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重力热管振荡传热特性RBF神经网络动态建模
引用本文:陈彦泽,丁信伟,喻建良.重力热管振荡传热特性RBF神经网络动态建模[J].化工学报,2005,56(5):890-893.
作者姓名:陈彦泽  丁信伟  喻建良
作者单位:大连理工大学化工学院,辽宁 大连 116012;中国石油大学(华东)机电工程学院,山东 东营 257062
摘    要:The work address the problem of modeling the dynamical oscillating behavior during both unstable and stable operations, of an experimental thermosyphon. A standard RBF artificial neural network-based prediction model was developed for predicting the oscillating heat transfer of thermosyphon by means of input-output experimental measurements with the characteristics of time series. A comparison of prediction values between the RBF network and the MLP network was giving. The precision of RBF network was higher than that of the other neural networks such as BP-MLP network etc. The dynamical model of RBF network could be used to describe, predict and control the heat transfer process of a thermosyphon or a heat pipe system.

关 键 词:重力热管  径向基神经网络  振荡传热  动态模型  时间序列  
文章编号:0438-1157(2005)05-0890-04
收稿时间:2004-5-30
修稿时间:2004-7-16  

Dynamical model of RBF neural network-based prediction for heat transfer oscillating behavior of thermosyphon
Chen Yanze,DING Xinwei,YU Jianliang.Dynamical model of RBF neural network-based prediction for heat transfer oscillating behavior of thermosyphon[J].Journal of Chemical Industry and Engineering(China),2005,56(5):890-893.
Authors:Chen Yanze  DING Xinwei  YU Jianliang
Abstract:The work address the problem of modeling the dynamical oscillating behavior during both unstable and stable operations, of an experimental thermosyphon. A standard RBF artificial neural network-based prediction model was developed for predicting the oscillating heat transfer of thermosyphon by means of input-output experimental measurements with the characteristics of time series. A comparison of prediction values between the RBF network and the MLP network was giving.The precision of RBF network was higher than that of the other neural networks such as BP-MLP network etc . The dynamical model of RBF network could be used to describe, predict and control the heat transfer process of a thermosyphon or a heat pipe system.
Keywords:thermosyphon  RBF neural network  oscillating heat transfer  dynamical model  time series
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