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Mobile robots path planning using ant colony optimization and Fuzzy Logic algorithms in unknown dynamic environments

机译:在未知动态环境中使用蚁群优化和模糊逻辑算法的移动机器人路径规划

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Researches on mobile robot path planning with meta-heuristic methods to improve classical approaches have grown dramatically in the recent 35 years. Because routing is one of the NP-hard problems, an ant colony algorithm that is a meta-heuristic method has had no table success in this area. In this paper, a new approach for solving mobile robot navigation in dynamic environments, based on the heuristic feature of an optimized ant colony algorithm is proposed. Decision-making influenced by the distances between the origin and destination points and the angle variance to the nearest obstacles. Ideal paths are selected by the fuzzy logic. The proposed ant colony algorithm will optimize the fuzzy rules' parameters that have been using to On-line (instant) path planning in dynamic environments. This paper presents a new method that can plan local routs all over the area and to guide the moving robot toward the final track. Using this algorithm, mobile robots can move along the ideal path to the target based on the optimal fuzzy control systems in different environments, especially in dynamic and unknown environments.
机译:近35年以来,采用元启发式方法改进经典方法的移动机器人路径规划研究迅速发展。由于路由是NP难题之一,因此,作为一种元启发式方法的蚁群算法在该领域没有取得成功。本文基于优化蚁群算法的启发式特征,提出了一种在动态环境下求解移动机器人导航的新方法。决策受起点和终点之间的距离以及到最近障碍物的角度变化的影响。理想路径由模糊逻辑选择。提出的蚁群算法将优化模糊规则的参数,这些参数已用于动态环境中的在线(即时)路径规划。本文提出了一种新方法,该方法可以计划整个区域的局部溃败并引导运动的机器人走向最终轨道。使用此算法,移动机器人可以在不同环境中,尤其是在动态和未知环境中,基于最佳模糊控制系统,沿着理想路径移动到目标。

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