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An Evolutionary Learning Approach for Robot Path Planning with Fuzzy Obstacle Detection and Avoidance in a Multi-agent Environment

机译:多智能体环境中具有模糊障碍检测和避免的机器人路径规划进化学习方法

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This paper describes a Fuzzy-Genetic Algorithm Approach for path planning of mobile robots with obstacle detection and avoidance in static and dynamic scenarios. Through the software Net logo, used in simulations of multiagent applications, a seminal model was developed for the given problem. The model, which contains a robot and scenarios with or without obstacles, is responsible for determining the best path used by a robot to achieve the goal state in a shorter number of steps and avoiding collisions. Additionally, a performance evaluation of this model in comparison with A* algorithm is presented.
机译:本文描述了一种模糊遗传算法方法,用于在静态和动态情况下具有障碍物检测和避让的移动机器人的路径规划。通过用于多智能体应用程序仿真的Net Logo软件,针对给定问题开发了一个创新模型。该模型包含一个机器人以及有无障碍物的场景,负责确定机器人使用的最佳路径,以便以较短的步数实现目标状态并避免碰撞。另外,提出了与A *算法相比该模型的性能评估。

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