How do I fit a nonlinear function correctly in matlab

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I have the following table, named "test":
0.0037071 0.5
0.015203 1
0.035039 1.5
0.062272 2
0.093988 2.5
0.12776 3
0.16291 3.5
0.19991 4
0.24002 4.5
0.28574 5
0.34696 5.5
0.47879 6
1.8882 6.1125
Now I want do fit a nonlinear function (error function) using matlab:
modelfun = @(b,x)erf(b(1)*x)./b(2) + b(3);
beta0 = [0, 0, 0];
mdl = fitnlm(test,modelfun,beta0)
But I get the following error:
Error using nlinfit (line 247)
No usable observations after removing NaNs in Y and in the result of evaluating MODELFUN at the initial value BETA0.
How can I solve this ?
(and how can I get the final fitted nonlinear function for plotting ? )

Answers (1)

Rik
Rik on 18 Nov 2018
I don't have the toolbox that contains the fitnlm so I'm using fminsearch instead:
data=[...
0.0037071 0.5
0.015203 1
0.035039 1.5
0.062272 2
0.093988 2.5
0.12776 3
0.16291 3.5
0.19991 4
0.24002 4.5
0.28574 5
0.34696 5.5
0.47879 6
1.8882 6.1125 ];
x=data(:,2);y=data(:,1);
initial_guess=[0 0 0];
modelfun = @(b,x)erf(b(1)*x)./b(2) + b(3);
f=modelfun;
%objective least squares cost function
OLS=@(b,x,y,f) sum((f(b,x) - y).^2);
opts = optimset('MaxFunEvals',50000, 'MaxIter',10000);
% Use 'fminsearch' to minimise the 'OLS' function
fit_val = fminsearch(OLS, initial_guess(:), opts,x,y,f);
Now the fit_val variable contains the estimated values of b. Now you can generate a new x vector and use your modelfun to calculate the corresponding y values.
  2 Comments
Rik
Rik on 18 Nov 2018
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