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Perspectives of Physics-Based Machine Learning for Geoscientific Applications Governed by Partial Differential Equations

Authors :
Denise Degen
Daniel Caviedes Voullième
Susanne Buiter
Harrie-Jan Hendriks Franssen
Harry Vereecken
Ana González-Nicolás
Florian Wellmann
Publication Year :
2023
Publisher :
Copernicus GmbH, 2023.

Abstract

An accurate assessment of the physical states of the Earth system is an essential component of many scientific, societal and economical considerations. These assessments are becoming an increasingly challenging computational task since we aim to resolve models with high resolutions in space and time, to consider complex coupled partial differential equations, and to estimate uncertainties, which often requires many realizations. Machine learning methods are becoming a very popular method for the construction of surrogate 5 models to address these computational issues. However, they also face major challenges in producing explainable, scalable, interpretable and robust models. In this manuscript, we evaluate the perspectives of geoscience applications of physics-based machine learning, which combines physics-based and data-driven methods to overcome the limitations of each approach taken alone. Through three designated examples (from the fields of geothermal energy, geodynamics, and hydrology), we show that the non-intrusive reduced basis method as a physics-based machine learning approach is able to 10 produce highly precise surrogate models that are explainable, scalable, interpretable, and robust.

Details

ISSN :
19919603
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....604f62660f6af299d1584f41d29f72d3
Full Text :
https://doi.org/10.5194/gmd-2022-309