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基于贝叶斯网络的车辆电源系统故障诊断方法
引用本文:程延伟,谢永成,李光升,魏宁. 基于贝叶斯网络的车辆电源系统故障诊断方法[J]. 计算机工程, 2011, 37(23): 251-253
作者姓名:程延伟  谢永成  李光升  魏宁
作者单位:1. 装甲兵工程学院控制系,北京100072;装甲兵技术学院控制系,长春130117
2. 装甲兵工程学院控制系,北京,100072
摘    要:针对车辆电源系统测试点少且测试数据不完备的问题,提出一种多信号流图模型和贝叶斯网络相结合的故障诊断方法。利用多信号流图模型建立电源系统的故障诊断模型,得到系统故障源与测试信号对应的故障依赖矩阵,在此基础上,建立用于故障诊断的贝叶斯网络结构,根据历史数据完成网络的参数学习,并以故障后验概率最大为准则,实现电源系统的故障诊断。仿真实验验证了该方法的有效性。

关 键 词:电源系统  多信号流图模型  贝叶斯网络  故障诊断  参数学习
收稿时间:2011-06-08

Fault Diagnosis Method of Vehicle Power System Based on Bayesian Network
CHENG Yan-wei,XIE Yong-cheng,LI Guang-sheng,WEI Ning. Fault Diagnosis Method of Vehicle Power System Based on Bayesian Network[J]. Computer Engineering, 2011, 37(23): 251-253
Authors:CHENG Yan-wei  XIE Yong-cheng  LI Guang-sheng  WEI Ning
Affiliation:1(1.Dept.of Control,The Academy of Armored Force Engineering,Beijing 100072,China;2.Dept.of Control,The Academy of Armored Force Technique,Changchun 130117,China)
Abstract:The vehicle power system has the fewer test points and the testing data are incomplete.Aiming at these characteristics,it proposes that combining multi-signal flow graph model with Bayesian network fault diagnosis method.The fault diagnosis model of power system is built by applying multi-signal flow graph.The dependence matrix which relates faults and testing signals is generated based on the model,and setting up the corresponding Bayesian network structure for the fault diagnosis,based on historical data to complete the network parameter learning.Using the maximum posterior probability of failure as a criterion to achieve the fault diagnosis of power system.Simulation results verify the effectiveness of the method.
Keywords:power system  multi-signal flow graph model  Bayesian network  fault diagnosis  parameter learning
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