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Bearing fault diagnosis using hybrid genetic algorithm K-means clustering

机译:基于混合遗传算法的K均值聚类的轴承故障诊断

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摘要

Condition monitoring and fault diagnosis of rotating machinery are very significant and practically challenging fields in industries for reducing maintenance costs. Fault diagnosis may be interpreted as a classification problem; therefore artificial intelligence-based classifiers can be efficiently used to classify normal and faulty machine conditions. K-means clustering is one of the methods applied for this purpose. In this paper, a new fault diagnosis method is proposed by applying Genetic Algorithm (GA) to overcome the drawback of K-means which it may be get stuck in local optima. For this purpose, the best solution of GA is chosen to be the initial point for K-means clustering. The proposed method is used in fault diagnosis of the scaled rotor-bearing system experimentally. Then the result of hybrid GA-K-means clustering is compared with classic K-means clustering.
机译:为了降低维护成本,旋转机械的状态监视和故障诊断是非常重要的行业,在实际中具有挑战性。故障诊断可以解释为分类问题。因此,基于人工智能的分类器可有效地用于对正常和故障机器状况进行分类。 K-均值聚类是用于此目的的方法之一。提出了一种基于遗传算法的故障诊断方法,以克服K-means算法可能陷入局部最优的缺点。为此,选择GA的最佳解决方案作为K均值聚类的起点。实验结果表明该方法可用于定标转子轴承系统的故障诊断。然后将混合GA-K-means聚类的结果与经典K-means聚类进行比较。

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