Machine Fault Detection Using Vibration Signals and Improved Fuzzy Clustering Algorithm

Linh Hoai Tran, Thanh Duc Nguyen
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Abstract

This paper will present a new solution for machine fault detection based on the vibration signals. The solution will used in improved fuzzy Gustaffson – Kessel clustering method to generate the classification data centers characteristic for different states of the machines. The Gustaffson – Kessel method offers a modified euclidian distance, which allows betters separation borders between data clusters. The model will be tested with the vibration signals collected from the standard CASE Bearing Data Sets to show the high accuracy of the results.
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基于振动信号和改进模糊聚类算法的机械故障检测
本文提出了一种基于振动信号的机械故障检测新方法。将该方法应用于改进的模糊Gustaffson - Kessel聚类方法中,生成机器不同状态下的分类数据中心特征。Gustaffson - Kessel方法提供了一个改进的欧几里得距离,它允许更好地分离数据簇之间的边界。该模型将与从标准CASE轴承数据集收集的振动信号进行测试,以显示结果的高精度。
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