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A novel LDA-based approach for motor bearing fault detection

机译:基于LDA的新颖方法用于电机轴承故障检测

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Early detection of abnormalities for electrical motors is a key point to reduce economic losses caused by unscheduled maintenance and shutdown time. In this context, health monitoring and fault diagnosis are crucial tasks to be performed. We introduce a novel Linear Discriminant Analysis (LDA) based algorithm to deal with fault data dimension reduction and fault detection issues. In particular the algorithm, namely Δ-LDA, is designed to overcome the problem of a between-class scatter matrix trace very close to zero. Indeed, if the information of the expected value is not sufficient to discriminate the classes, we propose the use of the difference of covariance matrices. A performance comparison with other conventional methods, e.g. principal component analysis and classical LDA, is proposed. In particular experimental results show that the proposed algorithm improves the classification accuracy if the classes are overlapped, and gives comparable results in the remaining scenarios.
机译:尽早发现电动机异常是减少因计划外的维护和停机时间而造成的经济损失的关键点。在这种情况下,运行状况监视和故障诊断是要执行的关键任务。我们介绍了一种新颖的基于线性判别分析(LDA)的算法来处理故障数据维数减少和故障检测问题。特别地,该算法,即Δ-LDA,被设计来克服非常接近于零的类间散布矩阵轨迹的问题。确实,如果期望值的信息不足以区分类别,我们建议使用协方差矩阵的差。与其他常规方法的性能比较,例如提出了主成分分析和经典LDA。尤其是实验结果表明,如果类别重叠,则所提出的算法可以提高分类精度,并在其余场景中提供可比的结果。

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