Obstacle Avoidance Based on Virtual Repulsive Potential Fields under Limited Perceptions

Jianfa Wu, Honglun Wang, Na Li
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Abstract

Aiming at the unknown obstacle environment, an online obstacle avoidance method, which is based on the model-based artificial potential field (MAPF) method and only depends on the information detected by onboard sensors, is proposed. First, the entire mission space is discretized. According to the relative position relation between the detection sector and the detected obstacle surface in the discrete space, the virtual repulsive potential fields (VRPFs) and the corresponding total force fields are constructed to make the robot avoid the detected obstacles and gradually move to the destination. Then, to avoid the local optimum, the memory mechanism for VRPFs and its corresponding path planning solution are introduced. Finally, the effectiveness of the proposed method is demonstrated by the simulation.
有限感知下基于虚拟排斥势场的避障算法
针对未知障碍物环境,提出了一种基于基于模型的人工势场(MAPF)方法,仅依赖车载传感器检测信息的在线避障方法。首先,整个任务空间是离散的。根据检测扇区与检测障碍物表面在离散空间中的相对位置关系,构造虚拟排斥势场(vrpf)和相应的总力场,使机器人避开检测到的障碍物,逐步向目的地移动。然后,为了避免vrpf的局部最优,介绍了vrpf的存储机制和相应的路径规划方案。最后,通过仿真验证了所提方法的有效性。
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