基于Relief f的感应电机监测特征排序与特征选择

A. Stief, J. Ottewill, J. Baranowski
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引用次数: 14

摘要

特征是被监视系统的测量属性。状态监测中的特征提取需要系统及其可能的故障情况的领域知识。为了找到故障模式最敏感的特征,必须对特征的相关性进行评估。在本文中,作者使用基于k近邻的特征选择算法ReliefF来评估从感应电机数据集中提取的特征。该数据集包含感应电动机的八种不同健康状态的数据。针对每个运行状况状态计算特征相关性。选择的特征被输入到一个简单的贝叶斯二元分类器中,以计算最可能的健康状态。该方法通过传感器类型和信号处理类型深入了解特征的相关性。对所选特征之间的相似性进行评价有助于识别相似的故障。研究结果强调了领域知识在特征设计中的重要性。此外,通过考虑多种负载和噪声条件下获得的实验数据,该特征选择方法可以在不受外部条件影响的情况下选择最适合诊断特定故障的特征。这些信息可以支持建立健全的监测系统。
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Relief F-Based Feature Ranking and Feature Selection for Monitoring Induction Motors
A feature is a measured property of a monitored system. Feature extraction in condition monitoring requires domain knowledge about a system and its possible fault cases. To find the most sensitive features for fault patterns, one has to evaluate the relevancy of features. In this paper the authors use ReliefF, which is a K-nearest neighbors-based feature selection algorithm, to evaluate the features extracted from an induction motor dataset. The dataset contains data from eight different health states of an induction motor. Feature relevancy is calculated for each health state. The selected features are fed into a simple Bayesian binary classifier to calculate the most likely health state. The method provides insight into the relevance of features by sensor type and also by signal processing type. The evaluation of similarity among the selected features can help identify similar faults. The results obtained emphasize the importance of domain knowledge in the proper design of features. Furthermore, by considering experimental data obtained for multiple loading and noise conditions, the feature selection method indicates features which are best suited for diagnosing specific faults, regardless of external conditions. Such information can support the creation of robust monitoring systems.
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