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A comparative analysis of classical and one class SVM classifiers for machine fault detection using vibration signals

机译:使用振动信号进行机器故障检测的经典SVM分类器和一类SVM分类器的比较分析

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Early and efficient fault detection is very important in today's complex and sophisticated automated industry. For fault detection, many techniques have been employed among which the support vector machines (SVM) is a popular one owing to its many attractive features like fast classification, good handling capability of non-linear behavior of the data, and providing a global optimum for classification. This article presents the use of SVM and one of its variants i.e. one class SVM for fault detection in a rotation based machinery. The rotating machines give vibrational signals that can be analyzed to monitor the machines' health. The fundamental idea and implementation technique of classical SVM and one-class SVM are discussed. The vibration signals are obtained followed by feature extraction in time and frequency domain and on this basis, fault classification is performed. The performance of the said classifiers is compared for the Intelligence Maintenance Systems (IMS) bearing vibration data with the introduction of step and incipient faults respectively. Presence of incipient fault makes the classification very difficult. Afterwards, the classifier failure condition is calculated and the decision value plots are explicated. Classification results obtained using one class SVM are superior than classical SVM as advocated by our simulations.
机译:在当今复杂而复杂的自动化行业中,早期和有效的故障检测非常重要。对于故障检测,已经采用了许多技术,其中支持向量机(SVM)由于其许多吸引人的功能而广受欢迎,例如快速分类,良好的数据非线性行为处理能力以及为分类。本文介绍了SVM及其变体之一(即一类SVM)在基于旋转的机械中进行故障检测的用途。旋转的机器会发出振动信号,可以对其进行分析以监控机器的运行状况。讨论了经典支持向量机和一类支持向量机的基本思想和实现技术。获取振动信号,然后在时域和频域中进行特征提取,并在此基础上执行故障分类。将所述分类器的性能与带有振动数据的智能维护系统(IMS)进行了比较,分别引入了阶跃故障和初期故障。初期故障的存在使分类非常困难。然后,计算分类器故障条件,并阐明决策值图。正如我们的模拟所提倡的,使用一类SVM获得的分类结果优于经典SVM。

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