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基于小波过程神经网络的飞机发动机状态监视
引用本文:钟诗胜,李洋.基于小波过程神经网络的飞机发动机状态监视[J].航空学报,2007,28(1):68-71.
作者姓名:钟诗胜  李洋
作者单位:哈尔滨工业大学,机电工程学院,黑龙江,哈尔滨,150001
基金项目:国家自然科学基金 , 黑龙江国际合作项目
摘    要: 针对飞机发动机状态监视问题,提出了小波过程神经网络模型。其隐层和输出层为过程神经元,隐层激活函采用小波函数。该模型结合了过程神经网络可以处理连续输入信号的特点及小波变换良好的时频局域化性质,有更强的学习能力和更高的预测精度。文中给出了相应的学习算法,并以飞机发动机状态监视中排气温度裕度的预测为例,分别利用3层前向过程神经网络和小波过程神经网络进行预测。结果表明,小波过程神经网络结构更简单,收敛速度更快,优于过程神经网络,因而为飞机发动机状态监视提供了一种有效的方法。

关 键 词:过程神经元  小波过程神经网络  学习算法  飞机发动机状态监视  
文章编号:1000-6893(2007)01-0068-04
修稿时间:2005年8月10日

Condition Monitoring of Aeroengine Based on Wavelet Process Neural Networks
ZHONG Shi-sheng,LI Yang.Condition Monitoring of Aeroengine Based on Wavelet Process Neural Networks[J].Acta Aeronautica et Astronautica Sinica,2007,28(1):68-71.
Authors:ZHONG Shi-sheng  LI Yang
Institution:Department of Mechanical and Electrical Engineering, Harbin Institute of Technology
Abstract:Aiming at the problem of aeroengine condition monitoring,a wavelet process neura l network (WPNN) model is proposed.Its hidden layer and output layer are compose d of process neuron and the hidden layer function consists of wavelet function.T he network has not only the capability to deal with the continuous input signals , but also the time-frequency local property of the wavelet analysis.The learni ng ability of WPNN is better and the predictive precision is higher.The correspo nding learning algorithm is given and the network is compared with three layers feedforward process neural network (PNN) by predicting the exhaust gas temperatu re (EGT).The result exhibits good convergence and simple architecture of the net work.The prediction capability is superior to PNN.This provides an effective way for the problem of aeroengine condition monitoring.
Keywords:process neuron  wavelet process neural network  learn ing algorithm  condition monitoring of aeroengine
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