Litcius/Paper detail

Federated Learning for Distributed IIoT Intrusion Detection Using Transfer Approaches

Jiazhen Zhang, Chunbo Luo, Marcus Carpenter, Geyong Min

2022IEEE Transactions on Industrial Informatics84 citationsDOIOpen Access PDF

Abstract

Considering that low-cost and resource-cons- trained sensors coupled inherently could be vulnerable to growing numbers of intrusion threats, industrial Internet-of-Things (IIoT) systems are faced with severe security concerns. Data sharing for building high-performance intrusion detection models is also prohibited due to the sensitivity, privacy, and high value of IIoT data. This article presents an anomaly-based intrusion detection system with federated learning for privacy-preserving machine learning in future IIoT networks. To tackle the urgent issue of training local models with non-independent and identically distributed (non-IID) data, we adopt instance-based transfer learning at local. Furthermore, to boost the performance of this system for IIoT intrusion detection, we propose a rank aggregation algorithm with a weighted voting approach. The proposed system achieves superior detection performance with 95.97% and 73.70% accuracy for AdaBoost and Random Forest, respectively, outperforming the baseline models by 12.72% and 14.8%.

Topics & Concepts

Computer scienceIntrusion detection systemAdaBoostTransfer of learningMachine learningData miningArtificial intelligenceRandom forestAnomaly detectionSupport vector machineNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingPrivacy-Preserving Technologies in Data