Vibration Analysis and Prediction of Turbine Rotor Based Grey Artificial Neural Network
To manage the complexities of vibration reasons, a new method to predict the vibration and analyze the reliability of the turbine rotor is proposed in this paper. Based on analyzing the vibration reasons, the measuring positions of vibration are obtained, and then the rotor will be periodic measured under the normal operation condition to get the test date, namely the amplitude of vibration. Based on the amplitude, the grey model optimized by BP neural network is established. Finally, a case study has been conducted, which proves that the model is valid and applicable; especially it could find vibration fault earlier in the operation of the rotor and determine the maintenance program which can ensure the security reliability of the turbines.
vibration prediction turbine rotor grey artificial neural network
Peng Wen
Department of Production Harbin Turbine Company LTD Harbin, China
国际会议
张家界
英文
346-349
2009-04-11(万方平台首次上网日期,不代表论文的发表时间)