Federated Learning-Based Intrusion Detection Systems for Massive IoT

Filippos Pelekoudas-Oikonomou, Parya H. Mirzaee, Waleed Hathal, Georgios Mantas, Jonathan Rodriguez, Haitham Cruickshank, Zhili Sun

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

Abstract

Despite the significant benefits that the 6G-enabled massive Internet of Things (IoT) applications will bring to the economy and society in the coming years, it is expected that the exponential increase in the number and the diversity of IoT devices and connections in the massive IoT ecosystem will raise a plethora of known and unknown security and privacy challenges for these applications in the 6G era. Consequently, novel security solutions effectively protecting massive IoT applications from future adversaries, while taking into consideration the resource-constrained characteristics of the massive IoT ecosystem and the stringent network performance and privacy-preserving requirements of these applications, are critical for their acceptance and wide adoption in the upcoming 6G era. In this context, Federated Learning (FL)-based intrusion detection is a promising solution for effective intrusion detection in the massive IoT ecosystem, as it scales well with the massive growth of resource-constrained IoT devices and the wide geographical spread of generated IoT data across wide-area IoT networks. In addition, the FL approach enables local model training at each client based on its locally available training dataset instead of sending it to a remote central server (i.e. centralized intrusion detection), which may bring single-point failure risks and compromise the privacy of the dataset. Furthermore, the aggregation of locally trained models, supported by FL, allows the quick development of accurate models even for devices generating only few training data. Thus, this chapter is focused on the investigation of existing FL-based Intrusion Detection Systems (FL-based IDSs) in order to provide a roadmap to support the design and development of effective, efficient, and privacy-preserving IDSs for protecting the emerging disruptive massive IoT applications in the 6G era.

Original languageEnglish
Title of host publicationSecurity and Privacy for 6G Massive IoT
EditorsGeorgios Mantas, Firooz Saghezchi, Jonathan Rodriguez, Victor Sucasas
PublisherWiley-Blackwell Publishing Ltd
Chapter4
Pages101-128
Number of pages28
ISBN (Electronic)9781119988007
ISBN (Print)9781119987970
DOIs
Publication statusPublished - 13 Dec 2024

Keywords

  • Federated Learning
  • Internet of Things
  • Intrusion Detection System
  • Machine learning techniques
  • Massive network scale
  • Model aggregation algorithms
  • Model aggregation approaches

Cite this