In this paper, we generalize existing fundamental limitations on the accuracy of the estimation of dynamic models. In addition, we study the large sample statistical behavior of different estimation-based controller design strategies. In particular, fundamental limitations on the closed-loop performance using a controller obtained by Virtual Reference Feedback Tuning (VRFT) are studied. We also extend our results to more general estimation-based control design strategies. We present numerical examples to show the application of our results
The links between identification and control are examined. The main trends in this research area are...
Asymptotic variance expressions are analysed for models that are identified on the basis of closed-l...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
In this chapter, we compare two approaches to the data-driven control (DDC) design problem. In this ...
We compare open loop versus closed loop identification when the identified model is used for control...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
This paper deals with robust experiment design for the Virtual Reference Feedback Tuning (VRFT) appr...
Virtual Reference Feedback Tuning (VRFT) is a well established tool to design model-reference contro...
Abstract—Firstly the controller using virtual reference feedback control design, at the same time co...
This paper gives an introduction to recent work on the problem of quantifying errors in the estimati...
In recent years, direct data-driven controller tuning methods have been proposed as an alternative t...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...
Abstract — Model Reference control design methods fail when the plant has one or more non minimum ph...
This paper proposes two kinds of data-driven controller tuning. The proposed methods are derived fro...
In this contribution we shall describe a rather unified way of expressing bias and variance in predi...
The links between identification and control are examined. The main trends in this research area are...
Asymptotic variance expressions are analysed for models that are identified on the basis of closed-l...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...
In this chapter, we compare two approaches to the data-driven control (DDC) design problem. In this ...
We compare open loop versus closed loop identification when the identified model is used for control...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
This paper deals with robust experiment design for the Virtual Reference Feedback Tuning (VRFT) appr...
Virtual Reference Feedback Tuning (VRFT) is a well established tool to design model-reference contro...
Abstract—Firstly the controller using virtual reference feedback control design, at the same time co...
This paper gives an introduction to recent work on the problem of quantifying errors in the estimati...
In recent years, direct data-driven controller tuning methods have been proposed as an alternative t...
In recent years, noniterative Correlation-based Tuning (CbT) and Virtual Reference Feedback Tuning (...
Abstract — Model Reference control design methods fail when the plant has one or more non minimum ph...
This paper proposes two kinds of data-driven controller tuning. The proposed methods are derived fro...
In this contribution we shall describe a rather unified way of expressing bias and variance in predi...
The links between identification and control are examined. The main trends in this research area are...
Asymptotic variance expressions are analysed for models that are identified on the basis of closed-l...
In direct data-driven controller tuning, a mathematical model of the plant is not needed, as the con...