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Early damage assessment in large-scale structures by innovative statistical pattern recognition methods based on time series modeling and novelty detection

机译:基于时间序列建模和新奇检测的创新统计模式识别方法,大规模结构的早期损伤评估

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摘要

Time series analysis and novelty detection are effective and promising methods for data-driven structural health monitoring (SHM) based on the statistical pattern recognition paradigm. However, processing substantially large volumes of vibration measurements may represent a serious limitation, especially for long-term SHM programs of large-scale civil structures. Moreover, shortcomings like the choice of an appropriate time series model in an automatic manner, the determination of optimal orders of the identified model and the classification of random high-dimensional features for damage detection, can strongly affect the performance of these approaches. This study is intended to propose statistical pattern recognition methods regarding time series modeling for feature extraction and novelty detection in feature classification in the presence of big data. These methods include an automatic model identification algorithm, an improved order determination approach and a hybrid distance-based novelty detection through a combination of Partition-based Kullback-Leibler divergence and Mahalanobis-squared distance. Experimental datasets relevant to a cable-stayed bridge are considered to validate the effectiveness of the proposed methods. Results demonstrate that: the AutoRegressive-AutoRegressive with exogenous input (AR-ARX) model turns out to be the most suitable representation for feature extraction; the orders of this model are efficiently and automatically determined; the proposed novelty detection approach is highly successful in detecting damage, even in case of large volumes of random high-dimensional features.
机译:时间序列分析和新奇检测是基于统计模式识别范式的数据驱动结构健康监测(SHM)的有效和有希望的方法。然而,加工大量大量的振动测量可以代表严重的限制,特别是对于大型民用结构的长期SHM程序。此外,缺点,如以自动方式选择合适的时间序列模型,确定所识别的模型的最佳订单和随机高维特征的分类,用于损坏检测,可以强烈影响这些方法的性能。本研究旨在提出关于在大数据存在下的特征分类中的特征提取和新颖性检测的时间序列识别方法。这些方法包括自动模型识别算法,通过基于分区的Kullback-Leibler发散和Mahalanobis平方距离的组合,改进的顺序确定方法和基于混合距离的新颖性检测。与电缆留气桥相关的实验数据集被认为是验证所提出的方法的有效性。结果表明:具有外源性输入(AR-ARX)模型的自回归 - 归类代出是特征提取的最合适的表示;该模型的订单有效和自动确定;即使在大量随机高维特征的情况下,所提出的新颖性检测方法在检测损坏方面非常成功。

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