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Statements

Subject Item
n2:RIV%2F68407700%3A21260%2F13%3A00196788%21RIV14-MSM-21260___
rdf:type
n14:Vysledek skos:Concept
dcterms:description
In this contribution is demonstrated use of two evolutionary algorithms on parameter identification of serlected predictive models. Both algorithms were used to identify parameter of pre-selected ARMA models. At the end are discussed possibilities of use of synthesis of predictive models by means of methods of symbolic regression that has successfully been used on chaotic system identification by means of evolutionary algorithms on measured data. In this contribution is demonstrated use of two evolutionary algorithms on parameter identification of serlected predictive models. Both algorithms were used to identify parameter of pre-selected ARMA models. At the end are discussed possibilities of use of synthesis of predictive models by means of methods of symbolic regression that has successfully been used on chaotic system identification by means of evolutionary algorithms on measured data.
dcterms:title
Evolutionary Identification and Synthesis of Predictive Models Evolutionary Identification and Synthesis of Predictive Models
skos:prefLabel
Evolutionary Identification and Synthesis of Predictive Models Evolutionary Identification and Synthesis of Predictive Models
skos:notation
RIV/68407700:21260/13:00196788!RIV14-MSM-21260___
n14:predkladatel
n17:orjk%3A21260
n3:aktivita
n15:Z n15:S n15:P
n3:aktivity
P(ED2.1.00/03.0089), P(EE.2.3.20.0072), S, Z(MSM6840770043)
n3:dodaniDat
n7:2014
n3:domaciTvurceVysledku
n16:4949935
n3:druhVysledku
n20:D
n3:duvernostUdaju
n10:S
n3:entitaPredkladatele
n4:predkladatel
n3:idSjednocenehoVysledku
73821
n3:idVysledku
RIV/68407700:21260/13:00196788
n3:jazykVysledku
n21:eng
n3:klicovaSlova
symbolic regression; ARMA model; evolutionary algorithm; predictive model; SOMA
n3:klicoveSlovo
n6:predictive%20model n6:SOMA n6:symbolic%20regression n6:evolutionary%20algorithm n6:ARMA%20model
n3:kontrolniKodProRIV
[B9F89F4991A7]
n3:mistoKonaniAkce
Ostrava
n3:mistoVydani
Heidelberg
n3:nazevZdroje
Nostradamus: Modern Methods of Prediction, Modeling and Analysis of Nonlinear Systems
n3:obor
n13:BC
n3:pocetDomacichTvurcuVysledku
1
n3:pocetTvurcuVysledku
5
n3:projekt
n9:ED2.1.00%2F03.0089 n9:EE.2.3.20.0072
n3:rokUplatneniVysledku
n7:2013
n3:tvurceVysledku
Brandejský, Tomáš Chadil, M. Senkerik, R. Zelinka, I. Skanderova, L.
n3:typAkce
n22:EUR
n3:wos
000313767300027
n3:zahajeniAkce
2012-09-05+02:00
n3:zamer
n8:MSM6840770043
s:issn
2194-5357
s:numberOfPages
12
n19:doi
10.1007/978-3-642-33227-2_27
n5:hasPublisher
Springer-Verlag
n24:isbn
978-3-642-33226-5
n11:organizacniJednotka
21260