2022
DOI: 10.1002/essoar.10510174.1
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Geophysical Bias Correction of Trace Green House Gas Satellite Retrievals Using Explainable Machine Learning Methods

Abstract: OCO-2, launched in 2014, uses reflected solar spectra and other retrieved geophysical variables to estimate ("retrieve") the column averaged dry air mole fraction of CO2, termed XCO2. A critical issue in satellite estimates of trace greenhouse gasses and remote sensing at large is the error distribution of an estimated target variable which arises from instrument artifacts as well as the under-determined nature of the retrieval of the quantities of interest. A large portion of the error is often incurred durin… Show more

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