Unmanned rescue vehicle navigation with fused DQN algorithm

Wenguan Cao, Xiaoci Huang, Fanglin Shu
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引用次数: 3

Abstract

When unmanned rescue vehicle (URV) performing rescue missions in the disaster area, URV will not be feasible to continue to use the built-in map for path planning, and even cause more serious consequences. Therefore, when a rescue vehicle works with a human being in a dynamic environment such as disaster recovery, it is necessary to quickly complete the task of adapting to the scene and learning to perform its duties. In this paper, the search and rescue robot first collects environmental information according to the camera sensor installed by itself, and then constructs the intelligent vehicle behavior decision model from the vehicle driving efficiency and optimal path. Secondly, the search and rescue robot estimates through the improved DQN network structure value function. And update the network parameters to get the corresponding Q value through the training network. Finally, the experimental results show that the algorithm can quickly generate a safe and smooth path that satisfies the kinematic constraints of the vehicle.
融合DQN算法的无人救援车导航
当无人救援车(URV)在灾区执行救援任务时,URV将无法继续使用内置地图进行路径规划,甚至造成更严重的后果。因此,当救援车辆在灾难恢复等动态环境中与人一起工作时,需要快速完成适应现场和学习履行职责的任务。在本文中,搜救机器人首先根据自身安装的摄像传感器收集环境信息,然后从车辆行驶效率和最优路径出发构建智能车辆行为决策模型。其次,通过改进的DQN网络结构值函数对搜救机器人进行估计。并通过训练网络更新网络参数,得到相应的Q值。最后,实验结果表明,该算法能够快速生成满足车辆运动约束的安全平滑路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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