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Structural health monitoring by a new hybrid feature extraction and dynamic time warping methods under ambient vibration and non-stationary signals

机译:环境振动和非静止信号下新的混合特征提取和动态时间翘曲方法的结构健康监测

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摘要

Feature extraction and classification are crucial steps of a data-driven structural health monitoring strategy. One of the major issues in feature extraction is to extract damage-sensitive features from non-stationary signals under unknown ambient vibration. Furthermore, the use of high-dimensional features in damage detection is the other challenging issue, which may make a difficult and time-consuming process. This article is initially intended to propose a hybrid algorithm as a combination of EEMD technique and ARARX model for feature extraction. Subsequently, correlation-based dynamic time warping method is proposed to detect damage by using randomly high-dimensional multivariate features. Due to the importance of damage localization, dynamic time warping is eventually applied to locate damage. Experimental datasets of the IASC-ASCE benchmark structure are utilized to validate the accuracy of proposed methods. Results suggest that the proposed methods are effective tools for damage detection and localization under ambient vibration and non-stationary and/or stationary signals. (C) 2018 Published by Elsevier Ltd.
机译:特征提取和分类是数据驱动的结构健康监测策略的关键步骤。特征提取中的一个主要问题是在未知的环境振动下从非静止信号中提取损伤敏感特征。此外,在损伤检测中使用高维特征是其他具有挑战性的问题,这可能产生困难且耗时的过程。本文最初旨在提出混合算法作为EEMD技术和Ararx模型的组合进行特征提取。随后,提出了基于相关的动态时间翘曲方法来通过使用随机高维多变量特征来检测损坏。由于损坏本地化的重要性,动态时间翘曲最终施加损坏。 IASC-ASCE基准结构的实验数据集用于验证所提出的方法的准确性。结果表明,所提出的方法是在环境振动和非静止和/或静止信号下损坏检测和定位的有效工具。 (c)2018由elestvier有限公司出版

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