模型约简中获得适当正交分解系数的多维残差泛函

Richard Ríos, J. Espinosa, C. Mejía
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引用次数: 2

摘要

本文给出了在二维空间域中用一元偏微分方程描述的系统,当用POD方法推导降阶模型时,求POD(固有正交分解)系数的多维残差泛函。POD方法的模型约简是一种使用信号谱分解和伽辽金投影来推导降阶模型的技术。最近,POD社区对张量分解的兴趣越来越大,因为它可以解决当前基于矩阵技术中观察到的一些结果。使用张量分解的主要目的是导出多维基函数,这对于获得系统解的谱分解是必不可少的。然而,由于多维基函数与传统矩阵技术中建立的残差函数不匹配,因此需要对残差函数进行推广,才能得到POD系数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-dimensional residual functional for obtaining the Proper Orthogonal Decomposition coefficients in model reduction
This paper presents a multi-dimensional residual functional for deriving the POD (Proper Orthogonal Decomposition) coefficients of systems described with partial differential equations of one variable in a bidimensional spatial domain, when a POD approach is used for deriving a reduced order model. Model reduction with a POD approach is a technique that uses the signal spectral decomposition and the Galerkin projection for deriving reduced order models. Recently there has been a growing interest in the POD community in the subject of tensor decomposition, since it can address some of the outcomes observed in the current based matrix technique. The main purpose of using tensor decomposition is to derive multidimensional basis functions, which are essential for obtaining a spectral decomposition of the system solution. However, multidimensional basis functions do not match with the residual functional developed in the traditional matrix technique, therefore a generalization of this residual function is needed in order to obtain the POD coefficients.
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