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基于强化学习的智能车人机共融转向驾驶决策方法

吴超仲 冷姚 陈志军 罗鹏

吴超仲, 冷姚, 陈志军, 罗鹏. 基于强化学习的智能车人机共融转向驾驶决策方法[J]. 交通运输工程学报, 2022, 22(3): 55-67. doi: 10.19818/j.cnki.1671-1637.2022.03.004
引用本文: 吴超仲, 冷姚, 陈志军, 罗鹏. 基于强化学习的智能车人机共融转向驾驶决策方法[J]. 交通运输工程学报, 2022, 22(3): 55-67. doi: 10.19818/j.cnki.1671-1637.2022.03.004
WU Chao-zhong, LENG Yao, CHEN Zhi-jun, LUO Peng. Human-machine integration method for steering decision-making of intelligent vehicle based on reinforcement learning[J]. Journal of Traffic and Transportation Engineering, 2022, 22(3): 55-67. doi: 10.19818/j.cnki.1671-1637.2022.03.004
Citation: WU Chao-zhong, LENG Yao, CHEN Zhi-jun, LUO Peng. Human-machine integration method for steering decision-making of intelligent vehicle based on reinforcement learning[J]. Journal of Traffic and Transportation Engineering, 2022, 22(3): 55-67. doi: 10.19818/j.cnki.1671-1637.2022.03.004

基于强化学习的智能车人机共融转向驾驶决策方法

doi: 10.19818/j.cnki.1671-1637.2022.03.004
基金项目: 

国家自然科学基金项目 52172394

国家重点研发计划 2018YFB1600600

湖北省科技重大专项 2020AAA001

详细信息
    作者简介:

    吴超仲(1972-),男,湖北天门人,武汉理工大学教授,工学博士,从事交通安全与人机共融驾驶研究

    通讯作者:

    陈志军(1983-),男,河南周口人,武汉理工大学副研究员,工学博士

  • 中图分类号: U461.9

Human-machine integration method for steering decision-making of intelligent vehicle based on reinforcement learning

Funds: 

National Natural Science Foundation of China 52172394

National Key Research and Development Pragram of China 2018YFB1600600

Major Science and Technology Project in Hubei Province 2020AAA001

More Information
  • 摘要: 针对智能车人机共融驾驶系统中人和自主驾驶系统的驾驶权连续动态分配问题,尤其是因建模误差导致的权重分配方法适应性低的难题,提出了基于强化学习的人机共融转向驾驶决策方法;考虑驾驶人的转向特性,搭建了基于双点预瞄的驾驶人模型,并采用预测控制理论建立了智能车自主转向控制模型,构建了智能车人机同时在环的转向控制框架;基于Actor-Critic强化学习架构,设计了用于人机驾驶权分配的深度确定性策略梯度(DDPG)智能体,以曲率契合度、跟踪精确性和乘坐舒适性为目标,提出了基于模型的收益函数;构建了人机共融驾驶权分配强化学习框架,包含驾驶人模型、自主转向模型、驾驶权分配智能体以及收益函数;为了验证方法的有效性,招募了8位驾驶人开展共计48人次的模拟驾驶试验。研究结果表明:在曲率适应性验证中,人机共融-DDPG方法优于人工驾驶和人机共融-Fuzzy方法,跟踪性平均提升70.69%、39.67%,舒适性平均提升18.34%、7.55%;在速度适应性验证中,车速为40、60和80 km·h-1条件下,驾驶人权重大于0.5的时间占比分别为90.00%、85.76%、60.74%,且跟踪性相轨迹和舒适性相轨迹都能有效收敛。可见,提出的方法能够适应曲率和车速变化,在保证安全性的前提下提升了跟踪性和舒适性。

     

  • 图  1  驾驶人转向控制原理

    Figure  1.  Driver steering control principle

    图  2  驾驶人模型的组成

    Figure  2.  Composition of driver model

    图  3  跟踪误差模型

    Figure  3.  Tracking error model

    图  4  人机共融转向架构

    Figure  4.  Framework of HMI steering

    图  5  人机共融驾驶强化学习架构

    Figure  5.  Reinforcement learning framework of HMI driving

    图  6  DDPG智能体强化学习结果

    Figure  6.  Results of DDPG agent reinforcement learning

    图  7  人机共融驾驶试验平台

    Figure  7.  HMI driving experimental platform

    图  8  工况1

    Figure  8.  Working condition 1

    图  9  工况2

    Figure  9.  Working condition 2

    图  10  工况1箱线图

    Figure  10.  Box plots in working condition 1

    图  11  工况1-驾驶人1的详细数据

    Figure  11.  Detailed data of driver 1 in working condition 1

    图  12  工况1的指标降低率对比

    Figure  12.  Comparison of index reduction rates in working condition 1

    图  13  工况2箱线图

    Figure  13.  Box plots in working condition 2

    图  14  工况2中驾驶人1的详细数据

    Figure  14.  Detailed data of driver 1 in working condition 2

    表  1  收益函数参数

    Table  1.   Gain function parameters

    参数 取值 取值依据
    τ1 1/3 转向角(°)均值的倒数
    τ2 1 侧向加速度(m·s-2)均值的倒数
    τ3 10 质心侧偏角(°)均值的倒数
    τ4 5 位置误差(m)均值的倒数
    τ5 2 航向角误差(°)均值的倒数
    σ1σ2σ3 -1、-1、-1 平均权重
    ρ1ρ2ρ3 1、1、10
    下载: 导出CSV

    表  2  DDPG算法参数

    Table  2.   DDPG algorithm parameters

    参数 取值
    采样步长/s 0.1
    单次训练时间/s 60
    Critic学习率 5.0×10-4
    Actor学习率 1.0×10-3
    平滑因子 1.0×10-3
    经验采样数 64
    下载: 导出CSV

    表  3  工况1中本文方法的优势

    Table  3.   Advantages of proposed method in working condition 1 %

    参数 对比方法 驾驶人 均值
    1 2 3 4 5 6 7 8
    e1max 人工驾驶 67.89 80.95 77.73 85.34 81.21 74.01 73.56 77.93 77.33
    人机共融-Fuzzy 36.27 32.02 34.63 38.39 39.11 47.77 8.73 22.01 32.37
    e2max 人工驾驶 60.40 77.40 70.80 75.06 63.11 27.61 63.18 74.86 64.05
    人机共融-Fuzzy 29.57 62.77 56.40 61.60 51.49 41.37 51.12 21.41 46.97
    amax 人工驾驶 16.33 31.52 29.69 7.44 19.46 22.29 15.71 27.59 21.25
    人机共融-Fuzzy 8.18 15.72 5.02 16.39 15.83 14.53 -0.55 5.11 10.03
    βmax 人工驾驶 12.47 19.22 21.75 8.91 16.00 14.36 13.21 17.49 15.43
    人机共融-Fuzzy 5.31 3.91 1.71 8.95 8.68 7.07 1.97 2.99 5.07
    下载: 导出CSV

    表  4  工况1的驾驶人1指标对比

    Table  4.   Indicator comparison of driver 1 in working condition 1

    对比方法 e1max /m e2max/(°) βmax/(°) amax/(m·s-2) Δδ0/[(°)·s-1] Δa0/(m·s-3)
    人工驾驶 0.875 2.88 0.339 3.53 5.42 0.482
    人机共融-Fuzzy 0.441 1.62 0.313 3.22 4.76 0.356
    人机共融-DDPG 0.281 1.14 0.296 2.95 3.31 0.272
    下载: 导出CSV

    表  5  工况2中驾驶人权重大于0.5的时间占比

    Table  5.   Time ratios in condition 2 when driver's weight is greater than 0.5

    车速/ (km·h-1) 不同驾驶人的时间占比/% 均值/%
    1 2 3 4 5 6 7 8
    40 91.45 89.76 87.00 87.76 91.67 92.49 89.98 89.89 90.00
    60 90.34 66.54 83.41 89.97 91.74 85.37 83.94 94.80 85.76
    80 71.92 53.98 55.09 67.53 65.53 51.00 47.62 73.21 60.74
    下载: 导出CSV
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  • 收稿日期:  2021-12-23
  • 刊出日期:  2022-06-25

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