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A Subspace Clustering Chart Using a Reference Model for Featureless Bearing Performance Degradation Assessment

机译:使用参考模型进行无特征轴承性能退化评估的子空间聚类图

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The health index (HI) of machine condition must be sensitive and robust in complex working conditions. A systematic HI will assess machine performance automatically, reliably, and in a timely manner without intervention. This paper proposes a subspace clustering HI in a model using reference data on component health. Unlike the conventional HIs empirically learned from raw feature sets, a subspace clustering HI aims to automatically describe the migration and variation of the condition clustering distribution in a series of two-class subspace models derived from the raw data. First, in a featureless process, a covariance-driven Hankel matrix is directly constructed from the raw time-domain signal, and principal component analysis is used to separate the feature subspace and noise null-space. Second, in the index construction process, the reference health subspace data (from healthy data) and the monitored subspace data (from monitored data) are combined to construct a referenced model. Thus, a new spatial clustering HI with kernel operation is implemented to assess the current bearing performance and reveal discriminative features. The effectiveness of the proposed subspace clustering HI for the detection of abnormal condition is evaluated experimentally on bearing test-beds, using a mobile mapping mode. A novel subspace clustering chart, CUSUM-based spatial clustering HI, is developed to depict the real bearing performance degradation. Compared to the regular HI (e.g., root mean square), the proposed approach provides a more accurate and reliable degradation assessment profile with an early fault occurrence alarm. The experimental results show the potential of the proposed spatial clustering analysis to assess bearing degradation.
机译:在复杂的工作条件下,机器状态的健康指数(HI)必须灵敏且坚固。系统的HI将自动,可靠且及时地评估机器性能,而无需干预。本文使用有关组件健康的参考数据在模型中提出了子空间聚类HI。与通过经验从原始特征集中学习的常规HI不同,子空间聚类HI旨在自动描述条件聚类分布在从原始数据派生的一系列两类子空间模型中的迁移和变化。首先,在无特征过程中,直接从原始时域信号构建协方差驱动的汉克尔矩阵,并使用主成分分析来分离特征子空间和噪声零空间。其次,在索引构建过程中,将参考健康子空间数据(来自健康数据)和监视子空间数据(来自监视数据)组合起来,以构建参考模型。因此,实施了一种新的具有核操作的空间聚类HI,以评估当前的轴承性能并揭示区分特征。建议的子空间聚类HI用于检测异常状况的有效性是通过移动映射模式在轴承试验台上进行实验评估的。开发了一种新颖的子空间聚类图,即基于CUSUM的空间聚类HI,以描述实际的轴承性能下降。与常规HI(例如,均方根)相比,所提出的方法提供了更准确和可靠的降级评估配置文件,并带有早期故障发生警报。实验结果表明,提出的空间聚类分析有可能评估轴承的退化。

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