Signalized intersections in arterial roads result in persistent vehicle idling and excess accelerations, contributing to fuel consumption and CO2 emissions. There has thus been a line of work studying eco-driving control strategies to reduce fuel consumption and emission levels at intersections. However, methods to devise effective control strategies across a variety of traffic settings remain elusive. In this paper, we propose a reinforcement learning (RL) approach to learn effective eco-driving control strategies. We analyze the potential impact of a learned strategy on fuel consumption, CO2 emission, and travel time and compare with naturalistic driving and model-based baselines. We further demonstrate the generalizability of the learned policies under mixed traffic scenarios. Simulation results indicate that scenarios with 100% penetration of connected autonomous vehicles (CAV) may yield as high as 18% reduction in fuel consumption and 25% reduction in CO2 emission levels while even improving travel speed by 20%. Furthermore, results indicate that even 25% CAV penetration can bring at least 50% of the total fuel and emission reduction benefits.
翻译:动脉道路的信号交汇点导致车辆持续闲置和超速加速,导致燃料消耗和二氧化碳排放。因此,研究生态驱动控制战略以降低燃料消耗和交界点排放水平的工作有一定的一线。然而,在各种交通环境下制定有效控制战略的方法仍然难以实现。在本文中,我们建议采用强化学习方法学习有效的生态驱动控制战略。我们分析了一项学习战略对燃料消耗、二氧化碳排放和旅行时间的潜在影响,并与自然驱动和模型基准进行比较。我们进一步展示了混合交通情景下所学习的政策的普遍性。模拟结果显示,在连通自主车辆100%渗透的情况下,燃料消耗率可能高达18%,二氧化碳排放水平可能降低25%,同时甚至将旅行速度提高20%。此外,结果还表明,即使25%的加华航空渗透率也能至少带来燃料和减排总收益的50%。