利用基于技术的模型检测和预防窃电:系统性文献综述

Potego Kgaphola, S. Marebane, R. Hans
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引用次数: 0

摘要

窃电行为给电力公司、政府、企业和公众带来了各种不利因素。尽管采用了各种解决方案来检测和预防窃电行为,但窃电现象依然存在。窃电的一些弊端包括收入损失和停电,从而导致企业运营中断。本研究旨在进行系统的文献综述,通过考虑同行评审的实证研究,确定为解决窃电问题提供了哪些技术解决方案,以及这些解决方案的有效性。系统性文献综述是根据计算机科学文献综述指南进行的,以评估可能存在的偏差。分析了 2012 年至 2022 年期间在 SCOPUS、Science Direct 和 Web of Science 上发表的共 11 篇期刊文章,以揭示解决方案、所针对的盗窃类型以及解决方案的成功之处和局限性。研究结果表明,研究的重点是解决智能电网(SG)和先进计量基础设施(AMI)中的窃电问题;此外,近期的文献忽略了在未安装智能电网和先进计量基础设施的国家寻找防止窃电的解决方案。虽然本研究报告的结果仅限于所分析的研究论文,但所选研究的主要局限是缺乏不诚实用户的真实数据。本研究的贡献在于展示了近年来在解决窃电问题方面流行的技术解决方案,以及这些解决方案的有效性。
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 and Prevention Using Technology-Based Models: A Systematic Literature Review
Electricity theft comes with various disadvantages for power utilities, governments, businesses, and the general public. This continues despite the various solutions employed to detect and prevent it. Some of the disadvantages of electricity theft include revenue loss and load shedding, leading to a disruption in business operations. This study aimed to conduct a systematic literature review to identify what technology solutions have been offered to solve electricity theft and the effectiveness of those solutions by considering peer-reviewed empirical studies. The systematic literature review was undertaken following the guidelines for conducting a literature review in computer science to assess potential bias. A total of 11 journal articles published from 2012 to 2022 in SCOPUS, Science Direct, and Web of Science were analysed to reveal solutions, the type of theft addressed, and the success and limitations of the solutions. The findings show that the focus in research is channelled towards solving electricity theft in Smart Grids (SGs) and Advanced Metering Infrastructure (AMI); moreover, there is a neglect in the recent literature on finding solutions that can prevent electricity theft in countries that do not have SG and AMI installed. Although the results reported in this study are confined to the analysed research papers, the leading limitation in the selected studies, lack of real-life data for dishonest users. This study’s contribution is to show what technology solutions are prevalent in solving electricity theft in recent years and the effectiveness of such solutions.
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来源期刊
CiteScore
4.80
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0.00%
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1584
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