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Title: | Generalized Regression Neural Networks with Application in Neutron Spectrometry |
Authors: | Martínez Blanco, María del Rosario Castañeda Miranda, Víctor Hugo Ornelas Vargas, Gerardo Guerrero Osuna, Héctor Alonso Solís Sánchez, Luis Octavio Castañeda Miranda, Rodrígo Celaya Padilla, José María Galván Tejada, Carlos Eric Galván Tejada, Jorge Issac Vega Carrillo, Héctor René Martínez Fierro, Margarita de la Luz Garza Veloz, Idalia Ortíz Rodríguez, José Manuel |
Issue Date: | 19-Oct-2016 |
Publisher: | Universidad de Sao Paulo, Brasil |
Abstract: | The aim of this research was to apply a generalized regression neural network (GRNN) to predict neutron spectrum using the rates count coming from a Bonner spheres system as the only piece of information. In the training and testing stages, a data set of 251 different types of neutron spectra, taken from the International Atomic Energy Agency compilation, were used. Fifty-one predicted spectra were analyzed at testing stage. Training and testing of GRNN were carried out in the MATLAB environment by means of a scientific and technological tool designed based on GRNN technology, which is capable of solving the neutron spectrometry problem with high performance and generalization capability. This computational tool automates the pre-processing of information, the training and testing stages, the statistical analysis, and the postprocessing of the information. In this work, the performance of feed-forward backpropagation neural networks (FFBPNN) and GRNN was compared in the solution of the neutron spectrometry problem. From the results obtained, it can be observed thatdespite very similar results, GRNN performs better than FFBPNN because the former could be used as an alternative procedure in neutron spectrum unfolding methodologies with high performance and accuracy. |
URI: | http://localhost/xmlui/handle/20.500.11845/754 https://doi.org/10.48779/erq8-ev17 |
ISBN: | 978-953-51-2705-5 978-953-51-2704-8 |
Other Identifiers: | info:eu-repo/semantics/publishedVersion |
Appears in Collections: | *Documentos Académicos*-- UA Ciencias Nucleares |
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