Abstract HTML Views: 390 PDF Downloads: 277 Total Views/Downloads: 673
Abstract HTML Views: 252 PDF Downloads: 176 Total Views/Downloads: 433
Ant colony algorithm has been widely applied to lots of fields, such as combinatorial optimization, function
optimization, system identification, network routing, robot path planning, data mining and large-scale integrated
circuit design of integrated wiring, etc. And it achieved good results. But it still has one weak point which is the slowing
convergence speed. To aim at the lacks, an improved ACO is presented. This paper studies a kind of improved ant
colony algorithm with crossover operator which makes crossover operator among better results at the end of each
iteration. The experiment results indicate that the improved ACO is effectual.