We consider Stochastic Model Predictive Control (SMPC) for constrained linear systems with additive disturbance, under affine disturbance feedback (ADF) policies. One approach to solve the chance-constrained optimization problem associated with the SMPC formulation is randomization, where the chance constraints are replaced by a number of sampled hard constraints, each corresponding to a disturbance realization. The ADF formulation leads to a quadratic growth in the number of decision variables with respect to the prediction horizon, which results in a quadratic growth in the sample size. This leads to computationally expensive problems with solutions that are conservative in terms of both cost and violation probability. We address these li...
This paper considers linear discrete-time systems with additive, bounded, dis-turbances subject to h...
The work in this thesis focuses on the development of a Stochastic Model Predictive Control (SMPC) a...
Constraint handling is difficult in model predictive control (MPC) of linear differential inclusions...
The “scenario approach” provides an intuitive method to address chance constrained problems arising ...
Abstract Many practical applications of control require that constraints on the inputs and states of...
Chance constraints, unlike robust constraints, allow constraint violation up to some predefined leve...
This paper is concerned with the design of state-feedback control laws for linear time invariant sys...
In this paper we consider uncertain nonlinear control-affine systems with probabilistic constraints....
This paper considers linear discrete-time systems with additive disturbances, and designs a Model Pr...
We introduce an approach for Model Predictive Control (MPC) of systems with additive and multiplicat...
This article investigates model predictive control (MPC) of linear systems subject to arbitrary (pos...
In recent years, the increasing interest in stochastic model predictive control (SMPC) schemes has h...
This paper considers linear discrete-time systems with additive bounded disturbances subject to hard...
This paper presents a stochastic model predictive controller (SMPC) for linear time-invariant system...
The paper develops a receding horizon control strategy to guarantee closed loop convergence and feas...
This paper considers linear discrete-time systems with additive, bounded, dis-turbances subject to h...
The work in this thesis focuses on the development of a Stochastic Model Predictive Control (SMPC) a...
Constraint handling is difficult in model predictive control (MPC) of linear differential inclusions...
The “scenario approach” provides an intuitive method to address chance constrained problems arising ...
Abstract Many practical applications of control require that constraints on the inputs and states of...
Chance constraints, unlike robust constraints, allow constraint violation up to some predefined leve...
This paper is concerned with the design of state-feedback control laws for linear time invariant sys...
In this paper we consider uncertain nonlinear control-affine systems with probabilistic constraints....
This paper considers linear discrete-time systems with additive disturbances, and designs a Model Pr...
We introduce an approach for Model Predictive Control (MPC) of systems with additive and multiplicat...
This article investigates model predictive control (MPC) of linear systems subject to arbitrary (pos...
In recent years, the increasing interest in stochastic model predictive control (SMPC) schemes has h...
This paper considers linear discrete-time systems with additive bounded disturbances subject to hard...
This paper presents a stochastic model predictive controller (SMPC) for linear time-invariant system...
The paper develops a receding horizon control strategy to guarantee closed loop convergence and feas...
This paper considers linear discrete-time systems with additive, bounded, dis-turbances subject to h...
The work in this thesis focuses on the development of a Stochastic Model Predictive Control (SMPC) a...
Constraint handling is difficult in model predictive control (MPC) of linear differential inclusions...