采用支持向量机(SVM)方法对轴承各种缺陷进行诊断和分类。

Bellal Belkacemi, S. Saad
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引用次数: 2

摘要

今天,故障的诊断和分类非常重要,特别是在旋转机械中,以避免损坏材料和人员损失。本文侧重于使用人工智能方法,特别是超级胜利者机(SVM)进行轴承故障分类。在这一领域已经使用了许多方法和技术来检测和预测轴承故障,但没有一种是完美的。这些方法大多存在提取振动信号的复杂性等缺点。本研究使用支持向量机(SVM)克服了以往方法的所有问题,提高了精度。实验结果表明,该方法比传统方法更有效,可作为异步电动机故障分类的有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bearing various defects diagnosis and classification using super victor machine (SVM) method.
Today, the diagnosis and classification of faults is very important, especially in rotating machines to avoid damage to material and human losses. This paper focuses on the use of artificial intelligence methods and specifically the Super Victor Machine (SVM) for bearing fault classification. Many methods and techniques have been used in this field to detect and predict bearing faults, but none of them is perfect. Most of these methods have many drawbacks, such as the complexity of extracting vibration signals. The present work uses Support Vector Machines (SVM) to overcome all issues of previously used methods for better accuracy. All the results show the effectiveness of the proposed technique over the previous method and can be employed as an effective tool in the classification of induction motor faults.
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