2024年12月22日 星期日 登录 EN

学术活动
Bridging Traditional and Machine Learning-Based Algorithms for Solving PDEs: The Random Feature Method
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报告人:
Jingrun Chen, Professor, University of Science and Technology of China
邀请人:
Pingbing Ming, Professor
题目:
Bridging Traditional and Machine Learning-Based Algorithms for Solving PDEs: The Random Feature Method
时间地点:
13:00-14:00 November 4 (Friday), Tencent Meeting ID: 764-152-724
摘要:
One of the oldest and most studied subject in scientific computing is algorithms for solving partial differential equations (PDEs). A long list of numerical methods have been proposed and successfully used for various applications. In recent years, deep learning methods have shown their superiority for high-dimensional PDEs where traditional methods fail. However, for low dimensional problems, it remains unclear whether these methods have a real advantage over traditional algorithms as a direct solver. In this work, we propose the random feature method (RFM) for solving PDEs, a natural bridge between traditional and machine learning-based algorithms. RFM is based on a combination of well-known ideas: 1. representation of the approximate solution using random feature functions; 2.  collocation method to take care of the PDE; 3.  penalty method to treat the boundary conditions, which allows us to treat the boundary condition and the PDE in the same footing. We find it crucial to add several additional components including multi-scale representation and adaptive weight rescaling in the loss function. We demonstrate that the method exhibits spectral accuracy and can compete with traditional solvers in terms of both accuracy and efficiency. In addition, we find that RFM is particularly suited for problems with complex geometry, where both traditional and machine learning-based algorithms encounter difficulties.