Data-driven control design is a method to create and tune controllers directly from the initial experimental data without a mathematical model to be controlled. Tracking and disturbance suppression are necessary to control real systems. A two-degree-of-freedom (2DOF) control system is effective to simultaneously enhance the performances of both. This study proposes a direct data-driven tuning method for the controller parameters of a 2DOF control system using only one-shot initial experimental data without mathematical modeling of the controlled object. The proposed approach improves the tracking and disturbance suppression performances by utilizing an estimation method in which the sensitivity function and the closed-loop transfer function...
The virtual reference feedback tuning (VRFT) is a data-based method for the design of feedback contr...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
In this study, we propose a novel data-driven approach for control of two degrees of freedom systems...
Two-degree-of-freedom controllers have the ability to affect the dynamics of a system when the refer...
The prefilter-based control-relevant identification scheme for single-input single-output (SISO) sys...
This paper presents recent research results for feedback control design of motion systems. Two model...
The paper deals with the problem of designing controllers from experimental data. We propose a non-i...
This paper presents a data-based design of a linear feedback controller which realizes desired close...
The design of control systems is a multi-objective problem so, a two-degree-of-freedom (abbreviated ...
The direct tuning of controller parameters, which is based on data-driven control, has been attracti...
Controllers are designed using model-based controller synthesis, e.g., robust control, optimal contr...
Mechatronic systems play an important role in many industrial production facilities and consumer pro...
In this paper a novel tuning procedure for Two-Degree-of-Freedom (2-DOF) PID controllers is proposed...
An iterative data-driven correlation-based method has been proposed recently to tune multivariable l...
The virtual reference feedback tuning (VRFT) is a data-based method for the design of feedback contr...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
In this study, we propose a novel data-driven approach for control of two degrees of freedom systems...
Two-degree-of-freedom controllers have the ability to affect the dynamics of a system when the refer...
The prefilter-based control-relevant identification scheme for single-input single-output (SISO) sys...
This paper presents recent research results for feedback control design of motion systems. Two model...
The paper deals with the problem of designing controllers from experimental data. We propose a non-i...
This paper presents a data-based design of a linear feedback controller which realizes desired close...
The design of control systems is a multi-objective problem so, a two-degree-of-freedom (abbreviated ...
The direct tuning of controller parameters, which is based on data-driven control, has been attracti...
Controllers are designed using model-based controller synthesis, e.g., robust control, optimal contr...
Mechatronic systems play an important role in many industrial production facilities and consumer pro...
In this paper a novel tuning procedure for Two-Degree-of-Freedom (2-DOF) PID controllers is proposed...
An iterative data-driven correlation-based method has been proposed recently to tune multivariable l...
The virtual reference feedback tuning (VRFT) is a data-based method for the design of feedback contr...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...