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一种基于退火策略的混沌神经网络优化算法
引用本文:王 凌,郑大钟.一种基于退火策略的混沌神经网络优化算法[J].控制理论与应用,2000,17(1):139-142.
作者姓名:王 凌  郑大钟
作者单位:清华大学自动化系·北京,100084
基金项目:国家自然科学基金!( 696840 0 1),国家攀登计划资助项目
摘    要:Hopfield网络(HNN)中引入混沌机制,首先在混沌动态下粗搜索,并利用退火策略控制混沌动态退出和逆分贫出现,进而HNN梯度优化搜索,提出了一种具有随机性和确定性并存的优化算法,对经典旅行商(TSP)的研究,表明算法具有很强的克服陷入局部极小能力,较大程度提高了优化、时间和对初值的鲁棒性能,同时给出了模型参数对性能影响的一些结论。

关 键 词:退火策略  混沌神经网络  优化算法  旅行商问题
收稿时间:1997/10/31 0:00:00
修稿时间:1998/11/16 0:00:00

A Kind of Chaotic Neural Network Optimization Algorithm Based on Annealing Strategy
WANG Ling and ZHENG Da-zhong.A Kind of Chaotic Neural Network Optimization Algorithm Based on Annealing Strategy[J].Control Theory & Applications,2000,17(1):139-142.
Authors:WANG Ling and ZHENG Da-zhong
Affiliation:Department of Automation,Tsinghua University, Beijing,100084,P.R.China;Department of Automation,Tsinghua University, Beijing,100084,P.R.China
Abstract:This paper presents a self organization optimization algorithm,which combines stochastic with deterministic property to introduce chaos mechanism into Hopfield neural network(HNN) to coarsely search the optimum under chaotic dynamics and control the chaotic dynamics by annealing strategy to perform inverse bifurcation and disappear.After that,the gradient property of HNN is used to reach stable point.Simulation results about two typical TSP problems show that such an algorithm,which is robust with initial states,can avoid getting stuck in local minima and has better convergence property as well as time property.Moreover,some conclusions about the effect of parameters on the model are summed up.
Keywords:annealing strategy  chaotic neural network  optimization  TSP
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