Score: 1

CommUNext: Deep Learning-Based Cross-Band and Multi-Directional Signal Prediction

Published: November 8, 2025 | arXiv ID: 2511.05860v1

By: Chi-Jui Sung , Fan-Hao Lin , Tzu-Hao Huang and more

Potential Business Impact:

Makes future phones understand signals everywhere.

Business Areas:
Communications Infrastructure Hardware

Sixth-generation (6G) networks are envisioned to achieve full-band cognition by jointly utilizing spectrum resources from Frequency Range~1 (FR1) to Frequency Range~3 (FR3, 7--24\,GHz). Realizing this vision faces two challenges. First, physics-based ray tracing (RT), the standard tool for network planning and coverage modeling, becomes computationally prohibitive for multi-band and multi-directional analysis over large areas. Second, current 5G systems rely on inter-frequency measurement gaps for carrier aggregation and beam management, which reduce throughput, increase latency, and scale poorly as bands and beams proliferate. These limitations motivate a data-driven approach to infer high-frequency characteristics from low-frequency observations. This work proposes CommUNext, a unified deep learning framework for cross-band, multi-directional signal strength (SS) prediction. The framework leverages low-frequency coverage data and crowd-aided partial measurements at the target band to generate high-fidelity FR3 predictions. Two complementary architectures are introduced: Full CommUNext, which substitutes costly RT simulations for large-scale offline modeling, and Partial CommUNext, which reconstructs incomplete low-frequency maps to mitigate measurement gaps in real-time operation. Experimental results show that CommUNext delivers accurate and robust high-frequency SS prediction even with sparse supervision, substantially reducing both simulation and measurement overhead.

Country of Origin
πŸ‡ΉπŸ‡Ό πŸ‡ΈπŸ‡ͺ Taiwan, Province of China, Sweden

Page Count
13 pages

Category
Computer Science:
Information Theory