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首页> 外文期刊>Annals of the American Thoracic Society >Decision-making method for vehicle longitudinal automatic driving based on reinforcement Q-learning
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Decision-making method for vehicle longitudinal automatic driving based on reinforcement Q-learning

机译:基于加固Q学习的车辆纵向自动驱动的决策方法

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摘要

In the development of autonomous driving, decision-making has become one of the technical difficulties. Traditional rule-based decision-making methods lack adaptive capacity when dealing with unfamiliar and complex traffic conditions. However, reinforcement learning shows the potential to solve sequential decision problems. In this article, an independent decision-making method based on reinforcement Q-learning is proposed. First, a Markov decision process model is established by analysis of car-following. Then, the state set and action set are designed by the synthesized consideration of driving simulator experimental results and driving risk principles. Furthermore, the reinforcement Q-learning algorithm is developed mainly based on the reward function and update function. Finally, the feasibility is verified through random simulation tests, and the improvement is made by comparative analysis with a traditional method.
机译:在自主驾驶的发展中,决策已成为技术困难之一。 基于传统的规则决策方法在处理不熟悉和复杂的交通状况时缺乏适应性。 然而,强化学习表明潜力解决了序贯决策问题。 在本文中,提出了一种基于加强Q学习的独立决策方法。 首先,通过分析汽车跟踪来建立马尔可夫决策过程模型。 然后,状态集和动作集由驾驶模拟器实验结果的合成考虑和驾驶风险原理设计。 此外,增强型Q学习算法主要基于奖励功能和更新功能而开发。 最后,通过随机仿真试验验证可行性,通过使用传统方法进行比较分析来进行改进。

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