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蚁群算法是通过模拟蚂蚁觅食而发展出的一种新的启发算法 基于群体的协作与学习 该算法已
经成功地解决诸如× ≥° 问题等多种组合优化问题 本文提出了一种基于自适应调整信息素的改进蚁群算法
该算法根据人工蚂蚁所获得解的情况 动态地调整路径上的信息素 从而使得算法跳离局部最优解 通过仿真
实验获得的结果表明 该算法对于蚁群算法具有较好的改进效果- Ant colony algorithm is developed through the simulation of ant foraging out of a new heuristic algorithm population-based collaboration and learning that the algorithm has been successfully resolved the problem, such as × ≥ ° a variety of combinatorial optimization problems proposed in this paper a kinds of adaptive pheromone-based ant colony algorithm to improve the algorithm based on artificial ants obtained by solution of dynamically adjust the pheromone on the path which makes the algorithm jumped off the local optimal solution results obtained through simulation experiments show that The algorithm for improved ant colony algorithm has good effect
经成功地解决诸如× ≥° 问题等多种组合优化问题 本文提出了一种基于自适应调整信息素的改进蚁群算法
该算法根据人工蚂蚁所获得解的情况 动态地调整路径上的信息素 从而使得算法跳离局部最优解 通过仿真
实验获得的结果表明 该算法对于蚁群算法具有较好的改进效果- Ant colony algorithm is developed through the simulation of ant foraging out of a new heuristic algorithm population-based collaboration and learning that the algorithm has been successfully resolved the problem, such as × ≥ ° a variety of combinatorial optimization problems proposed in this paper a kinds of adaptive pheromone-based ant colony algorithm to improve the algorithm based on artificial ants obtained by solution of dynamically adjust the pheromone on the path which makes the algorithm jumped off the local optimal solution results obtained through simulation experiments show that The algorithm for improved ant colony algorithm has good effect
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自适应调整信息素的蚁群算法.pdf
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