How to optimise a specific equation in a model in order to fit the final curve of the model?
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Hello,
I am developing a model and trying to validate this model with some experimental data. Two  degree polynomial equations are used in this model as follows:
 degree polynomial equations are used in this model as follows:
 degree polynomial equations are used in this model as follows:
 degree polynomial equations are used in this model as follows: where
   where  
 where
   where  
The validation figure based on the aforementioned equations is as follows:

I would like to optimise the constants of  ,or even use higher degree polynomial equations in order to get the best fitting to the experimental data. Is there a code or a function in MATLAB that can simultaneously optimise several constants or pameters?
 ,or even use higher degree polynomial equations in order to get the best fitting to the experimental data. Is there a code or a function in MATLAB that can simultaneously optimise several constants or pameters?
 ,or even use higher degree polynomial equations in order to get the best fitting to the experimental data. Is there a code or a function in MATLAB that can simultaneously optimise several constants or pameters?
 ,or even use higher degree polynomial equations in order to get the best fitting to the experimental data. Is there a code or a function in MATLAB that can simultaneously optimise several constants or pameters?Thank you in advance.
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Answers (1)
  Matt J
      
      
 on 9 Nov 2023
        13 Comments
  Torsten
      
      
 on 13 Nov 2023
				Further, it was intentionally that I chose p(1) and p(2) not equal to 0 in my code suggestion (you divide by them !).
  Matt J
      
      
 on 13 Nov 2023
				I just see that T is a constant (383) and does not vary with i. In this case, the fitting as suggested doesn't make sense. Alternatively, you can use two different constants in the denominator and fit them:
In fact, you don't need more than one parameter, p1. The model can be rewritten,

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