基于多层感知器的有限元分析代理模型

Lawson Oliveira Lima, Julien Rosenberger, E. Antier, F. Magoulès
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引用次数: 0

摘要

许多偏微分方程没有解析解,只能用数值方法求解。在这种情况下,物理信息神经网络(PINN)在过去几十年中变得非常重要,因为它使用神经网络和物理条件来近似任何函数。本文重点研究了用于解决PDE问题的PINN的超调优。本文分析了改变学习率或激活函数(sigmoid、双曲正切、GELU、ReLU和ELU)时的近似解的行为。通过比较研究,确定了问题的最佳特征,并找到了一个学习率,可以实现快速和满意的学习。GELU激活函数和双曲正切激活函数表现出较好的性能。选择合适的学习率可以提高学习精度,加快收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilayer Perceptron-based Surrogate Models for Finite Element Analysis
Many Partial Differential Equations (PDEs) do not have analytical solution, and can only be solved by numerical methods. In this context, Physics-Informed Neural Networks (PINN) have become important in the last decades, since it uses a neural network and physical conditions to approximate any functions. This paper focuses on hypertuning of a PINN, used to solve a PDE. The behavior of the approximated solution when we change the learning rate or the activation function (sigmoid, hyperbolic tangent, GELU, ReLU and ELU) is here analyzed. A comparative study is done to determine the best characteristics in the problem, as well as to find a learning rate that allows fast and satisfactory learning. GELU and hyperbolic tangent activation functions exhibit better performance than other activation functions. A suitable choice of the learning rate results in higher accuracy and faster convergence.
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