|
[1]杜鹏.新时期我国交通运输业碳减排的任务与对策:“交通7+1论坛”第六十次会议[J].交通运输系统工程与信息,2024, 24(6): 1-4. [DU P. Tasks and measures of
carbon emission reduction for China's traffic and transportation industry in the new period: The 60th
Session of the Traffic 7+1 Forum[J]. Journal of
Transportation Systems Engineering and Information
Technology, 2024, 24(6): 1-4.]
[2]吴群琪,王睿,王佳彬.旅客出行选择道路运输服务方式的机理研究[J]. 综合运输, 2022, 44(8): 29-34, 49.
[WU Q Q, WANG R, WANG J B. On the mechanism of
passengers' choice of road transport service mode[J].
China Transportation Review, 2022, 44(8): 29-34, 49.]
[3]北京博研传媒信息咨询有限公司.2025年中国旅游车行业市场规模及投资前景预测分析报告[R].北京:北京博研传媒信息咨询有限公司,2025. [Beijing Boyan
Media Information Consulting Co Ltd. Analysis and
forecast report on market size and investment prospects
of China's tourist vehicle industry in 2025[R]. Beijing:
Beijing Boyan Media Information Consulting Co Ltd,
2025.]
[4]CHEN Z J, XIONG S G, CHEN Q S, et al. Eco-driving: A
scientometric and bibliometric analysis[J]. IEEE
Transactions on Intelligent Transportation Systems,
2022, 23(12): 22716-22736.
[5]刘强,严修,鲁誉,等.考虑驾驶风格的电动公交车能耗灰色关联投影-随机森林预测模型[J].交通信息与安全,2022, 40(5): 129-138. [LIU Q, YAN X, LU Y,
et al. A grey relation projection-random forest prediction
model of energy consumption for electric buses
considering driving style[J]. Journal of Transport
Information and Safety, 2022, 40(5): 129-138.]
[6]纪少波,李洋,李萌,等.纯电动共享汽车驾驶行为对能耗的影响[J]. 吉林大学学报(工学版), 2022, 52(4):
754-763. [JI S B, LI Y, LI M, et al. Influence of driving
behavior on energy consumption of pure electric shared
vehicles[J]. Journal of Jilin University (Engineering and
Technology Edition), 2022, 52(4): 754-763.]
[7]NAN S R, TU R, LI T Z, et al. From driving behavior to
energy consumption: A novel method to predict the
energy consumption of electric bus[J]. Energy, 2022, 261
(PA): 125188.
[8]陈浩,庄伟超,殷国栋,等.网联电动汽车信号灯控路口经济性驾驶策略[J]. 东南大学学报(自然科学版),
2021, 51(1): 178-186. [CHEN H, ZHUANG W C,
YIN G D, et al. Eco-driving control strategy of connected
electric vehicle at signalized intersection[J]. Journal of
Southeast University: Natural Science Edition, 2021, 51
(1): 178-186.]
[9]李传耀,张帆,王涛,等.基于深度强化学习的道路交叉口生态驾驶策略研究[J].交通运输系统工程与信息, 2024, 24(1): 81-92. [LI C Y, ZHANG F, WANG T,
et al. Signalized intersection eco-driving strategy based
on deep reinforcement learning[J]. Journal of
Transportation Systems Engineering and Information
Technology, 2024, 24(1): 81-92.]
[10] GU Z Q, YIN Y M, LI S B, et al. Integrated eco-driving
automation of intelligent vehicles in multi-lane scenario
via
model-accelerated
reinforcement
learning[J].
Transportation Research Part C, 2022, 144: 103863.
[11] YANG L, HU Z Q, WANG L, et al. Entire route eco-
driving method for electric bus based on rule-based
reinforcement learning[J]. Transportation Research Part,
2024, 189: 103636.
[12] LI J, WU X D, FAN J W, et al. Overcoming driving
challenges in complex urban traffic: A multi-objective
eco-driving strategy via safety model based reinforcement
learning[J]. Energy, 2023, 284: 128517.
[13] 庄伟超, 丁昊楠,董昊轩,等.信号交叉口网联电动汽车自适应学习生态驾驶策略[J].吉林大学学报(工学版), 2023, 53(1): 82-93. [ZHUANG W C, DING H N,
DONG H X, et al. Learning based eco-driving strategy of
connected electric vehicle at signalized intersection[J].
Journal of Jilin University (Engineering and Technology
Edition), 2023, 53(1): 82-93.]
[14] 潘应久, 郗毅,刘延森,等.基于能耗预测的网联电动公交车生态驾驶优化策略[J].汽车工程,2025,47(5):
839-850. [PAN Y J, XI Y, LIU Y S, et al. An energy
consumption prediction-based optimization strategy for
eco-driving of connected electric buses[J]. Automotive
Engineering, 2025, 47(5): 839-850.]
[15] SHAO Y L, SUN Z X. Eco-approach with traffic
prediction and experimental validation for connected and
autonomous vehicles[J]. IEEE Transactions on Intelligent
Transportation Systems, 2020, 22(3): 1-11.
[16] 刘显贵, 王晖年,洪经纬,等.网联环境下信号交叉口车速控制策略及优化[J].交通运输系统工程与信息,
2021, 21(2): 82-90. [LIU X G, WANG H N, HONG J
W, et al. Speed control strategy and optimization of
signalized intersection in network environment[J].
Journal of Transportation Systems Engineering and
Information Technology, 2021, 21(2): 82-90.]
[17] ZHU M X, WANGYH,PUZY,et al. Safe, efficient, and
comfortable velocity control based on reinforcement
learning for autonomous driving[J]. Transportation
Research Part C, 2020, 117: 102662.
[18] YANG Z W, ZHENG Z D, KIM J, et al. Eco-driving
strategies using reinforcement learning for mixed traffic
in
the
vicinity
of
signalized
intersections[J].
Transportation Research Part C, 2024, 165: 104683.
[19] VOGEL K. A comparison of headway and time to
collision as safety indicators[J]. Accident Analysis and
Prevention, 2003, 35(3): 427-433.
|