首页> 外文会议>Electrical and Computer Engineering, 2002. IEEE CCECE 2002. Canadian Conference on >Support vector machines based approach for fault diagnosis of valves in reciprocating pumps
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Support vector machines based approach for fault diagnosis of valves in reciprocating pumps

机译:基于支持向量机的往复泵阀门故障诊断方法

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Support vector machines (SVMs) represent an approach to pattern classification. The paper presents a SVMs based approach for fault diagnosis of valves in three-cylinder reciprocating pumps. The vibration signals collected from pumps are preprocessed with the wavelet packet transform and time-frequency information is extracted as the character vector for training mid testing the SVMs. To classify multiple fault modes of valves, a SVMs based multi-class classifier is constructed and used in the valve faults diagnosis. The results in experiments show that fault types and positions of faulty valves can be identified and diagnosed by the above method. Furthermore, compared with the results of a BP network, more excellent diagnosis accuracy indicates the potential of the SVMs techniques in machinery fault detection.
机译:支持向量机(SVM)代表了一种模式分类方法。本文提出了一种基于支持向量机的三缸往复泵阀门故障诊断方法。用小波包变换对从泵收集的振动信号进行预处理,并提取时频信息作为特征向量,以训练SVM进行中期测试。为了对阀门的多种故障模式进行分类,构造了基于支持向量机的多类分类器,并将其用于阀门故障诊断中。实验结果表明,通过上述方法可以对故障阀门的故障类型和位置进行识别和诊断。此外,与BP网络的结果相比,更出色的诊断准确性表明SVM技术在机械故障检测中的潜力。

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