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基于协同进化蜂群算法的覆盖优化策略 被引量:1
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作者 张骞 李克清 +1 位作者 戴欢 刘帅 《计算机工程与设计》 CSCD 北大核心 2014年第4期1142-1146,共5页
对于具有移动节点的无线传感器网络,通过对移动节点位置的优化来提高监测区域网络覆盖率。传统蜂群算法存在过早成熟、后期收敛速度变慢的现象,为了克服这一缺点,将协同进化机制引入蜂群算法,增加解决方案多样性,加速收敛过程,提出一种... 对于具有移动节点的无线传感器网络,通过对移动节点位置的优化来提高监测区域网络覆盖率。传统蜂群算法存在过早成熟、后期收敛速度变慢的现象,为了克服这一缺点,将协同进化机制引入蜂群算法,增加解决方案多样性,加速收敛过程,提出一种基于协同进化人工蜂群的覆盖优化策略;针对节点在移动过程中的路径绕远现象,基于贪婪法,提出一种移动路径优化策略。仿真结果表明,协同进化人工蜂群覆盖优化策略覆盖优化效果明显优于微粒群和人工蜂群策略,移动路径优化策略可以有效减少节点移动距离。 展开更多
关键词 协同进化 人工蜂群算法 覆盖优化 贪婪法 移动路径优化
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Global optimal path planning for mobile robot based onimproved Dijkstra algorithm and ant system algorithm 被引量:21
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作者 谭冠政 贺欢 Aaron Sloman 《Journal of Central South University of Technology》 EI 2006年第1期80-86,共7页
A novel method of global optimal path planning for mobile robot was proposed based on the improved Dijkstra algorithm and ant system algorithm. This method includes three steps: the first step is adopting the MAKLINK ... A novel method of global optimal path planning for mobile robot was proposed based on the improved Dijkstra algorithm and ant system algorithm. This method includes three steps: the first step is adopting the MAKLINK graph theory to establish the free space model of the mobile robot, the second step is adopting the improved Dijkstra algorithm to find out a sub-optimal collision-free path, and the third step is using the ant system algorithm to adjust and optimize the location of the sub-optimal path so as to generate the global optimal path for the mobile robot. The computer simulation experiment was carried out and the results show that this method is correct and effective. The comparison of the results confirms that the proposed method is better than the hybrid genetic algorithm in the global optimal path planning. 展开更多
关键词 mobile robot global optimal path planning improved Dijkstra algorithm ant system algorithm MAKLINK graph free MAKLINK line
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Global path planning approach based on ant colony optimization algorithm 被引量:6
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作者 文志强 蔡自兴 《Journal of Central South University of Technology》 EI 2006年第6期707-712,共6页
Ant colony optimization (ACO) algorithm was modified to optimize the global path. In order to simulate the real ant colonies, according to the foraging behavior of ant colonies and the characteristic of food, concepti... Ant colony optimization (ACO) algorithm was modified to optimize the global path. In order to simulate the real ant colonies, according to the foraging behavior of ant colonies and the characteristic of food, conceptions of neighboring area and smell area were presented. The former can ensure the diversity of paths and the latter ensures that each ant can reach the goal. Then the whole path was divided into three parts and ACO was used to search the second part path. When the three parts pathes were adjusted, the final path was found. The valid path and invalid path were defined to ensure the path valid. Finally, the strategies of the pheromone search were applied to search the optimum path. However, when only the pheromone was used to search the optimum path, ACO converges easily. In order to avoid this premature convergence, combining pheromone search and random search, a hybrid ant colony algorithm(HACO) was used to find the optimum path. The comparison between ACO and HACO shows that HACO can be used to find the shortest path. 展开更多
关键词 mobile robot ant colony optimization global path planning PHEROMONE
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