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Autonomous RL: Autonomous Vehicle Obstacle Avoidance in a Dynamic Environment using MLP-SARSA Reinforcement Learning

机译:自主RL:使用MLP-Sarsa加强学习动态环境中的自主车辆障碍物

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This paper presents a Multi-Layer Perceptron-State Action Reward State Action (MLP-SARSA) based reinforcement learning methodology for dynamic obstacle detection and avoidance for autonomous vehicle navigation. MLP-SARSA is an on-policy reinforcement learning approach, which gains information and rewards from the environment and helps the autonomous vehicle to avoid dynamic moving obstacles. MLP with SARSA provides a significant advantage over dynamic environment compared to other traditional reinforcement algorithms. In this study, a MLP-SARSA model is trained in a complex urban simulation environment with dynamic obstacles using the pygame library. Experimental results show that the trained MLP-SARSA can navigate the autonomous vehicle in a dynamic environment with more confidences than traditional Q-learning and SARSA reinforcement algorithms.
机译:本文介绍了一种基于多层的Perceptron状态动作奖励状态动作(MLP-SARSA)的加固学习方法,用于动态障碍检测和自动车辆导航的避免。 MLP-Sarsa是一项持续的政策强化学习方法,它从环境中获取信息和奖励,并帮助自动车辆避免动态移动障碍。与其他传统增强算法相比,MLP与Sarsa提供了对动态环境的显着优势。在这项研究中,MLP-SARSA模型在复杂的城市仿真环境中培训,使用PyGame库具有动态障碍。实验结果表明,训练有素的MLP-Sarsa可以在动态环境中导航自主车辆,而不是传统的Q-Learning和Sarsa加强算法。

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