Uncertainty‐aware machine learning bias correction and filtering for OCO‐2: 1

The Orbiting Carbon Observatory‐2 (OCO‐2) makes space‐based radiance measurements of reflected sunlight. Using a physics‐based retrieval algorithm, these measurements are inverted to estimate column‐averaged atmospheric carbon dioxide dry‐air mole fractions (XCO 2 ). However, biases are present in the retrieved XCO 2 due to sensor calibration errors and discrepancies between the physics‐based retrieval and nature. We propose a Random Forest (RF), a non‐linear, interpretable machine learning (ML) technique, to correct these biases. The approach is rigorously validated, comes with quantified uncertainties, and is derived independent of carbon flux models. Compared to the operational approach, our method reduces unphysical variability over land and ocean and shows closer agreement with independent ground‐based observations from the Total Carbon Column Observing Network. The RF‐bias correction is suitable for integration into the operational processing pipeline for the next version of OCO‐2 products, pending additional testing and validation. It is inherently generalizable to other existing and planned greenhouse gas monitoring missions. This paper (Part 1) describes the RF bias correction, while a second paper (Part 2) describes the development of a data filtering strategy specifically designed for a subset of retrievals exhibiting irreducible errors that remain inadequately corrected by the ML bias correction.

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Related Dataset #1 : 2020 TCCON Data Release

Related Dataset #2 : OCO-2 Level 2 bias-corrected XCO2 and other select fields from the full-physics retrieval aggregated as daily files, Retrospective processing V11.1r

Related Dataset #3 : Uncertainty-aware Machine Learning Bias Correction and Filtering for OCO-2 | 2014-2024

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Author Mauceri, S. ORCID icon
Keely, W. ORCID icon
Laughner, J.
O’Dell, C. W. ORCID icon
Massie, S.
Nelson, R.
Baker, D.
Kiel, M.
Lamminpää, O.
Hobbs, J.
Chatterjee, A.
Taylor, T. ORCID icon
Wennberg, P.
Crowell, S.
Stephens, Britton ORCID icon
Payne, V. H.
Publisher UCAR/NCAR - Library
Publication Date 2025-07-01T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2025-12-24T17:46:34.460327
Metadata Record Identifier edu.ucar.opensky::articles:44004
Metadata Language eng; USA
Suggested Citation Mauceri, S., Keely, W., Laughner, J., O’Dell, C. W., Massie, S., Nelson, R., Baker, D., Kiel, M., Lamminpää, O., Hobbs, J., Chatterjee, A., Taylor, T., Wennberg, P., Crowell, S., Stephens, Britton, Payne, V. H.. (2025). Uncertainty‐aware machine learning bias correction and filtering for OCO‐2: 1. UCAR/NCAR - Library. https://n2t.net/ark:/85065/d7mw2nkx. Accessed 23 February 2026.

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