Fidelity Where it Matters: Site-Specific Nonuniform Refinement for Wireless Digital Twins
Zihao Zhou, Zhaolin Wang, Yuanwei Liu

TL;DR
This paper introduces a task-oriented nonuniform refinement framework for wireless digital twins, focusing on resource-efficient, site-specific fidelity improvements in complex urban environments.
Contribution
It develops a unified refinement framework and an ellipsoid-guided selective refinement algorithm to optimize fidelity allocation for wireless digital twins.
Findings
EGSR significantly improves radio-map fidelity with minimal building refinements.
Refinement priorities are effectively estimated using low-fidelity WDTs.
The approach enhances beamforming and site-specific learning in urban scenarios.
Abstract
Wireless digital twins (WDTs) enable site-specific learning, management, and evaluation in wireless networks. However, constructing and maintaining a high-fidelity WDT over large-scale complex environments can be prohibitively expensive, especially in terms of data acquisition, geometric reconstruction, storage, and ray tracing. To address this issue, a task-oriented nonuniform refinement framework for WDTs is proposed, where limited resources are selectively allocated to the WDT components that matter most to wireless fidelity. Specifically, a unified refinement framework is first developed, which maximizes task-level fidelity under resource constraints through fine-grained component-wise fidelity allocation. This framework is then instantiated for building-level geometry refinement in urban WDTs. It is found that different buildings exhibit highly heterogeneous impacts on wireless…
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