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Control de un sistema multivariable no lineal y en fase no mínima empleando un controlador predictivo neuronal

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Control de un sistema multivariable no lineal y en fase no mínima empleando un controlador predictivo neuronal

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Calle Chojeda, E.; Oliden Semino, J.; Ipanaqué Alama, W. (2022). Control de un sistema multivariable no lineal y en fase no mínima empleando un controlador predictivo neuronal. Revista Iberoamericana de Automática e Informática industrial. 20(1):32-43. https://doi.org/10.4995/riai.2022.17375

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Título: Control de un sistema multivariable no lineal y en fase no mínima empleando un controlador predictivo neuronal
Otro titulo: Control of a non-linear and non-minimum phase multivariable system using a neural predictive controller
Autor: Calle Chojeda, Elmer Oliden Semino, José Ipanaqué Alama, William
Fecha difusión:
Resumen:
[EN] In this paper, a Neural Predictive Controller (ANN-MPC) is proposed to control a nonlinear quadruple tank system, which is complex to control due to the nonlinearity of its valves and the interaction between its ...[+]


[ES] En este artículo se propone un Controlador Predictivo Neuronal (ANN-MPC) para controlar un sistema no lineal de tanque cuádruple, el cual es complejo de controlar debido a la no linealidad de sus válvulas y a la ...[+]
Palabras clave: Model based predictive control , Artificial neural networks , MIMO systems , Quadruple-tank system , Control predictivo basado en modelo , Redes neuronales artificiales , Sistema MIMO , Sistema de tanque cuádruple
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.2022.17375
Editorial:
Universitat Politècnica de València
Versión del editor: https://doi.org/10.4995/riai.2022.17375
Código del Proyecto:
info:eu-repo/grantAgreement/FONDECYT//06-2018-FONDECYT%2FBM/Control de un sistema multivariable no lineal y en fase no mínima empleando un controlador predictivo neuronal
info:eu-repo/grantAgreement/Gobierno del Perú//8682-PE/Mejoramiento y Ampliación de los Servicios del Sistema Nacional de Ciencia Tecnología e Innovación Tecnológica
Agradecimientos:
E. Calle reconoce el apoyo financiero del Proyecto Concytec- Banco Mundial ”Mejoramiento y Ampliación de los Servicios del Sistema Nacional de Ciencia Tecnología e Innovación Tecnológica”8682-PE, a través de su unidad ...[+]
Tipo: Artículo

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