# How to use the data matrix to fit the specific 2D-function in matlab

Provided that I have the 5*5 dataArray

``````    d=    [0.0177104427823448,0.00246661459209512,0.0399831543374395,0.0615494164555707,0.0476204124707652;0.0275276152854314,0.0219153841813084,0.0581144391404502,0.144890028400954,0.157839631316098;0.0622883972729130,0.0716157303159909,0.245482781674067,0.123999612575059,0.177495187746408;0.0200735764542146,0.0573087934038160,0.0636451189717613,0.0160810084568415,0.0484992279558924;0.0185180386159227,0.00841167700273800,0.0372017422726281,0.0173721095082637,0.0459520362441099]
``````

And I want to use the data to fit the specific 2D-function with a least-square fitting technique. The fuction is like this:

``````    r = alfa*sin(pi*(n1+delta1))*sin(pi*(n2+delta2)) / (25*sin(pi/5*(n1+delta1))*sin(pi/5*(n2+delta2))),
``````

where alfa,delta1,delta2 are the parameter that need to be extimated, and n1,n2 range from 1 to 5.

The function fitting result will be like this:

I don't know how to do these things in MATLAB. Can anyone help me? Thank you very much!

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Do you have the curve fitting toolbox? If you do then `lsqnonlin` is your best bet. Otherwise maybe have a look at `fmincon` –  Dan Jul 24 at 14:39
Yeah,I do have.But can `lsqnonlin` solve the 2D-function fitting problem? @Dan –  YeCong Lu Jul 24 at 15:22
Sure, it takes a little manipulation though: mathworks.com/matlabcentral/newsreader/view_thread/238630 –  Dan Jul 24 at 15:30
Well,I've implemented the function fitting procedure folowing the website you posted and I've posted the code as an answer to my question.But the result is not so good cause there should be a peak in the final result, while the fitting data is more smooth than the original data! @Dan –  YeCong Lu Jul 25 at 3:25
Try and interpolate your 5x5 matrix before the fitting? –  Dan Jul 25 at 6:48

Well,thanks to @Dan.My question seems to be implemented like this:

``````[n,m]=size(d);%assumes that d is a n x m matrix
x(:,1)=X(:); % x= first column
x(:,2)=Y(:); % y= second column
f=d(:); % your data f(x,y) (in column vector)

%--- now define the function in terms of x
%--- where you use x(:,1)=X and x(:,2)=Y
fun = @(c,x) c(1)*sin(pi*(x(:,1)+c(2))).*sin(pi*(x(:,2)+c(3))) ./ (25*sin(pi/5*(x(:,1)+c(2))).*sin(pi/5*(x(:,2)+c(3))));

%--- now solve with lsqcurvefit
options=optimset('TolX',1e-6);
c0=[1 0 0];%start-guess here
cc=lsqcurvefit(fun,c0,x,f,[],[],options);
Ifit=fun(cc,x);
Ifit=reshape(Ifit,[n m]);%fitting data reshaped as matrix
surf(X,Y,Ifit);
hold on;
plot3(X, Y, dataArray);
``````
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