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Abuilt-in active sensing system-based structural health monitoring technique using statistical pattern recognition

机译:基于统计模式识别的基于内置主动传感系统的结构健康监测技术

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摘要

A piezoelectric sensor-based health monitoring technique using a two-step support vector machine (SVM) classifier is developed for railroad track damage identification. Abuilt-in active sensing system composed of two PZT patches was investigated in conjunction with both impedance and guided wave propagation methods to detect two kinds of damage in a railroad track (hole-damage 0.5cm in diameter at the web section and transverse cut damage 7.5cm in length and 0.5cm in depth at the head section). Two damage-sensitive features were separately extracted from each method: a) feature I: root mean square deviations (RMSD) of impedance signatures, and b) feature II: sum of square of wavelet coefficients for maximum energy mode of guided waves. By defining damage indices from these two damagesensitive features, a two-dimensional damage feature (2-D DF) space was made. In order to enhance the damage identification capability of the current active sensing system, a two-step SVM classifier was applied to the 2-D DF space. As a result, optimal separable hyper-planes (OSH) were successfully established by the two-step SVM classifier: Damage detection was accomplished by the first step-SVM, and damage classification was carried out by the second step-SVM. Finally, the applicability of the proposed two-step SVM classifier has been verified by thirty test patterns prepared in advance from the intact state and two damage states.
机译:使用两步支持向量机(SVM)分类器的基于压电传感器的健康监测技术被开发用于铁轨损伤识别。研究了由两个PZT贴片组成的内置主动传感系统,结合阻抗和导波传播方法,以检测铁轨中的两种损坏(腹板直径0.5cm的孔损坏和横向切口的损坏7.5)头部的长度为5厘米,深度为0.5厘米)。从每种方法中分别提取了两个对损伤敏感的特征:a)特征I:阻抗特征的均方根偏差(RMSD); b)特征II:导波最大能量模式的小波系数平方和。通过从这两个对损伤敏感的特征中定义损伤指数,可以创建二维损伤特征(2-D DF)空间。为了增强当前主动传感系统的损伤识别能力,将两步SVM分类器应用于二维DF空间。结果,通过两步SVM分类器成功建立了最佳的可分离超平面(OSH):通过第一步SVM完成损伤检测,并通过第二步SVM进行损伤分类。最后,通过从完整状态和两个损坏状态预先准备的三十种测试模式,验证了所提出的两步SVM分类器的适用性。

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