Paper ID: 2310.15690

Physics-Informed with Power-Enhanced Residual Network for Interpolation and Inverse Problems

Amir Noorizadegan, D. L. Young, Y. C. Hon, C. S. Chen

This paper introduces a novel neural network structure called the Power-Enhancing residual network, designed to improve interpolation capabilities for both smooth and non-smooth functions in 2D and 3D settings. By adding power terms to residual elements, the architecture boosts the network's expressive power. The study explores network depth, width, and optimization methods, showing the architecture's adaptability and performance advantages. Consistently, the results emphasize the exceptional accuracy of the proposed Power-Enhancing residual network, particularly for non-smooth functions. Real-world examples also confirm its superiority over plain neural network in terms of accuracy, convergence, and efficiency. The study also looks at the impact of deeper network. Moreover, the proposed architecture is also applied to solving the inverse Burgers' equation, demonstrating superior performance. In conclusion, the Power-Enhancing residual network offers a versatile solution that significantly enhances neural network capabilities. The codes implemented are available at: \url{https://github.com/CMMAi/ResNet_for_PINN}.

Submitted: Oct 24, 2023