ROCHE: A Robust and End-to-End Privacy-Preserving Federated Learning Framework for Intrusion Detection in Industrial Internet of Things
Author(s) -
Imtiaz Ali Soomro,
Hamood Ur Rehman,
Syed Jawad Hussain,
Sohaib Latif,
Hana Mujlid,
Syed Muhammad Mohsin,
Carsten Maple
Publication year - 2025
Publication title -
ieee internet of things journal
Language(s) - English
Resource type - Magazines
SCImago Journal Rank - 2.075
H-Index - 97
eISSN - 2327-4662
DOI - 10.1109/jiot.2025.3612944
Subject(s) - computing and processing , communication, networking and broadcast technologies
The Industrial Internet of Things (IIoT) has revolutionized industrial automation, enabling real-time monitoring and intelligent decision-making. However, the increasing connectivity of IIoT devices exposes them to cyber threats, necessitating robust Intrusion Detection Systems (IDS). Traditional centralized IDS solutions face concerns regarding sharing of sensitive data, high computational costs, and communication overhead. Federated Learning (FL) provides a privacypreserving alternative to such centralized systems. However, existing FL-based IDS frameworks may face challenges such as high resource consumption and privacy threats such as gradient leakage from shared updates. To address these challenges, we propose Robust Optimization for Encrypted Federated Learning (ROCHE), a lightweight FL-based IDS optimized for IIoT, ensures data privacy and efficiency. ROCHE uses low-degree polynomial approximations to replace complex activation functions, reducing computational load without significantly impacting accuracy. An adaptive quantization mechanism is utilized to reduce bandwidth consumption while ensuring accurate model convergence. To preserve data privacy during model aggregation, ROCHE integrates symmetric homomorphic encryption, enabling secure model updates while maintaining resilience to user dropout. Comprehensive security analysis and experiments demonstrate that ROCHE outperforms state-of-the-art frameworks. Compared to MiTFed, ROCHE reduces computational overhead by 11% and lowers communication cost by 16%, demonstrating its efficiency in optimizing resource utilization while maintaining robust privacy preservation in FL based IDS. Additionally, ROCHE maintains an average accuracy of over 90% across multiple attack types. Deployment in a cloud-based IIoT environment demonstrates its feasibility, establishing ROCHE as a scalable and efficient IDS for IIoT security.
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