论文标题

数据驱动的热建模用于电动汽车充电站的异常检测

Data-Driven Thermal Modelling for Anomaly Detection in Electric Vehicle Charging Stations

论文作者

Gómez, Pere Izquierdo, Moreno, Alberto Barragan, Lin, Jun, Dragičević, Tomislav

论文摘要

电动汽车(EV)行业的快速增长正在引起许多基础设施挑战。一个挑战之一是它需要广泛开发电动汽车充电站的需求,而电动汽车充电站必须能够以按需提供大量功率。这可能会对充电基础设施的电气和电子组件产生巨大的压力 - 对其可靠性产生负面影响,并导致维护和运营成本增加。本文提出了一种针对EV充电站中异常检测的数据驱动的数据驱动方法,旨在为该站内的电源转换器提供条件监视和预测维护的信息。为此,使用高效EV充电站的模型来模拟EV充电器电源转换器模块的热行为,从而创建了用于培训神经网络模型的数据集。然后使用这些机器学习模型来识别异常性能。

The rapid growth of the electric vehicle (EV) sector is giving rise to many infrastructural challenges. One such challenge is its requirement for the widespread development of EV charging stations which must be able to provide large amounts of power in an on-demand basis. This can cause large stresses on the electrical and electronic components of the charging infrastructure - negatively affecting its reliability as well as leading to increased maintenance and operation costs. This paper proposes a human-interpretable data-driven method for anomaly detection in EV charging stations, aiming to provide information for the condition monitoring and predictive maintenance of power converters within such a station. To this end, a model of a high-efficiency EV charging station is used to simulate the thermal behaviour of EV charger power converter modules, creating a data set for the training of neural network models. These machine learning models are then employed for the identification of anomalous performance.

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