The combination of model predictive control based on linear models (MPC) with feedback linearization (FL) has attracted interest for a number of years, giving rise to MPC+FL control schemes. An important advantage of such schemes is that feedback linearizable plants can be controlled with a linear predictive controller with a fixed model. Handling input constraints within such schemes is difficult since simple bound contraints on the input become state dependent because of the nonlinear transformation introduced by feedback linearization. This paper introduces a technique for handling input constraints within a real timeMPC/FL scheme, where the plant model employed is a class of dynamic neural networks. The technique is based on a simple af...
This paper describes a method for calculating invariant/feasible sets with respect to feedback linea...
This paper describes a new method for the design of model predictive control (MPC) using non-minimal...
Nonlinear Model predictive control (NMPC) suffers from the problems of closed loop instability and c...
The combination of model predictive control based on linear models (MPC) with feedback linearization...
This paper describes an experimental application of constrained predictive control and feedback li...
Model predictive control (MPC) is one of the most popular advanced control techniques and is used wi...
Model predictive control (MPC) is a modern control methodology that is based on the repetitive solut...
Abstract: Model predictive control (MPC) is a favored method for handling constrained linear control...
This paper presents a hybrid control strategy integrating dynamic neural networks and feedback linea...
This paper introduces a new variant of model predictive control called Reduced Parameterisation Mode...
Robust predictive control of non-linear systems under state estimation errors and input and state co...
Abstract: An output feedback constrained MPC control scheme for uncertain LFR/Norm-Bounded discrete-...
Earlier work used partial invariance to identify regions in state space where feedback linearization...
For the constrained linear parameter varying (LPV) system with bounded disturbance, a dynamic output...
The present work aims to introduce a nonlinear control scheme that combines intelligent feedback lin...
This paper describes a method for calculating invariant/feasible sets with respect to feedback linea...
This paper describes a new method for the design of model predictive control (MPC) using non-minimal...
Nonlinear Model predictive control (NMPC) suffers from the problems of closed loop instability and c...
The combination of model predictive control based on linear models (MPC) with feedback linearization...
This paper describes an experimental application of constrained predictive control and feedback li...
Model predictive control (MPC) is one of the most popular advanced control techniques and is used wi...
Model predictive control (MPC) is a modern control methodology that is based on the repetitive solut...
Abstract: Model predictive control (MPC) is a favored method for handling constrained linear control...
This paper presents a hybrid control strategy integrating dynamic neural networks and feedback linea...
This paper introduces a new variant of model predictive control called Reduced Parameterisation Mode...
Robust predictive control of non-linear systems under state estimation errors and input and state co...
Abstract: An output feedback constrained MPC control scheme for uncertain LFR/Norm-Bounded discrete-...
Earlier work used partial invariance to identify regions in state space where feedback linearization...
For the constrained linear parameter varying (LPV) system with bounded disturbance, a dynamic output...
The present work aims to introduce a nonlinear control scheme that combines intelligent feedback lin...
This paper describes a method for calculating invariant/feasible sets with respect to feedback linea...
This paper describes a new method for the design of model predictive control (MPC) using non-minimal...
Nonlinear Model predictive control (NMPC) suffers from the problems of closed loop instability and c...