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Identification of non-linear systems using general state-dependent models

Published online by Cambridge University Press:  14 July 2016

Abstract

This paper describes an extension of the SDM scheme introduced by Priestley (1980) to the problem of the identification of non-linear systems using only input/output records. It is shown that, under quite general assumptions on the structure of the system, it is possible to identify a non-linear relationship between the input and output processes via a modified version of the Kalman-type algorithm previously applied to the study of non-linear time series models. The paper includes a numerical study of data generated from various types of non-linear systems.

Type
Part 4—Non-linear and Non-stationary Systems in Time Series
Copyright
Copyright © 1986 Applied Probability Trust 

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