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Recursive principal component analysis for model order reduction with application in nonlinear Bayesian filtering

机译:在非线性贝叶斯滤波中应用模型顺序减少的递归主成分分析

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Proper orthogonal decomposition (POD) is a useful technique for feature extraction, model order reduction and data compression and has been widely used in different science and engineering disciplines. Numerous papers have been published on the application of offline POD, i.e., batch POD (BPOD) in civil and mechanical engineering encompassing Karhunen-Loeve decomposition (KLD), principal component analysis (PCA), and singular value decomposition (SVD). Nevertheless, online POD which is more suited for online feature extraction and monitoring has been scarcely addressed when dealing with civil and mechanical systems, particularly in structural dynamics. In this paper, a number of recursive POD (RPOD) methods in form of recursive PCA (RPCA) are overviewed with their application to structural dynamics. RPCA with numerical eigenvalue decomposition (EVD), incremental principal component analysis (IPCA), matrix perturbation method, and Kalman filter RPCA (KFRPCA) are presented; their performance is probed in terms of initialization, structural parameter modification, noisy observation, and alteration of loading statistics. The novel KFRPCA algorithm developed in this paper is reformulated to resolve the unobservability issue of higher modes which was present in its previous version in the published literature. Online stochastic output-only system identification is presented by synergizing RPCA with nonlinear Bayesian filter. Augmented extended Kalman filter (AEKF) is employed to perform unknown-input dual estimation. (C) 2020 Elsevier B.V. All rights reserved.
机译:适当的正交分解(POD)是特征提取,模型顺序减少和数据压缩的有用技术,并已广泛用于不同的科学和工程学科。在包括Karhunen-Loeve分解(KLD),主成分分析(PCA)和奇异值分解(SVD)的公用和机械工程中的临时POD,即批量吊舱(BPOD)的应用中已发表了许多论文。尽管如此,在处理民用和机械系统时,尤其是结构性动态的在线吊舱。在本文中,概述了递归PCA(RPCA)形式的许多递归荚(RPOD)方法,其应用于结构性动态。 RPCA具有数值特征值分解(EVD),提出了增量主成分分析(IPCA),矩阵扰动方法和卡尔曼滤波器RPCA(KFRPCA);在初始化,结构参数修改,嘈杂观察和装载统计的改变方面探讨了它们的表现。本文开发的新型KFRPCA算法是重新制定的,解决了在发布文献中以前的版本中存在的更高模式的未观察性问题。通过使用非线性贝叶斯滤波器协同RPCA来介绍在线随机输出系统识别。使用增强扩展卡尔曼滤波器(AEKF)来执行未知输入的双重估计。 (c)2020 Elsevier B.v.保留所有权利。

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