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Diagnóstico de fallas mediante una LSTM y una red elástica

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Diagnóstico de fallas mediante una LSTM y una red elástica

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Márquez-Vera, MA.; López-Ortega, O.; Ramos-Velasco, LE.; Ortega-Mendoza, RM.; Fernández-Neri, BJ.; Zúñiga-Peña, NS. (2021). Diagnóstico de fallas mediante una LSTM y una red elástica. Revista Iberoamericana de Automática e Informática industrial. 18(2):164-175. https://doi.org/10.4995/riai.2020.13611

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Título: Diagnóstico de fallas mediante una LSTM y una red elástica
Otro titulo: Fault diagnosis in industrial process by using LSTM and an elastic net
Autor: Márquez-Vera, M. A. López-Ortega, O. Ramos-Velasco, L. E. Ortega-Mendoza, R. M. Fernández-Neri, B. J. Zúñiga-Peña, N. S.
Fecha difusión:
Resumen:
[EN] Fault diagnosis is important for industrial processes because it permits to determine the necessity of emergency stops in a process and/or to propose a maintenance plan. Two strategies for fault diagnosis are compared ...[+]


[ES] El diagnóstico de fallas es importante en los procesos industriales, ya que permite determinar si es necesario detener el proceso en operación y/o proponer un plan de mantenimiento. En el presente trabajo se comparan ...[+]
Palabras clave: Fault diagnosis , Wavelet transform , Recurrent neural networks , Independent component analysis , Elastic net , Diagnóstico de fallas , Transformada Wavelet , Redes neuronales recurrentes , Análisis de componentes independientes , Red elástica
Derechos de uso: Reconocimiento - No comercial - Compartir igual (by-nc-sa)
Fuente:
Revista Iberoamericana de Automática e Informática industrial. (issn: 1697-7912 ) (eissn: 1697-7920 )
DOI: 10.4995/riai.2020.13611
Editorial:
Universitat Politècnica de València
Versión del editor: https://doi.org/10.4995/riai.2020.13611
Tipo: Artículo

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