2021
DOI: 10.36227/techrxiv.17306384.v1
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An Expedient, Generalizable and Realistic Data-Driven Indoor Propagation Model

Abstract: Efficient and realistic indoor radio propagation modelling tools are inextricably intertwined with the design and operation of next generation wireless networks. Machine learning (ML)-based radio propagation models can be trained with simulated or real-world data to provide accurate estimates of the wireless channel characteristics in a computationally efficient way. However, most of the existing research on ML-based propagation models focuses on outdoor propagation modelling, while indoor data-driven propagat… Show more

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