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Switching Decision of Air-Ground Amphibious Robot using Neural Network-based Reinforcement Learning

机译:基于神经网络的强化学习对空地两栖机器人的切换决策

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This paper studies the problem of autonomous decision-making motion mode switching based on external environmental information when the Air-Ground Amphibious Robot is in complex environment. In the process of robot autonomous decision-making, the limitation of motion time and energy consumption should be considered, and the motion state with short motion time and low energy consumption should be selected. In this paper, the methods of reinforcement learning based on neural network are put forward to solve the problem of intelligent switching decision of the Air-Ground Amphibious Robot, aiming at making the robot choose the appropriate mode to move in a certain state of environment. Reinforcement learning based on neural network can not only generate decision function in the process of learning, but also solve the reinforcement problem of continuous environment state space. When a robot performs a task, it is important to reduce the energy consumption of motion. Therefore, this paper takes the energy consumption and motion time as the basis of robot decision-making and the standard of motion evaluation. In this paper, we provide the simulation results and demonstrate the feasibility of our method, which can effectively realize the high-efficiency motion ability of the Air-Ground Amphibious Robot in the complex environment.
机译:研究了陆空两栖机器人在复杂环境下基于外部环境信息的自主决策运动模式切换问题。在机器人自主决策过程中,应考虑运动时间和能耗的限制,选择运动时间短,能耗低的运动状态。提出了基于神经网络的强化学习方法,解决了陆空两栖机器人的智能切换决策问题,旨在使机器人选择合适的模式在一定的环境条件下运动。基于神经网络的强化学习不仅可以在学习过程中生成决策函数,而且可以解决连续环境状态空间的强化问题。当机器人执行任务时,重要的是减少运动的能量消耗。因此,本文将能耗和运动时间作为机器人决策和运动评估标准的基础。在本文中,我们提供了仿真结果并论证了该方法的可行性,该方法可以有效地实现复杂环境下地空两栖机器人的高效运动能力。

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