The article presents a methodology for accurately estimating the Volterra kernels of a discrete-time nonlinear system, even when the system order exceeds that of the Volterra series model. The approach involves conducting multiple measurements with the same excitation signal, scaled by different gain factors, and deriving the Volterra kernels via interpolation of the measured data. The methodology is thoroughly discussed, and the mean square deviation (MSD) of the estimated coefficients is calculated to determine the optimal gain factors that minimize the MSD. It is demonstrated that the optimal gains are constrained to a specific set of values, which are provided in the article. Experimental results, using both synthetic and real systems, showcase the effectiveness of the proposed methodology.

A Polynomial Multiple Variance Method for Volterra Filter Identification / Carini, A.; Forti, R.; Orcioni, S.. - In: IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT. - ISSN 0018-9456. - 74:(2025). [10.1109/TIM.2025.3546397]

A Polynomial Multiple Variance Method for Volterra Filter Identification

Orcioni S.
Ultimo
2025-01-01

Abstract

The article presents a methodology for accurately estimating the Volterra kernels of a discrete-time nonlinear system, even when the system order exceeds that of the Volterra series model. The approach involves conducting multiple measurements with the same excitation signal, scaled by different gain factors, and deriving the Volterra kernels via interpolation of the measured data. The methodology is thoroughly discussed, and the mean square deviation (MSD) of the estimated coefficients is calculated to determine the optimal gain factors that minimize the MSD. It is demonstrated that the optimal gains are constrained to a specific set of values, which are provided in the article. Experimental results, using both synthetic and real systems, showcase the effectiveness of the proposed methodology.
2025
Multiple variance method; orthogonal periodic sequences; Volterra filter
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/347755
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