Today, there is an ongoing transition to more sustainable transportation, and an essential part of this transition is the switch from combustion engine vehicles to battery electric vehicles (BEVs). BEVs have many advantages from a sustainability perspective, but issues such as limited driving range and long recharge times slow down the transition from combustion engines. One way to mitigate these issues is by performing battery thermal preconditioning, which increases the energy efficiency of the battery. However, to optimally perform battery thermal preconditioning, the vehicle usage pattern needs to be known, i.e., how and when the vehicle will be used. This study attempts to predict the departure time and distance of the first drive each day using different online machine learning models. The online machine learning models are trained and evaluated on historical driving data collected from a fleet of BEVs during the COVID-19 pandemic. Additionally, the prediction models are extended to quantify the uncertainty of their predictions, which can be used as guidance to whether the prediction should be used or dismissed. We show that the best-performing prediction models yield an aggregated mean absolute error of 2.75 hours when predicting departure time and 13.37 km when predicting trip distance.
翻译:今天,正在向更可持续的运输过渡,而这一过渡的一个重要部分是从燃烧发动机车辆向电动车辆(BEVs)的转换。BEVs从可持续性角度有许多好处,但驾驶范围有限和长时间的充电时间等问题减缓了燃烧引擎的过渡速度。缓解这些问题的一个办法是实施电池热能先决条件,提高电池的能源效率。然而,为了最佳地执行电池热能先决条件,车辆使用模式需要了解,即车辆将如何和何时使用。这项研究试图利用不同的在线机器学习模型预测每天第一次驱动的离开时间和距离。在线机器学习模型在从COVID-19大流行病期间从一个BEVs车队收集的历史驱动数据方面接受了培训和评价。此外,预测模型还扩展了对预测的不确定性的量化,可以用来指导是否使用或取消预测。我们显示,最佳预测模型在预测离开时间和预测旅行距离时,总平均为2.75小时,13.37公里。