智能电网网络安全的深度学习:回顾与展望

Jiaqi Ruan, Gaoqi Liang, Junhua Zhao, Huan Zhao, Jing Qiu, Fushuan Wen, Zhao Yang Dong
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引用次数: 4

摘要

保护网络安全是智能电网(SG)不可谈判的任务,近年来受到了极大的关注。人工智能(AI),特别是深度学习(DL)的应用,对增强SG的网络安全具有很大的前景。然而,以前的调查和综述文章未能全面调查DL和SG网络安全之间的交叉点。为了解决这一差距,本研究对DL技术的最新进展及其与SG网络安全的相关性进行了调查。首先,探讨了常用DL技术的作用机制和应用范围。随后,SG网络威胁被分为不同类型的网络攻击,这些攻击在以前的调查中没有得到系统的检查。在此基础上,对DL技术在应对每种网络威胁中的应用进行了全面的审查,并提出了使用DL增强网络攻击检测的建议和通用框架。最后,深入了解了DL应用在SG网络安全中提出的新挑战,这些挑战尚未得到广泛认可,并提出了解决或缓解这些挑战的潜在研究途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Deep learning for cybersecurity in smart grids: Review and perspectives

Protecting cybersecurity is a non-negotiable task for smart grids (SG) and has garnered significant attention in recent years. The application of artificial intelligence (AI), particularly deep learning (DL), holds great promise for enhancing the cybersecurity of SG. Nevertheless, previous surveys and review articles have failed to comprehensively investigate the intersection between DL and SG cybersecurity. To address this gap, this study presents a survey of the latest advancements in DL technology and their relevance to SG cybersecurity. First, the functional mechanisms and scope of application of common DL techniques are explored. Subsequently, SG cyberthreats are categorised into distinct types of cyberattacks that have not been systematically examined in previous surveys. Based on this, a thorough review of the application of DL techniques in addressing each cyberthreat along with recommendations and a generalised framework for enhancing cyberattack detection using DL is offered. Finally, insights are provided into the emerging challenges presented by DL applications in SG cybersecurity that are yet to be widely acknowledged, and potential research avenues are proposed to address or alleviate these challenges.

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