4.7 Article

On the estimation of transfer functions, regularizations and Gaussian processes-Revisited

Journal

AUTOMATICA
Volume 48, Issue 8, Pages 1525-1535

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.automatica.2012.05.026

Keywords

System identification; Transfer function estimation; Regularization; Bayesian inference; Gaussian process; Mean square error; Bias-variance trade-off

Funding

  1. Foundation for Strategic Research, SSF, under the Center MOVIII
  2. Swedish Research Council, VR, within the Linnaeus Center CADICS
  3. European Research Council [267381]
  4. European Research Council (ERC) [267381] Funding Source: European Research Council (ERC)

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Intrigued by some recent results on impulse response estimation by kernel and nonparametric techniques, we revisit the old problem of transfer function estimation from input-output measurements. We formulate a classical regularization approach, focused on finite impulse response (FIR) models, and find that regularization is necessary to cope with the high variance problem. This basic, regularized least squares approach is then a focal point for interpreting other techniques, like Bayesian inference and Gaussian process regression. The main issue is how to determine a suitable regularization matrix (Bayesian prior or kernel). Several regularization matrices are provided and numerically evaluated on a data bank of test systems and data sets. Our findings based on the data bank are as follows. The classical regularization approach with carefully chosen regularization matrices shows slightly better accuracy and clearly better robustness in estimating the impulse response than the standard approach - the prediction error method/maximum likelihood (PEM/ML) approach. If the goal is to estimate a model of given order as well as possible, a low order model is often better estimated by the PEM/ML approach, and a higher order model is often better estimated by model reduction on a high order regularized FIR model estimated with careful regularization. Moreover, an optimal regularization matrix that minimizes the mean square error matrix is derived and studied. The importance of this result lies in that it gives the theoretical upper bound on the accuracy that can be achieved for this classical regularization approach. (c) 2012 Elsevier Ltd. All rights reserved.

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