CNN-LSTM: Hybrid deep neural network for network intrusion detection system

Network security becomes indispensable to our daily interactions and networks. As attackers continue to develop new types of attacks and the size of networks continues to grow, the need for an effective intrusion detection system has become critical. Numerous studies implemented machine learning alg...

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Main Authors: Halbouni, Asmaa, Teddy Surya Gunawan, Teddy Surya Gunawan, Habaebi, Mohamed Hadi, Halbouni, Murad, Mira Kartiwi, Mira Kartiwi, Ahmad, Robiah
Format: Article
Language:English
Published: Institute of Electrical and Electronics Engineers Inc. 2022
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Online Access:http://eprints.utm.my/104418/1/RobiahAhmad2022_CNNLSTMHybridDeepNeuralNetwork.pdf
http://eprints.utm.my/104418/
http://dx.doi.org/10.1109/ACCESS.2022.3206425
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Institution: Universiti Teknologi Malaysia
Language: English
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spelling my.utm.1044182024-02-04T09:57:04Z http://eprints.utm.my/104418/ CNN-LSTM: Hybrid deep neural network for network intrusion detection system Halbouni, Asmaa Teddy Surya Gunawan, Teddy Surya Gunawan Habaebi, Mohamed Hadi Halbouni, Murad Mira Kartiwi, Mira Kartiwi Ahmad, Robiah T Technology (General) Network security becomes indispensable to our daily interactions and networks. As attackers continue to develop new types of attacks and the size of networks continues to grow, the need for an effective intrusion detection system has become critical. Numerous studies implemented machine learning algorithms to develop an effective IDS, however, with the advent of deep learning algorithms and artificial neural networks that can generate features automatically without human intervention, researchers began to rely on deep learning. In our research, we took advantage of the Convolutional Neural Network's ability to extract spatial features and the Long Short-Term Memory Network's ability to extract temporal features to create a hybrid intrusion detection system model. We added batch normalization and dropout layers to the model to increase its performance. Based on the binary and multiclass classification, the model was trained using three datasets: CIC-IDS 2017, UNSW-NB15, and WSN-DS. The confusion matrix determines the system's effectiveness, which includes evaluation criteria such as accuracy, precision, detection rate, F1-score, and false alarm rate (FAR). The effectiveness of the proposed model was demonstrated by experimental results showing a high detection rate, high accuracy, and a relatively low FAR. Institute of Electrical and Electronics Engineers Inc. 2022 Article PeerReviewed application/pdf en http://eprints.utm.my/104418/1/RobiahAhmad2022_CNNLSTMHybridDeepNeuralNetwork.pdf Halbouni, Asmaa and Teddy Surya Gunawan, Teddy Surya Gunawan and Habaebi, Mohamed Hadi and Halbouni, Murad and Mira Kartiwi, Mira Kartiwi and Ahmad, Robiah (2022) CNN-LSTM: Hybrid deep neural network for network intrusion detection system. IEEE Access, 10 (NA). pp. 99837-99849. ISSN 2169-3536 http://dx.doi.org/10.1109/ACCESS.2022.3206425 DOI : 10.1109/ACCESS.2022.3206425
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Halbouni, Asmaa
Teddy Surya Gunawan, Teddy Surya Gunawan
Habaebi, Mohamed Hadi
Halbouni, Murad
Mira Kartiwi, Mira Kartiwi
Ahmad, Robiah
CNN-LSTM: Hybrid deep neural network for network intrusion detection system
description Network security becomes indispensable to our daily interactions and networks. As attackers continue to develop new types of attacks and the size of networks continues to grow, the need for an effective intrusion detection system has become critical. Numerous studies implemented machine learning algorithms to develop an effective IDS, however, with the advent of deep learning algorithms and artificial neural networks that can generate features automatically without human intervention, researchers began to rely on deep learning. In our research, we took advantage of the Convolutional Neural Network's ability to extract spatial features and the Long Short-Term Memory Network's ability to extract temporal features to create a hybrid intrusion detection system model. We added batch normalization and dropout layers to the model to increase its performance. Based on the binary and multiclass classification, the model was trained using three datasets: CIC-IDS 2017, UNSW-NB15, and WSN-DS. The confusion matrix determines the system's effectiveness, which includes evaluation criteria such as accuracy, precision, detection rate, F1-score, and false alarm rate (FAR). The effectiveness of the proposed model was demonstrated by experimental results showing a high detection rate, high accuracy, and a relatively low FAR.
format Article
author Halbouni, Asmaa
Teddy Surya Gunawan, Teddy Surya Gunawan
Habaebi, Mohamed Hadi
Halbouni, Murad
Mira Kartiwi, Mira Kartiwi
Ahmad, Robiah
author_facet Halbouni, Asmaa
Teddy Surya Gunawan, Teddy Surya Gunawan
Habaebi, Mohamed Hadi
Halbouni, Murad
Mira Kartiwi, Mira Kartiwi
Ahmad, Robiah
author_sort Halbouni, Asmaa
title CNN-LSTM: Hybrid deep neural network for network intrusion detection system
title_short CNN-LSTM: Hybrid deep neural network for network intrusion detection system
title_full CNN-LSTM: Hybrid deep neural network for network intrusion detection system
title_fullStr CNN-LSTM: Hybrid deep neural network for network intrusion detection system
title_full_unstemmed CNN-LSTM: Hybrid deep neural network for network intrusion detection system
title_sort cnn-lstm: hybrid deep neural network for network intrusion detection system
publisher Institute of Electrical and Electronics Engineers Inc.
publishDate 2022
url http://eprints.utm.my/104418/1/RobiahAhmad2022_CNNLSTMHybridDeepNeuralNetwork.pdf
http://eprints.utm.my/104418/
http://dx.doi.org/10.1109/ACCESS.2022.3206425
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