改善公共电动汽车充电基础设施的数据驱动框架:建模与预测

Nassr Al-Dahabreh, Mohammad Ali Sayed, Khaled Sarieddine, Mohamed Elhattab, Maurice Khabbaz, Ribal Atallah, Chadi Assi
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引用次数: 0

摘要

本研究提出了一个调查和评估框架,该框架在现实数据的支持下,旨在为运营商提供消费者对公共电动汽车(EV)充电基础设施的体验质量(QoE)的深入了解。在电动汽车市场空前增长的推动下,人们怀疑现有的充电基础设施很快将无法满足快速增长的充电需求;更不用说目前采用的临时基础设施扩建策略似乎远不能提供任何优质服务可持续性解决方案,以切实降低(最终缓解)这一问题的严重性。由于没有合适的 QoE 指标,运营商目前在评估电动汽车充电站 (EVCS) 的性能方面面临巨大困难。本文旨在通过制定新颖、独创的关键 QoE 性能指标来填补这一空白,使运营商能够了解每个 EVCS 的运行动态,并优化这些充电站各自的利用率。然后,这些指标将被用作机器学习模型的输入,该模型利用最新的真实世界数据集精心定制和训练,用于预测未来长期的 EVCS 负载。反过来,这将有助于在知情的情况下优化电动汽车充电基础设施的扩建,从而能够可靠地应对不断增长的电动汽车充电需求,并保持可接受的 QoE 水平。该模型的准确性已通过测试,并进行了大量模拟,以评估在上述指标方面取得的性能,并显示所建议的基础设施扩建的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Driven Framework for Improving Public EV Charging Infrastructure: Modeling and Forecasting
This work presents an investigation and assessment framework, which, supported by realistic data, aims at provisioning operators with in-depth insights into the consumer-perceived Quality-of-Experience (QoE) at public Electric Vehicle (EV) charging infrastructures. Motivated by the unprecedented EV market growth, it is suspected that the existing charging infrastructure will soon be no longer capable of sustaining the rapidly growing charging demands; let alone that the currently adopted ad hoc infrastructure expansion strategies seem to be far from contributing any quality service sustainability solutions that tangibly reduce (ultimately mitigate) the severity of this problem. Without suitable QoE metrics, operators, today, face remarkable difficulty in assessing the performance of EV Charging Stations (EVCSs) in this regard. This paper aims at filling this gap through the formulation of novel and original critical QoE performance metrics that provide operators with visibility into the per-EVCS operational dynamics and allow for the optimization of these stations' respective utilization. Such metrics shall then be used as inputs to a Machine Learning model finely tailored and trained using recent real-world data sets for the purpose of forecasting future long-term EVCS loads. This will, in turn, allow for making informed optimal EV charging infrastructure expansions that will be capable of reliably coping with the rising EV charging demands and maintaining acceptable QoE levels. The model's accuracy has been tested and extensive simulations are conducted to evaluate the achieved performance in terms of the above listed metrics and show the suitability of the recommended infrastructure expansions.
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