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Opportunities For Multiagent Systems And Multiagent Reinforcement Learning In Traffic Control

机译:交通控制中多智能体系统和多智能强化学习的机会

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摘要

The increasing demand for mobility in our society poses various challenges to traffic engineering, computer science in general, and artificial intelligence and multiagent systems in particular. As it is often the case, it is not possible to provide additional capacity, so that a more efficient use of the available transportation infrastructure is necessary. This relates closely to multiagent systems as many problems in traffic management and control are inherently distributed. Also, many actors in a transportation system fit very well the concept of autonomous agents: the driver, the pedestrian, the traffic expert; in some cases, also the intersection and the traffic signal controller can be regarded as an autonomous agent. However, the "agentification" of a transportation system is associated with some challenging issues: the number of agents is high, typically agents are highly adaptive, they react to changes in the environment at individual level but cause an unpredictable collective pattern, and act in a highly coupled environment. Therefore, this domain poses many challenges for standard techniques from multiagent systems such as coordination and learning. This paper has two main objectives: (i) to present problems, methods, approaches and practices in traffic engineering (especially regarding traffic signal control); and (ii) to highlight open problems and challenges so that future research in multiagent systems can address them.
机译:在我们的社会中,对移动性的需求不断增长,这对交通工程,一般的计算机科学,尤其是人工智能和多智能体系统提出了各种挑战。通常情况下,不可能提供额外的容量,因此必须更有效地利用可用的交通基础设施。这与多代理系统密切相关,因为流量管理和控制中的许多问题是固有分布的。此外,运输系统中的许多参与者都非常适合自治代理的概念:驾驶员,行人,交通专家;在某些情况下,交叉路口和交通信号控制器也可以视为自治代理。但是,运输系统的“代理化”与一些具有挑战性的问题有关:代理的数量很多,典型的代理具有很高的适应性,它们对个人水平上的环境变化做出反应,但会导致不可预知的集体模式,并采取行动。高度耦合的环境。因此,该领域对来自多代理系统的标准技术提出了许多挑战,例如协调和学习。本文有两个主要目标:(i)介绍交通工程中的问题,方法,方法和实践(特别是关于交通信号控制); (ii)突出未解决的问题和挑战,以便将来在多主体系统中进行研究可以解决这些问题。

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