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Utilizing Unlabeled Data to Detect Electricity Fraud in AMI: A Semisupervised Deep Learning Approach

机译:利用未标记的数据检测AMI中的电欺诈:一种半监督式深度学习方法

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As nontechnical losses in power systems have recently become a global concern, electricity fraud detection models attracted increasing academic interest. The wide application of smart meters has offered more possibility to detecting fraud from user's consumption patterns. However, the performances of existing consumption-based electricity fraud detection models are still not satisfactory enough for practice, partly due to their limited ability to handle high-dimensional data. In this paper, a deep-learning-based model is developed for detecting electricity fraud in the advanced metering infrastructure, namely, the multitask feature extracting fraud detector (MFEFD). The deep architecture has brought MFEFD a powerful ability to handle high-dimensional input, through which consumption patterns inside load profiles can be effectively extracted. Another challenge is that the insufficiency of labeled data has restricted the generalization of existing models since they are mostly based on supervised learning and labeled data. MFEFD is trained in a semisupervised manner, in which multitask training was implemented to combine the supervised and unsupervised training, so that both the knowledge from unlabeled and labeled data can be made use of. Real-world-data-based case studies have demonstrated MFEFD's high detection performance, robustness, privacy preservation, and practicability.
机译:由于电力系统中的非技术损失最近已成为全球关注的问题,电力欺诈检测模型引起了越来越多的学术兴趣。智能电表的广泛应用为从用户的消费模式中检测欺诈行为提供了更多的可能性。但是,现有的基于消耗的电力欺诈检测模型的性能仍不足以用于实践,部分原因是它们处理高维数据的能力有限。本文提出了一种基于深度学习的模型,用于在高级计量基础架构中检测电力欺诈,即多任务特征提取欺诈检测器(MFEFD)。深度的体系结构使MFEFD具有处理高维输入的强大功能,通过它可以有效地提取负载配置文件中的消耗模式。另一个挑战是标记数据的不足限制了现有模型的泛化,因为它们主要基于监督学习和标记数据。 MFEFD以半监督的方式进行训练,其中实施了多任务训练以将监督和无监督的训练相结合,从而可以利用来自未标记和标记数据的知识。基于实际数据的案例研究证明了MFEFD的高检测性能,鲁棒性,隐私保护和实用性。

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