计算机应用研究
計算機應用研究
계산궤응용연구
APPLICATION RESEARCH OF COMPUTERS
2015年
2期
439-442
,共4页
故障诊断%故障树%模糊神经网络
故障診斷%故障樹%模糊神經網絡
고장진단%고장수%모호신경망락
fault diagnosis%fault tree%fuzzy neural network
针对抓斗纠偏系统复杂性、不确定性、模糊性的特点,提出基于故障树的模糊神经网络作为抓斗纠偏系统故障诊断的方法。该方法利用故障树知识提取抓斗纠偏系统故障诊断的输入变量和输出变量,引入模糊逻辑的概念,采用模糊隶属函数来描述故障的程度,利用Levenberg-Marquardt优化算法对神经网络进行训练,系统推理速度快、容错能力强,并通过实例分析验证了抓斗纠偏系统模糊神经网络故障诊断的有效性。
針對抓鬥糾偏繫統複雜性、不確定性、模糊性的特點,提齣基于故障樹的模糊神經網絡作為抓鬥糾偏繫統故障診斷的方法。該方法利用故障樹知識提取抓鬥糾偏繫統故障診斷的輸入變量和輸齣變量,引入模糊邏輯的概唸,採用模糊隸屬函數來描述故障的程度,利用Levenberg-Marquardt優化算法對神經網絡進行訓練,繫統推理速度快、容錯能力彊,併通過實例分析驗證瞭抓鬥糾偏繫統模糊神經網絡故障診斷的有效性。
침대조두규편계통복잡성、불학정성、모호성적특점,제출기우고장수적모호신경망락작위조두규편계통고장진단적방법。해방법이용고장수지식제취조두규편계통고장진단적수입변량화수출변량,인입모호라집적개념,채용모호대속함수래묘술고장적정도,이용Levenberg-Marquardt우화산법대신경망락진행훈련,계통추리속도쾌、용착능력강,병통과실례분석험증료조두규편계통모호신경망락고장진단적유효성。
For the complexity,uncertainty,ambiguity grab correction system,this paper proposed fuzzy neural network based fault tree as a method for grab correction system fault diagnosis.The method extracted fault diagnosis input and output varia-bles of grab correction system by using fault tree knowledge.It introduced the concept of fuzzy logic,used fuzzy membership functions to describe the degree of failures.It used Levenberg-Marquardt algorithm to train the neural network system,got a better performance in inference speed and fault-tolerant.The experiments verify the effectiveness of fault diagnosis grab correc-tion system based on fuzzy neural network.