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基于人工神经网络的多学科优化设计研究
引用本文:陈建江,孙建勋,常伯浚,董正卫,肖人彬.基于人工神经网络的多学科优化设计研究[J].计算机集成制造系统,2005,11(10):1351-1356.
作者姓名:陈建江  孙建勋  常伯浚  董正卫  肖人彬
作者单位:[1]中国航天科工集团三院三部,北京100074 [2]华中科技大学机械学院CAD中心,湖北武汉430074
基金项目:国防基础科研项目(K0400010202)~~
摘    要:多学科优化设计的两大难点是子学科间的信息交换和系统分析计算的复杂性。为此,在一致性约束算法和并行子空间算法基础上,提出了一种基于人工神经网络响应面的多学科优化设计算法,它是一种二级结构的优化方法,即学科层仅满足局部约束,系统层提供一种协调学科间冲突的机制,保证在相关变量和耦合变量上的一致性,使设计方案不断改进。通过某型号飞航导弹系统的优化实例,验证了算法的有效性。

关 键 词:人工神经网络  多学科优化  响应面  协同策略
文章编号:1006-5911(2005)10-1351-06
修稿时间:2004年8月19日

Multidisciplinary design optimization based on artificial neural network
CHEN Jian-jiang,SUN Jian-xun,CHANG Bo-jun,DONG Zheng-wei,XIAO Ren-bin.Multidisciplinary design optimization based on artificial neural network[J].Computer Integrated Manufacturing Systems,2005,11(10):1351-1356.
Authors:CHEN Jian-jiang  SUN Jian-xun  CHANG Bo-jun  DONG Zheng-wei  XIAO Ren-bin
Affiliation:CHEN Jian-jiang~1,SUN Jian-xun~1,CHANG Bo-jun~1,DONG Zheng-wei~1,XIAO Ren-bin~2
Abstract:There are two challenges facing the Complex Multidisciplinary Optimization Design,which include information exchange among coupled subsystems and complexity of system analysis.Based on Simultaneous Analysis and Design(SAND) algorithm and Concurrent Subspace Optimization(CSSO) algorithm,the use of Artificial Neural Network(ANN)-based Response Surface(RS) approximations in Multidisciplinary Design Optimization(MDO) was proposed.It was a two-level optimization architecture,that is to say,the discipline level only satisfied the local constraints and the system level offered some collaborative mechanism to guarantee all of the discipline designs agreements on linking/coupled variables so as to facilitate improvements on design.A winged missile system was adopted as an example to verify the effectiveness of this algorithm.
Keywords:artificial neural network  multidisciplinary optimization  response surface  collaborative strategy
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