首页 | 本学科首页   官方微博 | 高级检索  
     检索      

用于约束非线性全局优化的混沌退火神经网络
引用本文:张国平,王正欧,袁国林.用于约束非线性全局优化的混沌退火神经网络[J].天津大学学报(英文版),2001,7(3):141-146.
作者姓名:张国平  王正欧  袁国林
作者单位:1. 天津大学系统工程研究所,
2. 中国长江三峡工程开发总公司,
基金项目:the National Natural Science Foundation of China(No.79970 0 4 2 )
摘    要:混沌神经网络具有全局搜索能力 ,但其运用至今主要局限于组合优化 .通过对普通 Hopfield优化网络引入混沌噪声退火过程 ,提出了一种用于约束非线性全局优化的混沌退火神经网络 ,它易于实现 ,原理简明 ,应用广泛 .对很复杂的测试函数的数字试验表明 ,该模型能够高效、可靠地搜索到全局最优 ,其性能超过遗传算法 GAMA S

关 键 词:全局优化  神经网络  混沌噪声退火

CHAOTIC ANNEALING NEURAL NETWORK FOR GLOBAL OPTIMIZATION OF CONSTRAINED NONLINEAR PROGRAMMING
ZHANG Guo-ping,WANG Zheng-ou,YUAN Guo-lin.CHAOTIC ANNEALING NEURAL NETWORK FOR GLOBAL OPTIMIZATION OF CONSTRAINED NONLINEAR PROGRAMMING[J].Transactions of Tianjin University,2001,7(3):141-146.
Authors:ZHANG Guo-ping  WANG Zheng-ou  YUAN Guo-lin
Institution:ZHANG Guo ping 1,WANG Zheng ou 1,YUAN Guo lin 2
Abstract:Chaotic neural networks have global searching ability.But their applications are generally confined to combinatorial optimization to date.By introducing chaotic noise annealing process into conventional Hopfield network,this paper proposes a new chaotic annealing neural network (CANN) for global optimization of continuous constrained non linear programming.It is easy to implement,conceptually simple,and generally applicable.Numerical experiments on severe test functions manifest that CANN is efficient and reliable to search for global optimum and outperforms the existing genetic algorithm GAMAS for the same purpose.
Keywords:global optimization  neural network  chaotic noise annealing
本文献已被 CNKI 维普 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号