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Observer-biased bearing condition monitoring: From fault detection to multi-fault classification

机译:观察者偏见的轴承状态监视:从故障检测到多故障分类

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摘要

Bearings are simultaneously a fundamental component and one of the principal causes of failure in rotary machinery. The work focuses on the employment of fuzzy clustering for bearing condition monitoring, i.e., fault detection and classification. The output of a clustering algorithm is a data partition (a set of clusters) which is merely a hypothesis on the structure of the data. This hypothesis requires validation by domain experts. In general, clustering algorithms allow a limited usage of domain knowledge on the cluster formation process. In this study, a novel method allowing for interactive clustering in bearing fault diagnosis is proposed. The method resorts to shrinkage to generalize an otherwise unbiased clustering algorithm into a biased one. In this way, the method provides a natural and intuitive way to control the cluster formation process, allowing for the employment of domain knowledge to guiding it. The domain expert can select a desirable level of granularity ranging from fault detection to classification of a variable number of faults and can select a specific region of the feature space for detailed analysis. Moreover, experimental results under realistic conditions show that the adopted algorithm outperforms the corresponding unbiased algorithm (fuzzy c-means) which is being widely used in this type of problems.
机译:轴承同时是旋转机械中的基本组件和主要故障原因之一。这项工作的重点是将模糊聚类用于轴承状态监测,即故障检测和分类。聚类算法的输出是数据分区(一组聚类),这仅仅是对数据结构的假设。该假设需要领域专家的验证。通常,群集算法允许在群集形成过程中有限地使用领域知识。在这项研究中,提出了一种允许交互式聚类的轴承故障诊断的新方法。该方法借助收缩将原本无偏的聚类算法推广为有偏的算法。这样,该方法提供了一种自然而直观的方法来控制集群形成过程,从而允许使用领域知识来指导它。领域专家可以选择从故障检测到可变数量的故障分类的理想粒度级别,并且可以选择特征空间的特定区域以进行详细分析。此外,在实际条件下的实验结果表明,所采用的算法优于相应的无偏算法(模糊c均值),后者在此类问题中得到了广泛应用。

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