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Sparse Component Analysis Using Time-Frequency Representations for Operational Modal Analysis

机译:使用时频表示进行操作模态分析的稀疏分量分析

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摘要

Sparse component analysis (SCA) has been widely used for blind source separation(BSS) for many years. Recently, SCA has been applied to operational modal analysis (OMA), which is also known as output-only modal identification. This paper considers the sparsity of sources' time-frequency (TF) representation and proposes a new TF-domain SCA under the OMA framework. First, the measurements from the sensors are transformed to the TF domain to get a sparse representation. Then, single-source-points (SSPs) are detected to better reveal the hyperlines which correspond to the columns of the mixing matrix. The K-hyperline clustering algorithm is used to identify the direction vectors of the hyperlines and then the mixing matrix is calculated. Finally, basis pursuit de-noising technique is used to recover the modal responses, from which the modal parameters are computed. The proposed method is valid even if the number of active modes exceed the number of sensors. Numerical simulation and experimental verification demonstrate the good performance of the proposed method.
机译:稀疏成分分析(SCA)已广泛用于盲源分离(BSS)多年。最近,SCA已应用于操作模式分析(OMA),也称为仅输出模式识别。本文考虑了信号源时频(TF)表示的稀疏性,并在OMA框架下提出了一种新的TF域SCA。首先,将来自传感器的测量值转换到TF域以获得稀疏表示。然后,检测单源点(SSP),以更好地揭示与混合矩阵的列相对应的超线。使用K-hyperline聚类算法识别超线的方向矢量,然后计算混合矩阵。最后,采用基本追踪消噪技术恢复模态响应,从而计算出模态参数。即使活动模式的数量超过传感器的数量,所提出的方法也是有效的。数值模拟和实验验证证明了该方法的良好性能。

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