This paper illustrates the benefits of a nonlinear model-based predictive control (NMPC) approach applied to an industrial crystallization process. This relevant approach proposes a setpoint tracking of the crystal mass. The controlled variable, unavailable, is obtained using an extended Luenberger observer. A neural network model is used as internal model to predict process outputs. An optimization problem is solved to compute future control actions taking into account real-time control objectives. The performances of this strategy are demonstrated via simulation in cases of setpoint tracking and disturbance rejection. The results reveal a significant improvement in terms of robustness and energy efficiency.
from HAL : Dernières publications http://ift.tt/1JhfqTj
Home » Mémoire Master Phd » [hal-01202295] NMPC of an industrial crystallization process using model-based observers
samedi 19 septembre 2015
[hal-01202295] NMPC of an industrial crystallization process using model-based observers
lainnya dari HAL : Dernières publications, Mémoire Master Phd
Ditulis Oleh : Unknown // 07:53
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