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The multi-classification algorithm combining an improved binary tree with SVM and its application of fault diagnosis

机译:改进二叉树与支持向量机相结合的多分类算法及其在故障诊断中的应用

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When binary tree SVM is used for multi-class fault diagnosis, inner-class distance or between-class distance is always used to decide the classification hierarchy, but these methods cannot take the comprehensive separability information between classes into account, which leads to decrease the accuracy of fault diagnosis easily, so an improved binary tree SVM method is proposed. Combining the separability of inner-class with the separability of between-class, a measurement formula is built, which is based on a principle, that is the same class is relatively clustered and the different classes have a relatively far distance is easier to classify. Then according to it, the classification hierarchy is decided. In the end, the new method is applied to fault diagnosis of Tennessee Eastman (TE) process, the experimental results show it has an excellent integrated performance in comparison to other methods based on SVM.
机译:当使用二叉树SVM进行多类故障诊断时,始终使用内部类距离或类间距离来确定分类层次,但是这些方法无法考虑类之间的综合可分离性信息,从而降低了故障诊断的准确性易于实现,因此提出了一种改进的二叉树支持向量机方法。将内部类的可分离性与类之间的可分离性相结合,建立了基于以下原则的度量公式:同一类是相对聚类的,而不同类之间的距离相对较容易分类。然后根据它确定分类层次。最后,将该新方法应用于田纳西州伊士曼(TE)过程的故障诊断,实验结果表明,与基于SVM的其他方法相比,该方法具有很好的综合性能。

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