The direct tuning of controller parameters, which is based on data-driven control, has been attracting considerable attention because of the ease of its control system design. In practical use, it is important to consider the stability of the closed-loop system and model matching with few design parameters. In this study, we propose a direct tuning method based on a fictitious reference signal that considers the bounded-input bounded-output (BIBO) and model matching without repeating experiments. The proposed method includes two steps. In the first step, the BIBO stability is satisfied. The pole information is lost in the cost function of the conventional method using a fictitious reference signal. Then, we derive a new cost function that c...
In control applications where finding a model of the plant is costly and time consuming, direct data...
This paper illustrates the practical application of non-iterative correlation-based tuning with guar...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...
The direct tuning of controller parameters, which is based on data-driven control, has been attracti...
We generalize a recently introduced data-driven approach for model-reference control design with clo...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
This paper proposes two kinds of data-driven controller tuning. The proposed methods are derived fro...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
The paper deals with the problem of designing controllers from experimental data. We propose a non-i...
In model reference control, the objective is to design a controller such that the closed-loop system...
A one-shot data-driven tuning method for a fractional-order proportional-integral-derivative (FOPID)...
In recent years, direct data-driven controller tuning methods have been proposed as an alternative t...
Data-driven control design is a method to create and tune controllers directly from the initial expe...
In control applications where finding a model of the plant is costly and time consuming, direct data...
This paper illustrates the practical application of non-iterative correlation-based tuning with guar...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...
The direct tuning of controller parameters, which is based on data-driven control, has been attracti...
We generalize a recently introduced data-driven approach for model-reference control design with clo...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
This paper proposes two kinds of data-driven controller tuning. The proposed methods are derived fro...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
The paper deals with the problem of designing controllers from experimental data. We propose a non-i...
In model reference control, the objective is to design a controller such that the closed-loop system...
A one-shot data-driven tuning method for a fractional-order proportional-integral-derivative (FOPID)...
In recent years, direct data-driven controller tuning methods have been proposed as an alternative t...
Data-driven control design is a method to create and tune controllers directly from the initial expe...
In control applications where finding a model of the plant is costly and time consuming, direct data...
This paper illustrates the practical application of non-iterative correlation-based tuning with guar...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...