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Modal parameter identification with compressed samples by sparse decomposition using the free vibration function as dictionary

机译:使用自由振动函数作为字典的稀疏分解,用压缩样本的模态参数识别。作为字典

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摘要

Compressive sensing (CS) is a newly developed data acquisition and processing technique that takes advantage of the sparse structure in signals. Normally signals in their primitive space or format are reconstructed from their compressed measurements for further treatments, such as modal analysis for vibration data. This approach causes problems such as leakage, loss of fidelity, etc., and the computation of reconstruction itself is costly as well. Therefore, it is appealing to directly work on the compressed data without prior reconstruction of the original data. In this paper, a direct approach for modal analysis of damped systems is proposed by decomposing the compressed measurements with an appropriate dictionary. The damped free vibration function is adopted to form atoms in the dictionary for the following sparse decomposition. Compared with the normally used Fourier bases, the damped free vibration function spans a space with both the frequency and damping as the control variables. In order to efficiently search the enormous two-dimension dictionary with frequency and damping as variables, a two-step strategy is implemented combined with the Orthogonal Matching Pursuit (OMP) to determine the optimal atom in the dictionary, which greatly reduces the computation of the sparse decomposition. The performance of the proposed method is demonstrated by a numerical and an experimental example, and advantages of the method are revealed by comparison with another such kind method using POD technique.
机译:压缩感测(CS)是一种新开发的数据采集和处理技术,其利用信号中的稀疏结构。通常从其原始空间或格式中的信号从其压缩测量重建,以进行进一步处理,例如振动数据的模态分析。这种方法会导致泄漏,保真度丢失等的问题,并且重建本身的计算也很昂贵。因此,在没有先前重建原始数据的情况下直接在压缩数据上直接工作。本文通过用适当的字典将压缩测量分解,提出了一种用于阻尼系统模态分析的直接方法。采用阻尼的自由振动功能在稀疏分解的下列稀疏分解中形成原子。与通常使用的傅立基座相比,阻尼自由振动功能与频率和阻尼作为控制变量跨越空间。为了有效地搜索具有频率和阻尼作为变量的巨大的二维字典,实现了两步策略与正交匹配追求(OMP)相结合,以确定字典中的最佳原子,这大大减少了计算的计算稀疏分解。通过数值和实验例证明了所提出的方法的性能,并通过使用POD技术的另一种这种种类方法来揭示该方法的优点。

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