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A comparison of fuzzy clustering algorithms for bearing fault diagnosis

机译:模糊聚类算法对轴承故障诊断的比较

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摘要

Bearings are one of the most omnipresent and vulnerable components in rotary machinery such as motors, generators, gearboxes, or wind turbines. The consequences of a bearing fault range from production losses to critical safety issues. To mitigate these consequences condition based maintenance is gaining momentum. This is based on a variety of fault diagnosis techniques where fuzzy clustering plays an important role as it can be used in fault detection, classification, and prognosis. A variety of clustering algorithms have been proposed and applied in this context. However, when the extensive literature on this topic is investigated, it is not clear which clustering algorithm is the most suitable, if any. In an attempt to bridge this gap, in this study four representative fuzzy clustering algorithms are compared under the same experimental realistic conditions: fuzzy c-means (FCM), the Gustafson-Kessel algorithm, FN-DBSCAN, and FCMFP. The study considers only real-world bearing vibration data coming from both a benchmark data set (CWRU) and from a lab setup where interference between bearing faults can be studied. The comparison takes into account the quality of the generated partitions measured by the external quality (Rand and Adjusted Rand) indexes. The conclusions of the study are grounded in statistical tests of hypotheses.
机译:轴承是旋转机械中最具无所日度和脆弱的部件之一,如电机,发电机,齿轮箱或风力涡轮机。轴承故障范围从生产损失到关键安全问题的后果。为了减轻这些后果,基于条件的维护正在获得动力。这是基于各种故障诊断技术,其中模糊聚类发挥着重要作用,因为它可以用于故障检测,分类和预后。在这种情况下已经提出了各种聚类算法和应用。但是,当调查了对该主题的广泛文献时,不清楚哪种聚类算法是最合适的,如果有的话。在尝试桥接这一差距中,在本研究中,在相同的实验现实条件下比较四个代表性模糊聚类算法:模糊C型方式(FCM),Gustafson-Kessel算法,FN-DBSCAN和FCMFP。该研究仅考虑来自基准数据集(CWRU)的真实轴承振动数据,以及可以从实验室设置中研究轴承故障之间的干扰。比较考虑了所生成分区的质量,由外部质量(RAND和调整的RAND)索引测量。该研究的结论在假设的统计测试中接地。

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