Nonlinear identification with input output data

4 vues (au cours des 30 derniers jours)
erfan hassani
erfan hassani le 24 Jan 2021
Commenté : erfan hassani le 3 Avr 2021
Hello, I have a database about a valve, and I want to identify the dynamic of system ( mathematical model). The data has lots of random numbers for ECC and RSA coding, I tried to somehow do a little preprocessing by removing irrelevent numbers.
I don't know how to identify a system model and tried systemidentification Toolbox, but it didn't work and it only fit 1.08% at maximom with NARX. Is there any other toolbox or a method for non-linear identification? I just need a model of system for other porpuses, so I don't look for 90% fit!!
  2 commentaires
Khaled Aljanaideh
Khaled Aljanaideh le 5 Fév 2021
Hi Erfan,
Can you give information about the system you are trying to identify? Do you have a model structure that describes your system? If so, then you can use idnlgrey to estimate the parameters of the model
The accuracy of the Nonlinear ARX (NARX) model you obtain depends on the choice of regressors. Please try to add more regressors of different types and delays.
Another option you can try is Nonlinear Hammerstein-Weiner models, which you can find under the same dialog as the NARX model.
erfan hassani
erfan hassani le 3 Avr 2021
Hi Khaled,
Unfortunately, I do not have any information about the system, I have input/output data of a fire fighting valve that I want to control with NN. I searched a lot for any model structure, but there is nothing about it.
I used both NARX and Nonlinear Hammerstein-Weiner models, but still, I can not determine the model.

Connectez-vous pour commenter.

Réponses (0)

Catégories

En savoir plus sur Linear Model Identification dans Help Center et File Exchange

Produits


Version

R2018b

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by