Fault Diagnosis Technology of Reciprocating Pumps based on Inlay Model Wavelet Neural Network
暂无分享,去创建一个
2. Training Center, Natural gas branch of Daqing Oilfield, Daqing 163412 ChinaAbstract: A method is proposed based on inlay model Wavelet Neural Network in order to determine the reciprocating pump fault type accurately. This paper used the reciprocating pump single cylinder pressure signals as the characteristics of the system signal by wavelet packet decomposition to extract fault features vector, which is the input of wavelet neural network, and at the same time, used wavelet neural network to determine the type of the fault. Diagnosis of faults of fluid end on a reciprocating pump proves the system fault diagnosis accuracy to 94%.
[1] Dai Li. Application of Improved Wavelet Neural Network in Fault Diagnosis in Frequency Conversion System , 2008 .
[2] Duan Yu-bo. A Survey of Monitoring and Intelligent Fault Diagnosis for the Pump Valves of Reciprocating Pump , 2003 .
[3] Pan Hong-xia. Study on Application of WCPSO Optimizing Wavelet Neural Network for Gear Box Fault Diagnosis , 2011 .
[4] Yuan Jun. Fault diagnosis of wavelet packet neural network on pump valves of reciprocating pumps based on pressure signal , 2007 .