Salvato in:
Dettagli Bibliografici
Autore principale: J.J. Vega
Natura: Artículo científico
Lingua:en
Pubblicazione: Sociedad Mexicana de Física A.C. 2008
Soggetti:
Accesso online:https://www.redalyc.org/articulo.oa?id=57054107
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866815571657490432
author J.J. Vega
author_facet J.J. Vega
contents Learning limits of an artificial neural network J.J. Vega R. Reynoso H. Carrillo Calvet Física, Astronomía y Matemáticas digital pulse shape analysis Neural networks pattern identification Bragg curve spectroscopy Technological advances in hardware as well as new computational paradigms give us the opportunity to apply digital techniques to PulseShape Analysis (PSA), requiring powerful resources. In this paper, we present a PSA application based on Artificial Neural Networks(ANNs). These adaptive systems offer several advantages for these tasks; nevertheless it is necessary to face the particular problems linked tothem as: the selection of the learning rule and the ANN architecture, the sizes of the training and validation data sets, overtraining, the effectof noise on the pattern identification ability, etc. We will present evidences of the effect on the performance of a back-propagation ANN as apattern identifier of both: the size of the noise that the Bragg curve spectrometer signal present and of overtraining. In fact, these two effects are related 2008 artículo científico 0035-001X https://www.redalyc.org/articulo.oa?id=57054107 en http://www.redalyc.org/revista.oa?id=570 Revista Mexicana de Física application/pdf Sociedad Mexicana de Física A.C. Revista Mexicana de Física (México) Num.1 Vol.54
format Artículo científico
id redalyc_57054107
language en
publishDate 2008
publisher Sociedad Mexicana de Física A.C.
spellingShingle Learning limits of an artificial neural network
J.J. Vega
Física, Astronomía y Matemáticas
digital pulse
shape analysis
Neural networks
pattern identification
Bragg curve spectroscopy
Learning limits of an artificial neural network J.J. Vega R. Reynoso H. Carrillo Calvet Física, Astronomía y Matemáticas digital pulse shape analysis Neural networks pattern identification Bragg curve spectroscopy Technological advances in hardware as well as new computational paradigms give us the opportunity to apply digital techniques to PulseShape Analysis (PSA), requiring powerful resources. In this paper, we present a PSA application based on Artificial Neural Networks(ANNs). These adaptive systems offer several advantages for these tasks; nevertheless it is necessary to face the particular problems linked tothem as: the selection of the learning rule and the ANN architecture, the sizes of the training and validation data sets, overtraining, the effectof noise on the pattern identification ability, etc. We will present evidences of the effect on the performance of a back-propagation ANN as apattern identifier of both: the size of the noise that the Bragg curve spectrometer signal present and of overtraining. In fact, these two effects are related 2008 artículo científico 0035-001X https://www.redalyc.org/articulo.oa?id=57054107 en http://www.redalyc.org/revista.oa?id=570 Revista Mexicana de Física application/pdf Sociedad Mexicana de Física A.C. Revista Mexicana de Física (México) Num.1 Vol.54
title Learning limits of an artificial neural network
topic Física, Astronomía y Matemáticas
digital pulse
shape analysis
Neural networks
pattern identification
Bragg curve spectroscopy
url https://www.redalyc.org/articulo.oa?id=57054107