Energy-Aware Driving Profile of Autonomous Electric Vehicles Considering Regenerative Braking Limitations

M. Mohammadi, S. Heydari, P. Fajri, Farshad Harirchi, Zonggen Yi
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引用次数: 3

Abstract

This paper focuses on finding an optimal energy-aware speed trajectory of an Autonomous Electric Vehicle (AEV) considering regenerative braking capability and its limitations. A position-based Electric Vehicle (EV) energy consumption model is used to emulate vehicle-road operating conditions. It is assumed that the EV is driven in an urban area where the route is only constrained by maximum speed limits and traffic signs. The eco-driving problem is formulated as a Mixed Integer Linear Programming (MILP) problem and is solved for two different case studies to demonstrate the importance of considering regenerative braking in identifying optimal speed trajectory of AEVs. The MILP problem is coded in Python and CPLEX is used as a solver for the optimization problem. The results show a variation in the optimal speed trajectories and confirm that when regenerative braking limitations are considered in the calculations leading to an energy-aware speed trajectory, energy consumption can be reduced. This study sets forth a framework for optimizing the braking profile of an AEV by realistically taking into account the vehicle’s regenerative braking limitations which ultimately yields an optimal speed trajectory.
考虑再生制动限制的自动驾驶电动汽车的能量感知驾驶特征
研究了考虑再生制动能力及其局限性的自动驾驶汽车能量感知速度轨迹的优化问题。采用基于位置的电动汽车能耗模型对车辆-道路工况进行仿真。假设电动汽车在市区行驶,行驶路线只受最高限速和交通标志的限制。将生态驾驶问题表述为一个混合整数线性规划(MILP)问题,并通过两个不同的案例进行求解,以证明考虑再生制动在确定自动驾驶汽车最优速度轨迹中的重要性。用Python编写了MILP问题,并使用CPLEX作为优化问题的求解器。结果显示了最优速度轨迹的变化,并证实了当在计算中考虑再生制动限制导致能量感知速度轨迹时,可以降低能耗。本研究提出了一个框架,通过实际考虑车辆的再生制动限制来优化AEV的制动轮廓,最终产生最优的速度轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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