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Meta-learning Loss Functions of Parametric Partial Differential Equations Using Physics-Informed Neural Networks (2412.00225v1)

Published 29 Nov 2024 in cs.LG, math.AP, and physics.comp-ph

Abstract: This paper proposes a new way to learn Physics-Informed Neural Network loss functions using Generalized Additive Models. We apply our method by meta-learning parametric partial differential equations, PDEs, on Burger's and 2D Heat Equations. The goal is to learn a new loss function for each parametric PDE using meta-learning. The derived loss function replaces the traditional data loss, allowing us to learn each parametric PDE more efficiently, improving the meta-learner's performance and convergence.

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