We propose an improved offset-free model predictive control (MPC) framework, which learns and utilizes the intrinsic model-plant mismatch map, to effectively exploit the advantages of model based and data-driven control strategies and overcome the limitation of each approach. In this study, the model-plant mismatch map on steady-state manifold is approximated via artificial neural network (ANN) modeling based on steady-state data from the process. Though the learned model plant mismatch map can provide the information at the equilibrium point (i.e., setpoint), it cannot provide model-plant mismatch information during transient state. To handle this, we additionally apply a supplementary disturbance variable which is updated from a revised d...
Model predictive control (MPC) with its lower request to the mathematical model, excellent control p...
The performance of MPC highly depends on the accuracy of the model of the plant used in the design ...
AbstractProcess model is the kernel element of Model Predictive Control (MPC) system. It is always d...
This paper deals with the design of nonlinear MPC controllers that provide offset-free setpoint trac...
In model predictive control of processes. the process model plays an important role. The performance...
Learning-based approaches are suitable for the control of systems with unknown dynamics. However, le...
For Model Predictive Controlled (MPC) plants, the quality of the plant model determines the quality ...
We address in the paper the problem of designing an economic model predictive control (EMPC) algorit...
Offset-free Model Predictive Control formulations refer to a class of algorithms that are able to ac...
In closed-loop control systems, the model accuracy exerts large influences on the controllability, s...
AbstractThis paper presents a new approach to model predictive control (denoted as MPC) based on a n...
Model predictive controller (MPC), even when well projected, is minded to unmeasured disturbances al...
Model Predictive Control (MPC) schemes generate controls by using a model to predict the plant`s res...
We employ Difference of Log-Sum-Exp neural networks to generate a data-driven feedback controller ba...
Offset-free model predictive control (MPC) algorithms for nonlinear state-space process models, with...
Model predictive control (MPC) with its lower request to the mathematical model, excellent control p...
The performance of MPC highly depends on the accuracy of the model of the plant used in the design ...
AbstractProcess model is the kernel element of Model Predictive Control (MPC) system. It is always d...
This paper deals with the design of nonlinear MPC controllers that provide offset-free setpoint trac...
In model predictive control of processes. the process model plays an important role. The performance...
Learning-based approaches are suitable for the control of systems with unknown dynamics. However, le...
For Model Predictive Controlled (MPC) plants, the quality of the plant model determines the quality ...
We address in the paper the problem of designing an economic model predictive control (EMPC) algorit...
Offset-free Model Predictive Control formulations refer to a class of algorithms that are able to ac...
In closed-loop control systems, the model accuracy exerts large influences on the controllability, s...
AbstractThis paper presents a new approach to model predictive control (denoted as MPC) based on a n...
Model predictive controller (MPC), even when well projected, is minded to unmeasured disturbances al...
Model Predictive Control (MPC) schemes generate controls by using a model to predict the plant`s res...
We employ Difference of Log-Sum-Exp neural networks to generate a data-driven feedback controller ba...
Offset-free model predictive control (MPC) algorithms for nonlinear state-space process models, with...
Model predictive control (MPC) with its lower request to the mathematical model, excellent control p...
The performance of MPC highly depends on the accuracy of the model of the plant used in the design ...
AbstractProcess model is the kernel element of Model Predictive Control (MPC) system. It is always d...