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带有偏差神经元的内回归神经网络在旋转机械故障诊断中的应用
引用本文:黄庆,张雷. 带有偏差神经元的内回归神经网络在旋转机械故障诊断中的应用[J]. 动力工程, 2004, 24(4): 552-556
作者姓名:黄庆  张雷
作者单位:上海理工大学,机械学院,上海,200093
摘    要:针对传统的神经网络在机械故障诊断方面的不足,利用偏差神经元改进了基于BP神经网络算法的内回归神经网络(IRN)算法,加快收敛速度,提高运算质量,并将其应用于旋转机械的振动故障诊断与识别。实例结果表明:该算法学习收敛较快,误差曲线平稳,对复合故障的识别性能好。图6表3参4

关 键 词:动力机械工程 旋转机械 人工神经网络 内回归神经网络 故障诊断
文章编号:1000-6761(2004)04-0552-05

Application of the Internally Recurrent Net with Neuron Units to Fault Diagnosis of Rotary Machines
HUANGQing,ZHANGLei. Application of the Internally Recurrent Net with Neuron Units to Fault Diagnosis of Rotary Machines[J]. Power Engineering, 2004, 24(4): 552-556
Authors:HUANGQing  ZHANGLei
Abstract:Due to the disadvantage of the traditional Network to fault diagnosis of machines, the Internally Recurrent Net (IRN) algorithms based on BP algorithms are improved by bias neuro units, which quicken operation speed and improve operation quality. The algorithms are applied successfully to fault diagnosis of rotary machines. The simulation results show that these methods have rapider convergence, smoother error curve, and better learning and diagnostic properties to complex faults. Figs 6, tables 3 and refs 4.
Keywords:power and mechanical engineering  rotary machine  artificial neural net (ANN)  internally recurrent net (IRN)  fault diagnosis
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