Transportation is the backbone of the economy and urban development. Improving the efficiency, sustainability, resilience, and intelligence of transportation systems is critical and also challenging. The constantly changing traffic conditions, the uncertain influence of external factors (e.g., weather, accidents), and the interactions among multiple travel modes and multi-type flows result in the dynamic and stochastic natures of transportation systems. The planning, operation, and control of transportation systems require flexible and adaptable strategies in order to deal with uncertainty, non-linearity, variability, and high complexity. In this context, Reinforcement Learning (RL) that enables autonomous decision-makers to interact with the complex environment, learn from the experiences, and select optimal actions has been rapidly emerging as one of the most useful approaches for smart transportation. This paper conducts a bibliometric analysis to identify the development of RL-based methods for transportation applications, typical journals/conferences, and leading topics in the field of intelligent transportation in recent ten years. Then, this paper presents a comprehensive literature review on applications of RL in transportation by categorizing different methods with respect to the specific application domains. The potential future research directions of RL applications and developments are also discussed.
翻译:运输是经济和城市发展的支柱; 提高运输系统的效率、可持续性、复原力和智能至关重要,而且具有挑战性; 交通条件不断变化,外部因素(如天气、事故)的不确定影响,以及多种旅行模式和多类型流动之间的相互作用,导致运输系统的动态性和随机性; 运输系统的规划、运行和控制需要灵活和适应性战略,以便应对不确定性、非线性、可变性和高度复杂性; 在这方面,加强学习使自主决策者能够与复杂环境互动,学习经验,选择最佳行动,这些都迅速成为最有用的智能运输方法之一; 本文进行双曲线分析,以确定最近十年里基于RL的运输应用方法、典型的期刊/会议以及智能运输领域的主要专题; 然后,本文件通过对具体应用领域的不同方法进行分类,对RL的运输应用进行综合文献审查; 还讨论了RL应用的未来研究方向和动态。