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URBAN, R. HUTOVÁ, E. NEŠPOR, D.
Original Title
Enhanced Spectrum Planning in Cognitive System Based on Reinforcement Learning
Type
conference paper
Language
English
Original Abstract
This paper presents preliminary results of interference less spectrum planning which is performed by reinforcement learning. The frequency planning of the wireless services is very difficult in current overfilled spectrum situation since it is nearly impossible to find spectral hole worldwide to deploy a new wireless service. The possible solution is an open dynamic spectrum access which could be implemented as a part of cognitive radio. Moreover, the modern wireless standards such as LTE-A partly implement cognitive radio improvements, e.g. carrier aggregation system, which enables using unused parts of the frequency spectrum to decrease interference and increase data throughput. It could be realised both the intra-band and the inter-band solution. According to the measured data of the spectrum situation in various environments, we prepared best case of channel switching in LTE-A and WI-FI systems, which is based on the reinforcement learning to minimize interference with primary users represented by measured data. Using this technique, we are capable to obtain very low misdetection probability and large variety in channel switching.
Keywords
cognitive radio, spectrum sharing, spectrum survey
Authors
URBAN, R.; HUTOVÁ, E.; NEŠPOR, D.
RIV year
2013
Released
15. 8. 2013
ISBN
978-1-934142-26-4
Book
Proceedings of PIERS 2013 in Stockholm
Pages from
759
Pages to
762
Pages count
4
BibTex
@inproceedings{BUT101778, author="Robert {Urban} and Eliška {Vlachová Hutová} and Dušan {Nešpor}", title="Enhanced Spectrum Planning in Cognitive System Based on Reinforcement Learning", booktitle="Proceedings of PIERS 2013 in Stockholm", year="2013", pages="759--762", isbn="978-1-934142-26-4" }