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基于神经网络的冷却剂热物性拟合方法
引用本文:牛禄,程惠尔,李明辉.基于神经网络的冷却剂热物性拟合方法[J].推进技术,2002,23(2):132-134.
作者姓名:牛禄  程惠尔  李明辉
作者单位:上海交通大学动力与能源工程学院,上海,200030
基金项目:国家重点基础研究资助项目 (G19990 2 2 3 0 3 )
摘    要:基于径向基函数神经网络(RBFN)和广义回归神经网络(GRNN)对火箭发动机冷却热物性进行拟合,并与BP网络进行了比较,结果表明,采用RBFN和GRNN进行物性拟合具有网络结构简单,计算精度高,训练速度快的优点,可方便地引入液体火箭发动机传热计算程序中。

关 键 词:热物理性质  拟合函数  人工神经元网络  液体火箭  推进剂  冷却剂
文章编号:1001-4055(2002)02-0132-03
修稿时间:2001年4月19日

Coolant thermophysical properties fitting methods based on neural networks
NIU Lu,CHENG Hui er and LI Ming hui.Coolant thermophysical properties fitting methods based on neural networks[J].Journal of Propulsion Technology,2002,23(2):132-134.
Authors:NIU Lu  CHENG Hui er and LI Ming hui
Institution:School of Power and Energy Engineering, Shanghai Jiaotong Univ., Shanghai 200030,China;School of Power and Energy Engineering, Shanghai Jiaotong Univ., Shanghai 200030,China;School of Power and Energy Engineering, Shanghai Jiaotong Univ., Shanghai 200030,China
Abstract:The thermophysical properties of rocket engine coolant were fitted based on radial basis function network (RBFN) and general regression neural network (GRNN). The results were compared with those from BP network. The results show that RBFN and GRNN have the advantages of simple architecture, good precision and short computational time. Both models are well fit for the fitting of thermophysical properties and easy to be incorporated into the code for liquid rocket engine heat transfer analysis.
Keywords:Thermophysical property  Fitting function  Artificial neural network  Liquid rocket propellant
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