Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning
Within the evolving landscape of fifth-generation (5G) wireless networks, the introduction of network-slicing protocols has become pivotal, enabling the accommodation of diverse application needs while fortifying defenses against potential security breaches. The challenge emerges in harmonizing the...
Main Authors: | , , , , , , , , , , |
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Format: | Article |
Language: | English |
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Wiley, Institution of Engineering and Technology (IET)
2023
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Online Access: | https://repository.londonmet.ac.uk/9325/1/IET%20Communications%20-%202024%20Improved%205G%20network%20slicing%20for%20enhanced%20QoS%20against%20attack%20in%20SDN%20environment%20using.pdf |
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author | Abood, Mohammed Salah Hua, Wang Virdee, Bal Singh He, Dongxuan Fathy, Maha Yusuf, Abdulganiyu Abdu Jamal, Omar Elwi, Taha A. Alibakhshikenari, Mohammad Kouhalvandi, Lida Ahmad, Ashfaq |
author_facet | Abood, Mohammed Salah Hua, Wang Virdee, Bal Singh He, Dongxuan Fathy, Maha Yusuf, Abdulganiyu Abdu Jamal, Omar Elwi, Taha A. Alibakhshikenari, Mohammad Kouhalvandi, Lida Ahmad, Ashfaq |
author_sort | Abood, Mohammed Salah |
collection | LMU |
description | Within the evolving landscape of fifth-generation (5G) wireless networks, the introduction of network-slicing protocols has become pivotal, enabling the accommodation of diverse application needs while fortifying defenses against potential security breaches. The challenge emerges in harmonizing the delivery of Enhanced Mobile Broadband (eMBB), Massive Machine Type Communication (eMTC), and ultra-reliable Low Latency Communication (uRLLC) on a unified physical network while safeguarding against potential attacks. Thus, our study endeavors to construct a comprehensive network-slicing model integrated with an attack detection system within the 5G framework. Leveraging Software-Defined Networking (SDN) along with deep learning techniques, our approach seeks to fortify security measures while optimizing network performance. This undertaking introduces network slicing predicated on SDN with the OpenFlow protocol and Ryu control technology, complemented by a Neural Network model for attack detection using deep learning methodologies. Additionally, the proposed Convolutional Neural Networks-Long Short-Term Memory (CNN-LSTM) approach demonstrates superiority over conventional ML algorithms, signifying its potential for real-time attack detection. Evaluation of the proposed system using a 5G dataset showcases an impressive accuracy of 99%, surpassing previous studies, and affirming the efficacy of the approach. Moreover, network slicing significantly enhances Quality of Service (QoS) by segmenting services based on bandwidth. Future research will concentrate on real-world implementation, encompassing diverse dataset evaluations, and assessing the model's adaptability across varied scenarios. |
first_indexed | 2024-07-09T04:08:07Z |
format | Article |
id | oai:repository.londonmet.ac.uk:9325 |
institution | London Metropolitan University |
language | English |
last_indexed | 2024-07-09T04:08:07Z |
publishDate | 2023 |
publisher | Wiley, Institution of Engineering and Technology (IET) |
record_format | eprints |
spelling | oai:repository.londonmet.ac.uk:93252024-06-18T10:44:00Z http://repository.londonmet.ac.uk/9325/ Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning Abood, Mohammed Salah Hua, Wang Virdee, Bal Singh He, Dongxuan Fathy, Maha Yusuf, Abdulganiyu Abdu Jamal, Omar Elwi, Taha A. Alibakhshikenari, Mohammad Kouhalvandi, Lida Ahmad, Ashfaq 600 Technology 620 Engineering & allied operations Within the evolving landscape of fifth-generation (5G) wireless networks, the introduction of network-slicing protocols has become pivotal, enabling the accommodation of diverse application needs while fortifying defenses against potential security breaches. The challenge emerges in harmonizing the delivery of Enhanced Mobile Broadband (eMBB), Massive Machine Type Communication (eMTC), and ultra-reliable Low Latency Communication (uRLLC) on a unified physical network while safeguarding against potential attacks. Thus, our study endeavors to construct a comprehensive network-slicing model integrated with an attack detection system within the 5G framework. Leveraging Software-Defined Networking (SDN) along with deep learning techniques, our approach seeks to fortify security measures while optimizing network performance. This undertaking introduces network slicing predicated on SDN with the OpenFlow protocol and Ryu control technology, complemented by a Neural Network model for attack detection using deep learning methodologies. Additionally, the proposed Convolutional Neural Networks-Long Short-Term Memory (CNN-LSTM) approach demonstrates superiority over conventional ML algorithms, signifying its potential for real-time attack detection. Evaluation of the proposed system using a 5G dataset showcases an impressive accuracy of 99%, surpassing previous studies, and affirming the efficacy of the approach. Moreover, network slicing significantly enhances Quality of Service (QoS) by segmenting services based on bandwidth. Future research will concentrate on real-world implementation, encompassing diverse dataset evaluations, and assessing the model's adaptability across varied scenarios. Wiley, Institution of Engineering and Technology (IET) 2023-06-17 Article PeerReviewed text en cc_by_nc_nd_4 https://repository.londonmet.ac.uk/9325/1/IET%20Communications%20-%202024%20Improved%205G%20network%20slicing%20for%20enhanced%20QoS%20against%20attack%20in%20SDN%20environment%20using.pdf Abood, Mohammed Salah, Hua, Wang, Virdee, Bal Singh, He, Dongxuan, Fathy, Maha, Yusuf, Abdulganiyu Abdu, Jamal, Omar, Elwi, Taha A., Alibakhshikenari, Mohammad, Kouhalvandi, Lida and Ahmad, Ashfaq (2023) Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning. IET Communications. ISSN 1751-8636 https://doi.org/10.1049/cmu2.12735 10.1049/cmu2.12735 |
spellingShingle | 600 Technology 620 Engineering & allied operations Abood, Mohammed Salah Hua, Wang Virdee, Bal Singh He, Dongxuan Fathy, Maha Yusuf, Abdulganiyu Abdu Jamal, Omar Elwi, Taha A. Alibakhshikenari, Mohammad Kouhalvandi, Lida Ahmad, Ashfaq Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning |
title | Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning |
title_full | Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning |
title_fullStr | Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning |
title_full_unstemmed | Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning |
title_short | Improved 5G network slicing for enhanced QoS against attack in SDN environment using deep learning |
title_sort | improved 5g network slicing for enhanced qos against attack in sdn environment using deep learning |
topic | 600 Technology 620 Engineering & allied operations |
url | https://repository.londonmet.ac.uk/9325/1/IET%20Communications%20-%202024%20Improved%205G%20network%20slicing%20for%20enhanced%20QoS%20against%20attack%20in%20SDN%20environment%20using.pdf |
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