An embedded intrusion detection and prevention system for home area networks in advanced metering infrastructure

IF 1.3 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Sahar Lazim Qaddoori, Qutaiba Ibrahim Ali
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引用次数: 0

Abstract

With the widespread adoption of smart metres in the power sector, anomaly detection has become a critical tool for analysing customers' unusual consumption patterns and network traffic. Detecting anomalies in power consumption and communication is primarily a real-time big data analytics issue regarding data mining along with a vast number of parallel streaming data from smart metres. In this study, an embedded Intrusion Detection and Prevention System (IDPS) is proposed as a Wifi-based smart metre for Home Area Networks (HANs) in the Advanced Metering Infrastructure (AMI) network. So, the proposed system employs one machine learning model based on IDPS to guard the HAN network from various attacks that utilise the Message Queueing Telemetry Transport protocol between the smart metre and IoT sensors. Also, it uses two machine learning models to detect the abnormality in periodic and daily data metering respectively. So, multiple algorithms have been used to find the suitable algorithm for each of the three anomaly detection models. These models have been evaluated and tested using real data sets regarding resources usage and detection performance to demonstrate the efficiency and effectiveness of using machine learning algorithms in the built anomaly detection models. The experiments show that the anomaly detection models performed well for various abnormalities.

Abstract Image

一种先进计量基础设施中用于家庭局域网的嵌入式入侵检测和预防系统
随着智能电表在电力行业的广泛应用,异常检测已成为分析客户异常消费模式和网络流量的关键工具。检测功耗和通信中的异常主要是一个实时大数据分析问题,涉及数据挖掘以及来自智能电表的大量并行流数据。在本研究中,提出了一种嵌入式入侵检测和预防系统(IDPS),作为高级计量基础设施(AMI)网络中用于家庭局域网(HAN)的基于Wifi的智能电表。因此,所提出的系统采用了一个基于IDPS的机器学习模型来保护HAN网络免受各种攻击,这些攻击利用了智能电表和物联网传感器之间的消息队列遥测传输协议。此外,它使用两个机器学习模型分别检测周期性和日常数据测量中的异常。因此,已经使用了多种算法来为三个异常检测模型中的每一个找到合适的算法。这些模型已经使用关于资源使用和检测性能的真实数据集进行了评估和测试,以证明在构建的异常检测模型中使用机器学习算法的效率和有效性。实验表明,异常检测模型对各种异常都表现良好。
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来源期刊
IET Information Security
IET Information Security 工程技术-计算机:理论方法
CiteScore
3.80
自引率
7.10%
发文量
47
审稿时长
8.6 months
期刊介绍: IET Information Security publishes original research papers in the following areas of information security and cryptography. Submitting authors should specify clearly in their covering statement the area into which their paper falls. Scope: Access Control and Database Security Ad-Hoc Network Aspects Anonymity and E-Voting Authentication Block Ciphers and Hash Functions Blockchain, Bitcoin (Technical aspects only) Broadcast Encryption and Traitor Tracing Combinatorial Aspects Covert Channels and Information Flow Critical Infrastructures Cryptanalysis Dependability Digital Rights Management Digital Signature Schemes Digital Steganography Economic Aspects of Information Security Elliptic Curve Cryptography and Number Theory Embedded Systems Aspects Embedded Systems Security and Forensics Financial Cryptography Firewall Security Formal Methods and Security Verification Human Aspects Information Warfare and Survivability Intrusion Detection Java and XML Security Key Distribution Key Management Malware Multi-Party Computation and Threshold Cryptography Peer-to-peer Security PKIs Public-Key and Hybrid Encryption Quantum Cryptography Risks of using Computers Robust Networks Secret Sharing Secure Electronic Commerce Software Obfuscation Stream Ciphers Trust Models Watermarking and Fingerprinting Special Issues. Current Call for Papers: Security on Mobile and IoT devices - https://digital-library.theiet.org/files/IET_IFS_SMID_CFP.pdf
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