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2024 | OriginalPaper | Buchkapitel

Lightweight Malicious Packet Classifier for IoT Networks

verfasst von : Seyedsina Nabavirazavi, S. S. Iyengar, Naveen Kumar Chaudhary

Erschienen in: Information Security, Privacy and Digital Forensics

Verlag: Springer Nature Singapore

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Abstract

Although the Internet of Things (IoT) devices simplify and automate everyday tasks, they also introduce a tremendous amount of security flaws. The current insufficient security measures for smart device protection make IoT devices a potential victim of breaking into a secure infrastructure. This research proposes an on-the-fly intrusion detection system (IDS) that applies machine learning (ML) to detect network-based cyber-attacks on IoT networks. A lightweight ML model is trained on network traffic to defer benign packets from normal ones. The goal is to demonstrate that lightweight machine learning models such as decision trees (in contrast with deep neural networks) are applicable for intrusion detection achieving high accuracy. As this model is lightweight, it could be easily employed in IoT networks to classify packets on-the-fly, after training and evaluation. We compare our lightweight model with a more complex one and demonstrate that it could be as accurate.

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Literatur
1.
Zurück zum Zitat Amouri A, Alaparthy VT, Morgera SD (2018) Cross layer-based intrusion detection based on network behavior for IoT. In: 2018 IEEE 19th wireless and microwave technology conference (WAMICON), pp 1–4 Amouri A, Alaparthy VT, Morgera SD (2018) Cross layer-based intrusion detection based on network behavior for IoT. In: 2018 IEEE 19th wireless and microwave technology conference (WAMICON), pp 1–4
4.
Zurück zum Zitat Bilge L, Kirda E, Kruegel C, Balduzzi M (2011) Exposure: finding malicious domains using passive DNS analysis Bilge L, Kirda E, Kruegel C, Balduzzi M (2011) Exposure: finding malicious domains using passive DNS analysis
6.
Zurück zum Zitat Cao Y, Zhang L, Zhao X, Jin K, Chen Z (2022) An intrusion detection method for industrial control system based on machine learning. Information 13(7):322CrossRef Cao Y, Zhang L, Zhao X, Jin K, Chen Z (2022) An intrusion detection method for industrial control system based on machine learning. Information 13(7):322CrossRef
8.
Zurück zum Zitat Kruegel C, Toth T (2003) Using decision trees to improve signature-based intrusion detection. In: Proceedings of the 6th International workshop on the recent advances in intrusion detection (RAID’2003), LNCS vol 2820. Springer Verlag, pp 173–191 Kruegel C, Toth T (2003) Using decision trees to improve signature-based intrusion detection. In: Proceedings of the 6th International workshop on the recent advances in intrusion detection (RAID’2003), LNCS vol 2820. Springer Verlag, pp 173–191
10.
Zurück zum Zitat Sarhan M, Layeghy S, Moustafa N, Gallagher M, Portmann M (2022) Feature extraction for machine learning-based intrusion detection in IoT networks. Digital Commun Netw Sarhan M, Layeghy S, Moustafa N, Gallagher M, Portmann M (2022) Feature extraction for machine learning-based intrusion detection in IoT networks. Digital Commun Netw
11.
Zurück zum Zitat Shukla P (2017) Ml-ids: a machine learning approach to detect wormhole attacks in internet of things. In: 2017 Intelligent systems conference (IntelliSys) pp 234–240 Shukla P (2017) Ml-ids: a machine learning approach to detect wormhole attacks in internet of things. In: 2017 Intelligent systems conference (IntelliSys) pp 234–240
12.
Zurück zum Zitat Soltani M, Ousat B, Siavoshani MJ, Jahangir AH (2021) An adaptable deep learning-based intrusion detection system to zero-day attacks. arXiv preprint arXiv:2108.09199 Soltani M, Ousat B, Siavoshani MJ, Jahangir AH (2021) An adaptable deep learning-based intrusion detection system to zero-day attacks. arXiv preprint arXiv:​2108.​09199
13.
Zurück zum Zitat Yu T, Sekar V, Seshan S, Agarwal Y, Xu C (2015) Handling a trillion (unfixable) flaws on a billion devices: rethinking network security for the internet-of-things. In: Proceedings of HotNets, 5p. Philadelphia, PA Yu T, Sekar V, Seshan S, Agarwal Y, Xu C (2015) Handling a trillion (unfixable) flaws on a billion devices: rethinking network security for the internet-of-things. In: Proceedings of HotNets, 5p. Philadelphia, PA
Metadaten
Titel
Lightweight Malicious Packet Classifier for IoT Networks
verfasst von
Seyedsina Nabavirazavi
S. S. Iyengar
Naveen Kumar Chaudhary
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-5091-1_11

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