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Robust Design of Artificial Neural Networks Methodology in Neutron Spectrometry

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dc.contributor 6207 es_ES
dc.contributor.other https://orcid.org/0000-0002-7081-9084 es_ES
dc.coverage.spatial Global es_ES
dc.creator Ortíz Rodríguez, José Manuel
dc.creator Martínez Blanco, María del Rosario
dc.creator Cervantes Miramontes, José Manuel
dc.creator Vega Carrillo, Héctor René
dc.date.accessioned 2019-03-13T15:37:06Z
dc.date.available 2019-03-13T15:37:06Z
dc.date.issued 2013-01
dc.identifier info:eu-repo/semantics/publishedVersion es_ES
dc.identifier.isbn 978-953-51-0935-8 es_ES
dc.identifier.uri http://localhost/xmlui/handle/20.500.11845/721
dc.identifier.uri https://doi.org/10.48779/dezm-yc98 es_ES
dc.description.abstract Applications of artificial neural networks (ANNs) have been reported in literature in various areas. [1–5] The wide use of ANNs is due to their robustness, fault tolerant and the ability to learn and generalize, through training process, from examples, complex nonlinear and multi input/output relationships between process parameters using the process data. [6–10] The ANNs have many other advantageous characteristics, which include: generalization, adaptation, universal function approximation, parallel data processing, robustness, etc. Multilayer perceptron (MLP) trained with backpropagation (BP) algorithm is the most used ANN in modeling, optimization classification and prediction processes. [11, 12] Although BP algorithm has proved to be efficient, its convergence tends to be very slow, and there is a possibility to get trapped in some undesired local minimum. [4, 10, 11, 13] Most literature related to ANNs focused on specific applications and their results rather than the methodology of developing and training the networks. In general, the quality of the developed ANN is highly dependable not only on ANN training algorithm and its parameters but also on many ANN architectural parameters such as the number of hidden layers and nodes per layer which have to be set during training process and these settings are very crucial to the accuracy of ANN model. [8, 14–19] es_ES
dc.language.iso eng es_ES
dc.publisher IntechOpen es_ES
dc.relation https://www.intechopen.com/books/artificial-neural-networks-architectures-and-applications/robust-design-of-artificial-neural-networks-methodology-in-neutron-spectrometry es_ES
dc.relation.uri generalPublic es_ES
dc.rights Atribución-NoComercial-CompartirIgual 3.0 Estados Unidos de América *
dc.rights.uri http://creativecommons.org/licenses/by-nc-sa/3.0/us/ *
dc.source Artificial Neural Networks - Architectures and Applications, Editado po Kenji Suzuki, Universidad de Chicago es_ES
dc.subject.classification CIENCIAS FISICO MATEMATICAS Y CIENCIAS DE LA TIERRA [1] es_ES
dc.subject.other Artificial Neural Networks es_ES
dc.subject.other Neutron Spectrometry es_ES
dc.subject.other Multilayer perceptron es_ES
dc.title Robust Design of Artificial Neural Networks Methodology in Neutron Spectrometry es_ES
dc.type info:eu-repo/semantics/article es_ES


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