cs.AI updates on arXiv.org 07月22日 12:44
Explainable Anomaly Detection for Electric Vehicles Charging Stations
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本文研究电动汽车充电站异常检测,结合可解释人工智能技术,利用Isolation Forest和DIFFI方法识别关键特征,提高检测效率和可解释性。

arXiv:2507.15718v1 Announce Type: cross Abstract: Electric vehicles (EV) charging stations are one of the critical infrastructures needed to support the transition to renewable-energy-based mobility, but ensuring their reliability and efficiency requires effective anomaly detection to identify irregularities in charging behavior. However, in such a productive scenario, it is also crucial to determine the underlying cause behind the detected anomalies. To achieve this goal, this study investigates unsupervised anomaly detection techniques for EV charging infrastructure, integrating eXplainable Artificial Intelligence techniques to enhance interpretability and uncover root causes of anomalies. Using real-world sensors and charging session data, this work applies Isolation Forest to detect anomalies and employs the Depth-based Isolation Forest Feature Importance (DIFFI) method to identify the most important features contributing to such anomalies. The efficacy of the proposed approach is evaluated in a real industrial case.

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电动汽车充电站 异常检测 可解释人工智能 Isolation Forest DIFFI
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