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引用次数: 9
摘要
本文提出了一种新的方法来解决异步电动机故障诊断中的分类问题。这种新方法的起源是基于蚂蚁聚类的无监督分类算法,以及k均值算法和主成分分析(PCA)的启发式原理。其主要优点是不需要关于系统或可能的类数量的信息。在IRIS基准数据集(Benchmark data set)中对该算法进行了评估,并将其应用于5.5 kW鼠笼式异步电动机的故障诊断,对数据集进行聚类,验证了该算法的故障检测能力。所得结果证明了该方法对电机监测的有效性。
Faults classification of induction machine using an improved ant clustering technique
In this paper, a new approach is applied to solve classification problems for the diagnosis of faults in induction motors. This new method finds its origins in works on the unsupervised classification algorithms based on ant clustering and the heuristic principles of the K-means algorithm and the principal components analysis (PCA). The main advantage is that requires no information about the system or about a possible number of classes. The proposed algorithm is evaluated in the Benchmark data set (IRIS) and applied to the diagnosis of a squirrel-cage induction motor of 5.5 kW in order to clustering data sets and verify the fault detection capability. The obtained results prove the efficiency of this method for the monitoring of electrical machines.