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FCLA-DT:Federated Continual Learning with Authentication for Distributed Digital Twin-based Industrial IoT
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作者 Yingjie Xia Xuejiao Liu +1 位作者 Yunxiao Zhao Yun Wang 《Journal of Communications and Information Networks》 CSCD 2024年第4期362-373,共12页
Digital twin(DT)technology is currently pervasive in industrial Internet of things(IoT)applications,notably in predictive maintenance scenarios.Prevailing digital twin-based predictive maintenance methodologies are co... Digital twin(DT)technology is currently pervasive in industrial Internet of things(IoT)applications,notably in predictive maintenance scenarios.Prevailing digital twin-based predictive maintenance methodologies are constrained by a narrow focus on singular physical modeling paradigms,impeding comprehensive analysis of diverse factory data at scale.This paper introduces an improved method,federated continual learning with authentication for distributed digital twin-based industrial IoT(FCLA-DT).This decentralized strategy ensures the continual learning capability vital for adaptive and real-time decision-making in complex industrial predictive maintenance systems.An authentication scheme based on group signature is introduced to enable the verification of digital twin identities during inter-twin collaborations,avoiding unauthorized access and potential model theft.Security analysis shows that FCLA-DT can enable numerous nodes to collaborate learning without compromising individual twin privacy,thereby ensuring group authentication in the cooperative distributed industrial IoT.Performance analysis shows that FCLA-DT outperforms traditional federated learning methods with over 95% fault diagnosis accuracy and ensures the privacy and authentication of digital twins in multi-client task learning. 展开更多
关键词 federated continual learning AUTHENTICATION group signature digital twin industrial Internet of things
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