On statistical approaches to generate Level 3 products from satellite remote sensing retrievals
Andrew Zammit-Mangion, Noel Cressie, Clint Shumack

TL;DR
This paper discusses statistical methods, especially fixed rank kriging, to generate and validate Level 3 satellite remote sensing products of CO2, improving accuracy and uncertainty quantification for climate monitoring.
Contribution
It introduces a spatio-temporal statistical framework for creating and validating Level 3 products from satellite Level 2 data, emphasizing the use of fixed rank kriging for global CO2 predictions.
Findings
FRK predictions enable global validation of Level 2 data.
Version 8r retrievals align better with ground observations than Version 7r.
Uncertainty quantification improves the reliability of satellite-based CO2 estimates.
Abstract
Satellite remote sensing of trace gases such as carbon dioxide (CO) has increased our ability to observe and understand Earth's climate. However, these remote sensing data, specifically~Level 2 retrievals, tend to be irregular in space and time, and hence, spatio-temporal prediction is required to infer values at any location and time point. Such inferences are not only required to answer important questions about our climate, but they are also needed for validating the satellite instrument, since Level 2 retrievals are generally not co-located with ground-based remote sensing instruments. Here, we discuss statistical approaches to construct Level 3 products from Level 2 retrievals, placing particular emphasis on the strengths and potential pitfalls when using statistical prediction in this context. Following this discussion, we use a spatio-temporal statistical modelling framework…
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