DRaGon: Mining Latent Radio Channel Information from Geographical Data Leveraging Deep Learning
Radio channel modeling is one of the most fundamental aspects in the process of designing, optimizing, and simulating wireless communication networks. In this field, long-established approaches such as analytical channel models and ray tracing techniques represent the de-facto standard methodologies...
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Zusammenfassung: | Radio channel modeling is one of the most fundamental aspects in the process
of designing, optimizing, and simulating wireless communication networks. In
this field, long-established approaches such as analytical channel models and
ray tracing techniques represent the de-facto standard methodologies. However,
as demonstrated by recent results, there remains an untapped potential to
innovate this research field by enriching model-based approaches with machine
learning techniques. In this paper, we present Deep RAdio channel modeling from
GeOinformatioN (DRaGon) as a novel machine learning-enabled method for
automatic generation of Radio Environmental Maps (REMs) from geographical data.
For achieving accurate path loss prediction results, DRaGon combines
determining features extracted from a three-dimensional model of the radio
propagation environment with raw images of the receiver area within a deep
learning model. In a comprehensive performance evaluation and validation
campaign, we compare the accuracy of the proposed approach with real world
measurements, ray tracing analyses, and well-known channel models. It is found
that the combination of expert knowledge from the communications domain and the
data analysis capabilities of deep learning allows to achieve a significantly
higher prediction accuracy than the reference methods. |
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DOI: | 10.48550/arxiv.2112.07941 |