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Problem wyboru właściwej architektury sieci neuronowej

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Warianty tytułu
EN
Problem of selection of proper architecture for neural network
Języki publikacji
PL
Abstrakty
PL
W pracy dokonano przeglądu zagadnień związanych ze stosowaniem sieci neuronowych w zadaniach związanych z szeroko rozumianą metalurgią, wskazując na uwarunkowania, jakie wskazane zadania narzucają na wybór struktury używanej sieci. W powiązaniu z wcześniejszymi pracami Autora, dyskutującymi zagadnienia metod uczenia sieci oraz zasady wyboru danych tworzących zbiór uczący - tworzy to zasób wiedzy wystarczający do tego, by podjąć samodzielne eksperymenty z użyciem sieci neuronowych jako narządzi w dalszych zagadnieniach metalurgicznych. Właśnie takie jest przeznaczenie tej pracy - tworzącej naukowe przesłanki dla dalszych praktycznych zastosowań neurokomputingu w metalurgii.
EN
Review of problems connected with applications of artificial neural networks in generally understood metallurgy is discussed in the paper. Conditions, which particular tasks impose on the selection of the network architecture, are pointed out. These suggestions, connected with earlier Author's research on training the networks, are a useful guide for further experiments aiming at an application of the artificial neural networks as a tool for solving of various problems in metallurgy. Scientific basis for practical metallurgical applications is given in the paper
Rocznik
Strony
3--22
Opis fizyczny
Bibliogr. 57 poz., rys.
Twórcy
  • Katedra Automatyki, Akademia Górniczo-Hutnicza
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BUJ6-0019-0027
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