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Abstract

A new degree of connectedness and interaction has been introduced by the developmentof 5G networks. By dividing a physical network into several logical networks,5G network slicing is a special feature that gives network operators the ability toallocate specific resources and services to various applications and customers. However,5G network slicing is susceptible to cyberattacks, particularly Denial-of-Service(DoS) or Distributed Denial-of-Service (DDoS) attacks, just like any other network.Such attacks can have a significant negative effect on network performance, degradingservices and reducing the availability of slices.

The primary objective of this thesis is to examine the impact of DoS/DDoS attackson 5G network slicing and their potential to disrupt the performance of legitimateusers and slice availability. Additionally, a novel dataset specifically tailored toDoS/DDoS attacks in 5G network slicing is generated, as there is no available datasetbased on a 5G network slice. Through extensive research, key features relevant toDoS/DDoS attacks are identified and prioritized. To categorize and detect differenttypes of DoS/DDoS attacks, two deep learning techniques, namely the convolutionalneural network (CNN) and the Bidirectional Long Short-Term Memory (BLSTM)models, are employed. These models not only utilize the newly created dataset butalso enable comparison with existing datasets to assess their effectiveness.

This thesis emphasizes how crucial it is to create strong security measures to guardagainst DoS/DDoS attacks on 5G network slicing. A step in the right direction towardreaching this goal is the construction of a deep learning model for the classification,detection, and production of a new dataset specifically for 5G network slicing. Tokeep enhancing the security and stability of 5G network slicing, more study in thisarea will be required.

The results indicate that the proposed models have a high accuracy rate of 99.96%in distinguishing different types of DoS/DDoS attacks within the networking sliceenvironment. This achievement is noteworthy as it pertains to a novel context. Additionally,the newly developed models exhibit comparable performance in terms ofother confusion metrics. To verify the research outcome, some well-known data setsare used to show the results.

Details

Title
Detection of DoS and DDoS Attacks on 5G Network Slices Using Deep Learning Approach
Author
Khan, Md. Sajid
Publication year
2023
Publisher
ProQuest Dissertations & Theses
ISBN
9798382642765
Source type
Dissertation or Thesis
Language of publication
English
ProQuest document ID
3059443054
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.