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Deep Q-learning Approach for Congestion Problem In Smart Cities

机译:智能城市拥堵问题的深度Q学习方法

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Traffic congestion is a critical problem in urban area. In this study, our objective is the control of traffic lights in an urban environment, in order to avoid traffic jams and optimize vehicle traffic; we aim to minimize the total waiting time. Our system is based on a new paradigm, which is deep reinforcement learning; it can automatically learn all the useful characteristics of traffic data and develop a strategy optimizing adaptive traffic light control. Our system is coupled to a microscopic simulator based on agents (Simulation of Urban MObility - SUMO) providing a synthetic but realistic environment in which the exploration of the results of potential regulatory actions can be carried out.
机译:交通拥堵是城市地区的关键问题。在这项研究中,我们的目标是控制城市环境中交通灯,以避免交通拥堵和优化车辆流量;我们的目标是最小化总等待时间。我们的系统基于一个新的范式,这是深度增强学习;它可以自动学习交通数据的所有有用特性,并开发优化自适应交通灯控制的策略。我们的系统耦合到基于代理的微观模拟器(建模城市移动 - SUMO),提供合成但实际的环境,其可以进行潜在监管行动的结果。

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