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arXiv 提交日期: 2026-03-03
📄 Abstract - Stabilized Adaptive Loss and Residual-Based Collocation for Physics-Informed Neural Networks

Physics-Informed Neural Networks (PINNs) have been recognized as a mesh-free alternative to solve partial differential equations where physics information is incorporated. However, in dealing with problems characterized by high stiffness or shock-dominated dynamics, traditional PINNs have been found to have limitations, including unbalanced training and inaccuracy in solution, even with small physics residuals. In this research, we seek to address these limitations using the viscous Burgers' equation with low viscosity and the Allen-Cahn equation as test problems. In addressing unbalanced training, we have developed a new adaptive loss balancing scheme using smoothed gradient norms to ensure satisfaction of initial and boundary conditions. Further, to address inaccuracy in the solution, we have developed an adaptive residual-based collocation scheme to improve the accuracy of solutions in the regions with high physics residuals. The proposed new approach significantly improves solution accuracy with consistent satisfaction of physics residuals. For instance, in the case of Burgers' equation, the relative L2 error is reduced by about 44 percent compared to traditional PINNs, while for the Allen-Cahn equation, the relative L2 error is reduced by approximately 70 percent. Additionally, we show the trustworthy solution comparison of the proposed method using a robust finite difference solver.

顶级标签: machine learning model training theory
详细标签: physics-informed neural networks adaptive loss balancing partial differential equations collocation method numerical stability 或 搜索:

物理信息神经网络的稳定自适应损失与基于残差的配置方法 / Stabilized Adaptive Loss and Residual-Based Collocation for Physics-Informed Neural Networks


1️⃣ 一句话总结

本研究提出了一种结合自适应损失平衡和残差配置的新方法,显著提升了物理信息神经网络在处理高难度偏微分方程时的精度和稳定性。

源自 arXiv: 2603.03224