预测性欺诈检测:智能电网物联网系统的智能方法

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
L. Bastos, Bruno Martins, Hugo Santos, I. Medeiros, Paulo Eugênio, Leonardo Marques, D. Rosário, Eduardo Nogueira, E. Cerqueira, Márcio Kreutz, Augusto Neto
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引用次数: 0

摘要

如今,电网恢复能力已成为一项不可或缺的功能,尤其是在电力中断会影响经济的情况下。作为智能电表运行的智能电子设备(IED)的广泛普及,使得大量细粒度的用电数据得以收集。然而,智能电网(SG)中仍然存在风险,因为智能电网系统之间会交换有价值的数据;这些数据被盗或被篡改可能会侵犯消费者的隐私。智能电网物联网(IoSGT)是一个前景广阔的生态系统,它由不同的技术组成,这些技术相互协调,为新的智能电网应用和服务铺平了道路。作为 IoSGT 在未来智能电网应用和服务中的一个用例,欺诈检测(ı非技术性损失(NTL))成为智能电网(SG)场景中的一个重要应用。大量电能在整个配电系统中损耗,这些损耗分为两种类型:技术损耗和非技术损耗。非技术性损耗 (NTL) 是指任何未开具发票的电能消耗。出现这些损失的原因可能是非法连接、电能表问题(如安装延迟或读数错误)、测量设备受污染、有缺陷或不适用、有效消耗估算过低、连接故障以及忽视客户。非技术性损失是造成秘书长收入损失的主要原因。根据最近的一项研究,由于非技术性损失,电力公司每年损失 893 亿美元。本文提出了基于集合预测器的时间序列分类器来检测非技术性损失。所建议的预测器将用户的能耗作为分类的数据输入,从分割数据到执行分类器,它在预处理、训练、测试和验证阶段涵盖了能耗数据的时间方面。建议使用的预测器以时间序列(TS)为导向,从数据分割到分类器的性能。总体而言,我们在基于欺诈检测的时间序列分类器(TSC)模型中取得了最佳结果,其经验性能指标比其他开发的模型提高了 10%或更多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Fraud Detection: An Intelligent Method for Internet of Smart Grid Things Systems
Today, grid resilience as a feature has become non-negotiable, significantly when power interruptions can impact the economy. The widespread popularity of Intelligent Electronic Devices (IED) operating as smart meters enables an immense amount of fine-grained electricity consumption data to be collected. However, risk can still exist in the Smart Grid (SG), as valuable data are exchanged among SG systems; theft or alteration of this data could violate consumer privacy. The Internet of Things for Smart Grid (IoSGT) is a promising ecosystem of different technologies that coordinate with each other to pave the way for new SG applications and services. As a use case of IoSGT for future SG applications and services, fraud detection, ıNon-technical losses (NTL), emerges as an important application for Smart Grid (SG) scenarios. A substantial amount of electrical energy is lost throughout the distribution system, and these losses are divided into two types: technical and non-technical. Non-technical losses (NTL) are any electrical energy consumed and not invoiced. They may occur due to illegal connections, issues with energy meters such as delay in the installation or reading errors, contaminated, defective, or non-adapted measuring equipment, very low valid consumption estimates, faulty connections, and disregarded customers. Non-technical losses are the primary cause of revenue loss in the SG. According to a recent study, electrical utilities lose $89.3 Billion per year due to non-technical losses. This article proposes ensemble predictor-based time series classifiers for NTL detection. The proposed predictor ministers the user’s energy consumption as a data input for classification, from splitting the data to executing the classifier.It encompasses the temporal aspects of energy consumption data during preprocessing, training, testing, and validation stages. The suggested predictor is Time Series (TS) oriented, from data splitting to the classifier’s performance. Overall, our best results have been recorded in the fraud detection-based time series classifiers (TSC) model scoring an improvement in the empirical performance metrics by 10% or more over the other developed models.
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来源期刊
Journal of Internet Services and Applications
Journal of Internet Services and Applications COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.70
自引率
0.00%
发文量
2
审稿时长
13 weeks
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