An Edge Computing-Based and Threat Behavior-Aware Smart Prioritization Framework for Cybersecurity Intrusion Detection and Prevention of IEDs in Smart Grids With Integration of Modified LGBM and One Class-SVM Models

被引:4
作者
Algarni, Abdulmohsen [1 ]
Ahmad, Zulfiqar [2 ]
Alaa Ala'Anzy, Mohammed [3 ]
机构
[1] King Khalid Univ, Dept Comp Sci, Abha 61421, Saudi Arabia
[2] Hazara Univ, Dept Comp Sci & Informat Technol, Mansehra 21300, Pakistan
[3] SDU Univ, Dept Comp Sci, Kaskelen 040900, Kazakhstan
关键词
Smart grids; Computer security; Machine learning; Intrusion detection; Image edge detection; Real-time systems; Internet of Things; Cyberattack; Power distribution planning; cyberattack detection and prevention; IEDs; LGBM; One Class-SVM; intrusions; ANOMALY DETECTION; MANAGEMENT; INTERNET; THINGS;
D O I
10.1109/ACCESS.2024.3435564
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The smart grid environment, which emphasizes sustainability, dependability, and efficiency through smart components such as Intelligent Electronic Devices (IEDs), communication networks, and control systems, marks a revolutionary change in the way traditional power distribution is carried out. As smart grids grow and are integrated into energy distribution networks, these systems become more vulnerable to cybersecurity threats due to their increased connectivity, usage of IEDs, and reliance on digital communication channels. This study presents an edge computing-based, threat behavior-aware smart prioritization framework with binary and multidimensional classification and detection of cybersecurity intrusions through modified machine learning methods. The proposed framework has the potential to improve smart grid cybersecurity by offering a comprehensive defense against intrusion threats. The proposed framework enhances smart grid cybersecurity by utilizing a multi-criteria approach. It implements edge-computing technology for data storage and processing in smart grids. It applies machine-learning models for cybersecurity intrusion detection in IEDs and provides prevention by assigning priorities to the threats based on their behavior. In order to show the effectiveness of the proposed framework, we modified and implemented two machine-learning models, i.e., LGBM and One Class-SVM, as proposed models in the framework. For multidimensional classification and detection of cybersecurity intrusions in IEDs of smart grids, we used LGBM. Whereas, for binary classification and detection of cybersecurity intrusions, we used One Class-SVM. We simulated the detection and classification of cybersecurity intrusions in IEDs using a power system intrusion dataset. The results show that the LGBM model provides an accuracy of 93%, precision of 94%, recall of 93%, and F1 score of 93% in the detection and classification of cybersecurity intrusions in IEDs of smart grids. The implementation of One Class-SVM with binary classification yields an accuracy of 85%, precision of 89%, recall of 85%, and F1 score of 86%. We implemented the benchmark machine-learning models, i.e., Gradient Boosting Machine and Support Vector Machine, for performance comparison with the proposed modified machine-learning models. The performance comparison shows that the modified machine learning models implemented in the proposed framework outperformed the benchmark machine-learning models.INDEX TERMS Smart grids, cyberattack detection and prevention, IEDs, LGBM, One Class-SVM, intrusions.
引用
收藏
页码:104948 / 104963
页数:16
相关论文
共 47 条
[1]   Mobility-aware task scheduling in cloud-Fog IoT-based healthcare architectures [J].
Abdelmoneem, Randa M. ;
Benslimane, Abderrahim ;
Shaaban, Eman .
COMPUTER NETWORKS, 2020, 179
[2]   Communication Technologies for Smart Grid: A Comprehensive Survey [J].
Abrahamsen, Fredrik Ege ;
Ai, Yun ;
Cheffena, Michael .
SENSORS, 2021, 21 (23)
[3]   A Situation Based Predictive Approach for Cybersecurity Intrusion Detection and Prevention Using Machine Learning and Deep Learning Algorithms in Wireless Sensor Networks of Industry 4.0 [J].
Al-Quayed, Fatima ;
Ahmad, Zulfiqar ;
Humayun, Mamoona .
IEEE ACCESS, 2024, 12 :34800-34819
[4]   An Edge Computing-Based Preventive Framework With Machine Learning- Integration for Anomaly Detection and Risk Management in Maritime Wireless Communications [J].
Algarni, Abdulmohsen ;
Acarer, Tayfun ;
Ahmad, Zulfiqar .
IEEE ACCESS, 2024, 12 :53646-53663
[5]   Predictive Energy Management for Docker Containers in Cloud Computing: A Time Series Analysis Approach [J].
Algarni, Abdulmohsen ;
Shah, Iqrar ;
Jehangiri, Ali Imran ;
Ala'Anzy, Mohammed Alaa ;
Ahmad, Zulfiqar .
IEEE ACCESS, 2024, 12 :52524-52538
[6]   Ensemble Model Based on Hybrid Deep Learning for Intrusion Detection in Smart Grid Networks [J].
Alhaddad, Ulaa ;
Basuhail, Abdullah ;
Khemakhem, Maher ;
Eassa, Fathy Elbouraey ;
Jambi, Kamal .
SENSORS, 2023, 23 (17)
[7]   Performance and Scalability Analysis of SDN-Based Large-Scale Wi-Fi Networks [J].
Ali, Mohsin ;
Jehangiri, Ali Imran ;
Alramli, Omar Imhemed ;
Ahmad, Zulfiqar ;
Ghoniem, Rania M. ;
Ala'anzy, Mohammed Alaa ;
Saleem, Romana .
APPLIED SCIENCES-BASEL, 2023, 13 (07)
[8]   Smart Sensors for Smart Grid Reliability [J].
Alonso, Monica ;
Amaris, Hortensia ;
Alcala, Daniel ;
Florez R., Diana M. .
SENSORS, 2020, 20 (08)
[9]  
Alrashdi I, 2019, 2019 IEEE 9TH ANNUAL COMPUTING AND COMMUNICATION WORKSHOP AND CONFERENCE (CCWC), P305, DOI 10.1109/CCWC.2019.8666450
[10]   A comparative analysis of gradient boosting algorithms [J].
Bentejac, Candice ;
Csorgo, Anna ;
Martinez-Munoz, Gonzalo .
ARTIFICIAL INTELLIGENCE REVIEW, 2021, 54 (03) :1937-1967