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Identification of Post-Combustion Sub-Process Using Artificial Neural Networks

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dc.contributor.author Montero Góngora, Deynier
dc.contributor.author Góngora Leyva, Ever
dc.contributor.author Ramírez Mendoza, Mercedes
dc.date.accessioned 2022-09-30T14:56:25Z
dc.date.available 2022-09-30T14:56:25Z
dc.date.issued 2019-09-30
dc.identifier.issn 2574 -1241
dc.identifier.uri http://ninive.ismm.edu.cu/handle/123456789/3982
dc.description.abstract In the muti-hearth furnace, there is a problem related to the automatic operation of the loops of temperature regulation in hearths four and six, since the same flow of air diverged into two branches. In this work, the authors take advantage of the capacity of artificial neural networks for the learning of complex relationships, starting from a set of examples. A neuronal model of the post-combustion sub-process in an Indus-trial furnace, which will serve to raise an automatic control strategy, is obtained. Experiments were carried out with binary pseudo-random sequences of modulated amplitude on the flow of ore, and the openings of the regulating valves of air flow to hearths mentioned before, to determine their effect on the temperature. The trial and error process enabled to obtain an artificial neural network of multilayer perceptron type, capable of predicting the temperature of hearth four with errors less than 0.5%, and 0.9% for the hearth six. es_ES
dc.format.extent 1.042 KB es_ES
dc.language.iso en_US es_ES
dc.publisher BIOMEDICAL (Journal of Scientific & Technical Research) es_ES
dc.relation.ispartofseries 21;4
dc.subject Redes neuronales artificiales es_ES
dc.subject Control automático es_ES
dc.subject Subproceso de poscombustión es_ES
dc.title Identification of Post-Combustion Sub-Process Using Artificial Neural Networks es_ES
dc.type Articulo es_ES


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