Control Neuroborroso en Red. Aplicación al Proceso de Taladrado de Alto Rendimiento
Enviado: 14-09-2017
|Aceptado:
|Publicado: 09-01-2009
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Palabras clave:
sistemas neuroborrosos, control por modelo interno, control en red, taladrado de alto rendimiento
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Resumen:
Citas:
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