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Title Developing An Integrated Framework For Securing Internet Of Things Traffic In Smart Cities Using Machine Learning Techniques
ID_Doc 19430
Authors Alhanaya M.; Al-Shqeerat K.
Year 2023
Published Applied Sciences (Switzerland), 13, 16
DOI http://dx.doi.org/10.3390/app13169476
Abstract Internet of Things technology opens the horizon to a broader scope of intelligent applications in smart cities. However, the massive amount of traffic exchanged among devices may cause security risks, especially when devices are compromised or vulnerable to cyberattack. An intrusion detection system is the most powerful tool to detect unauthorized attempts to access smart systems. It identifies malicious and benign traffic by analyzing network traffic. In most cases, only a fraction of network traffic can be considered malicious. As a result, it is difficult for an intrusion detection system to detect attacks at high detection rates while maintaining a low false alarm rate. This work proposes an integrated framework to detect suspicious traffic to address secure data communication in smart cities. This paper presents an approach to developing an intrusion detection system to detect various attack types. It can be carried out by implementing a Principal Component Analysis method that eliminates redundancy and reduces system dimensionality. Furthermore, the proposed model shows how to improve intrusion detection system performance by implementing an ensemble model. © 2023 by the authors.
Author Keywords ensemble classifier; Internet of Things; intrusion detection system; machine learning; Principal Component Analysis


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