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Machine Learning Emulation of Gravity Wave Drag in Numerical Weather Forecasting

Matthew Chantry, Sam Hatfield, Peter Dueben, Inna Polichtchouk, Tim Palmer

2021Journal of Advances in Modeling Earth Systems57 citationsDOIOpen Access PDF

Abstract

We assess the value of machine learning as an accelerator for the parameterization schemes of operational weather forecasting systems, specifically the parameterization of nonorographic gravity wave drag. Emulators of this scheme can be trained to produce stable and accurate results up to seasonal forecasting timescales. Generally, networks that are more complex produce emulators that are more accurate. By training on an increased complexity version of the existing parameterization scheme, we build emulators that produce more accurate forecasts. For medium range forecasting, we have found evidence that our emulators are more accurate than the version of the parametrization scheme that is used for operational predictions. Using the current operational CPU hardware, our emulators have a similar computational cost to the existing scheme, but are heavily limited by data movement. On GPU hardware, our emulators perform 10 times faster than the existing scheme on a CPU.

Topics & Concepts

EmulationParametrization (atmospheric modeling)Computer scienceWeather forecastingNumerical weather predictionScheme (mathematics)DragMachine learningRange (aeronautics)MeteorologyArtificial neural networkArtificial intelligenceAlgorithmReal-time computingSimulationPhysical systemMeteorological Phenomena and SimulationsTropical and Extratropical Cyclones ResearchHydrological Forecasting Using AI
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