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Model Predictive Control with a Relaxed Cost Function for Constrained Linear Systems

David Sotelo, Antonio Favela‐Contreras, Viacheslav Kalashnikov, Carlos Sotelo

2020Mathematical Problems in Engineering12 citationsDOIOpen Access PDF

Abstract

The Model Predictive Control technique is widely used for optimizing the performance of constrained multi-input multi-output processes. However, due to its mathematical complexity and heavy computation effort, it is mainly suitable in processes with slow dynamics. Based on the Exact Penalization Theorem, this paper presents a discrete-time state-space Model Predictive Control strategy with a relaxed performance index, where the constraints are implicitly defined in the weighting matrices, computed at each sampling time. The performance validation for the Model Predictive Control strategy with the proposed relaxed cost function uses the simulation of a tape transport system and a jet transport aircraft during cruise flight. Without affecting the tracking performance, numerical results show that the execution time is notably decreased compared with two well-known discrete-time state-space Model Predictive Control strategies. This makes the proposed Model Predictive Control mainly suitable for constrained multivariable processes with fast dynamics.

Topics & Concepts

Model predictive controlWeightingControl theory (sociology)Multivariable calculusComputationComputer scienceCruise controlDiscrete time and continuous timeFunction (biology)State-space representationState spaceControl (management)Mathematical optimizationControl engineeringMathematicsAlgorithmEngineeringArtificial intelligenceStatisticsEvolutionary biologyMedicineRadiologyBiologyAdvanced Control Systems OptimizationFault Detection and Control SystemsControl Systems and Identification
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