
Open access
Date
2019Type
- Conference Paper
ETH Bibliography
no
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Abstract
Channel-charting (CC) is a machine learning technique for learning a multi-cell radio map, which can be used for cognitive radio-resource-management (RRM) problems. Each base-station (BS) extracts features from the channel-state-information samples (CSI) from transmissions of user-equipment (UE) at different unknown locations. The multi-path channel components are estimated and used to construct a dissimilarity matrix between CSI samples at each BS. A fusion center combines the dissimilarity matrices of all base-stations, performs dimensional reduction based on manifold learning, constructing a Multipoint-CC (MPCC). The MPCC is a two dimension map, where the spatial difference between any pair of UEs closely approximates the distance between the clustered features. MPCC provides a mapping for any given trained UE location. To use MPCC for cognitive RRM tasks, CSI measurements for new UEs would be acquired, and these UEs would be placed on the radio map. Repeating the MPCC procedure for out-of-sample CSI measurements is computationally expensive. For this, extensions of MPCC to out-of-sample UE CSIs are investigated in this paper, when Laplacian-Eigenmaps (LE) is used for dimensional reduction. Simulation results are used to show the merits of the proposed approach. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000461386Publication status
publishedExternal links
Editor
Book title
Cognitive Radio-Oriented Wireless Networks 14th EAI International Conference, CrownCom 2019, Poznan, Poland, June 11–12, 2019, ProceedingsJournal / series
Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications EngineeringVolume
Pages / Article No.
Publisher
Springer International PublishingEvent
Organisational unit
09695 - Studer, Christoph / Studer, Christoph
Notes
Conference lecture held on June 12, 2019More
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ETH Bibliography
no
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