Rolling element bearing fault detection using density-based clustering

Jing Tian, M. Azarian, M. Pecht
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引用次数: 12

Abstract

Fault detection is a critical task in condition-based maintenance of rolling element bearings. In many applications unsupervised learning techniques are preferred in fault detection due to the lack of training data. Unsupervised learning techniques such as k-means clustering are most widely used in machinery health monitoring. These methods face two challenges: firstly, they cannot cluster non-convex data, which may have arbitrary shape; secondly, no rule has been established for these techniques to find a fault threshold. This paper introduces a fault detection methodology based on density clustering to address these challenges. This methodology assumes that data from healthy bearings is located in regions with a high density and data from faulty bearings is located in low density regions. By finding boundaries of these regions, which may be non-convex, data from faulty bearings can be identified. In this paper the value of the density for healthy bearings and faulty bearings is evaluated. The rate of change of the density from healthy to faulty is identified as a fault threshold. The methodology is validated by experimental data. This methodology can be applied to applications where faulty data are too difficult or costly to acquire. Also it can be used in applications where fault thresholds are difficult to determine.
基于密度聚类的滚动轴承故障检测
故障检测是滚动轴承状态维护中的一项关键任务。在许多应用中,由于缺乏训练数据,无监督学习技术被首选用于故障检测。无监督学习技术如k-means聚类在机械健康监测中应用最为广泛。这些方法面临两个挑战:首先,它们不能聚类具有任意形状的非凸数据;其次,这些技术没有建立规则来寻找故障阈值。本文介绍了一种基于密度聚类的故障检测方法来解决这些问题。该方法假设来自健康轴承的数据位于高密度区域,而来自故障轴承的数据位于低密度区域。通过寻找这些区域的边界,这些区域可能是非凸的,可以识别来自故障轴承的数据。本文对健康轴承和故障轴承的密度值进行了评估。密度从健康到故障的变化率被确定为故障阈值。实验数据验证了该方法的有效性。这种方法可以应用于获取错误数据过于困难或成本过高的应用程序。它还可以用于难以确定故障阈值的应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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