Dynamic electricity theft behavior analysis based on active learning and incremental learning in new power systems

IF 5 2区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Electrical Power & Energy Systems Pub Date : 2024-11-01 DOI:10.1016/j.ijepes.2024.110309
Qingyuan Cai , Peng Li , Zhiyuan Zhao , Ruchuan Wang
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Abstract

The analysis of energy theft behavior in new power systems is essential for energy sustainable development and maintaining the stable operation of power grids. Traditional data-driven detection models which rely on training on historical data have high cost of training sample labeling. With the progressive development of electricity theft technology, the existing models are limited by the learning of new types of electricity consumption behaviors. Catastrophic forgetting will occur in incremental learning of the model, and a large number of repeated training will increase the training cost of the model. Therefore, this paper combines active learning and incremental learning to analyze the dynamic electricity stealing behavior detection problem in the new power system, and proposes a power theft detection model based on active learning and incremental support vector data description. Firstly, sample filtering strategy for unlabeled data based on gray similarity and kernel function (SFS-GSKF) extracts the most valuable user samples in the new dataset for labeling, so as to reduce the redundancy of user data and reduce the labeling cost. Finally, an adaptive incremental anomaly detection algorithm incorporating active learning (AIAD-AL) is constructed. The model is incrementally updated using the labeled samples of active learning, so as to improve the detection accuracy of new types of anomalous behaviors without forgetting the previous user electricity samples. The simulation results on real electricity consumption datasets show that the algorithm proposed in this paper has excellent sample selection ability, incremental learning capability, and better classification performance compared with existing active learning strategies and incremental detection algorithms.
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基于主动学习和增量学习的新电力系统动态窃电行为分析
分析新电力系统中的窃能行为对于能源可持续发展和维持电网稳定运行至关重要。传统的数据驱动检测模型依赖于历史数据的训练,训练样本标注成本较高。随着窃电技术的不断发展,现有模型受到新型用电行为学习的限制。在模型的增量学习中会出现灾难性遗忘,大量的重复训练会增加模型的训练成本。因此,本文将主动学习和增量学习相结合,分析了新电力系统中的动态窃电行为检测问题,提出了基于主动学习和增量支持向量数据描述的窃电检测模型。首先,基于灰度相似性和核函数(SFS-GSKF)的未标注数据样本过滤策略提取新数据集中最有价值的用户样本进行标注,从而减少用户数据的冗余,降低标注成本;其次,基于增量支持向量数据描述的动态窃电行为检测模型对新数据集中的窃电行为进行检测,从而降低窃电行为的检测成本;最后,基于增量支持向量数据描述的动态窃电行为检测模型对新数据集中的窃电行为进行检测,从而降低窃电行为的检测成本。最后,构建了结合主动学习的自适应增量异常检测算法(AIAD-AL)。利用主动学习的标注样本对模型进行增量更新,从而在不遗忘之前用户用电样本的情况下提高对新型异常行为的检测精度。在真实用电数据集上的仿真结果表明,与现有的主动学习策略和增量检测算法相比,本文提出的算法具有出色的样本选择能力、增量学习能力和更好的分类性能。
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来源期刊
International Journal of Electrical Power & Energy Systems
International Journal of Electrical Power & Energy Systems 工程技术-工程:电子与电气
CiteScore
12.10
自引率
17.30%
发文量
1022
审稿时长
51 days
期刊介绍: The journal covers theoretical developments in electrical power and energy systems and their applications. The coverage embraces: generation and network planning; reliability; long and short term operation; expert systems; neural networks; object oriented systems; system control centres; database and information systems; stock and parameter estimation; system security and adequacy; network theory, modelling and computation; small and large system dynamics; dynamic model identification; on-line control including load and switching control; protection; distribution systems; energy economics; impact of non-conventional systems; and man-machine interfaces. As well as original research papers, the journal publishes short contributions, book reviews and conference reports. All papers are peer-reviewed by at least two referees.
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