Optimizing Wireless Resource Management and Synchronization in Digital Twin Networks
Hanzhi Yu, Yuchen Liu, Zhaohui Yang, Haijian Sun, Mingzhe Chen

TL;DR
This paper presents an optimization framework for resource management and synchronization in digital twin networks, balancing spectrum efficiency and DNT accuracy through a novel GRU and VDN-based algorithm.
Contribution
It introduces a new method combining GRUs and VDN to optimize resource allocation and synchronization in digital twin networks, improving data rates and DNT accuracy.
Findings
Up to 28.96% improvement in data rate and DNT accuracy.
Effective balance between spectrum resource use and DNT synchronization.
Enhanced prediction accuracy of the physical network status.
Abstract
In this paper, we investigate an accurate synchronization between a physical network and its digital network twin (DNT), which serves as a virtual representation of the physical network. The considered network includes a set of base stations (BSs) that must allocate its limited spectrum resources to serve a set of users while also transmitting its partially observed physical network information to a cloud server to generate the DNT. Since the DNT can predict the physical network status based on its historical status, the BSs may not need to send their physical network information at each time slot, allowing them to conserve spectrum resources to serve the users. However, if the DNT does not receive the physical network information of the BSs over a large time period, the DNT's accuracy in representing the physical network may degrade. To this end, each BS must decide when to send the…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Software-Defined Networks and 5G · Network Time Synchronization Technologies
MethodsGated Recurrent Unit · Balanced Selection · Sparse Evolutionary Training
