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混行下CAV作业区分段式深度强化学习合流模型OA北大核心

A Merging Model Based on Piecewise Deep Reinforcement Learning for Connected and Autonomous Vehicle in Work Zone under Mixed Autonomy

中文摘要英文摘要

针对经典提前合流和延迟合流对动态流量适应性差,以及上游速度差导致合流车辆"错位"问题,研究了基于深度强化学习方法的作业区智能网联车(connected and autonomous vehicle,CAV)分段控制合流模型.通过依次进行车速引导、间距创建和位置对齐,解决换道期多辆封闭车道合流车辆同时申请汇入1个开放车道间距而导致的汇入冲突和效率降低问题.模型将基于柔性演员-评论家算法的纵向轨迹控制与规则的换道决策相结合,共同优化合流轨迹.其中纵向轨迹优化首先选取自车速度与加速度、前车速度与到其距离、相邻车道前后车速度与到其距离、到合流点距离9个特征作为智能体状态,用以刻画自车所处的局部和全局交通状态;其次以降低加速度幅值及其变化率、避免碰撞、创建合流间距、对齐开放车道间距中心、抑制前后车速度差、按推荐速度引导、增加后车让行为目标,分别从舒适、安全、效率角度构建了作业区分段式奖励函数.特别地,基于目标车道后车速度差构建的效率惩罚性函数,解决了混行交通流合流点停车延误多的问题.仿真结果表明:在中、高流量下,与提前合流、延迟合流和新英格兰合流方法相比,本文模型平均车速和最小碰撞时间分别提升了约4.76%和19.71%,进一步加强了作业区行车效率及安全;此外,在含异质人工驾驶车辆的混行交通下,随着CAV市场渗透率的提高,平均车速、最小碰撞时间和合流成功率均呈增大趋势,且均能实现不停车合流.

The classical early and late merge work worse under dynamic demand,and render conflict merging gap due to large speed differences at the upstream.To this end,a piece-wise deep reinforcement learning-based merging model is proposed for connected and autonomous vehicles(CAVs)in work zones under mixed autonomy.Above all,the merging conflicts and efficiency reduction caused by many vehicles in closed lanes trying to merge into one gap on the open lane are addressed by the model with speed guidance,gap creation,and positional alignment.Such a model consists of the soft Actor-Critic algorithm-based longitudinal control and the rule-based lane-changing deci-sion-making.For longitudinal control,9 features are selected as the agent state to describe surrounding traffic condi-tions from both local and global views.The mentioned features include the speed and acceleration of the ego vehi-cle,the speed of and the distance to the lead vehicle,the speed of and the distance to the lead and lag vehicles on the adjacent left lane,and the distance to the merging point.Subsequently,a piecewise reward function for CAVs in the work zone is established by optimizing comfort,safety,and efficiency simultaneously.Such a reward function com-bines minimizing acceleration and jerk,preventing collisions,generating merging gaps,aligning with the gap center on the open lane,mitigating vehicular speed differences,adhering to advisory speed,and encouraging following ve-hicles with yield behavior.Particularly,an item of reward function with respect to driving efficiency is shaped on the basis of the speed difference between the lag vehicle on the adjacent lane and the ego vehicle,such that halting of both the CAV and the human-driving vehicle can be alleviated at the merging point.Simulation results illustrate that the proposed model increases by about 4.76%of average speed,and 19.71%of minimal time-to-collision under medium/heavy demand in work zone,in contrast to early merge,late merge and New England merge.In addition,the average speed,minimum time-to-collision,and successful merging rate in mixed autonomy with heterogeneous human-driving vehicles,increase with the increase of the CAV market penetration rate,while all the vehicles merge without halting.

辛琪;荚胜琪;徐猛;齐嘉乐;袁伟

长安大学汽车学院 西安 710064长安大学汽车学院 西安 710064北京交通大学系统科学学院 北京 100044长安大学汽车学院 西安 710064长安大学汽车学院 西安 710064

交通工程

智能交通作业区合流合流控制模型柔性演员-评论家算法混合交通流

intelligent transportationwork zone mergingmerging control modelsoft Actor-Critic algorithmmixed traffic flow

《交通信息与安全》 2025 (2)

95-108,14

国家自然科学基金项目(52002035)、陕西省重点研发计划(2024CY2-GJHX-87)项目、陕西省自然科学基础研究计划项目(2025JC-YBMS-395)资助

10.3963/j.jssn.1674-4861.2025.02.011

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