Data reduction for inverse modeling: an adaptive approach v1.0
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Published:2021-07-29
Issue:7
Volume:14
Page:4683-4696
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Liu Xiaoling, Weinbren August L., Chang He, Tadić Jovan M.ORCID, Mountain Marikate E., Trudeau Michael E., Andrews Arlyn E., Chen ZichongORCID, Miller Scot M.ORCID
Abstract
Abstract. The number of greenhouse gas (GHG) observing satellites has greatly expanded in recent years, and these new datasets provide an unprecedented
constraint on global GHG sources and sinks. However, a continuing challenge for inverse models that are used to estimate these sources and sinks is
the sheer number of satellite observations, sometimes in the millions per day. These massive datasets often make it prohibitive to implement inverse
modeling calculations and/or assimilate the observations using many types of atmospheric models. Although these satellite datasets are very large,
the information content of any single observation is often modest and non-exclusive due to redundancy with neighboring observations and due to
measurement noise. In this study, we develop an adaptive approach to reduce the size of satellite datasets using geostatistics. A guiding principle
is to reduce the data more in regions with little variability in the observations and less in regions with high variability. We subsequently tune
and evaluate the approach using synthetic and real data case studies for North America from NASA's Orbiting Carbon Observatory-2 (OCO-2)
satellite. The proposed approach to data reduction yields more accurate CO2 flux estimates than the commonly used method of binning and
averaging the satellite data. We further develop a metric for choosing a level of data reduction; we can reduce the satellite dataset to an average
of one observation per ∼ 80–140 km for the specific case studies here without substantially compromising the flux estimate, but we
find that reducing the data further quickly degrades the accuracy of the estimated fluxes. Overall, the approach developed here could be applied to
a range of inverse problems that use very large trace gas datasets.
Publisher
Copernicus GmbH
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