基于多特征融合和对比学习的用电行为异常检测

IF 3 2区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Information Systems Pub Date : 2024-09-02 DOI:10.1016/j.is.2024.102457
Yongming Guan , Yuliang Shi , Gang Wang , Jian Zhang , Xinjun Wang , Zhiyong Chen , Hui Li
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引用次数: 0

摘要

异常用电检测是通过监测和分析电力系统中的用电情况,发现和诊断异常用电行为的过程。如何提高异常检测的准确性是一个热门研究课题。大多数研究采用神经网络进行异常检测,但忽略了缺失电力数据对异常检测性能的影响。缺失值补全是提高电力数据质量、优化异常检测性能的重要方法。此外,大多数研究通过对电力数据的时间特征建模,忽略了空间特征之间潜在的相关关系。因此,本文提出了一种基于多特征融合和对比学习的电力异常检测模型。该模型整合了时间和空间特征,共同完成电力异常检测。在时间特征表征学习方面,设计了改进的双向 LSTM 来实现电力数据的缺失值补全,并结合 CNN 来捕捉时间数据中的用电行为模式。在空间特征表征学习方面,利用 GCN 和 Transformer 充分挖掘数据间复杂的相关关系。此外,为了提高异常检测的性能,本文还设计了一个门控融合模块,并结合对比学习的思想来加强电力数据的表示能力。最后,我们通过实验证明本文提出的方法能有效提高用电行为异常检测的性能。
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Electricity behaviors anomaly detection based on multi-feature fusion and contrastive learning

Abnormal electricity usage detection is the process of discovering and diagnosing abnormal electricity usage behavior by monitoring and analyzing the electricity usage in the power system. How to improve the accuracy of anomaly detection is a popular research topic. Most studies use neural networks for anomaly detection, but ignore the effect of missing electricity data on anomaly detection performance. Missing value completion is an important method to improve the quality of electricity data and to optimize the anomaly detection performance. Moreover, most studies have ignored the potential correlation relationship between spatial features by modeling the temporal features of electricity data. Therefore, this paper proposes an electricity anomaly detection model based on multi-feature fusion and contrastive learning. The model integrates the temporal and spatial features to jointly accomplish electricity anomaly detection. In terms of temporal feature representation learning, an improved bi-directional LSTM is designed to achieve the missing value completion of electricity data, and combined with CNN to capture the electricity consumption behavior patterns in the temporal data. In terms of spatial feature representation learning, GCN and Transformer are used to fully explore the complex correlation relationships among data. In addition, in order to improve the performance of anomaly detection, this paper also designs a gated fusion module and combines the idea of contrastive learning to strengthen the representation ability of electricity data. Finally, we demonstrate through experiments that the method proposed in this paper can effectively improve the performance of electricity behavior anomaly detection.

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来源期刊
Information Systems
Information Systems 工程技术-计算机:信息系统
CiteScore
9.40
自引率
2.70%
发文量
112
审稿时长
53 days
期刊介绍: Information systems are the software and hardware systems that support data-intensive applications. The journal Information Systems publishes articles concerning the design and implementation of languages, data models, process models, algorithms, software and hardware for information systems. Subject areas include data management issues as presented in the principal international database conferences (e.g., ACM SIGMOD/PODS, VLDB, ICDE and ICDT/EDBT) as well as data-related issues from the fields of data mining/machine learning, information retrieval coordinated with structured data, internet and cloud data management, business process management, web semantics, visual and audio information systems, scientific computing, and data science. Implementation papers having to do with massively parallel data management, fault tolerance in practice, and special purpose hardware for data-intensive systems are also welcome. Manuscripts from application domains, such as urban informatics, social and natural science, and Internet of Things, are also welcome. All papers should highlight innovative solutions to data management problems such as new data models, performance enhancements, and show how those innovations contribute to the goals of the application.
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