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Analog circuit fault diagnosis approach using optimized SVMs based on MST algorithm

机译:基于MST算法的优化SVMS模拟电路故障诊断方法

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The classification accuracy and efficiency of multiclass SVMs are largely dependent on the SVM combination strategy in analog circuits fault diagnosis. An optimized SVM extension strategy is presented in this paper, which uses minimum spanning tree (MST) algorithm to simplify the SVM structure and decrease the classification errors. By taking the separability measure of fault classes as edge weight of undirected graph extracted from feature space, the tree nodes are generated by bottom-top method, which represents sub-class partition with clustering characteristic. Finally, hierarchical multiclass SVMs are constructed according to the structure of MST obtained. The MST-SVM classifier is expected to improve the diagnosis accuracy because the fault classes with larger margin are preferentially separated. The experimental results on a high-pass filter circuit prove that the MST-SVM method outperforms other conventional SVM approaches in veracity and efficiency of fault diagnosis.
机译:多种SVMS的分类准确性和效率在很大程度上取决于模拟电路故障诊断中的SVM组合策略。本文提出了优化的SVM扩展策略,它使用最小的生成树(MST)算法来简化SVM结构并降低分类错误。通过将故障类的可分离性度量作为从特征空间提取的未向图形的边缘重量,树节点由底部顶部方法生成,它表示具有聚类特性的子类分区。最后,根据所获得的MST的结构构建分层多字符SVM。预计MST-SVM分类器将提高诊断精度,因为优先分离具有较大边距的故障类。在高通滤波器电路上的实验结果证明了MST-SVM方法以反复性和故障诊断的效率优异地优于其他传统的SVM方法。

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