Federated Learning-Assisted Optimization of Mobile Transmission with Digital Twins
Mohammad Heydari, Terence D. Todd, Dongmei Zhao, George Karakostas

TL;DR
This paper introduces a federated learning-based framework that optimizes mobile transmission scheduling using digital twins, ensuring privacy while achieving efficient data transfer and resource utilization.
Contribution
It presents the first real-time federated optimization framework for private, privacy-preserving transmission scheduling using digital twins and dependent rounding techniques.
Findings
Achieves consistent makespan reductions in transmission scheduling.
Maintains near-zero bandwidth and energy violations.
Operates with millisecond-order end-to-end runtime.
Abstract
A Digital Twin (DT) may protect information that is considered private to its associated physical system. For a mobile device, this may include its mobility profile, recent location(s), and experienced channel conditions. Online schedulers, however, typically use this type of information to perform tasks such as shared bandwidth and channel time slot assignments. In this paper, we consider three transmission scheduling problems with energy constraints, where such information is needed, and yet must remain private: minimizing total transmission time when (i) fixed-power or (ii) fixed-rate time slotting with power control is used, and (iii) maximizing the amount of data uploaded in a fixed time period. Using a real-time federated optimization framework, we show how the scheduler can iteratively interact only with the DTs to produce global fractional solutions to these problems, without…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Age of Information Optimization · IoT Networks and Protocols
