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Hydraulic System Faults Diagnosis Based on Multi-class Support Vector Machine

机译:基于多类支持向量机的液压系统故障诊断

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There is no sufficient evidence on classification, because of lack of hydraulic system fault samples. The classification results with definite guess are not exactly right. Meanwhile, there are many types of hydraulic system faults, but present classifiers can only classify two-class problems, which are not fit for hydraulic system faults diagnosis. In order to solve the preceding problems, a method for hydraulic system faults diagnosis based on multi-class support vector machine (MSVM) is proposed. A support vector machine (SVM) has strong classification ability with fewer samples taker. For k -class problem of hydraulic system, it combines k??k-1??/2 two-class SVM classifiers, one for each pair of classes. The experimental results indicate that this method is a more effective and feasible tool for hydraulic system faults diagnosis than Neural Net.
机译:由于缺少液压系统故障样本,因此没有足够的分类证据。具有明确猜测的分类结果并不完全正确。同时,液压系统故障类型很多,但是目前的分类器只能对两类问题进行分类,不适用于液压系统故障诊断。为了解决上述问题,提出了一种基于多类支持向量机的液压系统故障诊断方法。支持向量机(SVM)具有强大的分类能力,减少了采样者。对于液压系统的k类问题,它组合了k ?? k-1 ?? / 2两个两类SVM分类器,每对分类器一个。实验结果表明,与神经网络相比,该方法是一种更有效,更可行的液压系统故障诊断工具。

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