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Communication Dans Un Congrès Année : 2021

Assessing Physics Informed Neural Networks in Ocean Modelling and Climate Change Applications

Taco de Wolff
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  • PersonId : 1102079
Hugo Carrillo
Luis Martí
Nayat Sanchez-Pi
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  • PersonId : 1102269

Résumé

The carbon pump of the world's oceans plays a vital role in the biosphere and climate of the earth, urging improved understanding of the functions and influences of the oceans for climate change analyses. State-of-the-art techniques are required to develop models that can capture the complexity of ocean currents and temperature flows. We will explore the benefits of using physics informed neural networks (PINNs) for solving partial differential equations related to ocean modeling; such as the wave, shallow water, and advection-diffusion equations. PINNs account for the deviation from physical laws in order to improve learning and generalization. However, in this work, we observe worse training and generalization results, possibly due the amount of data used in training.
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Dates et versions

hal-03262684 , version 1 (16-06-2021)

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  • HAL Id : hal-03262684 , version 1

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Taco de Wolff, Hugo Carrillo, Luis Martí, Nayat Sanchez-Pi. Assessing Physics Informed Neural Networks in Ocean Modelling and Climate Change Applications. AI: Modeling Oceans and Climate Change Workshop at ICLR 2021, May 2021, Santiago (Virtual), Chile. ⟨hal-03262684⟩
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