PCDMD:物理约束动态模式分解,用于对数据和物理条件不完善的动力系统进行准确而稳健的预测

IF 7.2 2区 物理与天体物理 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yuhui Yin , Chenhui Kou , Shengkun Jia , Lu Lu , Xigang Yuan , Yiqing Luo
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引用次数: 0

摘要

动态模态分解(DMD)方法作为一种具有代表性的模态分解方法,能够建立预测模型,因而受到广泛关注。然而,在某些情况下,如处理平移问题或噪声数据时,DMD 得出的预测结果可能会偏离物理现实。在此,我们提出一种物理约束 DMD(PCDMD)方法来解决这一问题。所提出的 PCDMD 方法首先使用 DMD 建立数据驱动模型,然后计算物理方程的残差,最后使用卡尔曼滤波器和增益系数修正预测结果。这样,PCDMD 方法就能将物理方程与 DMD 生成的数据驱动模型整合在一起。利用 PCDMD 进行了数值实验,包括 Allen-Cahn、平流-扩散、Burgers'方程和顶盖驱动空腔流。结果表明,所提出的 PCDMD 方法通过加入物理约束,可将重建和预测误差降低 1%-10%。对于噪声数据集和不完善的物理约束,PCDMD 仍能确保预测结果满足物理约束,从而减少误差:PCDMDDataset link: https://github.com/YinYuhuiTJU/PCDMDLicensing provisions:MITProgramming language:Python
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PCDMD: Physics-constrained dynamic mode decomposition for accurate and robust forecasting of dynamical systems with imperfect data and physics

The dynamic mode decomposition (DMD) method has attracted widespread attention as a representative modal-decomposition method and can build a predictive model. However, DMD may give predicted results that deviate from physical reality in some scenarios, such as dealing with translation problems or noisy data. Here, we propose a physics-constrained DMD (PCDMD) method to address this issue. The proposed PCDMD method first employs a data-driven model using DMD, then calculates the residual of the physical equations, and finally corrects the predicted results using Kalman filter and gain coefficients. In this way, the PCDMD method can integrate the physics-informed equations with the data-driven model generated by DMD. Numerical experiments are conducted using PCDMD, including the Allen–Cahn, advection-diffusion, Burgers' equations and lid-driven cavity flow. The results demonstrate that the proposed PCDMD method can reduce the reconstruction and prediction errors by 1%-10% by incorporating physical constraints. Regarding noisy datasets and imperfect physical constraints, PCDMD can still ensure that the predicted results satisfy the physical constraints, thereby reducing errors.

Program summary

Program title: PCDMD

Dataset link: https://github.com/YinYuhuiTJU/PCDMD

Licensing provisions: MIT

Programming language: Python

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来源期刊
Computer Physics Communications
Computer Physics Communications 物理-计算机:跨学科应用
CiteScore
12.10
自引率
3.20%
发文量
287
审稿时长
5.3 months
期刊介绍: The focus of CPC is on contemporary computational methods and techniques and their implementation, the effectiveness of which will normally be evidenced by the author(s) within the context of a substantive problem in physics. Within this setting CPC publishes two types of paper. Computer Programs in Physics (CPiP) These papers describe significant computer programs to be archived in the CPC Program Library which is held in the Mendeley Data repository. The submitted software must be covered by an approved open source licence. Papers and associated computer programs that address a problem of contemporary interest in physics that cannot be solved by current software are particularly encouraged. Computational Physics Papers (CP) These are research papers in, but are not limited to, the following themes across computational physics and related disciplines. mathematical and numerical methods and algorithms; computational models including those associated with the design, control and analysis of experiments; and algebraic computation. Each will normally include software implementation and performance details. The software implementation should, ideally, be available via GitHub, Zenodo or an institutional repository.In addition, research papers on the impact of advanced computer architecture and special purpose computers on computing in the physical sciences and software topics related to, and of importance in, the physical sciences may be considered.
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