Improving physics-informed DeepONets with hard constraints

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Improving physics-informed DeepONets with hard constraints

Authors

Rüdiger Brecht, Dmytro R. Popovych, Alex Bihlo, Roman O. Popovych

Abstract

Current physics-informed (standard or operator) neural networks still rely on accurately learning the initial conditions of the system they are solving. In contrast, standard numerical methods evolve such initial conditions without needing to learn these. In this study, we propose to improve current physics-informed deep learning strategies such that initial conditions do not need to be learned and are represented exactly in the predicted solution. Moreover, this method guarantees that when a DeepONet is applied multiple times to time step a solution, the resulting function is continuous.

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