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基于人工神经网络的旋转机械多故障同时性诊断策略
引用本文:何永勇,钟秉林.基于人工神经网络的旋转机械多故障同时性诊断策略[J].东南大学学报(自然科学版),1996,26(5):39-43.
作者姓名:何永勇  钟秉林
作者单位:东南大学机械工程系
基金项目:国家自然科学基金 ,江苏省应用科学基金
摘    要:针对大型旋转机械多故障同时性诊断问题,基于人工神经网络,构造了一种由多个子网络组成的分级诊断网络(HDANN)。该网络旨在将一个大的分类模式空间划分为几个小的子空间,以便对各子网络进行有效的训练,提高各子网络的分类能力,从而使整个网络具有高精度的多故障同时性诊断能力,测试结果表明:HDANN网络不仅能准确地对单故障进行诊断,而且多故障同时存在的情况下,也能有效地识别出各种故障,该网络具有较高的诊断

关 键 词:神经网络  故障诊断  旋转机械  实时监测

Multiple Fault Simultaneous Diagnosis Based on Artificial Neural Networks for Rotating Machine
He Yongyong,Zhong Binglin,Huang Ren.Multiple Fault Simultaneous Diagnosis Based on Artificial Neural Networks for Rotating Machine[J].Journal of Southeast University(Natural Science Edition),1996,26(5):39-43.
Authors:He Yongyong  Zhong Binglin  Huang Ren
Abstract:Based on artificial neural networks, a hierarchical diagnosis network (HDANN) is proposed with respect to multiple faults simultaneous diagnosis for the rotating machine. HDANN consists of several subnetworks, and aims at dividing a large pattern space into several smaller subspaces, so that the subnetwork can be trained on the subspace, respectively, and the whole network is capable of multiple faults simultaneous diagnosing. The research results show that HDANN can not only achieve single fault diagnosing, but also recognize the existing faults in situation of multiple faults, and is available for real time condition monitoring and diagnosis of rotating machine.
Keywords:artificial neural networks  fault diagnosis  rotating machine
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