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Investigation of Time Series Representations and Similarity Measures for Structural Damage Pattern Recognition

机译:结构损伤模式识别的时间序列表示和相似度量研究

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摘要

This paper investigates the time series representation methods and similarity measures for sensor data feature extraction and structural damage pattern recognition. Both model-based time series representation and dimensionality reduction methods are studied to compare the effectiveness of feature extraction for damage pattern recognition. The evaluation of feature extraction methods is performed by examining the separation of feature vectors among different damage patterns and the pattern recognition success rate. In addition, the impact of similarity measures on the pattern recognition success rate and the metrics for damage localization are also investigated. The test data used in this study are from the System Identification to Monitor Civil Engineering Structures (SIMCES) Z24 Bridge damage detection tests, a rigorous instrumentation campaign that recorded the dynamic performance of a concrete box-girder bridge under progressively increasing damage scenarios. A number of progressive damage test case datasets and damage test data with different damage modalities are used. The simulation results show that both time series representation methods and similarity measures have significant impact on the pattern recognition success rate.
机译:本文研究了传感器数据特征提取和结构损伤模式识别的时间序列表示方法和相似性度量方法。研究了基于模型的时间序列表示和降维方法,以比较特征提取对损伤模式识别的有效性。特征提取方法的评估是通过检查不同损伤模式之间的特征向量的分离和模式识别成功率来进行的。此外,还研究了相似性度量对模式识别成功率的影响以及损伤定位的度量。本研究中使用的测试数据来自“系统识别以监视土木工程结构(SIMCES)Z24桥梁损坏检测”测试,这是一项严格的仪器测试活动,记录了在逐渐增加的损坏情况下混凝土箱梁桥的动态性能。使用了许多渐进式损坏测试案例数据集和具有不同损坏方式的损坏测试数据。仿真结果表明,时间序列表示方法和相似性度量都对模式识别成功率有重要影响。

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