Litcius/Paper detail

Cross-Layer Federated Learning for Lightweight IoT Intrusion Detection Systems

Suzan Hajj, Joseph Azar, Jacques Bou Abdo, Jacques Demerjian, Christophe Guyeux, Abdallah Makhoul, Dominique Ginhac

2023Sensors28 citationsDOIOpen Access PDF

Abstract

With the proliferation of IoT devices, ensuring the security and privacy of these devices and their associated data has become a critical challenge. In this paper, we propose a federated sampling and lightweight intrusion-detection system for IoT networks that use K-meansfor sampling network traffic and identifying anomalies in a semi-supervised way. The system is designed to preserve data privacy by performing local clustering on each device and sharing only summary statistics with a central aggregator. The proposed system is particularly suitable for resource-constrained IoT devices such as sensors with limited computational and storage capabilities. We evaluate the system's performance using the publicly available NSL-KDD dataset. Our experiments and simulations demonstrate the effectiveness and efficiency of the proposed intrusion-detection system, highlighting the trade-offs between precision and recall when sharing statistics between workers and the coordinator. Notably, our experiments show that the proposed federated IDS can increase the true-positive rate up to 10% when the workers and the coordinator collaborate.

Topics & Concepts

Computer scienceIntrusion detection systemNews aggregatorCluster analysisData miningData sharingComputer networkInternet of ThingsApplication layerDistributed computingReal-time computingArtificial intelligenceEmbedded systemWorld Wide WebOperating systemMedicinePathologySoftware deploymentAlternative medicineNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingAnomaly Detection Techniques and Applications