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A probabilistic multi-class classifier for structural health monitoring

机译:用于结构健康监测的概率多分类器

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摘要

In this paper, a probabilistic multi-class pattern recognition algorithm is developed for damage monitoring of smart structures. As these structures can face damages of different severities located in various positions, multi-class classifiers are needed. We propose an original support vector machine (SVM) multi-class clustering algorithm that is based on a probabilistic decision tree (PDT) that produces a posteriori probabilities associated with damage existence, location and severity. The PDT is built by iteratively subdividing the surface and thus takes into account the structure geometry. The proposed algorithm is very appealing as it combines both the computational efficiency of tree architectures and the SVMs classification accuracy. Damage sensitive features are computed using an active approach based on the permanent emission of non-resonant Lamb waves into the structure and on the recognition of amplitude disturbed diffraction patterns. The effectiveness of this algorithm is illustrated experimentally on a composite plate instrumented with piezoelectric elements.
机译:本文提出了一种用于智能结构损伤监测的概率多类模式识别算法。由于这些结构可能面临位于不同位置的不同严重程度的破坏,因此需要多分类器。我们提出了一种基于概率决策树(PDT)的原始支持向量机(SVM)多类聚类算法,该算法会产生与损伤存在,位置和严重性相关的后验概率。通过迭代细分表面来构建PDT,并因此考虑了结构几何形状。所提出的算法非常吸引人,因为它结合了树结构的计算效率和SVM分类精度。损伤敏感特征是根据非共振Lamb波向结构中的永久发射以及对振幅受干扰的衍射图样的识别,使用主动方法计算得出的。通过在装有压电元件的复合板上实验性地说明了该算法的有效性。

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