通过实时异常检测增强复杂能源系统的复原力:系统文献综述

Q2 Energy Energy Informatics Pub Date : 2024-10-04 DOI:10.1186/s42162-024-00401-8
Ali Aghazadeh Ardebili, Oussama Hasidi, Ahmed Bendaouia, Adem Khalil, Sabri Khalil, Dalila Luceri, Antonella Longo, El Hassan Abdelwahed, Sara Qassimi, Antonio Ficarella
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引用次数: 0

摘要

随着实时数据源的不断扩大,在流式数据中检测异常的需求对于前沿数据驱动型应用变得越来越重要。实时异常检测面临着各种挑战,由于人工干预不切实际,需要自动系统不断适应不断变化的数据模式。本研究的重点是能源系统 (ES),这种关键基础设施容易受到自然灾害、网络攻击、设备故障或人为失误的干扰,从而导致停电、经济损失,并给其他部门带来风险。早期异常检测可确保能源供应的连续性,最大限度地减少中断影响,并增强系统抵御网络威胁的能力。由于缺乏标准化的知识,以及新兴技术的快速发展取代了传统方法,因此进行了系统的文献综述(SLR),以回答异常检测中的 5 个基本研究问题。本文对所选文献进行了详细审查,提取了见解并综合了结果,以探讨在能源系统范围内使用机器学习算法可检测到的异常类型、影响检测成功的因素、部署算法以及需要考虑的安全衡量标准。本文全面回顾并列举了先进的机器学习模型、提高检测性能的方法、方法论、工具和实时实施的使能技术。此外,本研究还概述了改进智能能源系统异常检测的未来研究方向。
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Enhancing resilience in complex energy systems through real-time anomaly detection: a systematic literature review

As real-time data sources expand, the need for detecting anomalies in streaming data becomes increasingly critical for cutting edge data-driven applications. Real-time anomaly detection faces various challenges, requiring automated systems that adapt continuously to evolving data patterns due to the impracticality of human intervention. This study focuses on energy systems (ES), critical infrastructures vulnerable to disruptions from natural disasters, cyber attacks, equipment failures, or human errors, leading to power outages, financial losses, and risks to other sectors. Early anomaly detection ensures energy supply continuity, minimizing disruption impacts, an enhancing system resilience against cyber threats. A systematic literature review (SLR) is conducted to answer 5 essential research questions in anomaly detection due to the lack of standardized knowledge and the rapid evolution of emerging technologies replacing conventional methods. A detailed review of selected literature, extracting insights and synthesizing results has been conducted in order to explore anomaly types that can be detected using Machine Learning algorithms in the scope of Energy Systems, the factors influencing this detection success, the deployment algorithms and security measurement to take in to consideration. This paper provides a comprehensive review and listing of advanced machine learning models, methods to enhance detection performance, methodologies, tools, and enabling technologies for real-time implementation. Furthermore, the study outlines future research directions to improve anomaly detection in smart energy systems.

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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
期刊最新文献
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