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Using Machine Learning for Model Physics: an Overview

2 February 2020
V. Krasnopolsky
Aleksei A. Belochitski
    PINNAI4CE
ArXiv (abs)PDFHTML
Abstract

In the overview, a generic mathematical object (mapping) is introduced, and its relation to model physics parameterization is explained. Machine learning (ML) tools that can be used to emulate and/or approximate mappings are introduced. Applications of ML to emulate existing parameterizations, to develop new parameterizations, to ensure physical constraints, and control the accuracy of developed applications are described. Some ML approaches that allow developers to go beyond the standard parameterization paradigm are discussed.

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