摘要
利用由一对相互藕合的混沌吸引子作为神经元构造的混沌神经网络来解决任务分配问题 .通过与传统Hopfield人工神经网络解决任务分配问题相比 ,混沌神经网络具有更强的全局搜索能力和寻优能力 .实时分布处理系统任务分配问题实例仿真结果表明 ,该网络解任务分配问题有效地避免了 Hopfield人工神经网络极易陷入局部极小的缺陷 。
Assignment problems are solved by a chaos neural network (CNN) in which a pair of coupled chaos oscillators act as a neuron. Compared with the conventional Hopfield neural networks(HNN), CNN can be expected to have higher ability of searching for globally optimal or near optimal solution to assignment problems. Numerical simulations of assignment problems in a real time distributed system shows that CNN can overcome HNNs main drawbacks that suffer from the local minimum and perform even more efficient searching when to solve assignment problems.
出处
《系统工程学报》
CSCD
2001年第2期146-150,共5页
Journal of Systems Engineering
基金
国家自然科学基金资助项目!( 79970 0 2 4)