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车路协同环境下车辆群体协同决策研究综述

张毅 裴华鑫 姚丹亚

张毅, 裴华鑫, 姚丹亚. 车路协同环境下车辆群体协同决策研究综述[J]. 交通运输工程学报, 2022, 22(3): 1-18. doi: 10.19818/j.cnki.1671-1637.2022.03.001
引用本文: 张毅, 裴华鑫, 姚丹亚. 车路协同环境下车辆群体协同决策研究综述[J]. 交通运输工程学报, 2022, 22(3): 1-18. doi: 10.19818/j.cnki.1671-1637.2022.03.001
ZHANG Yi, PEI Hua-xin, YAO Dan-ya. Research review on cooperative decision-making for vehicle swarms in vehicle-infrastructure cooperative environment[J]. Journal of Traffic and Transportation Engineering, 2022, 22(3): 1-18. doi: 10.19818/j.cnki.1671-1637.2022.03.001
Citation: ZHANG Yi, PEI Hua-xin, YAO Dan-ya. Research review on cooperative decision-making for vehicle swarms in vehicle-infrastructure cooperative environment[J]. Journal of Traffic and Transportation Engineering, 2022, 22(3): 1-18. doi: 10.19818/j.cnki.1671-1637.2022.03.001

车路协同环境下车辆群体协同决策研究综述

doi: 10.19818/j.cnki.1671-1637.2022.03.001
基金项目: 

国家重点研发计划 2018YFB1600600

详细信息
    作者简介:

    张毅(1964-),男,北京人,清华大学教授,工学博士,从事车路协同与自动驾驶理论与技术研究

  • 中图分类号: U491.2

Research review on cooperative decision-making for vehicle swarms in vehicle-infrastructure cooperative environment

Funds: 

National Key Research and Development Program of China 2018YFB1600600

More Information
  • 摘要: 从车路协同环境下车辆群体协同决策机制、协同决策方法与典型应用场景方面分析了国内外车辆群体协同决策的研究现状;考虑车辆群体协同决策机制的不同,系统梳理了集中式和分布式2种决策机制的相关研究;针对车辆群体协同决策方法的多样性,以基于优化和基于启发式2类决策方法为主线,对比分析了不同决策方法的优劣;考虑车辆群体协同决策应用场景的不同,全面分析了匝道、路口、路段和路网等多个应用场景下车辆群体协同决策的相关理论与研究;考虑国内外车辆协同决策典型项目进展,分别梳理了中国、美国、日本和欧洲代表性车辆群体协同决策项目任务、建设与实施情况;从系统结构、普适模型和示范场景3个方面提出了未来车路协同环境下车辆群体协同决策的发展趋势。研究结果表明:集中式车辆群体协同决策机制有助于提升局部区域内的车辆通行性能,分布式车辆群体协同决策机制有助于提升全局范围内的交通运行状态;基于优化的车辆群体协同决策方法在特定场景下可最大程度提升决策效果,基于启发式的车辆群体协同决策方法在大多数场景下可获得可行的决策效果;由于不同场景下车辆群体协同决策问题的复杂性有所不同,需要在统一框架下做针对性建模。研究结果可为车路协同环境下新型混合交通系统的管理与控制提供参考。

     

  • 图  1  智能车路协同系统示意

    Figure  1.  Illustration of intelligent vehicle-infrastructure cooperative system

    图  2  车辆群体协同决策研究分类

    Figure  2.  Classification of vehicle swarm cooperative decision-making studies

    图  3  基于分组的匝道汇流协同决策方法

    Figure  3.  Grouping-based cooperative decision-making method for ramp confluence

    图  4  基于蒙特卡洛树搜索的协同决策方法

    Figure  4.  Monte Carlo tree search-based cooperative decisionmaking method

    图  5  基于双层规划的分布式车辆群体协同决策方法

    Figure  5.  Bi-level programming-based distributed cooperative decision-making method for vehicle swarms

    图  6  路网场景下序贯分解策略

    Figure  6.  Sequential decomposition strategy for road network scenarios

    图  7  路网场景下分布式车辆群体协同决策方法

    Figure  7.  Distributed cooperative decision-making method for vehicle swarms in traffic networks

    图  8  车路协同环境下车辆群体协同决策系统结构

    Figure  8.  System architecture of cooperative decision-making for vehicle swarms in vehicle-infrastructure cooperative environment

    图  9  车辆群体协同决策模型构建技术路线

    Figure  9.  Technical route of building cooperative decisionmaking model for vehicle swarms

    表  1  基于优化的集中式车辆群体协同决策方法总结

    Table  1.   Summary of optimization-based centralized cooperative dicision-making methods for vehicle swarms

    应用场景 相关文献 决策结果 计算效率
    匝道 [3] 以提升交通效率为目标,可获得对应目标函数下的全局最优解 计算时间随车辆数的增多急剧增长
    [4] 以提升交通效率为目标,可获得局部最优解 剪枝的方法可降低计算时间,但计算时间复杂度依旧随车辆数的增多急剧增高
    [12] 以提升交通效率为目标,可获得对应目标函数下的全局最优解 计算时间复杂度与车辆数呈二次多项式关系,可保证计算实时性
    路网 [5]、[6] 以提升交通效率为目标,可获得对应目标函数下的全局最优解 计算时间复杂度随车辆数的增多呈指数型增长
    [7] 以提升交通效率为目标,可获得对应目标函数下的全局最优解 剪枝的方法可降低计算时间,但计算时间复杂度依旧随车辆数的增多急剧增长
    [13] 以提升交通效率为目标,可获得对应目标函数下的全局最优解 计算时间复杂度与车辆数呈低次多项式关系,可保证计算实时性
    [8]~[10] 以提升交通效率为目标,可获得对应目标函数下的全局最优解 计算时间复杂度随车辆数的增多呈指数型增长
    下载: 导出CSV

    表  2  基于启发式的集中式车辆群体协同决策方法总结

    Table  2.   Summary of heuristic-based centralized cooperative decision-making methods for vehicle swarms

    应用场景 相关文献 决策结果 计算效率
    匝道 [15] 以提升交通效率为目标,可获得局部最优解 计算时间可忽略不计,能保证计算实时性
    [23] 以提升交通效率为目标,可获得接近全局最优的解 计算时间较低,可保证计算实时性
    路口 [16]~[19] 以提升交通效率为目标,可获得局部最优解 计算时间可忽略不计,能保证计算实时性
    [21] 以提升交通效率为目标,解的性能有所提升,但易陷入局部最优解 计算时间较低,可保证计算实时性
    [22] 以提升交通效率为目标,在车辆数和车道数较少时,可获得接近全局最优的解 计算时间复杂度与车辆数呈低次多项式关系,可保证计算实时性
    [26] 以提升交通效率为目标,可获得接近全局最优的解 计算时间较低,可保证计算实时性
    路网 [11] 以提升交通效率为目标,可获得局部最优解 剪枝的方法可降低计算时间,但计算时间复杂度依旧随车辆数的增多急剧增长
    下载: 导出CSV

    表  3  基于优化的分布式车辆群体协同决策方法总结

    Table  3.   Summary of optimization-based distributed cooperative decision-making methods for vehicle swarms

    应用场景 相关研究 决策结果 计算效率
    匝道 [28]、[29] 以保证安全为目标,可实现主路和匝道车辆之间的安全、平稳交汇 可保证实时计算
    路口 [30]、[31] 可有效降低车辆行驶的能耗和排放,但交通效率提升不明显 可得到最优控制问题的解析解,可保证实时计算
    路段 [32] 可提升车队行驶稳定性 计算复杂度高,不能满足计算实时性的要求
    [33] 在考虑干扰因素的条件下,可有效提升车队行驶稳定性 可有效降低计算代价,保证实时计算
    路网 [34] 可降低计算效率,但牺牲了交通效率 可有效降低计算时间
    [35] 可降低能耗和排放,提升乘客舒适度 可保证实时计算
    下载: 导出CSV

    表  4  基于启发式的分布式车辆群体协同决策方法总结

    Table  4.   Summary of heuristics-based distributed cooperative decision-making methods for vehicle swarms

    应用场景 相关研究 决策结果 计算效率
    匝道 [36] 可有效消解主路和匝道车辆之间的冲突 可有效降低计算复杂度,保证在线计算
    [37] 可保证汇流安全,且在一定程度上提升交通效率 计算时间较少,可保证计算实时性
    路口 [38]、[39] 可有效消解主路和匝道车辆之间的冲突,但对交通效率的提升不明显 计算时间较少,可保证计算实时性
    路段 [40] 可在横向、纵向2个维度实现车队跟驰,且进行了实车测试 计算时间较少,可保证计算实时性
    [41] 可实现路段车辆高效换道 计算时间较少,可保证计算实时性
    路网 [42] 可实现车辆安全、稳定行驶,但对交通效率的提升不明显 计算时间较少,可保证计算实时性
    [43] 可有效提升交通效率 计算时间较少,可保证计算实时性
    下载: 导出CSV

    表  5  网联车辆项目研究内容

    Table  5.   Research contents of connected vehicle projects

    领域 完成的主要研究内容和成果
    安全 车车通信和车路通信安全技术与应用原型研究,并建立了相关的测试和演示系统;车路协同安全测试环境构建,展示基于DSRC的车辆安全应用;其他通信模式在车路协同系统中应用的分析和研究
    政策 制定了技术转让、采购和实施方面的相关政策和解决方案;国家安全系统设计技术和体制模型研究
    交通机动性环境和道路气象管理 实时数据的采集和管理方法研究;新一代满足动态交通管理的应用系统开发;能够提供道路与天气信息的新型服务系统开发;面向环保的交通管理方法与技术创新成果研究;车辆数据转换器研究
    车路协同下的协同决策 协同决策需要的关键技术和核心内容研发;智能网联环境下实现车路协同的相关标准制定;指定的相关标准纳入国际标准体系范畴
    下载: 导出CSV

    表  6  车辆群体协同决策示范场景谱

    Table  6.   Demonstration scenario spectra of cooperative decision-making for vehicle swarms

    测试系统分类 应用场景分类 应用功能名称
    真实系统 无灯控 主线(路)匝道协同汇流
    交叉口(环岛)路口协同通行
    路段编队行驶
    路段多车协同换道与超车
    对面车道借道协同超车
    灯控 匝道通行协同控制
    路口协同控制通行
    超视距感知 周边车辆/路侧设备超视距感知
    远端车辆/路侧设备协同感知
    自动驾驶车队 恶劣天气情况高速公路安全行驶
    自动驾驶车队协同行驶
    人驾领航自动驾驶车队协同
    虚实结合系统 车辆群体复杂交通 路口灯-车协同控制优化通行
    山区道路团雾条件下规模化车辆安全行驶
    快速路-灯控路口一体化协同控制
    仿真系统 大规模异构混合交通 多交叉口信号灯-车辆节能效率多目标协同控制
    城市道路多交叉口干线协同控制
    多匝道快速路一体化协同控制
    路网车辆路径诱导
    快速路智能车辆群体编队控制
    下载: 导出CSV
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  • 收稿日期:  2021-12-24
  • 刊出日期:  2022-06-25

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