基于强化学习和交互式交通仿真的节能自动驾驶汽车控制

Huayi Li, Nan I. Li, I. Kolmanovsky, A. Girard
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引用次数: 3

摘要

联网和自动驾驶汽车有望改善机动性和交通,并提供能源效率方面的好处。安全和能源效率的整合具有挑战性,因为两者之间存在一定的权衡,而且对这些属性的评估需要不同的时间范围。本文阐述了高速公路驾驶控制器的开发,通过强化学习,可以同时满足电池电动汽车的安全性、舒适性、性能和能效要求。决策策略的训练过程利用基于博弈论的交通模拟,能够表征交通中车辆的交互行为。结果表明,通过在决策策略中添加动力系统相关状态并适当定义奖励函数,可以提高能源效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-Efficient Autonomous Vehicle Control Using Reinforcement Learning and Interactive Traffic Simulations
Connected and autonomous vehicles are expected to improve mobility and transportation, as well as to provide energy efficiency benefits. The integration of safety and energy efficiency aspects is challenging as there are certain tradeoffs between them, and also because the assessment of these attributes requires different time horizons. This paper illustrates the development of a controller for highway driving that, through reinforcement learning, can simultaneously address requirements of safety, comfort, performance and energy efficiency for battery electric vehicles. The training process of the decision policy exploits traffic simulations that are capable of representing the interactive behavior of vehicles in traffic based on game theory. Results indicate the potential for improved energy efficiency by adding powertrain-related states in the decision policy and by suitably defining the reward function.
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