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基于强化学习的无人驾驶仿真研究
引用本文:孙嘉浩,陈劲杰.基于强化学习的无人驾驶仿真研究[J].农业装备与车辆工程,2020,58(6):102-106.
作者姓名:孙嘉浩  陈劲杰
作者单位:200093 上海市 上海理工大学机械电子学院;200093 上海市 上海理工大学机械电子学院
摘    要:提出一种基于强化学习的无人驾驶仿真方案,采用Deep Q-Learning算法,设置经验池来对驾驶策略进行学习,设计了控制策略和动作策略来控制虚拟环境下的驾驶仿真。在无人驾驶仿真平台TORCS上进行了仿真实验,对无人驾驶进行训练,训练结果验证了该算法的有效性与可行性。该强化学习算法对无人驾驶仿真提供了可行方案的参考结论。

关 键 词:无人驾驶  强化学习  Deep  Q-Learning  驾驶仿真  TORCS

Research on Unmanned Driving Simulation Based on Reinforcement Learning
Sun Jiahao,Chen Jinjie.Research on Unmanned Driving Simulation Based on Reinforcement Learning[J].Agricultural Equipment & Vehicle Engineering,2020,58(6):102-106.
Authors:Sun Jiahao  Chen Jinjie
Institution:(University of Shanghai for Science and Technology,Shanghai 200093,China)
Abstract:An unmanned driving simulation scheme based on reinforcement learning is proposed.Deep Q-Learning algorithm is used to set up experience pool to learn driving strategy.Control strategy and action strategy are designed to control driving simulation in virtual environment.The simulation experiment is carried out on the unmanned driving simulation platform TORCS,and the unmanned driving is trained.The training results verify the validity and feasibility of the algorithm.The conclusion that the reinforcement learning algorithm provides a feasible scheme for the unmanned driving simulation is drawn.
Keywords:unmanned driving  reinforcement learning  Deep Q-Learning  driving simulation  TORCS
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