We address the problem of efficient implementations of distributed Model Predictive Control (MPC) systems for large-scale plants. We explore two possibili- ties of using suboptimal solvers for the quadratic program associated with the local MPC problems. The first is based on an active set method with early termination. The second is based on Partial Enumeration (PE), an approach that allows one to compute the (sub)optimal solution by using a solution table which stores the infor- mation of only a few most recently optimal active sets. The use of quick suboptimal solvers, especially PE, is shown to be beneficial because more cooperative iterations can be performed in the allowed given decision time. By using the available compu- tation time...
(e-mail: {j.barreiro135, ge-oband, nquijano} @ uniandes.edu.co) Abstract: This paper proposes a non–...
A method of solving the online optimization in model predictive control (MPC) of input-constrained l...
This thesis considers optimization methods for Model Predictive Control (MPC). MPC is the preferred ...
We discuss in this paper a novel and efficient implementation of distributed Model Predictive Contro...
In this paper we propose a cooperative distributed linear model predictive control strategy applicab...
In this paper, an approach to low complexity distributed MPC of linear interconnected systems with c...
Model predictive control (MPC), also called receding horizon control, is a control technique to dete...
Modern chemical plants are characterized by their large-scale, strong interactions and the presence ...
We present a stopping condition to the duality based distributed optimization algorithm presented in...
Decentralized and distributed model predictive control (DMPC) addresses the problem of controlling a...
Theory for Distributed Model Predictive Control (DMPC) is developed based on dual decomposition of t...
In this chapter, a cooperative distributed MPC is presented. The main features of this control strat...
Distributed Model Predictive Control refers to a class of predictive control architectures in which ...
This paper proposes a cooperative distributed linear model predictive control strategy for tracking ...
Dual decomposition is an efficient tool in dealing with Model Predictive Control (MPC) problems, par...
(e-mail: {j.barreiro135, ge-oband, nquijano} @ uniandes.edu.co) Abstract: This paper proposes a non–...
A method of solving the online optimization in model predictive control (MPC) of input-constrained l...
This thesis considers optimization methods for Model Predictive Control (MPC). MPC is the preferred ...
We discuss in this paper a novel and efficient implementation of distributed Model Predictive Contro...
In this paper we propose a cooperative distributed linear model predictive control strategy applicab...
In this paper, an approach to low complexity distributed MPC of linear interconnected systems with c...
Model predictive control (MPC), also called receding horizon control, is a control technique to dete...
Modern chemical plants are characterized by their large-scale, strong interactions and the presence ...
We present a stopping condition to the duality based distributed optimization algorithm presented in...
Decentralized and distributed model predictive control (DMPC) addresses the problem of controlling a...
Theory for Distributed Model Predictive Control (DMPC) is developed based on dual decomposition of t...
In this chapter, a cooperative distributed MPC is presented. The main features of this control strat...
Distributed Model Predictive Control refers to a class of predictive control architectures in which ...
This paper proposes a cooperative distributed linear model predictive control strategy for tracking ...
Dual decomposition is an efficient tool in dealing with Model Predictive Control (MPC) problems, par...
(e-mail: {j.barreiro135, ge-oband, nquijano} @ uniandes.edu.co) Abstract: This paper proposes a non–...
A method of solving the online optimization in model predictive control (MPC) of input-constrained l...
This thesis considers optimization methods for Model Predictive Control (MPC). MPC is the preferred ...