高速公路动态收费强化学习的先验车道选择策略

Xi Zhang, W. Wang, Jing Chen
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引用次数: 0

摘要

收费公路动态收费是指根据道路交通状况的变化动态调整收费费率,以缓解交通拥堵,提高通勤效率的一种方式。针对中国高速公路的动态收费问题,设计了中国高速公路网络的强化学习仿真环境,提出了一种基于先验车道选择策略的强化学习动态收费模型,该模型适应网络特点和出行者的出行习惯。实验表明,与固定费率收费方案相比,基于强化学习的动态收费方案可使总收入提高10%以上,并使拥堵率保持在较低水平。此外,消融实验表明,基于先验知识的车道选择模型能够更好地权衡联合优化目标下优化路网的“总收益”、“系统吞吐量”和“系统总行驶时间”
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A Priori Lane Selection Strategy for Reinforcement Learning of Dynamic Expressway Tolling
Dynamic tolling of toll roads is a way to dynamically adjust the toll rates according to the changing road traffic conditions in order to alleviate traffic congestion and improve commuting efficiency. Aiming at the dynamic toll collection problem of Chinese expressway, we design a reinforcement learning simulation environment for China’s expressway network and propose a reinforcement learning dynamic toll model based on a priori lane selection strategy that adapts to the characteristics of the network and travelers’ travel habits. Experiments show that the reinforcement learning-based dynamic tolling can increase the total revenue by more than 10% compared with the fixed- rate tolling scheme and keep the congestion rate at a low level. In addition, the ablation experiments demonstrate that the priori knowledge-based lane selection model can better weigh the "total revenue", "system throughput" and "total system travel time" of the optimized road network under the joint optimization objective
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