Multiple-variance cross-correlation method for Volterra series identification

Multiple-variance Volterra series identification
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Updated 25 Sep 2021

The multiple-variance identification method exploits input signals with different variances for nonlinear system identification with Volterra series.
It overcomes the problem of the locality of Volterra series identified with traditional identification methods, like those based on cross-correlation, that well approximate the system only for inputs that have approximately the same power of the identification signal.

Cite As

Simone Orcioni (2024). Multiple-variance cross-correlation method for Volterra series identification (https://github.com/orcioni/Volterra2.0), GitHub. Retrieved .

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Created with R2016b
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Version Published Release Notes
1.1.0.0

changed name and description
Multiple Memspan: it allows you to use different memspan for different order kernels

1.0.0.0

changes in tool description

To view or report issues in this GitHub add-on, visit the GitHub Repository.
To view or report issues in this GitHub add-on, visit the GitHub Repository.