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Ant Colony Optimization Algorithm and Artificial Immune System Applied to a Robot Route

机译:蚁群优化算法与人工免疫系统应用于机器人路线

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This Article aims to introduce two meta-heuristics techniques: Ant Colony Optimization (ACO) and Artificial Immune System (AIS) to find the best route for a robot. The ACO is an algorithm based on the ant food search process, and the AIS is inspired by the defending mechanism of the human organism. In order to illustrate and compare the potential of these techniques, this paper applies both techniques in a problem of determining the shortest possible route for a robot without hitting any obstacles in three different maps. According to the tests, the ACO shows better results regarding the number of iterations to reach the global optimum, while the AIS shows better results when it comes to the processing time. From the result, it can be seen that the ACO found a solution to all maps demonstrating it is an excellent choice for this problem type.
机译:本文旨在介绍两个元启发式技术:蚁群优化(ACO)和人工免疫系统(AIS),为机器人找到最佳路线。 ACO是一种基于蚂蚁食品搜索过程的算法,AIS受到人体生物的卫生机制的启发。为了说明和比较这些技术的潜力,本文应用两种技术在确定机器人的最短路线的问题中,而不击中三种不同地图中的任何障碍。根据测试,ACO显示出迭代次数的更好结果,以达到全局最佳,而AIS在处理时间方面显示出更好的结果。从结果中,可以看出,ACO发现了所有映射的解决方案,演示了这型问题类型的一个很好的选择。

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