深度强化学习解决方案,帮助降低为骑车人争取交通信号灯的等待时间成本

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引用次数: 0

摘要

骑自行车的人更喜欢使用能将他们与机动车辆分隔开来的基础设施。使用红绿灯隔离汽车流和自行车流,并增加自行车专用的绿色阶段,是一种轻便、廉价的解决方案,可以动态部署,以评估更重的基础设施(如单独的自行车道)的机会。为了弥补这些新阶段导致的等待时间增加,我们在本文中介绍了一种深度强化学习解决方案,该方案可根据交通流量调整交通信号灯的绿灯周期。我们使用车辆计数器数据对 DRL 方法和全天交通灯控制算法进行了比较。结果表明,DRL 更好地减少了每个时段的车辆等待时间。我们的 DRL 方法对自行车流量的适度变化也很稳健。本文使用的代码可在以下网址获取: https://github.com/LucasMagnana/A-DRL-solution-to-help-reduce-the-cost-in-waiting-time-of-securing-a-traffic-light-for-cyclists
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A deep reinforcement learning solution to help reduce the cost in waiting time of securing a traffic light for cyclists

Cyclists prefer to use infrastructures that separate them from motorized traffic. Using a traffic light to segregate car and bike flows, with the addition of bike-specific green phases, is a lightweight and cheap solution that can be deployed dynamically to assess the opportunity of a heavier infrastructure such as a separate bike lane. To compensate for the increased waiting time induced by these new phases, we introduce in this paper a deep reinforcement learning solution that adapts the green phase cycle of a traffic light to the traffic. Vehicle counter data are used to compare the DRL approach with the actuated traffic light control algorithm over whole days. Results show that DRL achieves better minimization of vehicle waiting time at every hours. Our DRL approach is also robust to moderate changes in bike traffic. The code used for this paper is available at : https://github.com/LucasMagnana/A-DRL-solution-to-help-reduce-the-cost-in-waiting-time-of-securing-a-traffic-light-for-cyclists

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A deep reinforcement learning solution to help reduce the cost in waiting time of securing a traffic light for cyclists Bike users’ route choice behaviour: Expectations from electric bikes versus reality in Greater Helsinki Overtaking on rural roads – Cyclists' and motorists' perspectives Potential of e-bikes to replace passenger car trips and reduce greenhouse gas emissions Agent-based simulation model of micro-mobility trips in heterogeneous and perceived unsafe road environments
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