电动汽车车队的可靠能耗建模

Millend Roy, A. Nambi, Anupam Sobti, T. Ganu, S. Kalyanaraman, S. Akella, Jaya Subha Devi, S. Sundaresan
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引用次数: 1

摘要

准确预测电动汽车(EV)在现实环境(如不同的道路、交通、天气条件等)下的能耗对于里程估计和路线规划等许多决策至关重要。电动汽车车主的一个主要担忧是电池消耗的不确定性。这导致了“里程焦虑”,用户不愿意大规模采用电动汽车,因为他们担心电池过早耗尽。即使在组织层面,运营电动车队的公司也必须准确了解电池消耗概况,以便完成路线和驾驶员规划、电池大小、维护计划等任务。在本文中,首先,我们强调了建模能源消耗的挑战,并展示了在现实世界条件下理解电动汽车能源消耗所需的数据的性质。然后,通过27辆汽车在23,500小时内收集的庞大而多样化的数据集,跨越约460,000公里,我们展示了我们的两阶段方法来预测电动汽车在旅行开始前的能耗。在我们的能源消耗建模方法中,除了在旅行前直接记录的主要特征外,我们还通过广泛的特征工程过程构建和预测次要特征,然后将两者用于预测能源消耗。我们表明,我们的方法优于基于深度学习的电动汽车能耗预测建模,并且还为领域专家提供了可解释和可解释的模型。这种新方法在我们的数据集上产生了平均绝对百分比误差(MAPE)的能源消耗模型,并且显著优于电动汽车能源消耗模型的最先进结果。
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Reliable Energy Consumption Modeling for an Electric Vehicle Fleet
Accurately predicting the energy consumption of an electric vehicle (EV) under real-world circumstances (such as varying road, traffic, weather conditions, etc.) is critical for a number of decisions like range estimation and route planning. A major concern for electric vehicle owners is the uncertain nature of the battery consumption. This results in the “range anxiety” and reluctance from users for mass adoption of EVs, since they are concerned about untimely drainage of battery. Even at the organizational level, a company running a fleet of electric vehicles must understand the battery consumption profiles accurately for tasks such as route and driver planning, battery sizing, maintenance planning, etc. In this paper, firstly, we highlight the challenges in modelling energy consumption and demonstrate the nature of data which is required to understand the energy consumption of electric vehicles under real-world conditions. Then, through a large and diverse dataset collected over 23,500 hours spanning ≈ 460,000 km with 27 vehicles, we demonstrate our two-stage approach to predict the energy consumption of an EV before the start of the trip. In our energy consumption modelling approach, apart from the primary features recorded directly before the trip, we also construct and predict secondary features through an extensive feature engineering process, both of which are then used to predict the energy consumption. We show that our approach outperforms Deep Learning based modelling for EV energy consumption prediction, and also provides explainable and interpretable models for domain experts. This novel method results in energy consumption modelling with of Mean Absolute Percentage Error (MAPE) on our dataset and significantly outperforms state-of-the-art results in EV energy consumption modeling.
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