基于充电数据的电动汽车机器学习识别

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Federico Ferretti, Antonio De Paola
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引用次数: 0

摘要

交流充电是目前最具成本效益、应用最广泛的电动汽车充电方式。然而,现有的交流充电基础设施通常与连接的电动汽车的通信能力有限,因为有关车辆的信息只能通过独立于充电器本身运行的外部记录系统收集。从充电车辆中提取信息(例如,车辆型号、电池容量和充电状态)的一种简单且可互操作的方法可以显著增强先进智能充电策略的实施,释放联网电动汽车的灵活性,实现成本降低并支持向电网提供辅助服务。本文实现了一种新的机器学习方法,在作者设计和实现的现实世界实验环境中估计交流充电车辆的相关信息。所提出的方法不需要任何硬件调整,并且能够预测连接的电动汽车的几个特征(例如,品牌,型号,年份,电池容量,充电结束状态),通过专门考虑它们的充电特征来响应特定的规定电流设定值。该模型的可能应用范围从能够识别常规用户并预测其充电模式的智能充电设施的设计,到联网电动汽车的总体灵活性的实时估计,这是车辆到电网(V2G)应用的重要组成部分。基于实验数据提供了广泛的实际演示,以验证识别过程。此外,本文亦以电动车充电的弹性包络估计为例,说明建议方法在提供辅助服务方面的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning identification of Electric Vehicles from charging session data

Machine learning identification of Electric Vehicles from charging session data
Alternating Current (AC) charging is currently the most cost-effective and widely adopted solution for charging of Electric Vehicles (EVs). However, the existing AC charging infrastructure generally exhibits limited communication capabilities with the connected EVs, as information about the vehicle can only be collected through external logging systems that operate independently of the charger itself. A straightforward and interoperable method for extracting information from charging vehicles (e.g., vehicle model, battery capacity, and State of Charge) could significantly enhance the implementation of advanced smart charging strategies, unlocking the flexibility of connected EVs, enabling cost reductions and supporting the provision of ancillary services to the grid. This article implements a novel machine-learning approach to estimate relevant information on AC charging vehicles in a real-world experimental setting designed and implemented by the authors. The proposed approach does not require any hardware adjustment and is capable of predicting several features of the connected EVs (e.g., brand, model, year, battery capacity, End-of-Charge status) by exclusively considering their charging profile in response to specific prescribed current setpoints. Possible applications of the model range from the design of smart charging facilities capable of identifying regular users and forecasting their charging patterns to the real-time estimation of the aggregate flexibility of connected EVs, an essential component in vehicle-to-grid (V2G) applications. Extensive practical demonstrations based on experimental data are provided to validate the identification procedure. An example of flexibility envelope estimation of charging EVs is also included to demonstrate the potential applications of the proposed method for ancillary services provision.
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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