会议专题

A Research on I.C. Engine Misfire Fault Diagnosis Based on Rough Sets Theory and Neural Network

A method for diagnosis of misfire fault in internal combustion engine based on exhaust density of HC, CO2, O2 and the engines work parameters are presented in this paper. Rough sets theory is used to simplify attribute parameter reflecting exhaust emission and conditions of internal combustion engine and in which unnecessary properties are eliminated. The engines work parameters, exhaust emission with misfire fault and without fault are tested by the experimentation of CA6100 engine. A diagnosis model which describing the relationship between the misfire degree and the internal combustion engines exhaust emission and work parameters is established based on rough sets theory and RBF neural network. The model reduces the sample size, optimizes the neural network, increase the diagnosis correctness. The model is also trained by test data and MATLAB software. The model has been used to diagnosis internal combustion engine misfire fault, the result illustrates that this diagnosis model is suitable. This system can reduce input node number and overcome some shortcomings, such as neural network scale is too large and the rate of classification is slow.

internal combustion engine misfire rough sets fault diagnosis information fusion

Wu yihu Kuang Biao Li Hangyang Gong huanchun

Changsha University of Science and Technology School of Automobile and Mechanical Engineering changsha, china

国际会议

2010 International Conference on Intelligent Computation Technology and Automation(2010 智能计算技术与自动化国际会议 ICICTA 2010)

长沙

英文

318-323

2010-05-11(万方平台首次上网日期,不代表论文的发表时间)