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Cyber intrusion detection system based on a multiobjective binary bat algorithm for feature selection and enhanced bat algorithm for parameter optimization in neural networks

Ghanem, Waheed Ali H. M. and Ahmed Ghaleb, Sanaa Abduljabbar and Jantan, Aman and Nasser, Abdullah B. and Saleh, Sami Abdulla Mohsen and Ngah, Amir and Che Alhadi, Arifah and Arshad, Humaira and Saad, Abdul-Malik H. Y. and Omolara, Abiodun Esther and El-Ebiary, Yousef A. Baker and Abiodun, Oludare Isaac (2022) Cyber intrusion detection system based on a multiobjective binary bat algorithm for feature selection and enhanced bat algorithm for parameter optimization in neural networks. IEEE Access, 10 (NA). pp. 76318-76339. ISSN 2169-3536

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Official URL: http://dx.doi.org/10.1109/ACCESS.2022.3192472

Abstract

The staggering development of cyber threats has propelled experts, professionals and specialists in the field of security into the development of more dependable protection systems, including effective intrusion detection system (IDS) mechanisms which are equipped for boosting accurately detected threats and limiting erroneously detected threats simultaneously. Nonetheless, the proficiency of the IDS framework depends essentially on extracted features from network traffic and an effective classifier of the traffic into abnormal or normal traffic. The prime impetus of this study is to increase the performance of the IDS on networks by building a two-phase framework to reinforce and subsequently enhance detection rate and diminish the rate of false alarm. The initial stage utilizes the developed algorithm of a proficient wrapper-approach-based feature selection which is created on a multi-objective BAT algorithm (MOBBAT). The subsequent stage utilizes the features obtained from the initial stage to categorize the traffic based on the newly upgraded BAT algorithm (EBAT) for training multilayer perceptron (EBATMLP), to improve the IDS performance. The resulting methodology is known as the (MOB-EBATMLP). The efficiency of our proposition has been assessed by utilizing the mainstream benchmarked datasets: NLS-KDD, ISCX2012, UNSW-NB15, KDD CUP 1999, and CICIDS2017 which are established as standard datasets for evaluating IDS. The outcome of our experimental analysis demonstrates a noteworthy advancement in network IDS above other techniques.

Item Type:Article
Uncontrolled Keywords:bat algorithm (BAT), feature selection (FS), Intrusion detection system (IDS), metaheuristic algorithm (MA), multi-objective optimization (MOO), multilayer perceptron (MLP)
Subjects:T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions:Electrical Engineering
ID Code:104411
Deposited By: Widya Wahid
Deposited On:04 Feb 2024 09:54
Last Modified:04 Feb 2024 09:54

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