Similarity-based prediction for channel mapping and user positioning
- URL: http://arxiv.org/abs/2101.05217v2
- Date: Thu, 14 Jan 2021 07:35:25 GMT
- Title: Similarity-based prediction for channel mapping and user positioning
- Authors: Luc Le Magoarou (IRT b-com, Hypermedia)
- Abstract summary: In a wireless network, gathering information about mobile users based only on uplink channel measurements is an interesting challenge.
In this paper, a supervised machine learning approach addressing these tasks in an unified way is proposed.
It relies on a labeled database that can be acquired in a simple way by the base station while operating.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In a wireless network, gathering information at the base station about mobile
users based only on uplink channel measurements is an interesting challenge.
Indeed, accessing the users locations and predicting their downlink channels
would be particularly useful in order to optimize the network efficiency. In
this paper, a supervised machine learning approach addressing these tasks in an
unified way is proposed. It relies on a labeled database that can be acquired
in a simple way by the base station while operating. The proposed regression
method can be seen as a computationally efficient two layers neural network
initialized with a non-parametric estimator. It is illustrated on realistic
channel data, both for the positioning and channel mapping tasks, achieving
better results than previously proposed approaches, at a lower cost.
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