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Adaptive Federated Learning and Digital Twin for Industrial Internet of Things

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arxiv 2010.13058 v2 pith:XUBAENQO submitted 2020-10-25 cs.LG cs.DC

Adaptive Federated Learning and Digital Twin for Industrial Internet of Things

classification cs.LG cs.DC
keywords learningindustrialfederateddigitalproposedaggregationdevicesdynamic
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Industrial Internet of Things (IoT) enables distributed intelligent services varying with the dynamic and realtime industrial devices to achieve Industry 4.0 benefits. In this paper, we consider a new architecture of digital twin empowered Industrial IoT where digital twins capture the characteristics of industrial devices to assist federated learning. Noticing that digital twins may bring estimation deviations from the actual value of device state, a trusted based aggregation is proposed in federated learning to alleviate the effects of such deviation. We adaptively adjust the aggregation frequency of federated learning based on Lyapunov dynamic deficit queue and deep reinforcement learning, to improve the learning performance under the resource constraints. To further adapt to the heterogeneity of Industrial IoT, a clustering-based asynchronous federated learning framework is proposed. Numerical results show that the proposed framework is superior to the benchmark in terms of learning accuracy, convergence, and energy saving.

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