In model reference control, the objective is to design a controller such that the closed-loop system resembles a reference model. In the standard model-based solution, a plant model replaces the unknown plant in the design phase. The norm of the error between the controlled plant model and the reference model is minimized. The order of the resulting controller depends on the order of the plant model. Furthermore, since the plant model is not exact, the achieved closed-loop performance is limited by the quality of the model. In recent years, several data-driven techniques have been proposed as an alternative to this model-based approach. In these approaches, the order of the controller can be fixed. Since no model is used, the problem of und...
Noniterative data-driven techniques are design methods that allow optimal feedback control laws to b...
Abstract — Model Reference control design methods fail when the plant has one or more non minimum ph...
We introduce a novel data-driven model-reference control design approach for unknown linear systems ...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
International audienceThe choice of a reference model in data-driven control techniques is a critica...
We generalize a recently introduced data-driven approach for model-reference control design with clo...
In recent years, direct data-driven controller tuning methods have been proposed as an alternative t...
We introduce a novel data-driven model-reference control design approach for unknown linear systems ...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...
High performance output tracking can be achieved by precompensator or feedforward controllers based ...
Designing controllers directly from data often requires choosing a reference closed-loop model, whos...
In control applications where finding a model of the plant is costly and time consuming, direct data...
Data-driven tuning is an alternative to model-based controller design where controllers are directly...
The direct tuning of controller parameters, which is based on data-driven control, has been attracti...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
Noniterative data-driven techniques are design methods that allow optimal feedback control laws to b...
Abstract — Model Reference control design methods fail when the plant has one or more non minimum ph...
We introduce a novel data-driven model-reference control design approach for unknown linear systems ...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
International audienceThe choice of a reference model in data-driven control techniques is a critica...
We generalize a recently introduced data-driven approach for model-reference control design with clo...
In recent years, direct data-driven controller tuning methods have been proposed as an alternative t...
We introduce a novel data-driven model-reference control design approach for unknown linear systems ...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...
High performance output tracking can be achieved by precompensator or feedforward controllers based ...
Designing controllers directly from data often requires choosing a reference closed-loop model, whos...
In control applications where finding a model of the plant is costly and time consuming, direct data...
Data-driven tuning is an alternative to model-based controller design where controllers are directly...
The direct tuning of controller parameters, which is based on data-driven control, has been attracti...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
Noniterative data-driven techniques are design methods that allow optimal feedback control laws to b...
Abstract — Model Reference control design methods fail when the plant has one or more non minimum ph...
We introduce a novel data-driven model-reference control design approach for unknown linear systems ...