首页|基于遗传机制的蚁群算法求解连续优化问题

基于遗传机制的蚁群算法求解连续优化问题

扫码查看
Ant colony algorithm based on genetic method for continuous optimization problem
A new algorithm is presented by using the ant colony algorithm based on genetic method (ACG) to solve the continuous optimization problem. Each component has a seed set. The seed in the set has the value of component, trail information and fitness. The ant chooses a seed from the seed set with the possibility determined by trail information and fitness of the seed. The genetic method is used to form new solutions from the solutions got by the ants. Best solutions are selected to update the seeds in the sets and trail information of the seeds. In updating the trail information, a diffusion function is used to achieve the diffuseness of trail information. The new algorithm is tested with 8 different benchmark functions.

ant colony algorithm, genetic method, diffusion function, continuous optimization problem.

朱经纬、蒙陪生、王乘

展开 >

Department of Mechanics, Huazhong University of Science and Technology, Wuhan 430074,P.R.China

ant colony algorithm, genetic method, diffusion function, continuous optimization problem.

国家高技术研究发展计划(863计划)

863-2005AA642010

2007

上海大学学报(英文版)
上海大学

上海大学学报(英文版)

影响因子:0.196
ISSN:1007-6417
年,卷(期):2007.11(6)
  • 1
  • 4