基于卷积神经网络和数据增强的窃电检测方法

Yu Zhou, Xuecen Zhang, Yi Tang, Zhuowen Mu, Xuesong Shao, Yue Li, Qixin Cai
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引用次数: 2

摘要

窃电是一个严重的问题,给电力公司造成巨大的收入损失,影响电力系统的稳定运行。随着大数据分析的发展,基于数据驱动方法的窃电检测受到了广泛关注。然而,由于低压电网中可用数据通常是稀疏且不平衡的,现有的数据驱动ETD方法大多不适用于住宅用户。针对这一问题,我们提出了一种卷积神经网络(CNN)和数据增强的ETD方法。该方法采用核密度估计(KDE)和蒙特卡罗方法对数据集进行扩展。然后在数据集上实现CNN模型进行分类。利用实际的用电量数据进行了实验,验证了该方法的有效性,结果表明,该方法在不同的指标上都能达到较高的性能。
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Convolutional Neural Network and Data Augmentation Method for Electricity Theft Detection
Electricity theft is a severe issue that causes huge revenue loss for utility companies and influences stable operation of power system. With the development of big data analysis, electricity theft detection (ETD) based on data-driven method has received massive attention. However, since available data in low-voltage (LV) network is usually sparse and imbalanced, most of the existing data-driven ETD methods are not applicable to residential customers. In light of this issue, we proposed a convolution neural network (CNN) and data augmentation method for ETD. This method applies kernel density estimator (KDE) and monte carlo method to expand dataset. Then CNN model is implemented on the dataset for classification. Experiment using realistic electricity usage data has been conducted to verify the effectiveness of this method, results show that this method can achieve high performance in terms of different metrics.
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