Soft constrained model predictive control (MPC) is frequently applied in practice in order to ensure feasibility of the optimization during online operation. Standard techniques offer global feasibility by relaxing state or output constraints, but cannot ensure closed-loop stability. This paper presents a new soft constrained MPC approach for tracking that provides stability guarantees even for unstable systems. Two types of soft constraints and slack variables are proposed to enlarge the terminal constraint and relax the state constraints. The approach ensures feasibility of the MPC problem in a large region of the state space, depending on the imposed hard constraints, and stability is guaranteed by design. The optimal performance of the ...
This paper proposes an approach for the robust stabilization of systems controlled by MPC strategies...
We discuss inherent robust stability properties of discrete-time nonlinear systems controlled by Mod...
This paper will demonstrate how the convexity and quadratic nature of the soft constrained model pre...
Soft constrained model predictive control (MPC) is frequently applied in practice in order to ensure...
Abstract—Soft constrained MPC is frequently applied in prac-tice in order to ensure feasibility of t...
We derive stability conditions for Model Predictive Control (MPC) with hard constraints on the input...
This paper addresses the 5 stability of soft-constrained model predictive control (MPC). It is shown...
In this paper, we present a robust output-feedback model predictive control (MPC) design for a class...
In practical model predictive control (MPC) implementations, constraints on the states are typically...
Abstract — The ability of easily and naturally handling con-straints is certainly one of the winning...
The presence of constraints in the on-line optimization problem solved by Model Predictive Control a...
This article addresses the stability of soft-constrained model predictive control. It is shown that ...
A robust model predictive control (MPC) method is presented for linear, time-invariant systems affec...
The presence of constraints in the on-line optimization problem solved by Model Predictive Control a...
This paper investigates stability of model predictive control (MPC) for nonlinear constrained system...
This paper proposes an approach for the robust stabilization of systems controlled by MPC strategies...
We discuss inherent robust stability properties of discrete-time nonlinear systems controlled by Mod...
This paper will demonstrate how the convexity and quadratic nature of the soft constrained model pre...
Soft constrained model predictive control (MPC) is frequently applied in practice in order to ensure...
Abstract—Soft constrained MPC is frequently applied in prac-tice in order to ensure feasibility of t...
We derive stability conditions for Model Predictive Control (MPC) with hard constraints on the input...
This paper addresses the 5 stability of soft-constrained model predictive control (MPC). It is shown...
In this paper, we present a robust output-feedback model predictive control (MPC) design for a class...
In practical model predictive control (MPC) implementations, constraints on the states are typically...
Abstract — The ability of easily and naturally handling con-straints is certainly one of the winning...
The presence of constraints in the on-line optimization problem solved by Model Predictive Control a...
This article addresses the stability of soft-constrained model predictive control. It is shown that ...
A robust model predictive control (MPC) method is presented for linear, time-invariant systems affec...
The presence of constraints in the on-line optimization problem solved by Model Predictive Control a...
This paper investigates stability of model predictive control (MPC) for nonlinear constrained system...
This paper proposes an approach for the robust stabilization of systems controlled by MPC strategies...
We discuss inherent robust stability properties of discrete-time nonlinear systems controlled by Mod...
This paper will demonstrate how the convexity and quadratic nature of the soft constrained model pre...