How to fit curve using for loop?

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AS
AS on 4 Oct 2021
Commented: Mathieu NOE on 25 Oct 2021
I have a 15 number of signals with data point 64 in each. I want to use loop to fit all the signals with fittype 'gauss2' and plot all the curves with thier fitting. I have written like this but it is showing eroor. Kindly suggest me to resolve this. Thank you.
figure;
for i1=1:64
for j1=1:15
recon1_f(j1)=fit(t(i1),recon_amp2_1(:,j1),'gauss2');
h2{i}=plot(recon1_f(j1),t,recon_amp2_1(:,j1));
ylim([0 0.05]);
end
end
  1 Comment
Mathieu NOE
Mathieu NOE on 4 Oct 2021
hi
maybe you should share some data so we can test the code
tx

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Accepted Answer

Mathieu NOE
Mathieu NOE on 4 Oct 2021
hello again
in the mean time I created this example (only 5 loops) on dummy data
you can easily expand and adapt it to your own needs
NB you only need one for loop and not two as in your code
hope it helps
clearvars
clc
% dummy data
x1 = [0:1:20];
y1 = [0,0.004,0.008,0.024,0.054,0.112,0.33,0.508,0.712,0.926,1,0.874,0.602,0.404,0.252,0.146,0.074,0.036,0.018,0.004,0];
for ci = 1:5
% modify x and y range (dummy data generation)
x = x1*ci;
y = y1*ci^2 + 0.1*rand(size(y1));
% curve fit using fminsearch
f = @(a,b,c,x) a.*exp(-(x-b).^2 / c.^2);
obj_fun = @(params) norm(f(params(1), params(2), params(3),x)-y);
sol = fminsearch(obj_fun, [max(y),max(x)/2,max(x)/6]);
a_sol = sol(1);
b_sol = sol(2);
c_sol = sol(3);
xx = linspace(min(x),max(x),300);
y_fit = f(a_sol, b_sol,c_sol, xx);
yy = interp1(x,y, xx);
Rsquared = my_Rsquared_coeff(yy,y_fit); % correlation coefficient
figure(ci)
plot(xx, y_fit, '-',x,y, 'r .', 'MarkerSize', 40)
title(['Gaussian Fit / R² = ' num2str(Rsquared) ], 'FontSize', 15)
ylabel('Intensity (arb. unit)', 'FontSize', 14)
xlabel('x(nm)', 'FontSize', 14)
eqn = " y = "+a_sol+ " * exp(-(x - " +b_sol+")² / (" +c_sol+ ")²";
legend(eqn)
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
function Rsquared = my_Rsquared_coeff(data,data_fit)
% R2 correlation coefficient computation
% The total sum of squares
sum_of_squares = sum((data-mean(data)).^2);
% The sum of squares of residuals, also called the residual sum of squares:
sum_of_squares_of_residuals = sum((data-data_fit).^2);
% definition of the coefficient of correlation is
Rsquared = 1 - sum_of_squares_of_residuals/sum_of_squares;
end
  20 Comments
AS
AS on 22 Oct 2021
I want creat the matrix c from kmin to kmax.like c(2,5,1)....c(3,5,2).....c(20,5,19)....
But, using this code it is giving the final value of kmax with varying 1: 19.
So, how it will be solved. knidly, suggest me to resolve it. Thank you.
kmin=2;
kmax=20;
p=randperm(size(data,1)); % data is 3375 by 5
% generate initial centre
for i=kmin:kmax
for i1=1:5
for i2=1:19
c(i,:,i2)=(data(p(i),:));
end
end
end
Mathieu NOE
Mathieu NOE on 25 Oct 2021
hello
seems to me the index i1 is not usedin the line
c(i,:,i2)=(data(p(i),:));
so It should be
c(i,i1,i2)=(data(p(i),:));

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