ReVeal-MT: A Physics-Informed Neural Network for Multi-Transmitter Radio Environment Mapping
Mukaram Shahid, Kunal Das, Hadia Ushaq, Hongwei Zhang, Jiming Song, Daji Qiao, Sarath Babu, Yong Guan, Zhengyuan Zhu, and Arsalan Ahmad

TL;DR
ReVeal-MT is a physics-informed neural network that accurately maps radio environments with multiple transmitters using sparse measurements, improving spectrum sharing and coexistence in complex wireless settings.
Contribution
The paper introduces ReVeal-MT, a novel PINN that incorporates a multi-transmitter PDE formulation for improved radio environment mapping in multi-source scenarios.
Findings
Achieves RMSE of 2.66 dB with 45 samples over 370 km²
Outperforms existing models and baseline PINNs in accuracy
Validates effectiveness with real-world measurements in diverse environments
Abstract
Accurately mapping the radio environment (e.g., identifying wireless signal strength at specific frequency bands and geographic locations) is crucial for efficient spectrum sharing, enabling Secondary Users~(SUs) to access underutilized spectrum bands while protecting Primary Users~(PUs). While existing models have made progress, they often degrade in performance when multiple transmitters coexist, due to the compounded effects of shadowing, interference from adjacent transmitters. To address this challenge, we extend our prior work on Physics-Informed Neural Networks~(PINNs) for single-transmitter mapping to derive a new multi-transmitter Partial Differential Equation~(PDE) formulation of the Received Signal Strength Indicator~(RSSI). We then propose \emph{ReVeal-MT} (Re-constructor and Visualizer of Spectrum Landscape for Multiple Transmitters), a novel PINN which integrates the…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Millimeter-Wave Propagation and Modeling · Advanced MIMO Systems Optimization
