ITCVLGIVFeb 5, 2024

Fast and Accurate Cooperative Radio Map Estimation Enabled by GAN

arXiv:2402.02729v119 citationsh-index: 132024 IEEE International Conference on Communications Workshops (ICC Workshops)
Originality Incremental advance
AI Analysis

This work addresses real-time radio resource monitoring for 6G applications, offering an incremental improvement in estimation methods.

The paper tackles the problem of fast and accurate radio map estimation for 6G wireless networks by proposing a GAN-enabled cooperative approach, achieving low data-acquisition cost and computational complexity while demonstrating error-correction capabilities with inaccurate geographical maps.

In the 6G era, real-time radio resource monitoring and management are urged to support diverse wireless-empowered applications. This calls for fast and accurate estimation on the distribution of the radio resources, which is usually represented by the spatial signal power strength over the geographical environment, known as a radio map. In this paper, we present a cooperative radio map estimation (CRME) approach enabled by the generative adversarial network (GAN), called as GAN-CRME, which features fast and accurate radio map estimation without the transmitters' information. The radio map is inferred by exploiting the interaction between distributed received signal strength (RSS) measurements at mobile users and the geographical map using a deep neural network estimator, resulting in low data-acquisition cost and computational complexity. Moreover, a GAN-based learning algorithm is proposed to boost the inference capability of the deep neural network estimator by exploiting the power of generative AI. Simulation results showcase that the proposed GAN-CRME is even capable of coarse error-correction when the geographical map information is inaccurate.

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