基于深度学习的电力盗窃检测

Sehrish Farid, N. Iltaf, H. Afzal
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摘要

电力盗窃是世界上许多国家面临的一个主要问题。其不利影响包括配电公司和政府经济的收入损失,配电质量,发电负荷增加,以及影响诚实消费者的高电费。随着智能电表在电力基础设施方面的进步,产生了大量的数据,可以分析电力消费者的消费模式。在这些消费者消费模式的帮助下,建立了几种机器学习和深度学习模型和技术来检测欺诈消费者。在检测盗窃地点和欺诈消费者的帮助下,能源分销公司可以对这些消费者处以罚款,减少收入损失。本研究提出了一种结合CNN和STN的盗电检测模型。STN与CNN一起用于许多图像分类问题,以提高模型的性能。STN与CNN一起首次用于电盗窃检测。STN用于平移、旋转和缩放原始输入。本研究使用的数据集是中国国家电网公司公开提供的真实用户用电数据。SGCC数据集存在缺失值和类不平衡问题。盗窃用户的数量明显低于诚实消费者的数量,这可以通过使用合成少数过采样技术(SMOTE)来解决。将最先进的机器学习和深度学习模型与所提出的模型进行比较,结果表明,所建议的模型可以更准确地识别窃贼和普通用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electricity Theft Detection Via Deep Learning
Electricity theft is a major problem facing many countries around the world. Its adverse effects include loss in revenue for power distribution companies and the government economy, the distribution quality of electricity, increased generation load, and high electricity cost which affects honest consumers as well. With the advancement in smart meters in electricity infrastructure, massive data is generated that can be analyzed for electricity consumers’ consumption patterns. With the help of these consumption patterns of consumers, several machine learning and deep learning models and techniques are built to detect fraudulent consumers. With the help of detection of the theft location and fraud consumers, energy distribution companies can impose fines on these consumers and reduce revenue losses. In this research, a combination of CNN and STN based model is proposed to detect electricity theft. STN is used in many image classification problems along with CNN to enhance the performance of the models. STN along with CNN is used for the first time in electricity theft detection. STN is used to translate, rotate and scale the original input. The dataset used in this research is real customers’ electricity usage data publicly provided by the State Grid Corporation of China (SGCC). SGCC dataset has missing values and also has class imbalance problems. The number of theft users is significantly lower than the number of honest consumers, which is addressed by using the Synthetic Minority Oversampling Technique (SMOTE). State-of-the-art machine learning and deep learning models are compared to the proposed model, and the findings reveal that the suggested model can recognize theft and regular users more accurately.
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