Block Hunter Federated Learning for Cyber Threat Hunting in Blockchain-based IIoT Networks

Authors

  • A NAGARAJU Author
  • P.CHARAN TEJA Author

Keywords:

digital world, Internet of Things (IIoT), developed in various industries, notable applications, blockchain-based technologies, Federated Learning (FL), Block Hunter

Abstract

Nowadays, blockchain-based technologies are being developed in various industries to improve data security. In the context of the Industrial Internet of Things (IIoT), a chain- based network is one of the most notable applications of blockchain technology. IIoT devices have become increasingly prevalent in our digital world, especially in support of developing smart factories. Although blockchain is a powerful tool, it is vulnerable to cyber attacks. Detecting anomalies in blockchain-based IIoT networks in smart factories is crucial in protecting networks. and systems from unexpected attacks. In this paper, we use Federated Learning (FL) to build a threat hunting framework called Block Hunter to automatically hunt for attacks in blockchain- based IIoT networks. Block Hunter utilizes a cluster-based architecture for anomaly detection combined with several machine learning models in a federated environment. To the best of our knowledge, Block Hunter is the first federated threat hunting model in IIoT networks that identifies anomalous behavior while preserving privacy. Our results prove the efficiency of the Block Hunter in detecting anomalous activities with high accuracy and minimum required bandwidth.

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Published

05-08-2024

How to Cite

Block Hunter Federated Learning for Cyber Threat Hunting in Blockchain-based IIoT Networks. (2024). International Journal of Information Technology and Computer Engineering, 12(3), 405-412. https://ijitce.org/index.php/ijitce/article/view/690