Deep learning for quality control of surface physiographic fields using satellite Earth observations
Tom Kimpson, Margarita Choulga, Matthew Chantry, Gianpaolo Balsamo,, Souhail Boussetta, Peter Dueben, Tim Palmer

TL;DR
This paper presents VESPER, a deep learning tool that assesses the quality of physiographic datasets used in Earth system models by comparing satellite observations with model inputs, thereby improving land surface parameterizations.
Contribution
The study introduces a neural network-based method for rapid evaluation of physiographic dataset upgrades, enhancing the accuracy of land surface temperature predictions in climate models.
Findings
Physiographic upgrades improve prediction accuracy by up to 0.83 K.
VESPER effectively detects errors in land surface datasets.
Neural networks can support development of better surface parameterizations.
Abstract
A purposely built deep learning algorithm for the Verification of Earth-System ParametERisation (VESPER) is used to assess recent upgrades of the global physiographic datasets underpinning the quality of the Integrated Forecasting System (IFS) of the European Centre for Medium-Range Weather Forecasts (ECMWF), which is used both in numerical weather prediction and climate reanalyses. A neural network regression model is trained to learn the mapping between the surface physiographic dataset plus the meteorology from ERA5, and the MODIS satellite skin temperature observations. Once trained, this tool is applied to rapidly assess the quality of upgrades of the land-surface scheme. Upgrades which improve the prediction accuracy of the machine learning tool indicate a reduction of the errors in the surface fields used as input to the surface parametrisation schemes. Conversely, incorrect…
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Taxonomy
TopicsGeological Modeling and Analysis
