基于离散余弦变换和监督机器学习算法的旋转轴承故障诊断

Kangkan Bhakta, Niloy Sikder, A. Nahid, M. M. M. Islam
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引用次数: 1

摘要

电机是我们工业世界的驱动力,因为它们为大约85%的旋转机器提供动力。这种革命性的发明在进入商业工业之前已经经历了翻天覆地的变化,至少可以说,它们现在的形式是非常可靠的。然而,尽管如此强大,感应电机并不是完全防故障,更容易受到内部故障比外部故障。在内部故障中,某些类型的轴承故障更为频繁,其影响范围从各种与性能相关的问题到硬电机故障。幸运的是,数字信号处理和机器学习领域的最新进展使我们能够检测这些轴承故障并找出其根源,从而使我们能够保持其健康并采取措施防止故障。通过振动分析,提出了一种有效的故障检测方法,并根据故障在轴承内部的发生位置对故障进行区分。利用离散余弦变换和决策树分类器这一著名的信号处理技术,该方法能够以99.4%的准确率对电机轴承状态进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rotating Element Bearing Fault Diagnosis Using Discrete Cosine Transform and Supervised Machine Learning Algorithm
Motors are the driving force of our industrial world, as they power approximately 85% of all rotating machines. This revolutionary invention has been through radical changes before entering into the commercial industries, and their present forms are very reliable, to say the least. However, despite being so robust, induction motors are not entirely fault-proof and are more vulnerable to the internal faults than the external ones. Among the internal faults, certain types of bearing faults are more frequent, and their effects range from various performance-related issues to hard motor breakdowns. Fortunately, the recent advancements in the fields of Digital Signal Processing and Machine Learning allow us to detect these bearing faults and Figure out their origins, which in turn enables us to preserve their health and take measures against breakdowns. Through vibration analysis, this paper proposes a powerful method to detect these faults and differentiate among them based on the location of their occurrence within the bearing. Utilizing a well-known signal processing technique called Discrete Cosine Transform and Decision Tree classifier, this method is capable of classifying the motor bearing states with a 99.4% accuracy.
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