Title of article
The cost of complexity in system identification: The Output Error case
Author/Authors
Rojas، نويسنده , , Cristian R. and Barenthin، نويسنده , , Mنrta and Welsh، نويسنده , , James S. and Hjalmarsson، نويسنده , , Hهkan، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
11
From page
1938
To page
1948
Abstract
In this paper we investigate the cost of complexity, which is defined as the minimum amount of input power required to estimate the frequency response of a given linear time invariant system of order n with a prescribed degree of accuracy. In particular we require that the asymptotic (in the data length) variance is less or equal to γ over a prespecified frequency range [ 0 , ω B ] . The models considered here are Output Error models, with an emphasis on fixed denominator and Laguerre models. Several properties of the cost are derived. For instance, we present an expression which shows how the pole of the Laguerre model affects the cost. These results quantify how the cost of the system identification experiment depends on n and on the model structure. Also, they show the relation between the cost and the amount of information we would like to extract from the system (in terms of ω B and γ ). For simplicity we assume that there is no undermodelling.
Keywords
Experiment design , System identification , LMI optimization , Asymptotic variance , Prediction error method
Journal title
Automatica
Serial Year
2011
Journal title
Automatica
Record number
1448437
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