194/amt-15-6257-2022
https://doi.org/10.5194/amt-15-6257-2022
Research article
 | 
01 Nov 2022
Research article |  | 01 Nov 2022

Intercomparison of Sentinel-5P TROPOMI cloud products for tropospheric trace gas retrievals

Miriam Latsch, Andreas Richter, Henk Eskes, Maarten Sneep, Ping Wang, Pepijn Veefkind, Ronny Lutz, Diego Loyola, Athina Argyrouli, Pieter Valks, Thomas Wagner, Holger Sihler, Michel van Roozendael, Nicolas Theys, Huan Yu, Richard Siddans, and John P. Burrows

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Cited articles

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Short summary
The article investigates different S5P TROPOMI cloud retrieval algorithms for tropospheric trace gas retrievals. The cloud products show differences primarily over snow and ice and for scenes under sun glint. Some issues regarding across-track dependence are found for the cloud fractions as well as for the cloud heights.