Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments

Detalhes bibliográficos
Autor(a) principal: Kaliyaperumal, Kalaivani
Data de Publicação: 2022
Outros Autores: Murugaiyan, Chinnadurai, Perumal, Deepan, Jayaraman, Ganesh, Samikannu, Kannan
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Acta scientiarum. Technology (Online)
Texto Completo: http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/60551
Resumo: Decentralized architecture known as fog computing is situated between the cloud and data-producing devices. It acts as a conduit between cloud services and IoT devices. In order to reduce latency, fog computing can handle a significant amount of computation for time-sensitive IoT applications. The Fog layer is simultaneously vulnerable to numerous assaults. To defend the fog nodes from attacks, fog computing paradigms may be suited for deep learning-based intrusion detection systems (IDS). In this paper, a combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection using Random forests is proposed for Fog Computing Environments by using two deep learning models of traditional CNN and IDS-AlexNet model called Ensemble CNN-IDS with Random Forest and showed this model gives high accuracy of attack detection. The respective model implementations demonstrated on the UNSW-NB15 dataset that consists of 9 classes of attacks namely Fuzzers, Analysis, Backdoors, DoS, Exploits, Generic, Reconnaissance, Shellcodes and Worms. The proposed combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection for intrusions detection is shown to be accurate and efficient by using different classifiers. Our proposed model provides high the accuracy in attack detection of about 97.5% that it outperformed various other traditional and recent models.
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spelling Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing EnvironmentsCombined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environmentsfog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15Decentralized architecture known as fog computing is situated between the cloud and data-producing devices. It acts as a conduit between cloud services and IoT devices. In order to reduce latency, fog computing can handle a significant amount of computation for time-sensitive IoT applications. The Fog layer is simultaneously vulnerable to numerous assaults. To defend the fog nodes from attacks, fog computing paradigms may be suited for deep learning-based intrusion detection systems (IDS). In this paper, a combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection using Random forests is proposed for Fog Computing Environments by using two deep learning models of traditional CNN and IDS-AlexNet model called Ensemble CNN-IDS with Random Forest and showed this model gives high accuracy of attack detection. The respective model implementations demonstrated on the UNSW-NB15 dataset that consists of 9 classes of attacks namely Fuzzers, Analysis, Backdoors, DoS, Exploits, Generic, Reconnaissance, Shellcodes and Worms. The proposed combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection for intrusions detection is shown to be accurate and efficient by using different classifiers. Our proposed model provides high the accuracy in attack detection of about 97.5% that it outperformed various other traditional and recent models.Decentralized architecture known as fog computing is situated between the cloud and data-producing devices. It acts as a conduit between cloud services and IoT devices. In order to reduce latency, fog computing can handle a significant amount of computation for time-sensitive IoT applications. The Fog layer is simultaneously vulnerable to numerous assaults. To defend the fog nodes from attacks, fog computing paradigms may be suited for deep learning-based intrusion detection systems (IDS). In this paper, a combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection using Random forests is proposed for Fog Computing Environments by using two deep learning models of traditional CNN and IDS-AlexNet model called Ensemble CNN-IDS with Random Forest and showed this model gives high accuracy of attack detection. The respective model implementations demonstrated on the UNSW-NB15 dataset that consists of 9 classes of attacks namely Fuzzers, Analysis, Backdoors, DoS, Exploits, Generic, Reconnaissance, Shellcodes and Worms. The proposed combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection for intrusions detection is shown to be accurate and efficient by using different classifiers. Our proposed model provides high the accuracy in attack detection of about 97.5% that it outperformed various other traditional and recent models.Universidade Estadual De Maringá2022-08-26info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttp://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/6055110.4025/actascitechnol.v45i1.60551Acta Scientiarum. Technology; Vol 45 (2023): Publicação contínua; e60551Acta Scientiarum. Technology; v. 45 (2023): Publicação contínua; e605511806-25631807-8664reponame:Acta scientiarum. Technology (Online)instname:Universidade Estadual de Maringá (UEM)instacron:UEMenghttp://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/60551/751375154708Copyright (c) 2023 Acta Scientiarum. Technologyhttp://creativecommons.org/licenses/by/4.0info:eu-repo/semantics/openAccessKaliyaperumal, KalaivaniMurugaiyan, Chinnadurai Perumal, Deepan Jayaraman, Ganesh Samikannu, Kannan 2023-01-31T19:05:01Zoai:periodicos.uem.br/ojs:article/60551Revistahttps://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/indexPUBhttps://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/oai||actatech@uem.br1807-86641806-2563opendoar:2023-01-31T19:05:01Acta scientiarum. Technology (Online) - Universidade Estadual de Maringá (UEM)false
dc.title.none.fl_str_mv Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
title Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
spellingShingle Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
Kaliyaperumal, Kalaivani
fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15
fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15
title_short Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
title_full Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
title_fullStr Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
title_full_unstemmed Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
title_sort Combined Ensemble Intrusion Detection Model using Deep learning with Feature Selection for Fog Computing Environments
author Kaliyaperumal, Kalaivani
author_facet Kaliyaperumal, Kalaivani
Murugaiyan, Chinnadurai
Perumal, Deepan
Jayaraman, Ganesh
Samikannu, Kannan
author_role author
author2 Murugaiyan, Chinnadurai
Perumal, Deepan
Jayaraman, Ganesh
Samikannu, Kannan
author2_role author
author
author
author
dc.contributor.author.fl_str_mv Kaliyaperumal, Kalaivani
Murugaiyan, Chinnadurai
Perumal, Deepan
Jayaraman, Ganesh
Samikannu, Kannan
dc.subject.por.fl_str_mv fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15
fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15
topic fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15
fog computing, deep learning, IDS, CNN, AlexNet, UNSW-NB15
description Decentralized architecture known as fog computing is situated between the cloud and data-producing devices. It acts as a conduit between cloud services and IoT devices. In order to reduce latency, fog computing can handle a significant amount of computation for time-sensitive IoT applications. The Fog layer is simultaneously vulnerable to numerous assaults. To defend the fog nodes from attacks, fog computing paradigms may be suited for deep learning-based intrusion detection systems (IDS). In this paper, a combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection using Random forests is proposed for Fog Computing Environments by using two deep learning models of traditional CNN and IDS-AlexNet model called Ensemble CNN-IDS with Random Forest and showed this model gives high accuracy of attack detection. The respective model implementations demonstrated on the UNSW-NB15 dataset that consists of 9 classes of attacks namely Fuzzers, Analysis, Backdoors, DoS, Exploits, Generic, Reconnaissance, Shellcodes and Worms. The proposed combined Ensemble Intrusion Detection Model using Deep learning with Efficient Feature Selection for intrusions detection is shown to be accurate and efficient by using different classifiers. Our proposed model provides high the accuracy in attack detection of about 97.5% that it outperformed various other traditional and recent models.
publishDate 2022
dc.date.none.fl_str_mv 2022-08-26
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/60551
10.4025/actascitechnol.v45i1.60551
url http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/60551
identifier_str_mv 10.4025/actascitechnol.v45i1.60551
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/60551/751375154708
dc.rights.driver.fl_str_mv Copyright (c) 2023 Acta Scientiarum. Technology
http://creativecommons.org/licenses/by/4.0
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2023 Acta Scientiarum. Technology
http://creativecommons.org/licenses/by/4.0
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Universidade Estadual De Maringá
publisher.none.fl_str_mv Universidade Estadual De Maringá
dc.source.none.fl_str_mv Acta Scientiarum. Technology; Vol 45 (2023): Publicação contínua; e60551
Acta Scientiarum. Technology; v. 45 (2023): Publicação contínua; e60551
1806-2563
1807-8664
reponame:Acta scientiarum. Technology (Online)
instname:Universidade Estadual de Maringá (UEM)
instacron:UEM
instname_str Universidade Estadual de Maringá (UEM)
instacron_str UEM
institution UEM
reponame_str Acta scientiarum. Technology (Online)
collection Acta scientiarum. Technology (Online)
repository.name.fl_str_mv Acta scientiarum. Technology (Online) - Universidade Estadual de Maringá (UEM)
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