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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Optimal path-planning for mobile robots to find a hidden target in an unknown environment based on machine learning
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Optimal path-planning for mobile robots to find a hidden target in an unknown environment based on machine learning

机译:基于机器学习的移动机器人在未知环境中找到隐藏目标的最佳路径规划

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摘要

Using mobile robots in disaster areas can reduce risks and the search time in urban search and rescue operations. Optimal path-planning for mobile robotics can play a key role in the reduction of the search time for rescuing victims. In order to minimize the search time, the shortest path to the target should be determined. In this paper, a new integrated Reinforcement Learningbased method is proposed to search and find a hidden target in an unknown environment in the minimum time. The proposed algorithm is developed in two main phases. Depending on whether or not the mobile robot receives the signal from the hidden target, phases I or II of the proposed algorithm can be carried out. Then, the proposed algorithm is implemented on an e-puck robot in an urban environment which is simulated within Webots software. Finally, to demonstrate the efficiency of the proposed method and to verify it, the computational results from the proposed method are compared with three conventional methods from the literature.
机译:在灾区使用移动机器人可以减少风险,并减少城市搜索和救援行动中的搜索时间。移动机器人的最佳路径规划可以在减少救援人员的搜索时间方面发挥关键作用。为了使搜索时间最短,应确定到达目标的最短路径。本文提出了一种新的基于强化学习的集成方法,以在最短时间内搜索和发现未知环境中的隐藏目标。所提出的算法分两个主要阶段开发。根据移动机器人是否从隐藏目标接收信号,可以执行所提出算法的阶段I或II。然后,在Webots软件内模拟的城市环境中的电子冰球机器人上实现了该算法。最后,为了证明所提方法的有效性并对其进行验证,将所提方法的计算结果与文献中的三种常规方法进行了比较。

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