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HFedMS: Heterogeneous Federated Learning With Memorable Data Semantics in Industrial Metaverse | IEEE Journals & Magazine | IEEE Xplore

HFedMS: Heterogeneous Federated Learning With Memorable Data Semantics in Industrial Metaverse


Abstract:

Federated Learning (FL), as a rapidly evolving privacy-preserving collaborative machine learning paradigm, is a promising approach to enable edge intelligence in the emer...Show More

Abstract:

Federated Learning (FL), as a rapidly evolving privacy-preserving collaborative machine learning paradigm, is a promising approach to enable edge intelligence in the emerging Industrial Metaverse. Even though many successful use cases have proved the feasibility of FL in theory, in the industrial practice of Metaverse, the problems of non-independent and identically distributed (non-i.i.d.) data, learning forgetting caused by streaming industrial data, and scarce communication bandwidth remain key barriers to realize practical FL. Facing the above three challenges simultaneously, this article presents a high-performance and efficient system named HFedMS for incorporating practical FL into Industrial Metaverse. HFedMS reduces data heterogeneity through dynamic grouping and training mode conversion (Dynamic Sequential-to-Parallel Training, STP). Then, it compensates for the forgotten knowledge by fusing compressed historical data semantics and calibrates classifier parameters (Semantic Compression and Compensation, SCC). Finally, the network parameters of the feature extractor and classifier are synchronized in different frequencies (Layer-wise Alternative Synchronization Protocol, LASP) to reduce communication costs. These techniques make FL more adaptable to the heterogeneous streaming data continuously generated by industrial equipment, and are also more efficient in communication than traditional methods (e.g., Federated Averaging). Extensive experiments have been conducted on the streamed non-i.i.d. FEMNIST dataset using 368 simulated devices. Numerical results show that HFedMS improves the classification accuracy by at least 6.4% compared with 8 benchmarks and saves both the overall runtime and transfer bytes by up to 98%, proving its superiority in precision and efficiency.
Published in: IEEE Transactions on Cloud Computing ( Volume: 11, Issue: 3, 01 July-Sept. 2023)
Page(s): 3055 - 3069
Date of Publication: 10 March 2023

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I. Introduction

Known as “the successor of mobile Internet,” the concept of Metaverse [1] has attracted growing attention in both academia and industry. As a future interaction paradigm that requires a rich variety of enabling technologies, Metaverse would revolutionize many domains and their applications work. One possible application could be in the field of the Smart Industry, also known as the Industrial Metaverse. In fact, the Industrial Metaverse is said to be the field closest to realizing Metaverse, and there are already some practices in real factories. For example, Nvidia Omniverse 6 allows BMW to integrate its brick-and-mortar car factory with Virtual Reality (VR), Artificial Intelligence (AI), and robotics to improve its operation precision and flexibility.

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