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Improved physics-informed neural network in mitigating gradient related failures

Authors :
Niu, Pancheng
Chen, Yongming
Guo, Jun
Zhou, Yuqian
Feng, Minfu
Shi, Yanchao
Publication Year :
2024

Abstract

Physics-informed neural networks (PINNs) integrate fundamental physical principles with advanced data-driven techniques, driving significant advancements in scientific computing. However, PINNs face persistent challenges with stiffness in gradient flow, which limits their predictive capabilities. This paper presents an improved PINN (I-PINN) to mitigate gradient-related failures. The core of I-PINN is to combine the respective strengths of neural networks with an improved architecture and adaptive weights containingupper bounds. The capability to enhance accuracy by at least one order of magnitude and accelerate convergence, without introducing extra computational complexity relative to the baseline model, is achieved by I-PINN. Numerical experiments with a variety of benchmarks illustrate the improved accuracy and generalization of I-PINN. The supporting data and code are accessible at https://github.com/PanChengN/I-PINN.git, enabling broader research engagement.<br />Comment: Elsevier-LaTeX v1.2, 26 pages with 12 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.19421
Document Type :
Working Paper