Error Analysis Based on Inverse Modified Differential Equations for Discovery of Dynamics Using Linear Multistep Methods and Deep Learning

IF 2.8 2区 数学 Q1 MATHEMATICS, APPLIED SIAM Journal on Numerical Analysis Pub Date : 2024-09-04 DOI:10.1137/22m152373x
Aiqing Zhu, Sidi Wu, Yifa Tang
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Abstract

SIAM Journal on Numerical Analysis, Volume 62, Issue 5, Page 2087-2120, October 2024.
Abstract. Along with the practical success of the discovery of dynamics using deep learning, the theoretical analysis of this approach has attracted increasing attention. Prior works have established the grid error estimation with auxiliary conditions for the discovery of dynamics using linear multistep methods and deep learning. And we extend the existing error analysis in this work. We first introduce the concept of inverse modified differential equations (IMDE) for linear multistep methods and show that the learned model returns a close approximation of the IMDE. Based on the IMDE, we prove that the error between the discovered system and the target system is bounded by the sum of the LMM discretization error and the learning loss. Furthermore, the learning loss is quantified by combining the approximation and generalization theories of neural networks, and thereby we obtain the priori error estimates. Several numerical experiments are performed to verify the theoretical analysis.
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基于逆修正微分方程的误差分析,利用线性多步骤方法和深度学习发现动力学规律
SIAM 数值分析期刊》,第 62 卷第 5 期,第 2087-2120 页,2024 年 10 月。 摘要随着利用深度学习发现动力学的实践成功,这种方法的理论分析也引起了越来越多的关注。之前的工作建立了利用线性多步方法和深度学习发现动力学的网格误差估计与辅助条件。而我们在这项工作中扩展了现有的误差分析。我们首先为线性多步方法引入了逆修正微分方程(IMDE)的概念,并证明学习模型返回的是 IMDE 的近似值。基于 IMDE,我们证明了所发现的系统与目标系统之间的误差以 LMM 离散化误差和学习损失之和为界。此外,我们还结合神经网络的近似和泛化理论对学习损失进行了量化,从而获得了先验误差估计值。我们进行了一些数值实验来验证理论分析。
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来源期刊
CiteScore
4.80
自引率
6.90%
发文量
110
审稿时长
4-8 weeks
期刊介绍: SIAM Journal on Numerical Analysis (SINUM) contains research articles on the development and analysis of numerical methods. Topics include the rigorous study of convergence of algorithms, their accuracy, their stability, and their computational complexity. Also included are results in mathematical analysis that contribute to algorithm analysis, and computational results that demonstrate algorithm behavior and applicability.
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