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Intelligent Gearbox Diagnosis Methods Based on SVM, Wavelet Lifting and RBR

机译:基于支持向量机,小波提升和RBR的智能变速箱诊断方法

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Given the problems in intelligent gearbox diagnosis methods, it is difficult to obtain the desired information and a large enough sample size to study; therefore, we propose the application of various methods for gearbox fault diagnosis, including wavelet lifting, a support vector machine (SVM) and rule-based reasoning (RBR). In a complex field environment, it is less likely for machines to have the same fau moreover, the fault features can also vary. Therefore, a SVM could be used for the initial diagnosis. First, gearbox vibration signals were processed with wavelet packet decomposition, and the signal energy coefficients of each frequency band were extracted and used as input feature vectors in SVM for normal and faulty pattern recognition. Second, precision analysis using wavelet lifting could successfully filter out the noisy signals while maintaining the impulse characteristics of the fau thus effectively extracting the fault frequency of the machine. Lastly, the knowledge base was built based on the field rules summarized by experts to identify the detailed fault type. Results have shown that SVM is a powerful tool to accomplish gearbox fault pattern recognition when the sample size is small, whereas the wavelet lifting scheme can effectively extract fault features, and rule-based reasoning can be used to identify the detailed fault type. Therefore, a method that combines SVM, wavelet lifting and rule-based reasoning ensures effective gearbox fault diagnosis.
机译:鉴于智能变速箱诊断方法存在的问题,很难获得所需的信息和足够大的样本量进行研究;因此,我们提出了变速箱故障诊断的各种方法的应用,包括小波提升,支持向量机(SVM)和基于规则的推理(RBR)。在复杂的现场环境中,机器出现相同故障的可能性较小;此外,故障特征也会变化。因此,可以将SVM用于初始诊断。首先,利用小波包分解处理齿轮箱振动信号,提取每个频带的信号能量系数,并将其用作SVM中的输入特征向量,以进行正常和故障模式识别。其次,利用小波提升的精度分析可以成功滤除噪声信号,同时保持故障的脉冲特性。从而有效地提取了机器的故障频率。最后,根据专家总结的现场规则建立知识库,以识别详细的故障类型。结果表明,当样本量较小时,支持向量机是完成齿轮箱故障模式识别的有力工具,而小波提升方案可以有效地提取故障特征,并且可以使用基于规则的推理来识别详细的故障类型。因此,结合支持向量机,小波提升和基于规则的推理的方法可确保有效的齿轮箱故障诊断。

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