Radio Map Estimation Based on Generative Artificial Intelligence: Evolution from Point-Level to Cell-Level Prediction
Document Type
Article
Source of Publication
IEEE Communications Magazine
Publication Date
4-23-2025
Abstract
This article explores the application of generative artificial intelligence (AI) in refining radio map estimation for complex urban wireless networks, shifting from conventional point-level to advanced cell-level predictions. Addressing the challenges posed by urban density and diversity in wireless propagation models, the study employs deep learning techniques to surmount these barriers. We propose a three-step deployment framework for generative AI, encompassing scene analysis, adaptation to new environments, and efficient network establishment. This framework empha-sizes the synergy of human expertise and AI in optimizing base station placement and network design, particularly in urban contexts. The article underscores the significance of integrating deep learning with traditional wireless communication knowledge, aiming to enhance the precision and efficiency of network configurations. By offering innovative solutions and methodolo-gies, this research contributes to the evolution of 5G-Advanced and 6G networks, highlighting the transformative role of generative AI in advancing future wireless communication technologies.
DOI Link
ISSN
Volume
63
Issue
5
First Page
150
Last Page
156
Disciplines
Computer Sciences
Keywords
Generative AI, Radio map estimation, Deep learning, Urban wireless networks, 5G-Advanced
Scopus ID
Recommended Citation
Zheng, Yi; Wang, Ji; Xie, Wenwu; Li, Xingwang; Mumtaz, Shahid; and Al-Dulaimi, Anwer, "Radio Map Estimation Based on Generative Artificial Intelligence: Evolution from Point-Level to Cell-Level Prediction" (2025). All Works. 7290.
https://zuscholars.zu.ac.ae/works/7290
Indexed in Scopus
yes
Open Access
no