Publications

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2018
Boeira, EC, Eckhard D.  2018.  Multivariable Virtual Reference Feedback Tuning with Bayesian regularization. XXII Congresso Brasileiro de Automática. :1–8., João Pessoa: {SBA} Sociedade Brasileira de Automática Abstract

This paper proposes the use of regularization on the multivariable formulation of the Virtual Reference Feedback Tuning (VRFT). When the process to be controlled has a significant amount of noise, the standard VRFT approach, that uses the instrumental variable technique, provides estimates with very poor statistical properties. To cope with that, this paper considers the use of regularization on the estimation procedure, reducing the covariance error at the cost of inserting a small bias. Also, this paper explains different types of regularization matrices and presents the methodology to tune these matrices. In order to demonstrate the benefits of the proposed formulation, a numerical example is presented.

2016
Flores, JV, Eckhard D, Salton AT.  2016.  Modified {MIMO} Resonant Controller Robust to Period Variation and Parametric Uncertainty, Sept. 2016 {IEEE} Conference on Control Applications ({CCA}). :1256–1261., Buenos Aires: IEEE Abstract

In this work a modified Resonant Controller is proposed to deal with the tracking/rejection problem of periodic signals robust to period variations and parametric uncertainties in the plant. The control strategy is based on a resonant structure in series with a notch filter, which will be responsible to improve the robustness to period variation. A robust state feedback controller is designed by solving a linear matrix inequality (LMI) optimization problem guaranteeing the robust stability of the closed loop system. A numerical example is presented to illustrate the method.

2012
Eckhard, D, Hjalmarsson H, Rojas C, Gevers M.  2012.  Mean-Squared Error Experiment Design for Linear Regression Models. 16th {IFAC} Symposium on System Identification. :1629–1634., Brussels: IFAC Abstract

This work solves an experiment design problem for a linear regression problem using a reduced order model. The quality of the model is assessed using a mean square error measure that depends linearly on the parameters. The designed input signal ensures a predefined quality of the model while minimizing the input energy.

Campestrini, L, Eckhard D, Bazanella AS, Gevers M.  2012.  Model Reference Control Design by Prediction Error Identification. 16th {IFAC} Symposium on System Identification. :1478–1483., Brussels: IFAC Abstract

This paper studies a one-shot (non-iterative) data-based method for Model Reference (MR) control design. It shows that the optimal controller can be obtained as the solution of a Prediction Error (PE) identification problem that directly estimates the controller parameters through a reparametrization of the input-output model. The standard tools of PE Identification can thus be used to analyze the statistical properties (bias and variance) of the estimated controller. It also shows that, for MR control design, direct and indirect data-based methods are essentially equivalent.