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Fault Diagnosis of Reciprocating Compressor Valve Based on Transfer Learning Convolutional Neural Network

机译:基于转移学习卷积神经网络的往复式压缩机阀故障诊断

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Reciprocating compressors play a vital role in oil, natural gas, and general industrial processes. Their safe and stable operation directly affects the healthy development of the enterprise economy. Since the valve failure accounts for 60% of the total failures when the reciprocating compressor fails, it is of great significance to quickly find and diagnose the failure type of the valve for the fault diagnosis of the reciprocating compressor. At present, reciprocating compressor valve fault diagnosis based on deep neural networks requires sufficient labeled data for training, but valve in real-case reciprocating compressor (VRRC) does not have enough labeled data to train a reliable model. Fortunately, the data of valve in laboratory reciprocating compressor (VLRC) contains relevant fault diagnosis knowledge. Therefore, inspired by the idea of transfer learning, a fault diagnosis method for reciprocating compressor valves based on transfer learning convolutional neural network (TCNN) is proposed. This method uses convolutional neural network (CNN) to extract the transferable features of gas temperature and pressure data from VLRC and VRRC and establish pseudolabels for VRRC unlabeled data. Three regularization terms, the maximum mean discrepancy (MMD) of the transferable features of VLRC and VRRC data, the error between the VLRC sample label prediction and the actual label, and the error between the VRRC sample label prediction and the pseudolabel, are proposed. Their weighted sum is used as an objective function to train the model, thereby reducing the distribution difference of domain feature transfer and increasing the distance between learning feature classes. Experimental results show that this method uses VLRC data to identify the health status of VRRC, and the fault recognition rate can reach 98.32%. Compared with existing methods, this method has higher diagnostic accuracy, which proves the effectiveness of this method.
机译:往复式压缩机在石油,天然气和一般工业过程中起着至关重要的作用。他们的安全和稳定的运作直接影响企业经济的健康发展。由于往复式压缩机失效时阀门故障占总故障的60%,因此快速发现和诊断往复式压缩机故障诊断的阀门的故障类型具有重要意义。目前,基于深度神经网络的往复式压缩机阀故障诊断需要足够的标记数据进行训练,但实际情况下的阀门实际往复式压缩机(VRRC)没有足够的标记数据来培训可靠的模型。幸运的是,实验室往复式压缩机(VLRC)中的阀门数据包含相关的故障诊断知识。因此,提出了通过转移学习思想的启发,提出了一种基于转移学习卷积神经网络(TCNN)的往复式压缩机阀的故障诊断方法。该方法使用卷积神经网络(CNN)从VLRC和VRRC中提取气体温度和压力数据的可转移特征,并为VRRC未标记数据建立伪标签。提出了三个正则化术语,提出了VLRC和VRRC数据可转移特征的最大平均差异(MMD),提出了VLRC样本标签预测和实际标签之间的误差以及VRRC样本标签预测和伪标签之间的误差。它们的加权总和用作训练模型的目标函数,从而降低了域特征传递的分布差异并增加了学习特征类之间的距离。实验结果表明,该方法使用VLRC数据来识别VRRC的健康状态,故障识别率可以达到98.32%。与现有方法相比,该方法具有更高的诊断精度,证明了该方法的有效性。

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