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Main Authors: Bouferroum, Aymen, Loscri, Valeria, Benslimane, Abderrahim
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.24111
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author Bouferroum, Aymen
Loscri, Valeria
Benslimane, Abderrahim
author_facet Bouferroum, Aymen
Loscri, Valeria
Benslimane, Abderrahim
contents The Industrial Internet of Things (IIoT) introduces significant security challenges as resource-constrained devices become increasingly integrated into critical industrial processes. Existing security approaches typically address threats at a single network layer, often relying on expensive hardware and remaining confined to simulation environments. In this paper, we present the research framework and contributions of our doctoral thesis, which aims to develop a lightweight, Machine Learning (ML)-based security framework for IIoT environments. We first describe our adoption of the Tm-IIoT trust model and the Hybrid IIoT (H-IIoT) architecture as foundational baselines, then introduce the Trust Convergence Acceleration (TCA) approach, our primary contribution that integrates ML to predict and mitigate the impact of degraded network conditions on trust convergence, achieving up to a 28.6% reduction in convergence time while maintaining robustness against adversarial behaviors. We then propose a real-world deployment architecture based on affordable, open-source hardware, designed to implement and extend the security framework. Finally, we outline our ongoing research toward multi-layer attack detection, including physical-layer threat identification and considerations for robustness against adversarial ML attacks.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Toward a Multi-Layer ML-Based Security Framework for Industrial IoT
Bouferroum, Aymen
Loscri, Valeria
Benslimane, Abderrahim
Cryptography and Security
Machine Learning
The Industrial Internet of Things (IIoT) introduces significant security challenges as resource-constrained devices become increasingly integrated into critical industrial processes. Existing security approaches typically address threats at a single network layer, often relying on expensive hardware and remaining confined to simulation environments. In this paper, we present the research framework and contributions of our doctoral thesis, which aims to develop a lightweight, Machine Learning (ML)-based security framework for IIoT environments. We first describe our adoption of the Tm-IIoT trust model and the Hybrid IIoT (H-IIoT) architecture as foundational baselines, then introduce the Trust Convergence Acceleration (TCA) approach, our primary contribution that integrates ML to predict and mitigate the impact of degraded network conditions on trust convergence, achieving up to a 28.6% reduction in convergence time while maintaining robustness against adversarial behaviors. We then propose a real-world deployment architecture based on affordable, open-source hardware, designed to implement and extend the security framework. Finally, we outline our ongoing research toward multi-layer attack detection, including physical-layer threat identification and considerations for robustness against adversarial ML attacks.
title Toward a Multi-Layer ML-Based Security Framework for Industrial IoT
topic Cryptography and Security
Machine Learning
url https://arxiv.org/abs/2603.24111