Genetic algorithm for finding shortest path of mobile robot in various static environments

Dyah Lestari, S. Sendari, I. Zaeni
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Abstract

In conducting their work in the industry quickly, precisely, and safely, mobile robots must be able to determine the position and direction of movement in their work environment. Several algorithms have been developed to solve maze rooms, however, when the room is huge with several obstacles which could be re-placed in other parts of the room, determining the path for a mobile robot will be difficult. This can be done by mapping the work environment and determining the position of the robot so that the robot has good path planning to get the optimal path. In this research, a Genetic Algorithm (GA) will be used to determine the fastest route that a robot may take when moving from one location to another. The method used is to design a mobile robot work environment, design genetic algorithm steps, create software for simulation, test the algorithm in 6 variations of the work environment, and analyze the test results. The genetic algorithm can determine the shortest path with 93% completeness among the 6 possible combinations of the start point, target point, and position of obstacles. The proposed GA, it can be argued, can be used to locate the shortest path in a warehouse with different start and end points.
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在各种静态环境中寻找移动机器人最短路径的遗传算法
移动机器人在工业领域快速、精确、安全地开展工作时,必须能够确定其在工作环境中的位置和移动方向。目前已开发出几种解决迷宫房间问题的算法,但是,如果房间很大,且存在多个障碍物,而这些障碍物可能会被重新放置在房间的其他地方,那么确定移动机器人的路径就会很困难。这可以通过绘制工作环境地图和确定机器人的位置来实现,这样机器人就能进行良好的路径规划,从而获得最佳路径。在这项研究中,将使用遗传算法(GA)来确定机器人从一个地点移动到另一个地点时的最快路径。使用的方法是设计移动机器人的工作环境,设计遗传算法步骤,创建模拟软件,在 6 种不同的工作环境中测试算法,并分析测试结果。在起点、目标点和障碍物位置的 6 种可能组合中,遗传算法可以确定最短路径,完整率高达 93%。可以说,所提出的遗传算法可用于在具有不同起点和终点的仓库中找出最短路径。
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发文量
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审稿时长
6 weeks
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