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基于改进角分类神经网络的冷水机组故障诊断
引用本文:罗方芳,陶求华.基于改进角分类神经网络的冷水机组故障诊断[J].数字社区&智能家居,2008(5):717-719.
作者姓名:罗方芳  陶求华
作者单位:[1]集美大学计算机工程学院,福建厦门361021 [2]集美大学机械工程学院,福建厦门361021
摘    要:针对冷水机组的故障诊断问题及其特点,提出了一种基于改进角分类神经网络故障诊断模型FDCC(Fault Diagnosis Comer Classification)。该模型克服了角分类神经网络(CC4)输出结果为二进制的局限,根据故障模式所落入的k最近邻的样本泛化空间来进行故障诊断并输出结果向量,其各分量为各故障原因可能出现的概率。

关 键 词:角分类  神经网络  冷水机组  故障诊断

Fault Diagnosis of Water Chiller Based on Improved FDCC Neural Network
Affiliation:LUO Fang-fang, TAO Qiu-hua(1.Computer Engineering College, Jimei University, Xiamen 361021,China;2.Mechanical Engineering College, Jimei University, Xiamen 361021 ,China)
Abstract:According to the fault diagnosis of water chiller and its features, a new kind of FDCC neural network model is proposed to detect and diagnose common water chiller faults. It can over the binary system output disadvantage of CC4 by use of this model. According to the k-nearest neighbor samples'generalization space, FDCC neural network model diagnosis fault and give output Vector, whose components are the fault Probabilities.
Keywords:Comer Classification  Neural Network  water chiller  Fault diagnosis
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