A batch process can be treated as a 2-dimentional (2D) system with a time dimension within each batch and a batch dimension from batch to batch. This paper integrates the learning ability of iterative learning control (ILC) into the prediction model of model predictive control (MPC). Based on this integrated model, a 2D dynamic matrix control (2D-DMC) algorithm with a feedback control and an optimal feed-forward control is proposed. The sufficient conditions for exponentially asymptotic and monotonic convergence of the proposed 2D-DMC are established with proof under certain assumptions, in the presence of not only the completely repeatable uncertainties but also the non-repeatable interval uncertainties. The effectiveness of the proposed c...
Model Predictive control (MPC) is shown to be particularly effective for the self-tuning control of ...
A robust feedback integrated with iterative learning control (FILC) scheme for batch processes with ...
To improve stability and convergence, feedback control is often incorporated with iterative learning...
Owing to the natures of batch processes, such as high nonlinearity, time-varying, and limited batch ...
A batch process can be viewed as a 2-dimensional (2D) system with a time dimension within each batch...
Based on a two-dimensional (2D) system description of a batch process in industry, a robust closed-l...
Based on robust feedback incorporated with iterative learning control scheme, this paper proposes a ...
In batch process, it is very important to closed-loop control the key process variables in the quali...
Multi-phase batch process is common in industry, such as injection molding process, fermentation and...
Batch processes like injection molding are inherently a two-dimensional process with multi-phase dyn...
On the basis of the two-dimensional linear quadratic (2DLQ) optimal control developed in the first p...
A robust iterative learning control (ILC) scheme for batch processes with uncertain perturbations an...
In this paper, we present the control of batch processes using Model Predictive Control (MPC) and it...
As a typical batch process, injection molding has the following unique features compared to traditio...
In this paper, iterative learning control (ILC) system is modeled and designed from a two-dimensiona...
Model Predictive control (MPC) is shown to be particularly effective for the self-tuning control of ...
A robust feedback integrated with iterative learning control (FILC) scheme for batch processes with ...
To improve stability and convergence, feedback control is often incorporated with iterative learning...
Owing to the natures of batch processes, such as high nonlinearity, time-varying, and limited batch ...
A batch process can be viewed as a 2-dimensional (2D) system with a time dimension within each batch...
Based on a two-dimensional (2D) system description of a batch process in industry, a robust closed-l...
Based on robust feedback incorporated with iterative learning control scheme, this paper proposes a ...
In batch process, it is very important to closed-loop control the key process variables in the quali...
Multi-phase batch process is common in industry, such as injection molding process, fermentation and...
Batch processes like injection molding are inherently a two-dimensional process with multi-phase dyn...
On the basis of the two-dimensional linear quadratic (2DLQ) optimal control developed in the first p...
A robust iterative learning control (ILC) scheme for batch processes with uncertain perturbations an...
In this paper, we present the control of batch processes using Model Predictive Control (MPC) and it...
As a typical batch process, injection molding has the following unique features compared to traditio...
In this paper, iterative learning control (ILC) system is modeled and designed from a two-dimensiona...
Model Predictive control (MPC) is shown to be particularly effective for the self-tuning control of ...
A robust feedback integrated with iterative learning control (FILC) scheme for batch processes with ...
To improve stability and convergence, feedback control is often incorporated with iterative learning...