Research on Intelligent Diagnosis of Wear Faults of Centrifugal Pumps Based on Stacked Autoencoder

Mingsheng Xiang, Yingli Li, K. Feng
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Abstract

Mechanical fault diagnosis is very important in industry because early detection can avoid some dangerous situations, and not much research has been done on the diagnosis of wear faults in centrifugal pumps. With the rapid development of data analysis techniques, data-driven diagnosis methods are becoming increasingly popular. In this study, stacked autoencoder based method is proposed to solve the centrifugal pump seal wear fault diagnosis problem. The method extracts power spectral density features directly from the vibration signal and chunks the features, greatly reducing the training difficulty and improving the accuracy of the model. The effectiveness of the method is verified using a centrifugal pump dataset, and the results show that the method can diagnose not only the fault site but also the degree of wear.
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基于堆叠自编码器的离心泵磨损故障智能诊断研究
机械故障诊断在工业中具有重要的意义,因为早期发现可以避免一些危险的情况,而离心泵磨损故障的诊断研究还不多。随着数据分析技术的快速发展,数据驱动的诊断方法越来越受欢迎。本文提出了一种基于堆叠自编码器的离心泵密封磨损故障诊断方法。该方法直接从振动信号中提取功率谱密度特征,并对特征进行块化处理,大大降低了训练难度,提高了模型的精度。利用离心泵数据验证了该方法的有效性,结果表明,该方法不仅可以诊断出故障部位,而且可以诊断出磨损程度。
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