NILGSPApr 22, 2024

Mapping Wireless Networks into Digital Reality through Joint Vertical and Horizontal Learning

arXiv:2404.14497v18 citationsh-index: 262024 IFIP Networking Conference (IFIP Networking)
Originality Incremental advance
AI Analysis

This addresses the need for flexible management and efficient deployment in complex wireless networks for network operators and researchers, though it appears incremental by building on existing digital twin concepts with a specific mapping methodology.

The paper tackles the problem of creating detailed digital twins for complex 5G+ wireless networks by introducing VH-Twin, a framework that uses vertical and horizontal twinning stages with periodic clustering to map network infrastructure into virtual representations, achieving effective construction, deployment, and maintenance of network digital twins as verified through real-world cellular data experiments.

In recent years, the complexity of 5G and beyond wireless networks has escalated, prompting a need for innovative frameworks to facilitate flexible management and efficient deployment. The concept of digital twins (DTs) has emerged as a solution to enable real-time monitoring, predictive configurations, and decision-making processes. While existing works primarily focus on leveraging DTs to optimize wireless networks, a detailed mapping methodology for creating virtual representations of network infrastructure and properties is still lacking. In this context, we introduce VH-Twin, a novel time-series data-driven framework that effectively maps wireless networks into digital reality. VH-Twin distinguishes itself through complementary vertical twinning (V-twinning) and horizontal twinning (H-twinning) stages, followed by a periodic clustering mechanism used to virtualize network regions based on their distinct geological and wireless characteristics. Specifically, V-twinning exploits distributed learning techniques to initialize a global twin model collaboratively from virtualized network clusters. H-twinning, on the other hand, is implemented with an asynchronous mapping scheme that dynamically updates twin models in response to network or environmental changes. Leveraging real-world wireless traffic data within a cellular wireless network, comprehensive experiments are conducted to verify that VH-Twin can effectively construct, deploy, and maintain network DTs. Parametric analysis also offers insights into how to strike a balance between twinning efficiency and model accuracy at scale.

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