基于改进蚁群遗传算法的动态路径规划

Ming-Gong Lee, Kun-Ming Yu
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引用次数: 11

摘要

研究了在[1]中应用自适应蚁群优化算法(AACO)求解路径安排问题。该算法通过利用旅游时间和两个景点之间的距离来确定游客的最优路径安排,从而确定不同景点的参观优先级。虽然概率函数似乎是由一些固定幂指数函数$\alpha$和$\beta$决定的,但本研究试图在每次确定概率时应用GA(遗传算法)来找到最优的$\alpha$和$\beta$,并将新算法命名为改进蚁群优化算法(IAACO)。数值输出表明,IAACO在愿望值和实体点的总数上优于AACO和ACO,这意味着渲染的景点属于最想访问的地方。参数$\alpha$和$\beta$的变化也表明,与只有固定参数的AACO和ACO(原始蚁群优化算法)相比,IAACO可以呈现出一些最佳概率函数。结果表明,当景点数量较多时,IAACO的性能表现较好。一个可选择的选择的地方是可能的,他们的渲染路线在谷歌地图说明供用户参考。
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Dynamic Path Planning Based on an Improved Ant Colony Optimization with Genetic Algorithm
A study by using Adaptable Ant Colony Optimization Algorithm (AACO) to solve the path arrangement problem has been given in [1]. This algorithm can determine the priority of visit for different attractions, by using travel time and the distance between two attractions to determine the optimal path arrangement for visitors. Though, the probability function seems to be determined by some exponential function with fixed powers $\alpha$ and $\beta$, this study tries to apply GA (Genetic algorithm) to find optimal $\alpha$ and $\beta$ in each determination of the probability, and we name the new algorithm as Improved Ant Colony Optimization Algorithm (IAACO). The numerical outputs of IAACO show that it outperforms AACO and ACO by the total number of desire values and solid points, that means the rendered spots are among the most wantto-visit places. The variation of the parameters $\alpha$ and $\beta$ also shows that some best probability functions can be rendered by IAACO compared to the AACO and ACO (the original Ant Colony Optimization Algorithm) with fixed parameters only. It shows when the number of attractions are many, the performance of IAACO shows better results. A selectable choice of places is possible and their rendered route is illustrated in Google Map for users’ reference.
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