通过深度强化学习消除封闭和开放网络中的走走停停波

Abdul Rahman Kreidieh, Cathy Wu, A. Bayen
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引用次数: 83

摘要

本文演示了无模型强化学习(RL)技术在各种网络几何形状中为联网和自动车辆(cav)生成交通控制策略的能力。该方法被证明可以在只有10% CAV穿透的直道路网中实现近乎完全的波耗散,而低至2.5%的穿透率可以大大降低形成波的频率和强度。此外,对封闭网络场景中产生的控制器的研究表明,在其他方面具有相似的密度和扰动行为,证实了封闭网络策略可以推广到开放网络任务,并提出了迁移学习在微调这些策略参数中的潜在作用。有关结果的视频可在https://sites.google.com/view/itsc-dissipating-waves上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dissipating stop-and-go waves in closed and open networks via deep reinforcement learning
This article demonstrates the ability for model-free reinforcement learning (RL) techniques to generate traffic control strategies for connected and automated vehicles (CAVs) in various network geometries. This method is demonstrated to achieve near complete wave dissipation in a straight open road network with only 10% CAV penetration, while penetration rates as low as 2.5% are revealed to contribute greatly to reductions in the frequency and magnitude of formed waves. Moreover, a study of controllers generated in closed network scenarios exhibiting otherwise similar densities and perturbing behaviors confirms that closed network policies generalize to open network tasks, and presents the potential role of transfer learning in fine-tuning the parameters of these policies. Videos of the results are available at: https://sites.google.com/view/itsc-dissipating-waves.
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