用差分进化算法搜索物理信息神经网络的最优结构

IF 0.5 4区 数学 Q3 MATHEMATICS
F. A. Buzaev, D. S. Efremenko, I. A. Chuprov, Ya. N. Khassan, E. N. Kazakov, J. Gao
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引用次数: 0

摘要

利用物理信息神经网络(pinn)求解偏微分方程的精度在很大程度上取决于它们的结构和超参数的选择。然而,由于计算复杂度高,手动搜索最优配置可能很困难。在本文中,我们提出了一种使用差分进化算法优化PINN架构的方法。我们专注于在少量的训练周期上进行优化,这使我们能够在降低计算成本的同时考虑更广泛的配置。epoch的选择使得模型在初始阶段的精度与完全训练后的精度相关,这大大加快了优化过程。为了提高效率,我们还应用了基于高斯过程的代理模型,这减少了所需的PINN训练次数。本文介绍了求解各种偏微分方程的PINN体系结构的优化结果,并提出了改进其性能的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Search for Optimal Architecture of Physics-Informed Neural Networks Using Differential Evolution Algorithm

Search for Optimal Architecture of Physics-Informed Neural Networks Using Differential Evolution Algorithm

The accuracy of solving partial differential equations using physics-informed neural networks (PINNs) significantly depends on their architecture and the choice of hyperparameters. However, manually searching for the optimal configuration can be difficult due to the high computational complexity. In this paper, we propose an approach for optimizing the PINN architecture using a differential evolution algorithm. We focus on optimizing over a small number of training epochs, which allows us to consider a wider range of configurations while reducing the computational cost. The number of epochs is chosen such that the accuracy of the model at the initial stage correlates with its accuracy after full training, which significantly speeds up the optimization process. To improve efficiency, we also apply a surrogate model based on a Gaussian process, which reduces the number of required PINN trainings. The paper presents the results of optimizing PINN architectures for solving various partial differential equations and offers recommendations for improving their performance.

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来源期刊
Doklady Mathematics
Doklady Mathematics 数学-数学
CiteScore
1.00
自引率
16.70%
发文量
39
审稿时长
3-6 weeks
期刊介绍: Doklady Mathematics is a journal of the Presidium of the Russian Academy of Sciences. It contains English translations of papers published in Doklady Akademii Nauk (Proceedings of the Russian Academy of Sciences), which was founded in 1933 and is published 36 times a year. Doklady Mathematics includes the materials from the following areas: mathematics, mathematical physics, computer science, control theory, and computers. It publishes brief scientific reports on previously unpublished significant new research in mathematics and its applications. The main contributors to the journal are Members of the RAS, Corresponding Members of the RAS, and scientists from the former Soviet Union and other foreign countries. Among the contributors are the outstanding Russian mathematicians.
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