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Predictive intelligent driver model for eco-driving using upcoming traffic signal information

机译:使用即将到来的交通信号信息生态驾驶预测智能驱动模型

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Without accounting for the signalized intersection constraints in the design of adaptive cruise control (ACC) system, the ACC-equipped connected vehicle (CV) traveling on signalized roadway should be taken over by driver at signalized intersection frequently and speed variations increase significantly. Aiming at addressing this issue, a predictive intelligent driver model (1DM) for eco-driving based on V2X communication is proposed by using upcoming traffic signal information, which can be regarded as the upper controller of ACC system. The intersection signal constraints considered in IDM is treated as a dummy preceding vehicle at red light and no barriers at green light to cope with the application extending problem. To reduce idling time at signalized intersection, an intersection passing decision is presented with model prediction to forecast the arrival time with downstream queue discharge time under consideration, and an eco-driving model with speed reduction strategy is proposed by solving the combined constraints of the signal phase and timing (SPaT) and the vehicle status. Numerical simulations show that taking the speed profile generated by eco-driving model as speed advisor can reduce idling times and fuel consumption levels in the vicinity of signalized intersection. (C) 2018 Elsevier B.V. All rights reserved.
机译:不考虑在自适应巡航控制(ACC)系统的设计中的信号交叉口的限制,ACC-配备连接的车辆(CV)上信号化道路上行驶应当由驾驶员在信号交叉口接管频繁和速度变化显著增加。针对解决这一问题,预测智能驱动程序模型(1DM)为环保驾驶基于V2X通信通过使用即将到来的交通信号的信息,这可以被认为是ACC系统的上控制器提出。在IDM中考虑的交叉点信号的限制将被视为在红光前方车辆的虚设和在绿色光没有障碍应对应用延伸问题。为了减少空转时间信号交叉口,传递决定的交点呈现模型预测来预测的到达时间与考虑下行队列放电时间,以及与减速战略环保驾驶模型是通过求解信号的组合的限制提出了相位和定时(SPAT)和车辆状态。数值仿真表明,服用由环保驾驶模式为速度顾问产生的速度分布可以降低空转时间和燃料消耗水平的信号交叉口的附近。 (c)2018年elestvier b.v.保留所有权利。

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