Why do my coeffvalues not produce a sensible result?

1 次查看(过去 30 天)
I have a script that uses the fit fuction on some data using a poly55 fit type. I then use this to get the coeffvalues for the fittted curve and try to replot the surface using the coeffvalues but the result produced is orders of magnitude different from the original data.
Script attached as well as some example data.
Can anyone explain what is happening or recommend a way forward?

采纳的回答

Torsten
Torsten 2019-8-28
If you use the 'Normalize','on' fitting option, your polynomial has powers of (x-meanx)/stdx and (y-meany)/stdy instead of x and y.
  2 个评论
Nicholas Turton
Nicholas Turton 2019-8-28
Hi Torsten,
Can you elaborate. I am new to matlab and not following fully what you mean
I have used
[Psi_d_xData, Psi_d_yData, Psi_d_zData] = prepareSurfaceData( id_ind, iq_ind, Psi_d);
[Psi_d_fitresult, Psi_d_gof] = fit( [Psi_d_xData, Psi_d_yData], Psi_d_zData, ft, 'Normalize', 'on' );% Fit model to data.
Psi_d_coeffvals = coeffvalues(Psi_d_fitresult);
curvefit.png
which when produced numel(Psi_d_coeffvals) = 21
Using the poly55 eqation
f(x,y) = p00 + p10*x + p01*y + p20*x^2 + p11*x*y + p02*y^2 + p30*x^3 + p21*x^2*y
+ p12*x*y^2 + p03*y^3 + p40*x^4 + p31*x^3*y + p22*x^2*y^2
+ p13*x*y^3 + p04*y^4 + p50*x^5 + p41*x^4*y + p32*x^3*y^2
+ p23*x^2*y^3 + p14*x*y^4 + p05*y^5
...I have then called up each of these coeffvals as well as my desired x and y values to try and reproduce the curve but only could manage the following
reproduced curve.png
Are you saying I need to calculate the mean and std values of x and y and use these in the calculation?
Torsten
Torsten 2019-8-28
if you switch the mentioned option off, you can use the polynomial you defined in the calculation.
Otherwise you will have to insert (x-meanx)/stdx for x and (y-meany)/stdy for y in the calculation for your polynomial value:
f(x,y) = p00 + p10*(x-meanx)/stdx + p01*(y-meany)/stdy + p20*((x-meanx)/stdx))^2 + ...

请先登录,再进行评论。

更多回答(1 个)

Nicholas Turton
Nicholas Turton 2019-8-28
Thanks Torsten, it worked perfectly
function output_fit = fittingcurve(x_data, y_data, coeffvals)
x_mean = mean(x_data(1,:));
x_std = std(x_data(1,:));
y_mean = mean(y_data(:,1));
y_std = std(y_data(:,1));
output_fit = ...
coeffvals(1) ...
+ coeffvals(2).*((x_data-x_mean)./x_std) ...
+ coeffvals(3).*((y_data-y_mean)./y_std) ...
+ coeffvals(4).*((x_data-x_mean)./x_std).^2 ...
+ coeffvals(5).*((x_data-x_mean)./x_std).*((y_data-y_mean)./y_std) ...
+ coeffvals(6).*((y_data-y_mean)./y_std).^2 ...
+ coeffvals(7).*((x_data-x_mean)./x_std).^3 ...
+ coeffvals(8).*((x_data-x_mean)./x_std).^2.*((y_data-y_mean)./y_std) ...
+ coeffvals(9).*((x_data-x_mean)./x_std).*((y_data-y_mean)./y_std).^2 ...
+ coeffvals(10).*((y_data-y_mean)./y_std).^3 ...
+ coeffvals(11).*((x_data-x_mean)./x_std).^4 ...
+ coeffvals(12).*((x_data-x_mean)./x_std).^3.*((y_data-y_mean)./y_std) ...
+ coeffvals(13).*((x_data-x_mean)./x_std).^2.*((y_data-y_mean)./y_std).^2 ...
+ coeffvals(14).*((x_data-x_mean)./x_std).*((y_data-y_mean)./y_std).^3 ...
+ coeffvals(15).*((y_data-y_mean)./y_std).^4 ...
+ coeffvals(16).*((x_data-x_mean)./x_std).^5 ...
+ coeffvals(17).*((x_data-x_mean)./x_std).^4.*((y_data-y_mean)./y_std) ...
+ coeffvals(18).*((x_data-x_mean)./x_std).^3.*((y_data-y_mean)./y_std).^2 ...
+ coeffvals(19).*((x_data-x_mean)./x_std).^2.*((y_data-y_mean)./y_std).^3 ...
+ coeffvals(20).*((x_data-x_mean)./x_std).*((y_data-y_mean)./y_std).^4 ...
+ coeffvals(21).*((y_data-y_mean)./y_std).^5;
reproduced curve.png

类别

Help CenterFile Exchange 中查找有关 Linear and Nonlinear Regression 的更多信息

标签

产品

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by