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基于粗糙集-神经网络系统的采煤机故障诊断研究
引用本文:周天沛,代洪.基于粗糙集-神经网络系统的采煤机故障诊断研究[J].煤矿机械,2007,28(9):188-190.
作者姓名:周天沛  代洪
作者单位:徐州工业职业技术学院,江苏,徐州,221140
摘    要:针对神经网络在故障诊断中存在着输入属性维数多和数据量庞大的缺点,利用粗糙集理论对原始数据进行约简,并剔除其中不必要的属性,构建了优化的粗糙集-神经网络智能系统。通过对实例分析,使用该系统能够提高采煤机故障诊断的准确性和效率,在故障诊断中有良好的应用前景。

关 键 词:粗糙集  故障诊断  BP神经网络  采煤机
文章编号:1003-0794(2007)09-0188-03
修稿时间:2007-05-24

Fault Diagnosis Study of Shearer Based on Rough Set- neural Network System
ZHOU Tian-pei,DAI Hong.Fault Diagnosis Study of Shearer Based on Rough Set- neural Network System[J].Coal Mine Machinery,2007,28(9):188-190.
Authors:ZHOU Tian-pei  DAI Hong
Affiliation:Xuzhou College of Industrial and Technology, Xuzhou 221140, China
Abstract:To the condition of many input dimensions and lots of data in neural network fault diagnosis, some reductions from data based on rough sets theory are derived and unessential attributes are eliminated, an optimized rough set - neural network intelligent system is established. Through analyzing for instance, the accuracy and efficiency of shearer fault diagnosis can be enhanced by using the system, it is estimated that the optimized strategy may be further applied in fault diagnosis.
Keywords:rough set  fault diagnosis  BP neural network  shearer
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