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Design and realization of a new architecture based on multi-agent systems and reinforcement learning for traffic signal control

机译:基于多智能体系统和强化学习的交通信号控制新架构的设计与实现

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Increasing the number of cars in cities creates traffic congestion. This is due to static management of traffic lights. Reinforcement Learning RL algorithm is an artificial intelligence approach that enables adaptive real-time control at intersections. In this research paper, we purpose a new architecture based on multi-agent systems and RL algorithm in order to make the signal control system more autonomous, able to learn from its environment and make decisions to optimize road traffic.
机译:城市中汽车数量的增加会造成交通拥堵。这是由于交通信号灯的静态管理。强化学习RL算法是一种人工智能方法,可在交叉路口进行自适应实时控制。在本文中,我们旨在基于多智能体系统和RL算法的新体系结构,以使信号控制系统更具自主性,能够从其环境中学习并做出优化道路交通的决策。

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