Complex value computed by model function, fitting cannot continue. Try using or tightening upper and lower bounds on coefficients.
Show older comments
Hello, I really need some help on data fitting. I would like to fit my data custom equation:a+b*exp((-(x/c))^d. I try to use upper and lower bounds on coefficients but it does not work.If anyone can tell me what to do to resolve this I would greatly appreciate it.
4 Comments
We do not know what you tried (no code is shown), so we cannot guess what went wrong. I will point out though that the model is over-parametrized. It is enough to use 3-parameters y=a+b*exp(-c*x). No custom equation is needed for this - it falls within the 'exp2' fitType of the fit() command.
Torsten
on 3 Jun 2024
Because of the error message and the overfitting, I suspect
a+b*exp(-(x/c)^d)
instead of
a+b*exp((-(x/c))^d
is meant.
Daniel Jiao
on 4 Jun 2024
Accepted Answer
More Answers (1)
hello
a very basic code using only fminsearch (no toolbox required )
I preferred to smooth a bit your data (otherwise it looks more like a cloud) but it's not absolutely needed - but you end up with other parameters after the fit
hope it helps !
data = readmatrix('200ms_SD.xlsx');
x = data(:,1);
y = data(:,2);
[x,ia,ic] = unique(x);
y = y(ia);
ys = smoothdata(y,'gaussian',100);
% curve fit using fminsearch
% model a+b*exp((-(x/c))^d
f = @(a,b,c,d,x) a + b.*exp(-(x/c).^d);
obj_fun = @(params) norm(f(params(1), params(2), params(3), params(4),x)-ys);
sol = fminsearch(obj_fun, [ys(end),(max(ys)-ys(end)),1,1]);
a_sol = sol(1)
b_sol = sol(2)
c_sol = sol(3)
d_sol = sol(4)
y_fit = f(a_sol, b_sol, c_sol, d_sol, x);
R2 = my_R2_coeff(ys,y_fit); % correlation coefficient
plot(x,y, 'k.',x,ys,'r',x, y_fit,'b-')
title([' Fit / R² = ' num2str(R2) ], 'FontSize', 15)
legend('raw data','smoothed','fit');
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
function R2 = my_R2_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 (R squared) is
R2 = 1 - sum_of_squares_of_residuals/sum_of_squares;
end
1 Comment
Daniel Jiao
on 4 Jun 2024
Categories
Find more on Get Started with Curve Fitting Toolbox in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!

