Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection

The network traffic classification is essential in identifying and categorizing the network traffic data packets in the network transmission. The network traffic transmission is effectively managed and prioritized using Quality of Service (QoS). The Differential Services Code Point within the Differ...

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Main Authors: Ahmed Khan, Fazeel, Abubakar, Adamu
Format: Article
Language:English
Published: Penerbit UTM Press 2024
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Online Access:http://irep.iium.edu.my/116116/1/2_438_IJICVOL14NO2DECEMBER2024.pdf
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spelling my.iium.irep.1161162024-11-26T08:57:40Z http://irep.iium.edu.my/116116/ Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection Ahmed Khan, Fazeel Abubakar, Adamu Q300 Cybernetics The network traffic classification is essential in identifying and categorizing the network traffic data packets in the network transmission. The network traffic transmission is effectively managed and prioritized using Quality of Service (QoS). The Differential Services Code Point within the Differentiated Service (DiffServ) field is primarily used inside the Layer 3 encapsulated network IP packets. Since the user generated data is growing rapidly with variety in data such as, streaming, VoIP, online gaming etc. There is a need to have effective prioritization and classification of IP packets for routers to enable the forwarding of such packets including packets having critical data efficiently and with a lower drop rate. This study develops and analyze using neural network-based models for effective classification of data packets using the DSCP header field. The data was gathered using real-time packet capturing tools which were then processed and moved with model development using different deep learning algorithms such as, LSTM, MLP, RNN and Autoencoders. Most of the algorithms got promising results and classify packets based on DSCP accurately. This study will help to advance network packet classification within the network transmission by network administrators to monitor network more efficiently and to avoid malicious activities within the network environment. Penerbit UTM Press 2024-11-25 Article PeerReviewed application/pdf en http://irep.iium.edu.my/116116/1/2_438_IJICVOL14NO2DECEMBER2024.pdf Ahmed Khan, Fazeel and Abubakar, Adamu (2024) Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection. International Journal of Innovative Computing, 14 (2). pp. 15-24. E-ISSN 2180-4370 https://ijic.utm.my/index.php/ijic/issue/view/29
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
topic Q300 Cybernetics
spellingShingle Q300 Cybernetics
Ahmed Khan, Fazeel
Abubakar, Adamu
Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection
description The network traffic classification is essential in identifying and categorizing the network traffic data packets in the network transmission. The network traffic transmission is effectively managed and prioritized using Quality of Service (QoS). The Differential Services Code Point within the Differentiated Service (DiffServ) field is primarily used inside the Layer 3 encapsulated network IP packets. Since the user generated data is growing rapidly with variety in data such as, streaming, VoIP, online gaming etc. There is a need to have effective prioritization and classification of IP packets for routers to enable the forwarding of such packets including packets having critical data efficiently and with a lower drop rate. This study develops and analyze using neural network-based models for effective classification of data packets using the DSCP header field. The data was gathered using real-time packet capturing tools which were then processed and moved with model development using different deep learning algorithms such as, LSTM, MLP, RNN and Autoencoders. Most of the algorithms got promising results and classify packets based on DSCP accurately. This study will help to advance network packet classification within the network transmission by network administrators to monitor network more efficiently and to avoid malicious activities within the network environment.
format Article
author Ahmed Khan, Fazeel
Abubakar, Adamu
author_facet Ahmed Khan, Fazeel
Abubakar, Adamu
author_sort Ahmed Khan, Fazeel
title Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection
title_short Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection
title_full Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection
title_fullStr Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection
title_full_unstemmed Network Traffic Classification Analysis on Differentiated Services Code Point Using Deep Learning Models for Efficient Deep Packet Inspection
title_sort network traffic classification analysis on differentiated services code point using deep learning models for efficient deep packet inspection
publisher Penerbit UTM Press
publishDate 2024
url http://irep.iium.edu.my/116116/1/2_438_IJICVOL14NO2DECEMBER2024.pdf
http://irep.iium.edu.my/116116/
https://ijic.utm.my/index.php/ijic/issue/view/29
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score 13.222552