Effect of Wind on Electric Vehicle Energy Consumption: Sensitivity Analyses and Implications for Range Estimation and Optimal Routing

T. B. Tran, Ilya Kolmanovsky, Erik Biberstein, Omar Makke, Marina Tharayil, Oleg Gusikhin
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Abstract

The energy consumption of electric vehicles (EVs) depends on multiple factors. As it affects vehicle range, energy consumption must be accurately predicted. After a summary of the relevant literature, this paper focuses on two sensitivity studies: one on the impact of wind on energy consumption, and the other on the identifiability of wind in the absence of vehicles’ speed and acceleration profiles. The studies show that wind has a significant impact on the energy consumption for a trip, and without high-resolution knowledge of the acceleration and instantaneous velocity, minor variations in the wind condition do not drastically alter the energy consumption distribution. After that, data sources for the information on the wind velocity and direction are discussed. A data-driven approach based on fuzzy set theory is proposed to incorporate wind into the energy prediction; the best model from this approach shows a notable improvement (3.62%) over the currently implemented production-level predictive model for energy consumption on a data set of 35,139 real-world trips; the improvement is even more pronounced (∼ 7%) for trips with more substantial headwind or tailwind level. Recognizing the interplay between range prediction and route selection, we consider a Markov Decision Process (MDP) framework for battery-charge- and travel-time-aware optimal route planning that accounts for the impact of the wind and includes stops at the charging stations. Finally, we propose a framework that includes wind in the operation of EVs, which consists of learning the impact of wind, incorporating wind forecasting into range and energy prediction, and using that prediction to perform optimal routing.
风对电动汽车能源消耗的影响:敏感性分析及其对范围估计和最佳路线选择的影响
电动汽车(EV)的能耗取决于多种因素。由于能耗会影响车辆的续航里程,因此必须对其进行准确预测。在对相关文献进行总结后,本文重点介绍了两项敏感性研究:一项是风对能耗的影响,另一项是在没有车辆速度和加速度曲线的情况下风的可识别性。研究表明,风力对一次行程的能耗有重大影响,在没有高分辨率加速度和瞬时速度知识的情况下,风力条件的微小变化不会对能耗分布产生重大改变。随后,讨论了风速和风向信息的数据来源。在 35,139 次实际行程的数据集上,该方法得出的最佳模型比目前实施的生产级能耗预测模型有显著改善(3.62%);对于具有较强逆风或顺风水平的行程,改善更为明显(∼ 7%)。认识到续航里程预测与路线选择之间的相互作用,我们考虑采用马尔可夫决策过程(Markov Decision Process,MDP)框架进行电池充电和旅行时间感知的最佳路线规划,该框架考虑了风的影响,并包括在充电站的停留时间。最后,我们提出了一个将风力纳入电动汽车运行的框架,该框架包括学习风力影响、将风力预测纳入续航里程和能量预测,以及利用该预测执行最优路线选择。
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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