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Infinite mixture models for operational modal analysis: An automated and principled approach

机译:无限混合模型用于操作模态分析:自动化和原则方法

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The development of a fully automated system identifier without the need for human intervention, is a key step for real-time vibration-based Structural Health Monitoring (SHM). In this paper a novel approach based on the Dirichlet Process Gaussian Mixture Model (DP-GMM) is developed in order to analyze the stabilization diagram. The aim is to separate the true physical modes from the mathematically spurious modes in a fully automated manner, whilst eliminating the need for any manually specified parameters or thresholds. The parametric Covariance Driven Stochastic Subspace Identification (SSI-Cov) is adopted to estimate the modal parameters, and consequently establish the initial stabilization diagram. From there, the use of a two-stage algorithm involving a DP-GMM is proposed to non-parametrically perform an automated cleaning of the stabilization diagram. The contributions of the paper are five-fold: (1) A probabilistic approach based on a DP-GMM is proposed to analyze the stabilization diagram. To the best knowledge of the authors, this study presents one of the first attempts of DP-GMM for full automation of Operational Modal Analysis (OMA). The method is validated using the field test data from a largescale operating cable-stayed bridge, which has two closely-spaced modes around 3 Hz. Not only are these two complicated scenarios consistently identified, but the performance of the method with respect to the problem of missing modes is compared against a reference method based on the conventional multi-stage clustering technique used in OMA, wherein superior performance of the proposed method is demonstrated. (2) The method does not require specification of any threshold or parameter at any stage of the algorithm for cleaning the stabilization diagram, making the approach a potential for robust and fully automated modal identification. (3) Compared to many conventional multi-stage clustering techniques, the proposed approach is computationally efficient as intelligent updates are made to the model using multiple linear algebra properties. (4) New feature vectors are developed which are justified using a combination of mathematical rigor, visual understanding, and engineering intuition. (5) Due to the probabilistic nature of the method, the identification results are accompanied with uncertainty bounds. Several mathematical proofs are presented to explain the observed behavior of the uncertainty bounds. (C) 2020 Elsevier Ltd. All rights reserved.
机译:开发无需人工干预的全自动系统标识符是基于振动的结构健康实时监测(SHM)的关键步骤。本文提出了一种基于Dirichlet过程高斯混合模型(DP-GMM)的稳定图分析方法。其目的是以完全自动化的方式将真实物理模式与数学上的虚假模式分离,同时消除对任何手动指定参数或阈值的需要。采用参数协方差驱动的随机子空间辨识(SSI-Cov)来估计模态参数,从而建立初始稳定图。在此基础上,建议使用涉及DP-GMM的两阶段算法,以非参数方式执行稳定图的自动清洗。本文的贡献有五个方面:(1)提出了一种基于DP-GMM的概率方法来分析稳定图。据作者所知,本研究是DP-GMM首次尝试实现运行模态分析(OMA)的全自动化。通过一座大型运营斜拉桥的现场测试数据验证了该方法的有效性,该桥有两个约3Hz的密集模态。不仅这两个复杂的场景得到了一致的识别,而且还将该方法在模式缺失问题上的性能与基于OMA中使用的传统多阶段聚类技术的参考方法进行了比较,其中展示了所提出方法的优越性能。(2) 该方法不需要在算法的任何阶段指定任何阈值或参数来清理稳定图,使该方法成为鲁棒和全自动模态识别的潜在方法。(3) 与许多传统的多阶段聚类技术相比,该方法计算效率高,因为使用多个线性代数属性对模型进行智能更新。(4) 开发了新的特征向量,并结合数学严谨性、视觉理解和工程直觉进行了验证。(5) 由于该方法的概率性质,识别结果带有不确定性边界。给出了几个数学证明来解释观测到的不确定性界的行为。(C) 2020爱思唯尔有限公司版权所有。

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