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首页> 外文期刊>Journal of mechanics of materials and structures >ANALYSIS OF NONSTATIONARY RANDOM PROCESSES USING SMOOTH DECOMPOSITION
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ANALYSIS OF NONSTATIONARY RANDOM PROCESSES USING SMOOTH DECOMPOSITION

机译:基于平稳分解的非平稳随机过程分析

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摘要

Orthogonal decompositions provide a powerful tool for stochastic dynamics analysis. The most popular decomposition is the Karhunen-Loeve decomposition (KLD), also called proper orthogonal decomposition. KLD is based on the eigenvectors of the correlation matrix of the random field. Recently, a modified KLD called smooth Karhunen-Loeve decomposition (SD) has appeared in the literature. It is based on a generalized eigenproblem defined from the covariance matrix of the random process and the covariance matrix of the associated time-derivative random process. SD appears to be an interesting tool to extend modal analysis. Although it does not satisfy the optimality relation of KLD, and maybe is not as good a candidate for building reduced models as KLD is, SD gives access to the modal vectors independently of the mass distribution. In this paper, the main properties of SD for nonstationary random processes are explored. A discrete nonlinear system is studied through its linearization, for uncorrelated and correlated excitation, and the SD of the nonlinear system and of the linearization are compared. It seems that SD detects not only mass inhomogeneities but also nonlinearities.
机译:正交分解为随机动力学分析提供了强大的工具。最受欢迎的分解是Karhunen-Loeve分解(KLD),也称为适当的正交分解。 KLD基于随机场相关矩阵的特征向量。最近,文献中出现了一种经过改进的KLD,称为平滑Karhunen-Loeve分解(SD)。它基于从随机过程的协方差矩阵和关联的时间导数随机过程的协方差矩阵定义的广义特征问题。 SD似乎是扩展模态分析的有趣工具。尽管它不满足KLD的最优关系,并且可能不如KLD那样适合构建简化模型,但SD可以独立于质量分布访问模态矢量。本文探讨了非平稳随机过程SD的主要性质。通过离散线性系统的线性化研究了不相关和相关激励,并比较了非线性系统和线性化的SD。似乎SD不仅可以检测质量不均匀性,还可以检测非线性。

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