7 Data-driven methods for reduced-order modeling

S. Brunton, J. Kutz
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引用次数: 5

Abstract

: Data-driven mathematical methods are increasingly important for characterizing complex systems across the physical, engineering, and biological sciences. These methods aim to discover and exploit a relatively small subset of the full high-dimensional state space where low-dimensional models can be used to describe the evolution of the system. Emerging dimensionality reduction methods, such as the dynamic mode decomposition (DMD) and its Koopman generalization, have garnered at-tention due to the fact that they can (i) discover low-rank spatio-temporal patterns of activity, (ii) embed the dynamics in the subspace in an equation-free manner (i. e., the governing equations are unknown), unlike Galerkin projection onto proper orthogonal decomposition modes, and (iii) provide approximations in terms of linear dynamical systems, which are amenable to simple analysis techniques. The selection of observables (features) for the DMD/Koopman architecture can yield accurate low-dimensionalembeddingsfornonlinearpartialdifferentialequations(PDEs)while limiting computational costs. Indeed, a good choice of observables, including time delay embeddings, can often linearize the nonlinear manifold by making the spatiotemporal dynamics weakly nonlinear. In addition to DMD/Koopman decompositions, coarse-grained models for spatio-temporal systems can also be discovered using the sparse identification of nonlinear dynamics (SINDy) algorithm which allows one to construct reduced-order models in low-dimensional embeddings. These methods can be used in a nonintrusive, equation-free manner for improved computational performance on parametric PDE systems.
数据驱动的降阶建模方法
数据驱动的数学方法对于描述物理、工程和生物科学中的复杂系统越来越重要。这些方法旨在发现和利用完整高维状态空间中相对较小的子集,其中可以使用低维模型来描述系统的演化。新兴的降维方法,如动态模式分解(DMD)及其Koopman泛化,已经引起了人们的关注,因为它们可以(i)发现活动的低秩时空模式,(ii)以无方程的方式(即,控制方程是未知的)将动力学嵌入子空间,不像伽辽金投影到适当的正交分解模式上,(iii)提供线性动力系统的近似。可以用简单的分析技术解决。DMD/Koopman架构的可观测值(特征)的选择可以在限制计算成本的同时为非线性偏微分方程(PDEs)产生精确的低维嵌入。事实上,一个好的可观测值的选择,包括时间延迟嵌入,通常可以通过使时空动态弱非线性来线性化非线性流形。除了DMD/Koopman分解之外,还可以使用非线性动力学的稀疏识别(SINDy)算法发现时空系统的粗粒度模型,该算法允许在低维嵌入中构建降阶模型。这些方法可以以非侵入式、无方程的方式使用,以提高参数PDE系统的计算性能。
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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