利用最小化方法与人工智能求解偏微分方程反问题 / Solving Inverse PDE Problems using Minimization Methods and AI
1️⃣ 一句话总结
这篇论文对比了传统数值方法与基于物理信息的神经网络(PINNs),发现PINNs能以有竞争力的计算成本有效求解复杂系统的正问题和反问题,为参数估计提供了新工具。
Many physical and engineering systems require solving direct problems to predict behavior and inverse problems to determine unknown parameters from measurement. In this work, we study both aspects for systems governed by differential equations, contrasting well-established numerical methods with new AI-based techniques, specifically Physics-Informed Neural Networks (PINNs). We first analyze the logistic differential equation, using its closed-form solution to verify numerical schemes and validate PINN performance. We then address the Porous Medium Equation (PME), a nonlinear partial differential equation with no general closed-form solution, building strong solvers of the direct problem and testing techniques for parameter estimation in the inverse problem. Our results suggest that PINNs can closely estimate solutions at competitive computational cost, and thus propose an effective tool for solving both direct and inverse problems for complex systems.
利用最小化方法与人工智能求解偏微分方程反问题 / Solving Inverse PDE Problems using Minimization Methods and AI
这篇论文对比了传统数值方法与基于物理信息的神经网络(PINNs),发现PINNs能以有竞争力的计算成本有效求解复杂系统的正问题和反问题,为参数估计提供了新工具。
源自 arXiv: 2603.01731