Decentralized Smart Grid System:A Survey On Machine Learning-Based Intrusion Detection Approaches

Makhmoor Fiza Murk, Noman Zahid, Ali Hassan Sodhro, Bilal Zahid
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引用次数: 2

Abstract

Smart grid is a two-way communication technology power system that sends information between the control server and consumer. It consists of different IoTs connected to a smart meter, creating a network known as the HAN home area network, and collections of these smart meters form a NAN neighbor area network. This data has been transferred to a WAN-wide area network, where the control server will share and analyze the information. The information shared in all layers has been secured in order to maintain this infrastructure. Traditional systems like firewalls’ general cryptographic techniques can detect anomalies for known attacks, but they sometimes fail to provide efficient security for unknown or real-time attacks. There should be a complete framework to detect real-time intruders and attacks. Here, NIDS using machine learning approach has been discussed in this survey report. Most ML techniques are able to detect real-time attacks with less time overhead and higher accuracy. On the basis of accuracy, detection rate, and F1 score, ten different types of datasets were evaluated and analyzed.
分散式智能电网系统:基于机器学习的入侵检测方法综述
智能电网是一种双向通信技术的电力系统,在控制服务器和用户之间发送信息。它由连接到智能电表的不同物联网组成,创建一个称为HAN家庭区域网络的网络,这些智能电表的集合形成NAN邻居区域网络。这些数据被传输到广域网,在那里控制服务器将共享和分析这些信息。为了维护这个基础结构,所有层中共享的信息都是安全的。传统的系统,如防火墙的通用加密技术,可以检测已知攻击的异常情况,但它们有时无法为未知或实时攻击提供有效的安全性。应该有一个完整的框架来检测实时入侵者和攻击。在这里,本调查报告讨论了使用机器学习方法的NIDS。大多数机器学习技术能够以更少的时间开销和更高的准确性检测实时攻击。在准确率、检出率和F1评分的基础上,对10种不同类型的数据集进行了评估和分析。
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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