Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques
This thesis presents a research whose objective is to design an intrusion detection model for Mobile Ad hoc NETworks (MANET). MANET is an autonomous system consisting of a group of mobile nodes with no infrastructure support. The MANET environment is particularly vulnerable because of the characteri...
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التنسيق: | أطروحة |
اللغة: | eng eng |
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2011
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الوصول للمادة أونلاين: | https://etd.uum.edu.my/2540/1/Farhan_Abdel-Fattah_Ahmad_Farhan.pdf https://etd.uum.edu.my/2540/2/1.Farhan_Abdel-Fattah_Ahmad_Farhan.pdf |
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my-uum-etd.25402016-04-27T03:11:03Z Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques 2011-03 Farhan, Farhan Abdel-Fattah Ahmad Md. Dahalin, Zulkhairi Jusoh , Shaidah College of Arts and Sciences (CAS) College of Arts and Sciences TK5101-6720 Telecommunication This thesis presents a research whose objective is to design an intrusion detection model for Mobile Ad hoc NETworks (MANET). MANET is an autonomous system consisting of a group of mobile nodes with no infrastructure support. The MANET environment is particularly vulnerable because of the characteristics of mobile ad hoc networks such as open medium, dynamic topology, distributed cooperation, and constrained capability. Unfortunately, the traditional mechanisms designed for protecting networks are not directly applicable to MANETs without modifications. In the past decades, machine learning methods have been successfully used in several intrusion detection methods because of their ability to discover and detect novel attacks. This research investigates the use of a promising technique from machine learning to designing the most suitable intrusion detection for this challenging network type. The proposed algorithm employs a combined model that uses two different measures (nonconformity metric measures and Local Distance-based Outlier Factor (LDOF)) to improve its detection ability. Moreover, the algorithm can provide a graded confidence that indicates the reliability of the classification. In machine learning algorithm, choosing the most relevant features for each attack is a very important requirement, especially in mobile ad hoc networks where the network topology dynamically changes. Feature selection is undertaken to select the relevant subsets of features to build an efficient prediction model and improve intrusion detection performance by removing irrelevant features. The transductive conformal prediction and outlier detection have been employed for feature selection algorithm. Traditional intrusion detection techniques have had trouble dealing with dynamic environments. In particular, issues such as collects real time attack related audit data and cooperative global detection. Therefore, the researcher is motivated to design a new intrusion detection architecture which involves new detection technique to efficiently detect the abnormalities in the ad hoc networks. The proposed model has distributed and cooperative hierarchical architecture, where nodes communicate with their region gateway node to make decisions. To validate the research, the researcher presents case study using GLOMOSIM simulation platform with AODV ad hoc routing protocols. Various active attacks are implemented. A series of experimental results demonstrate that the proposed intrusion detection model can effectively detect anomalies with low false positive rate, high detection rate and achieve high detection accuracy. 2011-03 Thesis https://etd.uum.edu.my/2540/ https://etd.uum.edu.my/2540/1/Farhan_Abdel-Fattah_Ahmad_Farhan.pdf application/pdf eng validuser https://etd.uum.edu.my/2540/2/1.Farhan_Abdel-Fattah_Ahmad_Farhan.pdf application/pdf eng public Ph.D. doctoral Universiti Utara Malaysia |
institution |
Universiti Utara Malaysia |
collection |
UUM ETD |
language |
eng eng |
advisor |
Md. Dahalin, Zulkhairi Jusoh , Shaidah |
topic |
TK5101-6720 Telecommunication |
spellingShingle |
TK5101-6720 Telecommunication Farhan, Farhan Abdel-Fattah Ahmad Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques |
description |
This thesis presents a research whose objective is to design an intrusion detection model for Mobile Ad hoc NETworks (MANET). MANET is an autonomous system consisting of a group of mobile nodes with no infrastructure support. The MANET environment is particularly vulnerable because of the characteristics of mobile ad hoc networks such as open medium, dynamic topology, distributed cooperation, and constrained capability. Unfortunately, the traditional
mechanisms designed for protecting networks are not directly applicable to MANETs without modifications. In the past decades, machine learning methods have been successfully used in several intrusion detection methods
because of their ability to discover and detect novel attacks. This research investigates the use of a promising technique from machine learning to designing the most suitable intrusion detection for this challenging network type. The proposed algorithm employs a combined model that uses two different measures (nonconformity metric measures and Local Distance-based Outlier Factor (LDOF)) to improve its detection ability. Moreover, the algorithm can provide a graded confidence that indicates the reliability of the classification. In machine learning algorithm, choosing the most relevant features for each attack is a very important requirement, especially in mobile ad hoc networks where the network topology dynamically changes. Feature selection is undertaken to select the relevant subsets of features to build an efficient prediction model and improve intrusion detection performance by removing irrelevant features. The transductive conformal prediction and outlier detection have been employed for feature selection algorithm. Traditional intrusion detection techniques have had trouble dealing with dynamic environments. In particular, issues such as collects real time attack related audit data and cooperative global detection. Therefore, the researcher is motivated to design a new intrusion detection architecture which involves new detection technique to efficiently detect the abnormalities in the ad hoc networks. The proposed model has distributed and cooperative hierarchical architecture, where nodes communicate with their region gateway node to make decisions. To validate the research, the researcher presents case study using GLOMOSIM simulation platform with AODV ad hoc routing protocols. Various active attacks are implemented. A series of experimental results demonstrate that the proposed intrusion detection model can effectively detect anomalies with low false positive rate, high detection rate and achieve high detection accuracy. |
format |
Thesis |
qualification_name |
Ph.D. |
qualification_level |
Doctorate |
author |
Farhan, Farhan Abdel-Fattah Ahmad |
author_facet |
Farhan, Farhan Abdel-Fattah Ahmad |
author_sort |
Farhan, Farhan Abdel-Fattah Ahmad |
title |
Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques |
title_short |
Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques |
title_full |
Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques |
title_fullStr |
Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques |
title_full_unstemmed |
Intrusion Detection in Mobile Ad Hoc Networks Using Transductive Machine Learning Techniques |
title_sort |
intrusion detection in mobile ad hoc networks using transductive machine learning techniques |
granting_institution |
Universiti Utara Malaysia |
granting_department |
College of Arts and Sciences (CAS) |
publishDate |
2011 |
url |
https://etd.uum.edu.my/2540/1/Farhan_Abdel-Fattah_Ahmad_Farhan.pdf https://etd.uum.edu.my/2540/2/1.Farhan_Abdel-Fattah_Ahmad_Farhan.pdf |
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