Practical identification of NARMAX models using radial basis functions
- 1 December 1990
- journal article
- research article
- Published by Taylor & Francis in International Journal of Control
- Vol. 52 (6) , 1327-1350
- https://doi.org/10.1080/00207179008953599
Abstract
A wide class of discrete-time non-linear systems can be represented by the nonlinear autoregressive moving average (NARMAX) model with exogenous inputs. This paper develops a practical algorithm for identifying NARMAX models based on radial basis functions from noise-corrupted data. The algorithm consists of an iterative orthogonal-forward-regression routine coupled with model validity tests. The orthogonal-forward-regression routine selects parsimonious radial-basisTunc-tion models, while the model validity tests measure the quality of fit. The modelling of a liquid level system and an automotive diesel engine are included to demonstrate the effectiveness of the identification procedure.Keywords
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