Learning the solution operator of parametric partial differential equations with physics-informed DeepOnets
Sifan Wang, Hanwen Wang, Paris Perdikaris

TL;DR
This paper introduces physics-informed DeepONets, a novel approach that incorporates physical laws into neural operator models, significantly improving accuracy and reducing training data needs for solving parametric PDEs.
Contribution
The paper proposes a new physics-informed DeepONet framework that enforces physical laws during training, enabling PDE solutions without paired data and greatly enhancing efficiency.
Findings
Physics-informed DeepONets improve predictive accuracy.
They require fewer training data sets.
They can solve PDEs orders of magnitude faster.
Abstract
Deep operator networks (DeepONets) are receiving increased attention thanks to their demonstrated capability to approximate nonlinear operators between infinite-dimensional Banach spaces. However, despite their remarkable early promise, they typically require large training data-sets consisting of paired input-output observations which may be expensive to obtain, while their predictions may not be consistent with the underlying physical principles that generated the observed data. In this work, we propose a novel model class coined as physics-informed DeepONets, which introduces an effective regularization mechanism for biasing the outputs of DeepOnet models towards ensuring physical consistency. This is accomplished by leveraging automatic differentiation to impose the underlying physical laws via soft penalty constraints during model training. We demonstrate that this simple, yet…
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Taxonomy
TopicsModel Reduction and Neural Networks · Electromagnetic Simulation and Numerical Methods · Magnetic Properties and Applications
