A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT

Optimizing digital twins in the Industrial Internet of Things (IIoT) requires secure and adaptable AI models. The IIoT enables digital twins, virtual replicas of physical assets, to improve real-time decision-making, but challenges remain in trust, data security, and model accuracy. This paper prese...

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Main Authors: Innocent Boakye Ababio, Jan Bieniek, Mohamed Rahouti, Thaier Hayajneh, Mohammed Aledhari, Dinesh C. Verma, Abdellah Chehri
Format: Article
Language:English
Published: MDPI AG 2025-01-01
Series:Future Internet
Subjects:
Online Access:https://www.mdpi.com/1999-5903/17/1/13
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author Innocent Boakye Ababio
Jan Bieniek
Mohamed Rahouti
Thaier Hayajneh
Mohammed Aledhari
Dinesh C. Verma
Abdellah Chehri
author_facet Innocent Boakye Ababio
Jan Bieniek
Mohamed Rahouti
Thaier Hayajneh
Mohammed Aledhari
Dinesh C. Verma
Abdellah Chehri
author_sort Innocent Boakye Ababio
collection DOAJ
description Optimizing digital twins in the Industrial Internet of Things (IIoT) requires secure and adaptable AI models. The IIoT enables digital twins, virtual replicas of physical assets, to improve real-time decision-making, but challenges remain in trust, data security, and model accuracy. This paper presents a novel framework combining blockchain technology and federated learning (FL) to address these issues. By deploying AI models on edge devices and using FL, data privacy is maintained while enabling collaboration across industrial assets. Blockchain ensures secure data management and transparency, while explainable AI (XAI) enhances interpretability. The framework improves transparency, control, security, privacy, and scalability for self-optimizing digital twins in IIoT. A real-world evaluation demonstrates the framework’s effectiveness in enhancing security, explainability, and optimization, offering improved efficiency and reliability for industrial operations.
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publishDate 2025-01-01
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series Future Internet
spelling doaj-art-1e15fa81b80c49b2a9aba57e6a29f0972025-01-24T13:33:33ZengMDPI AGFuture Internet1999-59032025-01-011711310.3390/fi17010013A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoTInnocent Boakye Ababio0Jan Bieniek1Mohamed Rahouti2Thaier Hayajneh3Mohammed Aledhari4Dinesh C. Verma5Abdellah Chehri6Department of Computer and Information Science, Fordham University, New York, NY 10023, USADepartment of Computer and Information Science, Fordham University, New York, NY 10023, USADepartment of Computer and Information Science, Fordham University, New York, NY 10023, USADepartment of Computer and Information Science, Fordham University, New York, NY 10023, USADepartment of Data Science, University of North Texas, Denton, TX 76207, USAIBM TJ Watson Research Center, P.O. Box 218, Yorktown Heights, NY 10598, USADepartment of Mathematics and Computer Science, Royal Military College of Canada, Kingston, ON K7K 7B4, CanadaOptimizing digital twins in the Industrial Internet of Things (IIoT) requires secure and adaptable AI models. The IIoT enables digital twins, virtual replicas of physical assets, to improve real-time decision-making, but challenges remain in trust, data security, and model accuracy. This paper presents a novel framework combining blockchain technology and federated learning (FL) to address these issues. By deploying AI models on edge devices and using FL, data privacy is maintained while enabling collaboration across industrial assets. Blockchain ensures secure data management and transparency, while explainable AI (XAI) enhances interpretability. The framework improves transparency, control, security, privacy, and scalability for self-optimizing digital twins in IIoT. A real-world evaluation demonstrates the framework’s effectiveness in enhancing security, explainability, and optimization, offering improved efficiency and reliability for industrial operations.https://www.mdpi.com/1999-5903/17/1/13blockchaindigital twinsfederated learningIndustrial Internet of Things
spellingShingle Innocent Boakye Ababio
Jan Bieniek
Mohamed Rahouti
Thaier Hayajneh
Mohammed Aledhari
Dinesh C. Verma
Abdellah Chehri
A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT
Future Internet
blockchain
digital twins
federated learning
Industrial Internet of Things
title A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT
title_full A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT
title_fullStr A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT
title_full_unstemmed A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT
title_short A Blockchain-Assisted Federated Learning Framework for Secure and Self-Optimizing Digital Twins in Industrial IoT
title_sort blockchain assisted federated learning framework for secure and self optimizing digital twins in industrial iot
topic blockchain
digital twins
federated learning
Industrial Internet of Things
url https://www.mdpi.com/1999-5903/17/1/13
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