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Original Articles

An identification algorithm for polynomial NARX models based on simulation error minimization

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Pages 1767-1781 | Accepted 13 Oct 2003, Published online: 21 May 2010
 

Abstract

Classical prediction error approaches for the identification of non-linear polynomial NARX/NARMAX models often yield unsatisfactory results for long-range prediction or simulation purposes, mainly due to incorrect or redundant model structure selection. The paper discusses some limitations of the standard approach and suggests two modifications: namely, a new index, based on the simulation error, is employed as the regressor selection criterion and a pruning mechanism is introduced in the model selection algorithm. The resulting algorithm is shown to be effective in the identification of compact and robust models, generally yielding model structures closer to the correct ones. Computational issues are also discussed. Finally, the identification algorithm is tested on a long-range prediction benchmark application.

Acknowledgement

Paper supported by MURST project ‘Identification and Control of Industrial Systems’.

Additional information

Notes on contributors

W. Spinelli

Communicated by A. Astolfi.

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