Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning

ABSTRACTIndustry 4.0 refers to a new generation of connected and intelligent factories that is driven by the emergence of new technologies such as artificial intelligence, Cloud computing, Big Data and industrial control systems (ICS) in order to automate all phases of industrial operations. The pre...

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Main Authors: Ahlem Abid, Farah Jemili, Ouajdi Korbaa
Format: Article
Language:English
Published: Taylor & Francis Group 2023-10-01
Series:Journal of Information and Telecommunication
Subjects:
Online Access:https://www.tandfonline.com/doi/10.1080/24751839.2023.2239617
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author Ahlem Abid
Farah Jemili
Ouajdi Korbaa
author_facet Ahlem Abid
Farah Jemili
Ouajdi Korbaa
author_sort Ahlem Abid
collection DOAJ
description ABSTRACTIndustry 4.0 refers to a new generation of connected and intelligent factories that is driven by the emergence of new technologies such as artificial intelligence, Cloud computing, Big Data and industrial control systems (ICS) in order to automate all phases of industrial operations. The presence of connected systems in industrial environments poses a considerable security challenge, moreover with the huge amount of data generated daily, there are complex attacks that occur in seconds and target production lines and their integrity. But, until now, factories do not have all the necessary tools to protect themselves, they mainly use traditional protection. In order to improve industrial control systems in terms of efficiency and response time, the present paper propose a new distributed intrusion detection approach using artificial intelligence methods, Big Data techniques and deployed in a cloud environment. A variety of Machine Learning and Deep Learning algorithms, basically convolutional neural networks (CNN), have been tested to compare performance and choose the most suitable model for the classification. We test the performance of our model by using the industrial dataset SWat.
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spelling doaj.art-e3d439f1c2ec430fbc2bf2c306a8d18c2023-10-27T09:16:26ZengTaylor & Francis GroupJournal of Information and Telecommunication2475-18392475-18472023-10-017451354110.1080/24751839.2023.2239617Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learningAhlem Abid0Farah Jemili1Ouajdi Korbaa2MARS Research Lab LR17ES05, ISITCom, University of Sousse, H. Sousse, TunisiaMARS Research Lab LR17ES05, ISITCom, University of Sousse, H. Sousse, TunisiaMARS Research Lab LR17ES05, ISITCom, University of Sousse, H. Sousse, TunisiaABSTRACTIndustry 4.0 refers to a new generation of connected and intelligent factories that is driven by the emergence of new technologies such as artificial intelligence, Cloud computing, Big Data and industrial control systems (ICS) in order to automate all phases of industrial operations. The presence of connected systems in industrial environments poses a considerable security challenge, moreover with the huge amount of data generated daily, there are complex attacks that occur in seconds and target production lines and their integrity. But, until now, factories do not have all the necessary tools to protect themselves, they mainly use traditional protection. In order to improve industrial control systems in terms of efficiency and response time, the present paper propose a new distributed intrusion detection approach using artificial intelligence methods, Big Data techniques and deployed in a cloud environment. A variety of Machine Learning and Deep Learning algorithms, basically convolutional neural networks (CNN), have been tested to compare performance and choose the most suitable model for the classification. We test the performance of our model by using the industrial dataset SWat.https://www.tandfonline.com/doi/10.1080/24751839.2023.2239617Intrusion detectionindustrial control systemsmachine learningdeep learningtransfer learning
spellingShingle Ahlem Abid
Farah Jemili
Ouajdi Korbaa
Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
Journal of Information and Telecommunication
Intrusion detection
industrial control systems
machine learning
deep learning
transfer learning
title Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
title_full Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
title_fullStr Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
title_full_unstemmed Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
title_short Distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
title_sort distributed deep learning approach for intrusion detection system in industrial control systems based on big data technique and transfer learning
topic Intrusion detection
industrial control systems
machine learning
deep learning
transfer learning
url https://www.tandfonline.com/doi/10.1080/24751839.2023.2239617
work_keys_str_mv AT ahlemabid distributeddeeplearningapproachforintrusiondetectionsysteminindustrialcontrolsystemsbasedonbigdatatechniqueandtransferlearning
AT farahjemili distributeddeeplearningapproachforintrusiondetectionsysteminindustrialcontrolsystemsbasedonbigdatatechniqueandtransferlearning
AT ouajdikorbaa distributeddeeplearningapproachforintrusiondetectionsysteminindustrialcontrolsystemsbasedonbigdatatechniqueandtransferlearning