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Statements

Subject Item
n2:RIV%2F00216305%3A26220%2F04%3APU46111%21RIV11-MSM-26220___
rdf:type
n8:Vysledek skos:Concept
dcterms:description
The paper deals with original genetic neural networks for modeling wire dipole antennas. A novel approach to learning artificial neural networks (ANN) by genetic algorithms (GA) is described. The goal is to compare the learning abilities of neural antenna models trained by the GA and models trained by gradient algorithms. Developing the original design method based on genetic models of designed electromagnetic structures is the motivation of this work. Two types of ANN, the recurrent Elman ANN and the feed-forward one, are implemented in MATLAB. Results of training abilities are discussed. The paper deals with original genetic neural networks for modeling wire dipole antennas. A novel approach to learning artificial neural networks (ANN) by genetic algorithms (GA) is described. The goal is to compare the learning abilities of neural antenna models trained by the GA and models trained by gradient algorithms. Developing the original design method based on genetic models of designed electromagnetic structures is the motivation of this work. Two types of ANN, the recurrent Elman ANN and the feed-forward one, are implemented in MATLAB. Results of training abilities are discussed.
dcterms:title
Genetic Neural Networks for Modeling Dipole Antennas Genetic Neural Networks for Modeling Dipole Antennas
skos:prefLabel
Genetic Neural Networks for Modeling Dipole Antennas Genetic Neural Networks for Modeling Dipole Antennas
skos:notation
RIV/00216305:26220/04:PU46111!RIV11-MSM-26220___
n3:aktivita
n6:V n6:Z n6:P
n3:aktivity
P(GA102/04/1079), P(GD102/03/H086), V, Z(MSM 262200011), Z(MSM 262200022)
n3:cisloPeriodika
3
n3:dodaniDat
n4:2011
n3:domaciTvurceVysledku
n15:7865244 n15:2821575 n15:2899396
n3:druhVysledku
n17:J
n3:duvernostUdaju
n19:S
n3:entitaPredkladatele
n14:predkladatel
n3:idSjednocenehoVysledku
565334
n3:idVysledku
RIV/00216305:26220/04:PU46111
n3:jazykVysledku
n10:eng
n3:klicovaSlova
artificial neural networks, genetic algorithm, wire dipole antenna
n3:klicoveSlovo
n16:artificial%20neural%20networks n16:genetic%20algorithm n16:wire%20dipole%20antenna
n3:kodStatuVydavatele
GR - Řecká republika
n3:kontrolniKodProRIV
[0FC136EA9FA4]
n3:nazevZdroje
WSEAS Transactions on Computers
n3:obor
n18:JA
n3:pocetDomacichTvurcuVysledku
3
n3:pocetTvurcuVysledku
3
n3:projekt
n7:GD102%2F03%2FH086 n7:GA102%2F04%2F1079
n3:rokUplatneniVysledku
n4:2004
n3:svazekPeriodika
6
n3:tvurceVysledku
Lukeš, Zbyněk Raida, Zbyněk Šmíd, Petr
n3:zamer
n9:MSM%20262200011 n9:MSM%20262200022
s:issn
1109-2750
s:numberOfPages
5
n12:organizacniJednotka
26220