Omnidirectional Sensing for Escaping Local Minimum on Potential Field Mobile Robot Path Planning in Corridors Environment

A. R. Rafsanzani, R. Hidayat, A. Cahyadi, S. Herdjunanto
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引用次数: 3

Abstract

Mobile robot path planning using artificial potential field approach is popular for its computational simplicity. However, the conventional artificial field potential approach possesses weakness when the robot is deployed into corridors environment. The approach makes the robot easily trapped in local minimum caused by long obstacles presence, thus makes the robot unable to get to the goal point. In this paper, a method for escaping local minimum in corridors scenario is proposed. The proposed method utilizes the omnidirectional sensor, which has the ability to sense 360 degrees field of view, to get information on obstacles which are surrounding the robot. This information is used for the robot to put a feasible temporary goal to guide the robot to detour the trap. Numerical experiment verified that the proposed method successfully generates a safe path and is able to escape the local minimum trap in corridors environment.
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通道环境下势场移动机器人路径规划的全向感知逃避局部最小值
利用人工势场法进行移动机器人路径规划以其计算简单而广受欢迎。然而,当机器人部署在走廊环境中时,传统的人工场势方法存在弱点。该方法使机器人容易因长时间障碍物的存在而陷入局部最小值,从而使机器人无法到达目标点。本文提出了一种逃避廊道场景下局部最小值的方法。该方法利用具有360度视野感知能力的全向传感器来获取机器人周围障碍物的信息。该信息用于机器人设置可行的临时目标,引导机器人绕过陷阱。数值实验验证了该方法能成功地生成安全路径,并能在廊道环境中避开局部最小陷阱。
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