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改进的BP神经网络对飞机换热器结垢厚度预测
引用本文:杜林颖,于鸿彬,侯立国,汪天京.改进的BP神经网络对飞机换热器结垢厚度预测[J].计算机仿真,2020,37(1):27-30.
作者姓名:杜林颖  于鸿彬  侯立国  汪天京
作者单位:天津工业大学机械工程学院,天津300387;北京飞机维修工程有限公司,北京100621
基金项目:国家科技重大专项;国家重点研发计划
摘    要:为了节约飞机维修成本,准确预测换热器结垢厚度,通过利用改进的BP神经网络预测模型,利用25组数据,建立了换热器结垢厚度与四个因素(环境温度、空调系统进口压力、初级换热器出口温度、次级换热器出口温度)之间的网络预测模型。模型包括4个输入神经元,9个隐含层神经元和1个输出层神经元。训练结果表明,改进之后的BP神经网络模型不仅克服了原始BP神经网络收敛速度慢,稳定性差的特点,还可以以较高的精度预测换热器的结垢厚度。

关 键 词:飞机热交换器  结垢厚度  预测

Prediction of Fouling Thickness of Aircraft Heat Exchanger by Modified BP Neural Network
DU Lin-ying,YU Hong-bin,HOU Li-guo,WANG Tian-jing.Prediction of Fouling Thickness of Aircraft Heat Exchanger by Modified BP Neural Network[J].Computer Simulation,2020,37(1):27-30.
Authors:DU Lin-ying  YU Hong-bin  HOU Li-guo  WANG Tian-jing
Affiliation:(School of Mechanical Engineering,Tianjin Polytechnic University,Tianjin 300387,China;Beijing Aircraft Maintenance and Engineering Corporation,Beijing 100621,China)
Abstract:In order to save the cost of aircraft maintenance,by using the modified BP neural network prediction model and using 25 sets of data,the network prediction model between the scaling thickness of heat exchanger and four factors(ambient temperature,inlet pressure of air conditioning system,outlet temperature of primary heat ex-changer and outlet temperature of secondary heat exchanger)was established.The model consists of 4 input neurons,9 hidden layer neurons and one output layer neuron.The training results show that the modified BP neural network model can not only overcome the characteristics of slow convergence rate and poor stability of the original BP neural network,but also predict the scaling thickness of the heat exchanger with high accuracy.
Keywords:Aircraft Heat exchanger  Fouling thickness  Prediction
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