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Position: Home > Articles > Fault Diagnosis of Diesel Engine Based on Marginal Spectrums and BP Neural Network Journal of Agricultural Mechanization Research 2013 (6) 193-197

基于边际谱和神经网络的柴油机故障诊断

作  者:
李敏通;宋蒙;朱兆龙;赵继政;周福阳
单  位:
西北农林科技大学机械与电子工程学院
关键词:
柴油机;边际谱;故障诊断;BP网络
摘  要:
柴油机缸盖振动信号中包含着丰富的柴油机工作状态信息,利用缸盖振动信号诊断柴油机工作状态是一种有效方法。针对缸盖振动信号的特点,提出用经验模式分解方法对获取的缸盖振动信号进行分解,选取前3阶模式分量的边际谱、重心频率、重心幅值、偏度以及峭度等构成柴油机工作状态特征向量,基于BP网络对柴油机故障进行分类诊断。经对实测柴油机故障进行诊断表明,正确率达到85%以上,验证了诊断方法的可行性。
译  名:
Fault Diagnosis of Diesel Engine Based on Marginal Spectrums and BP Neural Network
作  者:
Li Mintong,Song Meng,Zhu Zhaolong,Zhao Jizheng,Zhou Fuyang (College of Mechanical and Electronic Engineering,Northwest A & F University,Yangling 712100,China)
关键词:
diesel engine;marginal spectrum;fault diagnosis;BP neural network engineering
摘  要:
It is a more convenient way to use vibration signals for the fault diagnosis of diesel engine since such signals contain a lot of useful information which can reflect the status of the diesel engine.Considering the characteristics of the cylinder head vibration signals,the empirical mode decomposition was used to decompose the signals obtained,the main IMFs of signals were selected to approximately replace the original signals,and their Marginal spectrums,gravity frequency,center of gravity amplitude,skewness and kurtosis were used as the feature vector of the status of the diesel engine.Based on BP neural network,the diesel engine fault diagnosis was conducted applying vectors obtained in the method presented in this paper.Diagnostic accuracy rate reached above 85%,which verified the feasibility of the method.

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