基于数据增强的充电桩异常数据检测

Wen Sun, Qingming Lin, Wenhui Zhang, Xiaocun Wang, Qi Feng, Yun Zhou
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摘要

随着电动汽车充电设施规模的不断扩大,电动汽车充电桩的正常运行尤为重要。然而,某些非人为因素会导致充电站数据异常,从而影响电动汽车充电站的正常运行,影响充电站的日常运营和盈利能力。因此,本文针对能够保留原始数据特征的生成式对抗网络(GAN)和能够检测异常数据的随机森林的特点进行演讲,并对电动汽车充电站管理系统检测到的异常数据进行异常检测。最后,实验结果表明,本文使用的GAN可以生成更多的异常数据来增强原始数据集,并且从数据增强数据集训练的模型比从数据增强数据较少的数据集训练的模型具有更高的数据异常检测能力。
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Data Augmentation Based Anomaly Data Detection for Charging Piles
As electric vehicle (EV) charging facilities continue to grow in size, the proper operation of EV charging posts is of particular importance. However, certain non-human factors can lead to data anomalies in charging posts, thus hindering the normal operation of EV charging posts, as well as the daily operation and profitability of charging stations. Therefore, this paper lectures on the features of generative adversarial networks (GAN) that can retain the original data features and random forests that can detect anomalous data, and performs anomaly detection on the anomalous data detected by the EV charging station management system. Finally, the experimental results show that the GAN used in this paper can generate more anomalous data to augment the original dataset and that the model trained from the data-augmented dataset has higher data anomaly detection capability than the model trained from the dataset with less anomalous data without data augmentation.
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