Zhu Qixuan, Zheng Zhaolun, Wang Chao, Lu Yujun
School of Mechanical Engineering, Zhejiang Sci-Tech University, Hangzhou, Zhejiang, China.
Longgang Institute of Zhejiang Sci-Tech University, Wenzhou, Zhejiang, China.
Sci Prog. 2023 Jul-Sep;106(3):368504231188854. doi: 10.1177/00368504231188854.
As the key to the movement of automated guided vehicle (AGV), the design of control algorithm directly affects whether AGV can follow the preset path. Aiming at the difficulty of AGV control, an AGV path tracking control method based on global vision and reinforcement learning is proposed. Firstly, the global view is obtained by the visual sensor, and the position information of obstacles and AGV is obtained by the target detection algorithm. Secondly, the path planning algorithm is used to obtain the driving path information which is used to establish a virtual environment. Thirdly, the position and pose of the physical AGV are introduced into the virtual environment by the visual sensor, and the virtual AGV is reset. Finally, the image obtained by virtual vehicle camera is input into the reinforcement learning model and the output action is sent to the physical AGV for execution. In the experimental part, this method can not only plan the driving path in different environments but also well control AGV to drive along the specified path, which proves that this method has strong robustness and feasibility.
作为自动导引车(AGV)运动的关键,控制算法的设计直接影响AGV能否沿着预设路径行驶。针对AGV控制的难点,提出了一种基于全局视觉和强化学习的AGV路径跟踪控制方法。首先,通过视觉传感器获取全局视野,利用目标检测算法获取障碍物和AGV的位置信息。其次,使用路径规划算法获取用于建立虚拟环境的行驶路径信息。第三,通过视觉传感器将物理AGV的位置和姿态引入虚拟环境,并重置虚拟AGV。最后,将虚拟车辆摄像头获取的图像输入强化学习模型,输出动作发送给物理AGV执行。在实验部分,该方法不仅能在不同环境中规划行驶路径,还能很好地控制AGV沿指定路径行驶,证明了该方法具有较强的鲁棒性和可行性。