{"title":"多车协同轨迹规划,在自主交叉口实现紧急车辆优先","authors":"Yang Liu, Ke-jun Long, Wei Wu, Wei Liu","doi":"10.1177/03611981241235229","DOIUrl":null,"url":null,"abstract":"Emergency vehicle (EV) prioritization plays an important role in improving rescue efficiency and saving lives and property. Most existing studies have been confined to either investigating signal prioritization for EVs at intersections or focusing on clearing emergency lanes on road segments, with limited consideration for an integrated approach that combines both methods. In this study, we have developed a bi-level trajectory planning model aimed at optimizing the trajectories of EVs at intersections and road segments located within the communication range, using vehicle-to-everything technology. The upper-level model is designed to plan the entry times, speeds, and internal trajectories of vehicles within the intersection while avoiding any conflicts that may arise during their movements. In particular, to address the dimensionality of the proposed large-scale optimization problems, we introduce the equidistant discretization method to discretize the entry speeds of vehicles into a finite set of selectable values. The lower-level model focuses on optimizing the longitudinal and lateral trajectories on roadways to ensure that vehicles arrive at the stop line punctually and promptly. Both the upper- and lower-level models are formulated as mixed-integer linear programming models. The A Mathematical Programming Language and the Gurobi solver are employed for optimization. The case study demonstrates that the proposed model effectively optimizes vehicle trajectories at intersections and road segments, leading to a significant reduction in delays for EVs.","PeriodicalId":509035,"journal":{"name":"Transportation Research Record: Journal of the Transportation Research Board","volume":"40 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Multi-Vehicle Collaborative Trajectory Planning for Emergency Vehicle Priority at Autonomous Intersections\",\"authors\":\"Yang Liu, Ke-jun Long, Wei Wu, Wei Liu\",\"doi\":\"10.1177/03611981241235229\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Emergency vehicle (EV) prioritization plays an important role in improving rescue efficiency and saving lives and property. Most existing studies have been confined to either investigating signal prioritization for EVs at intersections or focusing on clearing emergency lanes on road segments, with limited consideration for an integrated approach that combines both methods. In this study, we have developed a bi-level trajectory planning model aimed at optimizing the trajectories of EVs at intersections and road segments located within the communication range, using vehicle-to-everything technology. The upper-level model is designed to plan the entry times, speeds, and internal trajectories of vehicles within the intersection while avoiding any conflicts that may arise during their movements. In particular, to address the dimensionality of the proposed large-scale optimization problems, we introduce the equidistant discretization method to discretize the entry speeds of vehicles into a finite set of selectable values. 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引用次数: 0
摘要
应急车辆(EV)优先排序在提高救援效率和挽救生命财产方面发挥着重要作用。现有的研究大多局限于调查电动汽车在交叉路口的信号优先级,或侧重于清理路段上的应急车道,而对两种方法相结合的综合方法考虑有限。在本研究中,我们开发了一个双层轨迹规划模型,旨在利用车对车技术,优化电动汽车在位于通信范围内的交叉路口和路段的行驶轨迹。上层模型旨在规划交叉路口内车辆的进入时间、速度和内部轨迹,同时避免车辆行驶过程中可能出现的任何冲突。特别是,为了解决所提出的大规模优化问题的维度问题,我们引入了等距离散化方法,将车辆的进入速度离散化为一组有限的可选值。下层模型侧重于优化道路的纵向和横向轨迹,以确保车辆准时、迅速地到达停车线。上层和下层模型都是混合整数线性规划模型。采用 A Mathematical Programming Language 和 Gurobi 求解器进行优化。案例研究表明,所提出的模型能有效优化交叉路口和路段的车辆轨迹,从而显著减少电动汽车的延误。
Multi-Vehicle Collaborative Trajectory Planning for Emergency Vehicle Priority at Autonomous Intersections
Emergency vehicle (EV) prioritization plays an important role in improving rescue efficiency and saving lives and property. Most existing studies have been confined to either investigating signal prioritization for EVs at intersections or focusing on clearing emergency lanes on road segments, with limited consideration for an integrated approach that combines both methods. In this study, we have developed a bi-level trajectory planning model aimed at optimizing the trajectories of EVs at intersections and road segments located within the communication range, using vehicle-to-everything technology. The upper-level model is designed to plan the entry times, speeds, and internal trajectories of vehicles within the intersection while avoiding any conflicts that may arise during their movements. In particular, to address the dimensionality of the proposed large-scale optimization problems, we introduce the equidistant discretization method to discretize the entry speeds of vehicles into a finite set of selectable values. The lower-level model focuses on optimizing the longitudinal and lateral trajectories on roadways to ensure that vehicles arrive at the stop line punctually and promptly. Both the upper- and lower-level models are formulated as mixed-integer linear programming models. The A Mathematical Programming Language and the Gurobi solver are employed for optimization. The case study demonstrates that the proposed model effectively optimizes vehicle trajectories at intersections and road segments, leading to a significant reduction in delays for EVs.