Adaptive Interface-PINNs (AdaI-PINNs): An Efficient Physics-Informed Neural Networks Framework for Interface Problems

Authors

  • Sumanta Roy
  • Chandrasekhar Annavarapu
  • Pratanu Roy
  • Antareep Kumar Sarma

DOI:

https://doi.org/10.4208/cicp.OA-2024-0131

Keywords:

PINN, I-PINNs, AdaI-PINNs, domain decomposition, interface problems, machine learning, physics-informed machine learning.

Abstract

We present an efficient physics-informed neural networks (PINNs) framework, termed Adaptive Interface-PINNs (AdaI-PINNs), to improve the modeling of interface problems with discontinuous coefficients and/or interfacial jumps. This framework is an enhanced version of its predecessor, Interface PINNs or I-PINNs (Sarma et al. [1]; https://doi.org/10.1016/j.cma.2024.117135), which involves domain decomposition and assignment of different predefined activation functions to the neural networks in each subdomain across a sharp interface, while keeping all other parameters of the neural networks identical. In AdaI-PINNs, the activation functions vary solely in their slopes, which are trained along with the other parameters of the neural networks. This makes the AdaI-PINNs framework fully automated without requiring preset activation functions. Comparative studies on one-dimensional, two-dimensional, and three-dimensional benchmark elliptic interface problems reveal that AdaI-PINNs outperform I-PINNs, reducing computational costs by 2-6 times while producing similar or better accuracy.

Published

2025-09-02

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How to Cite

Adaptive Interface-PINNs (AdaI-PINNs): An Efficient Physics-Informed Neural Networks Framework for Interface Problems. (2025). Communications in Computational Physics, 37(3), 603-622. https://doi.org/10.4208/cicp.OA-2024-0131