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Classification of damage in structural systems using time series analysis and supervised and unsupervised pattern recognition techniques

机译:使用时间序列分析以及有监督和无监督模式识别技术对结构系统中的损伤进行分类

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Developed for studying long, periodic records of various measured quantities, time series analysis methods are inherently suited and offer interesting possibilities for Structural Health Monitoring (SHM) applications. However, their use in SHM can still be regarded as an emerging application and deserves more studies. In this research, Autoregressive (AR) models were used to fit experimental acceleration time histories from two experimental structural systems, a 3-storey bookshelf-type laboratory structure and the ASCE Phase Ⅱ SHM Benchmark Structure, in healthy and several damaged states. The coefficients of the AR models were chosen as damage sensitive features. Preliminary visual inspection of the large, multidimensional sets of AR coefficients to check the presence of clusters corresponding to different damage severities was achieved using Sammon mapping - an efficient nonlinear data compression technique. Systematic classification of damage into states based on the analysis of the AR coefficients was achieved using two supervised classification techniques: Nearest Neighbor Classification (NNC) and Learning Vector Quantization (LVQ), and one unsupervised technique: Self-organizing Maps (SOM). This paper discusses the performance of AR coefficients as damage sensitive features and compares the efficiency of the three classification techniques using experimental data.
机译:专为研究各种测量量的长周期记录而开发,时间序列分析方法固有地适用,并为结构健康监测(SHM)应用提供了有趣的可能性。但是,它们在SHM中的使用仍然可以视为新兴应用程序,值得进一步研究。在这项研究中,使用自回归(AR)模型来拟合来自两个实验结构系统(三层书架型实验室结构和ASCEⅡSHM基准结构)处于健康状态和几种损坏状态的实验加速时间历史。选择AR模型的系数作为损伤敏感特征。使用Sammon映射-一种有效的非线性数据压缩技术,可以对较大的多维AR系数集进行初步的目视检查,以检查对应于不同破坏严重度的聚类的存在。使用两种监督分类技术:最近邻分类(NNC)和学习矢量量化(LVQ),以及基于一种不受监督的技术:自组织映射(SOM),基于对AR系数的分析,将损伤分类为状态。本文讨论了AR系数作为损伤敏感特征的性能,并使用实验数据比较了三种分类技术的效率。

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