Physics-Informed Neural Networks for Solving High-Index Differential-Algebraic Equation Systems Based on Radau Methods

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Jiasheng Chen, Juan Tang, Ming Yan, Shuai Lai, Kun Liang, Jianguang Lu, Wenqiang Yang
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引用次数: 0

Abstract

As is well known, differential algebraic equations (DAEs), which are able to describe dynamic changes and underlying constraints, have been widely applied in engineering fields such as fluid dynamics, multi-body dynamics, mechanical systems, and control theory. In practical physical modeling within these domains, the systems often generate high-index DAEs. Classical implicit numerical methods typically result in varying order reduction of numerical accuracy when solving high-index systems. Recently, the physics-informed neural networks (PINNs) have gained attention for solving DAE systems. However, it faces challenges like the inability to directly solve high-index systems, lower predictive accuracy, and weaker generalization capabilities. In this paper, we propose a PINN computational framework, combined Radau IIA numerical method with an improved fully connected neural network structure, to directly solve high-index DAEs. Furthermore, we employ a domain decomposition strategy to enhance solution accuracy. We conduct numerical experiments with two classical high-index systems as illustrative examples, investigating how different orders and time-step sizes of the Radau IIA method affect the accuracy of neural network solutions. For different time-step sizes, the experimental results indicate that utilizing a 5th-order Radau IIA method in the PINN achieves a high level of system accuracy and stability. Specifically, the absolute errors for all differential variables remain as low as 10−6, and the absolute errors for algebraic variables are maintained at 10−5. Therefore, our method exhibits excellent computational accuracy and strong generalization capabilities, providing a feasible approach for the high-precision solution of larger-scale DAEs with higher indices or challenging high-dimensional partial differential algebraic equation systems.

基于 Radau 方法的用于求解高指数微分代数方程系统的物理信息神经网络
众所周知,微分代数方程(DAE)能够描述动态变化和潜在约束,已被广泛应用于流体动力学、多体动力学、机械系统和控制理论等工程领域。在这些领域的实际物理建模中,系统通常会产生高指数 DAE。在求解高指数系统时,经典的隐式数值方法通常会导致数值精度的不同阶降低。最近,物理信息神经网络(PINNs)在求解 DAE 系统方面受到关注。然而,它面临着无法直接求解高指数系统、预测精度较低、泛化能力较弱等挑战。本文提出了一种 PINN 计算框架,将 Radau IIA 数值方法与改进的全连接神经网络结构相结合,直接求解高指数 DAE。此外,我们还采用了领域分解策略来提高求解精度。我们以两个经典高指数系统为例进行了数值实验,研究了 Radau IIA 方法的不同阶数和时间步长对神经网络求解精度的影响。对于不同的时间步长,实验结果表明,在 PINN 中使用 5 阶 Radau IIA 方法可以实现较高的系统精度和稳定性。具体来说,所有微分变量的绝对误差保持在 10-6 以下,代数变量的绝对误差保持在 10-5。因此,我们的方法表现出优异的计算精度和强大的泛化能力,为高精度求解更大规模、更高指数的 DAE 或具有挑战性的高维偏微分代数方程系统提供了可行的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Intelligent Systems
International Journal of Intelligent Systems 工程技术-计算机:人工智能
CiteScore
11.30
自引率
14.30%
发文量
304
审稿时长
9 months
期刊介绍: The International Journal of Intelligent Systems serves as a forum for individuals interested in tapping into the vast theories based on intelligent systems construction. With its peer-reviewed format, the journal explores several fascinating editorials written by today''s experts in the field. Because new developments are being introduced each day, there''s much to be learned — examination, analysis creation, information retrieval, man–computer interactions, and more. The International Journal of Intelligent Systems uses charts and illustrations to demonstrate these ground-breaking issues, and encourages readers to share their thoughts and experiences.
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