Abstract: In order to guarantee stability, known results for MPC without additional terminal costs or endpoint constraints often require rather large prediction horizons. Still, stable behavior of closed loop solutions can often be observed even for shorter horizons. Here, we make use of the recent observation that stability can be guaranteed for smaller prediction horizons via Lyapunov arguments if more than only the first control is implemented. Since such a procedure may be harmful in terms of robustness, we derive conditions which allow to increase the rate at which state measurements are used for feedback while maintaining stability and desired performance specifications. Our main contribution consists in developing two algorithms base...
Widespread application of dynamic optimization with fast optimization solvers leads to in-creased co...
generally based on nonlinear state space models, needs knowledge of the full state for feedback. How...
In recent years, nonlinear model predictive control schemes have been derived that guarantee stabili...
Abstract: In order to guarantee stability, known results for MPC without additional terminal costs o...
receding horizon control. Abstract: A typical bottleneck of model predictive control algorithms is t...
This article focuses on the synthesis of computationally friendly sub-optimal nonlinear model predic...
Abstract: In this paper we present a stability proof of model predictive control without stabi-lizin...
Key words Asymptotic stability, feedback, model predictive control algorithm, performance, receding ...
In this work, we present two unconstrained MPC schemes using additional weighting terms which allow ...
In recent years, nonlinear model predictive control (NMPC) schemes have been derived that guarantee ...
Abstract: In this paper we are concerned with estimates of the prediction horizon length in nonlinea...
<p>This dissertation addresses two issues that arise in the field of Nonlinear Model Predictive Cont...
This article focuses on the synthesis of computationally friendly sub-optimal nonlinear model predic...
This paper presents the properties of a new variant of model predictive control called Reduced Param...
In this paper we consider model predictive control (MPC) schemes without stabilizing terminal constr...
Widespread application of dynamic optimization with fast optimization solvers leads to in-creased co...
generally based on nonlinear state space models, needs knowledge of the full state for feedback. How...
In recent years, nonlinear model predictive control schemes have been derived that guarantee stabili...
Abstract: In order to guarantee stability, known results for MPC without additional terminal costs o...
receding horizon control. Abstract: A typical bottleneck of model predictive control algorithms is t...
This article focuses on the synthesis of computationally friendly sub-optimal nonlinear model predic...
Abstract: In this paper we present a stability proof of model predictive control without stabi-lizin...
Key words Asymptotic stability, feedback, model predictive control algorithm, performance, receding ...
In this work, we present two unconstrained MPC schemes using additional weighting terms which allow ...
In recent years, nonlinear model predictive control (NMPC) schemes have been derived that guarantee ...
Abstract: In this paper we are concerned with estimates of the prediction horizon length in nonlinea...
<p>This dissertation addresses two issues that arise in the field of Nonlinear Model Predictive Cont...
This article focuses on the synthesis of computationally friendly sub-optimal nonlinear model predic...
This paper presents the properties of a new variant of model predictive control called Reduced Param...
In this paper we consider model predictive control (MPC) schemes without stabilizing terminal constr...
Widespread application of dynamic optimization with fast optimization solvers leads to in-creased co...
generally based on nonlinear state space models, needs knowledge of the full state for feedback. How...
In recent years, nonlinear model predictive control schemes have been derived that guarantee stabili...