Parameter estimation Grey-box modeling: Difference between 'lsqnonlin' / 'fmincon' / 'greyest'

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Dear Community,
could anybody please explain me the difference between 'lsqnonlin' / 'fmincon' / 'greyest' in content with Parameter Estimation of Grey-Box models (RC-models)?
Thank you in advance.

Respuestas (1)

Udit06
Udit06 el 22 de Nov. de 2024
Hi Verena,
Each method uniquely addresses different modeling and optimization requirements.
greyest is designed for linear grey-box models with a known structure, making it highly effective for system identification by using input-output data to estimate parameters.
On the other hand, fmincon serves as a flexible nonlinear optimization tool, ideal for tackling problems with complex constraints by minimizing a scalar objective function within specified bounds.
In contrast, lsqnonlin is adept at handling nonlinear least-squares challenges, concentrating on reducing the sum of squared residuals, which makes it particularly well-suited for curve fitting tasks that do not involve extensive constraints.
You can refer to the following MathWorks documentations for more details:
I hope this helps.

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