Implementación de un algoritmo de control predictivo en espacio de estados sobre una plataforma de simulación desarrollada en Matlab®
Main Article Content
Abstract
Keywords
Espacio de estados, integrador embebido, optimización, restricciones. State space, embedded integrator, optimization, restrictions.
References
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