Přístupnostní navigace
E-application
Search Search Close
Publication detail
URBAN, R. STEINBAUER, M.
Original Title
Optimization of Machine Learning Parameters for Spectrum Survey Analysis
Type
conference paper
Language
English
Original Abstract
This paper shows preliminary results of the optimization of machine learning parameters for cognitive radio application by brutal force calculations. We were analyzing frequency occupancy data of the huge measurement campaign of the spectrum background. For these date there are two possible states. Firstly, limited frequency band is occupied (detected signal level is above the threshold) by the other frequency signal | there will be an interference for our system for this frequency band. Secondly, the frequency band is free of any other wireless radiation. These true/false data are analyzed in a context of the cognitive radio by the reinforcement learning and simple learning. Each channel received a score from the learning algorithm given by weighting function. The quality of the output scores is discussed in this paper according to the learning algorithm parameters and optional learning time.
Keywords
machine learning, cognitive radio, spectrum analysis
Authors
URBAN, R.; STEINBAUER, M.
RIV year
2014
Released
30. 9. 2014
ISBN
978-1-934142-28-8
Book
Proceedings of PIERS 2014 in Guangzhou
1559-9450
Periodical
Progress In Electromagnetics
State
United States of America
Pages from
612
Pages to
615
Pages count
4
BibTex
@inproceedings{BUT109329, author="Robert {Urban} and Miloslav {Steinbauer}", title="Optimization of Machine Learning Parameters for Spectrum Survey Analysis", booktitle="Proceedings of PIERS 2014 in Guangzhou", year="2014", journal="Progress In Electromagnetics", pages="612--615", isbn="978-1-934142-28-8", issn="1559-9450" }