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Multi component fault diagnosis of rotational mechanical system based on decision tree and support vector machine

机译:基于决策树和支持向量机的旋转机械系统多部件故障诊断

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摘要

The shaft and bearing are the most critical components in rotating machinery. Majority of problems arise from faulty bearings in turn affect the shaft. The vibration signals are widely used to determine the condition of machine elements. The vibration signals are used to extract the features to identify the status of a machine. This paper presents the use of c-SVC and nu-SVC models of support vector machine (SVM) with four kernel functions for classification of faults using statistical features extracted from vibration signals under good and faulty conditions of rotational mechanical system. Decision tree algorithm was used to select the prominent features. These features were given as inputs for training and testing the c-SVC and nu-SVC model of SVM and their fault classification accuracies were compared.
机译:轴和轴承是旋转机械中最关键的组件。大多数问题来自轴承故障,进而影响轴。振动信号被广泛用于确定机器元件的状态。振动信号用于提取特征以识别机器状态。本文介绍了使用具有四个核函数的支持向量机(SVM)的c-SVC和nu-SVC模型,利用从旋转机械系统处于良好和故障状态下的振动信号提取的统计特征对故障进行分类。决策树算法用于选择突出特征。这些功能被提供作为训练和测试SVM的c-SVC和nu-SVC模型的输入,并比较了它们的故障分类准确性。

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