Advancements in computing hardware and refinements of numerical solvers for convex optimization problems have prompted a burst of interest in the utilization of model predictive control (MPC) to a myriad of challenging control problems and scenarios. Undoubtedly, the tremendous success enjoyed by model-predictive controllers across a wide variety of industrial and technological settings is ascribable to the potential for optimizing performance while guaranteeing the satisfaction of system constraints via recursive online optimization. This unique capability represents a most appealing feature in contexts where autonomy, safety, reliability, flexibility, and cost-effectiveness are important or essential requirements.
Guest Editorial Special Issue on State-of-the-Art Applications of Model Predictive Control
Dabbene Fabrizio
Primo
;Mammarella MartinaPenultimo
;
2023
Abstract
Advancements in computing hardware and refinements of numerical solvers for convex optimization problems have prompted a burst of interest in the utilization of model predictive control (MPC) to a myriad of challenging control problems and scenarios. Undoubtedly, the tremendous success enjoyed by model-predictive controllers across a wide variety of industrial and technological settings is ascribable to the potential for optimizing performance while guaranteeing the satisfaction of system constraints via recursive online optimization. This unique capability represents a most appealing feature in contexts where autonomy, safety, reliability, flexibility, and cost-effectiveness are important or essential requirements.File | Dimensione | Formato | |
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Descrizione: Guest Editorial: Special Issue on State-of-the-art Applications of Model Predictive Control
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