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首页> 外文期刊>Journal of Intelligent Transportation Systems >Network-wide traffic signal control based on the discovery of critical nodes and deep reinforcement learning
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Network-wide traffic signal control based on the discovery of critical nodes and deep reinforcement learning

机译:基于关键节点和深度增强学习的网络宽的交通信号控制

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摘要

To improve the traffic efficiency of city-wide road networks, we propose a traffic signal control framework that prioritizes the optimal control policies on critical nodes in road networks. In this framework, we first use a data-driven approach to discover the critical nodes. Critical nodes are identified as nodes that would cause a dramatic reduction in the traffic efficiency of the road network if they were to fail. This approach models the dynamic of road networks using a tripartite graph based on the vehicle trajectories and can accurately identify the city-wide critical nodes from a global perspective. Second, for the discovered critical nodes, we introduce a novel traffic signal control approach based on deep reinforcement learning; this approach can learn the optimal policy via constantly interacting with the road network in an iterative mode. We conduct several experiments with a transportation simulator; the results of experiments show that the proposed framework reduces the average delay and travel time compared to the baseline methods.
机译:为了提高城市广泛的道路网络的交通效率,我们提出了一种交通信号控制框架,优先考虑道路网络中关键节点的最佳控制策略。在此框架中,我们首先使用数据驱动方法来发现关键节点。关键节点被标识为节点,如果它们失败,则会导致道路网络的流量效率的显着降低。这种方法使用基于车辆轨迹的三方图来模拟道路网络的动态,可以从全球视角准确地识别城市范围的关键节点。其次,对于发现的关键节点,我们介绍了一种基于深度加强学习的新颖交通信号控制方法;这种方法可以通过以迭代模式与道路网络不断与道路网络交互来学习最佳政策。我们通过运输模拟器进行几个实验;实验结果表明,与基线方法相比,所提出的框架降低了平均延迟和行程时间。

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