Many control schemes require significant tuning effort to achieve desired performance targets, causing a need for general tools that can perform controller tuning in an automated fashion. This paper represents a continuation of the previous work in which a tuning method capable of designing Explicit Model Predictive Controllers for control of nonlinear systems was developed. Besides demonstrating a broader applicability of the tuning method by applying it here to a non-optimization-based, nonlinear control policy, the primary purpose of this paper is to provide experimental validation of the method by its application to a physical system, as well as to extend the method's practical computational capability in case of multimodel plant uncert...
Model-based controllers with adaptive design variables are often used to control an object with time...
This study addresses to the robustness of model predictive control in the presence of the mismatched...
This paper proposes a practical tuning of closed loops with model based predictive control. The data...
A tuning method for a controller of given structure is proposed, with particular emphasis on low-ord...
Internal Model Control (IMC) yields very good performance for set point tracking, but gives sluggish...
This paper presents an intuitive on-line tuning strategy for linear model predictive control (MPC) a...
Over the past decade, Model Predictive Control (MPC) has established itself as an industrially impor...
Various systems and instrumentation use auto tuning techniques in their operations. For example, aud...
x, 92 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577M ME 2005 WuThis research aims t...
This paper presents parameter tuning of model predictive controller. The effect of prediction horizo...
This paper provides a novel solution to the problem of tuning linear output feedback model predictiv...
In this paper a novel tuning procedure for Two-Degree-of-Freedom (2-DOF) PID controllers is proposed...
simple method is presented to obtain tuning rules for conventional controllers (PID-type) able to gi...
The effectiveness of model predictive control (MPC) in dealing with input and state constraints duri...
The development of efficient techniques for the on-site optimisation of controller parameters is a t...
Model-based controllers with adaptive design variables are often used to control an object with time...
This study addresses to the robustness of model predictive control in the presence of the mismatched...
This paper proposes a practical tuning of closed loops with model based predictive control. The data...
A tuning method for a controller of given structure is proposed, with particular emphasis on low-ord...
Internal Model Control (IMC) yields very good performance for set point tracking, but gives sluggish...
This paper presents an intuitive on-line tuning strategy for linear model predictive control (MPC) a...
Over the past decade, Model Predictive Control (MPC) has established itself as an industrially impor...
Various systems and instrumentation use auto tuning techniques in their operations. For example, aud...
x, 92 leaves : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577M ME 2005 WuThis research aims t...
This paper presents parameter tuning of model predictive controller. The effect of prediction horizo...
This paper provides a novel solution to the problem of tuning linear output feedback model predictiv...
In this paper a novel tuning procedure for Two-Degree-of-Freedom (2-DOF) PID controllers is proposed...
simple method is presented to obtain tuning rules for conventional controllers (PID-type) able to gi...
The effectiveness of model predictive control (MPC) in dealing with input and state constraints duri...
The development of efficient techniques for the on-site optimisation of controller parameters is a t...
Model-based controllers with adaptive design variables are often used to control an object with time...
This study addresses to the robustness of model predictive control in the presence of the mismatched...
This paper proposes a practical tuning of closed loops with model based predictive control. The data...