Model structure selection strategy for Wiener model identification with piecewise linearisation
Conference proceedings article
Authors/Editors
Strategic Research Themes
No matching items found.
Publication Details
Author list: Tanjad R., Wongsa S.
Publisher: Hindawi
Publication year: 2011
Start page: 553
End page: 556
Number of pages: 4
ISBN: 9781457704246
ISSN: 0146-9428
eISSN: 1745-4557
Languages: English-Great Britain (EN-GB)
Abstract
This paper presents a method for identifying the optimum structure of Wiener model with piecewise linearisation. The number of piecewise linear functions for estimating the static nonlinear and the maximum lag of the linear dynamic part of the Wiener model are selected by cross-validation based approach. The maximum lag and the number of partitions are selected in two subsequence steps. Three popular model selection criteria, i.e. FPE, PRESS, and CP, are considered and compared in the selection process. With the ultimate aim of compensation for nonlinearities in sensors, we have illustrated the feasibility of using the proposed method to compensate hard nonlinearities, such as discontinuous nonlinear and saturation. The results from this work can be used as a guideline of model selection for Wiener model identification and nonlinear compensations of sensor. ฉ 2011 IEEE.
Keywords
Model selection criteria, Nonlinear compensation, Piecewise linearisation, Wiener model identification