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Detecting Black Hole Attack using Support Vector Machine with XGBoosting in Mobile Ad-Hoc Networks

Anhar Al Madani et al · MMU Press · 2025

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Mobile Ad-Hoc Networks (MANET) is a type of ad-hoc networks which use less infrastructure, that means the nodes in this network forward the massages without the need of infrastructure such as routers, switches etc. One of the most used attacks that can affect MANET performance is the black hole attack. This attack leads to dropping the packets that means these packets will never arrive and it will decrease the delivery ratio for the packets. This attack is a real problem as the sender is not informed that the data has not reached the intended receiver. The main goal of this study is to propose a solution for detecting black hole attacks using Extreme Gradient Boosting (XGBoost) based on a Support Vector Machine (SVM), the system for detection seeks to examine network traffic and spot anomalies by examining node activities. Attacking nodes in black hole situations exhibit specific behavioural traits that set them apart from other nodes, the traffic under a black hole attack is created using an NS-2 simulator to test the effectiveness of this strategy, and the malicious node is then identified based on the classification of the traffic into malicious and non-malicious. The results of the proposed technique outperformed the existing machine learning techniques such as Neural Network (NN), SVM, k-Nearest Neighbors (KNN), Decision Tree (DT), Logistic Regression (LR), Random Forest (RF), AdaBoost-SVM in terms of accuracy score as it achieved 98.67% as well as other classification performance measures (Precision, Recall, and F-measure).

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APA 7

al, A. A. M. E. (2025). Detecting Black Hole Attack using Support Vector Machine with XGBoosting in Mobile Ad-Hoc Networks. https://doi.org/10.33093/jiwe.2025.4.2.13

MLA

al, Anhar Al Madani et. "Detecting Black Hole Attack using Support Vector Machine with XGBoosting in Mobile Ad-Hoc Networks." 2025. https://doi.org/10.33093/jiwe.2025.4.2.13.

Chicago

al, Anhar Al Madani et. 2025. "Detecting Black Hole Attack using Support Vector Machine with XGBoosting in Mobile Ad-Hoc Networks.". https://doi.org/10.33093/jiwe.2025.4.2.13.

Harvard

al, A. A. M. E. 2025, Detecting Black Hole Attack using Support Vector Machine with XGBoosting in Mobile Ad-Hoc Networks, MMU Press, available at: https://doi.org/10.33093/jiwe.2025.4.2.13 [Accessed 29 Jun. 2026].

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Título
Detecting Black Hole Attack using Support Vector Machine with XGBoosting in Mobile Ad-Hoc Networks
Autor / colaboradores
Anhar Al Madani et al
Editorial
MMU Press
Año de publicación
2025
ISSN
2821-370X
ISSN
2821-370X
Idioma
eng

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