影响因子:1.6
发表刊物:International Journal of Automotive Technology
关键字:Intelligent networked vehicle · Energy economy · Global optimal velocity profile · Cellular automata · Dynamic programming
摘要:The energy efficiency of intelligent networked connected electric vehicle (EV) is directly related to its velocity. Aiming at
the influence of real-time traffic flow information on road speed interval, a two-layer speed planning method is proposed.
The upper layer extracts the road speed interval according to the traffic flow information, and based on cellular automata and
confidence interval theory, traffic information rules are introduced, and a road speed interval extraction method considering
traffic density information is established. The lower layer is used to obtain energy-optimal cruising velocity profile. Taking
the road speed interval as the variable boundary constraint, a dynamic programming algorithm that changes the state quantity boundary in real time is designed, which realizes the efficient acquisition of the energy-optimized velocity trajectory.
To verify the effectiveness of proposed approach, the simulation model is formulated based on using collected real traffic
information. The simulation results demonstrate that, compared with the conventional constant speed cruising strategy and
dynamic programming (DP) strategy based on road speed interval, the strategy proposed in this study not only improves
energy efficiency and reduces computing time significantly, but also can predict the traffic conditions ahead to avoid large
fluctuations in velocity. Besides, the biggest significance of this study is the designed economic velocity planning algorithm
based on real-time traffic density information improves the adaptability of intelligent networked connected EV control
strategy to actual traffic conditions, and extends the optimization dimension of eco-driving.
合写作者:Lei Wang,Xiaoyu Mu,Wei Yu,Kang Huang
第一作者:Mingming Qiu
论文类型:期刊论文
学科门类:工学
文献类型:J
卷号:25
期号:2
是否译文:否
发表时间:2024-02-15
收录刊物:SCI