CAN-PINN: A Fast Physics-Informed Neural Network Based on Coupled-Automatic-Numerical Differentiation Method
Pao-Hsiung Chiu, Jian Cheng Wong, Chinchun Ooi, My Ha Dao, Yew-Soon, Ong

TL;DR
This paper introduces can-PINN, a novel physics-informed neural network that combines automatic and numerical differentiation to achieve faster training and higher accuracy in fluid dynamics simulations.
Contribution
The paper proposes a coupled-automatic-numerical differentiation framework for PINNs, improving training efficiency and accuracy over traditional AD-based PINNs.
Findings
can-PINN achieves 1-2 orders of magnitude better accuracy.
It outperforms conventional PINNs on complex fluid flow problems.
Demonstrates robustness in challenging fluid dynamics scenarios.
Abstract
In this study, novel physics-informed neural network (PINN) methods for coupling neighboring support points and their derivative terms which are obtained by automatic differentiation (AD), are proposed to allow efficient training with improved accuracy. The computation of differential operators required for PINNs loss evaluation at collocation points are conventionally obtained via AD. Although AD has the advantage of being able to compute the exact gradients at any point, such PINNs can only achieve high accuracies with large numbers of collocation points, otherwise they are prone to optimizing towards unphysical solution. To make PINN training fast, the dual ideas of using numerical differentiation (ND)-inspired method and coupling it with AD are employed to define the loss function. The ND-based formulation for training loss can strongly link neighboring collocation points to enable…
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