Differentiable modelling to unify machine learning and physical models for geosciences
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2023 Shen et al Differentiable ...
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Author
Shen, ChaopengAppling, Alison P.
Gentine, Pierre
Bandai, Toshiyuki
Gupta, Hoshin
Tartakovsky, Alexandre
Baity-Jesi, Marco
Fenicia, Fabrizio
Kifer, Daniel
Li, Li
Liu, Xiaofeng
Ren, Wei
Zheng, Yi
Harman, Ciaran J.
Clark, Martyn
Farthing, Matthew
Feng, Dapeng
Kumar, Praveen
Aboelyazeed, Doaa
Rahmani, Farshid
Song, Yalan
Beck, Hylke E.
Bindas, Tadd
Dwivedi, Dipankar
Fang, Kuai
Höge, Marvin
Rackauckas, Chris
Mohanty, Binayak
Roy, Tirthankar
Xu, Chonggang
Lawson, Kathryn
Affiliation
Hydrology and Atmospheric Sciences, The University of ArizonaIssue Date
2023-07-11
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Springer Science and Business Media LLCCitation
Shen, C., Appling, A.P., Gentine, P. et al. Differentiable modelling to unify machine learning and physical models for geosciences. Nat Rev Earth Environ 4, 552–567 (2023). https://doi.org/10.1038/s43017-023-00450-9Rights
© 2023, Springer Nature Limited.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Process-based modelling offers interpretability and physical consistency in many domains of geosciences but struggles to leverage large datasets efficiently. Machine-learning methods, especially deep networks, have strong predictive skills yet are unable to answer specific scientific questions. In this Perspective, we explore differentiable modelling as a pathway to dissolve the perceived barrier between process-based modelling and machine learning in the geosciences and demonstrate its potential with examples from hydrological modelling. ‘Differentiable’ refers to accurately and efficiently calculating gradients with respect to model variables or parameters, enabling the discovery of high-dimensional unknown relationships. Differentiable modelling involves connecting (flexible amounts of) prior physical knowledge to neural networks, pushing the boundary of physics-informed machine learning. It offers better interpretability, generalizability, and extrapolation capabilities than purely data-driven machine learning, achieving a similar level of accuracy while requiring less training data. Additionally, the performance and efficiency of differentiable models scale well with increasing data volumes. Under data-scarce scenarios, differentiable models have outperformed machine-learning models in producing short-term dynamics and decadal-scale trends owing to the imposed physical constraints. Differentiable modelling approaches are primed to enable geoscientists to ask questions, test hypotheses, and discover unrecognized physical relationships. Future work should address computational challenges, reduce uncertainty, and verify the physical significance of outputs.Note
6 month embargo; first published 11 July 2023EISSN
2662-138XVersion
Final published versionae974a485f413a2113503eed53cd6c53
10.1038/s43017-023-00450-9
