Problem fitting the curve with fminsearch

3 ビュー (過去 30 日間)
Xabier Tamayo
Xabier Tamayo 2023 年 10 月 9 日
編集済み: Matt J 2023 年 10 月 9 日
I have been trying to understand how fminsearch works or the result it gives me for at least a while (it doesnt fit my curve). I am trying to fit the curve but when I set the function to be in polynomial or sinusoidal form it does not fit the curve to the experimental like it does with the cftool.
One of the codes I am using is the following:
theta_i = -29:1:30;
theta_i = theta_i';
x_b = 3.85802467750551e-09 1.23456782463727e-07 9.37499560538235e-07 3.95060948021886e-06 1.20562544833058e-05 2.99995500044892e-05 6.48397188022232e-05 0.000126411762446210 0.000227786552702836 0.000385728056932932 0.000621145743629370 0.000959539347420657 0.00143143208410479 0.00207278707531322 0.00292540015345999 0.00403726036144925 0.00546286733815604 0.00726349240257385 0.00950736754606585 0.0122697837643895 0.0156330772872862 0.0196864794049803 0.0245258028990383 0.0302529357565231 0.0369751111287854 0.0448039216911671 0.0538540470230045 0.0642416647639122 0.0760825205564049 0.0894896386199658 0.104570664671209 0.121424846210700 0.140139672234976 0.160787215323602 0.183420243663010 0.208068198426751 0.234733162130625 0.263385974705427 0.293962684097702 0.326361544655273 0.360440796277300 0.396017466794855 0.432867435598924 0.470726974599819 0.509295940232559 0.548242725593590 0.587210994794329 0.625828114407609 0.663715074344481 0.700497560449578 0.735817714176249 0.769346003776893 0.800792550572930 0.829917216722031 0.856537778826176 0.880535591658960 0.901858288833670 0.920519265282326 0.936593924749780 0.950212931632136 ; % I have transposed the data just to copy it here so that it does not occupy much, it is a 60x1 matrix.
% if it were to be plotted it would look like plot(theta_i,x_b), the theta_i vector is the horizontal axis and the x_b the vertical.
IG = ones(1,6);
dF = [theta_i,x_b];
x33 = dF(:,1); %same as theta_i
y33 = dF(:,2); %same as x_b
P = fit2(dF,IG);
a1 = P(1);
a2 = P(2);
a3 = P(3);
a4 = P(4);
a5 = P(5);
a6 = P(6);
yfit = a1.*x33.^5 + a2.*x33.^4 + a3.*x33.^3 + a4.*x33.^2 + a5.*x33 + a6;
plot(theta_i,x_b);
hold on
plot (theta_i,yfit);
hold off
%% And the function is the next one:
function P = fit2(dF,IG)
x33 = dF(:,1);
y33 = dF(:,2);
function [ds] = fit(IG)
a1 = IG(1);
a2 = IG(2);
a3 = IG(3);
a4 = IG(4);
a5 = IG(5);
a6 = IG(6);
f33 = a1.*x33.^5 + a2.*x33.^4 + a3.*x33.^3 + a4.*x33.^2 + a5.*x33 + a6;
ds = (f33-y33).^2;
ds = sum(ds);
end
P = fminsearch (@fit,IG);
end
%maybe there are sombe bugs because y have edited a little bit for this post, but the idea i want to express i think its clear

採用された回答

Fabio Freschi
Fabio Freschi 2023 年 10 月 9 日
編集済み: Fabio Freschi 2023 年 10 月 9 日
I would use lsqnonlin: it's more general than polyfit suggested by @Torsten (that in this case would work perfectly). Qualitatively, it seems that the resulting fitting is good. In addition I have cleaned your code a little.
% your data
theta_i = (-29:1:30).';
x_b = [3.85802467750551e-09 1.23456782463727e-07 9.37499560538235e-07 3.95060948021886e-06 1.20562544833058e-05 2.99995500044892e-05 6.48397188022232e-05 0.000126411762446210 0.000227786552702836 0.000385728056932932 0.000621145743629370 0.000959539347420657 0.00143143208410479 0.00207278707531322 0.00292540015345999 0.00403726036144925 0.00546286733815604 0.00726349240257385 0.00950736754606585 0.0122697837643895 0.0156330772872862 0.0196864794049803 0.0245258028990383 0.0302529357565231 0.0369751111287854 0.0448039216911671 0.0538540470230045 0.0642416647639122 0.0760825205564049 0.0894896386199658 0.104570664671209 0.121424846210700 0.140139672234976 0.160787215323602 0.183420243663010 0.208068198426751 0.234733162130625 0.263385974705427 0.293962684097702 0.326361544655273 0.360440796277300 0.396017466794855 0.432867435598924 0.470726974599819 0.509295940232559 0.548242725593590 0.587210994794329 0.625828114407609 0.663715074344481 0.700497560449578 0.735817714176249 0.769346003776893 0.800792550572930 0.829917216722031 0.856537778826176 0.880535591658960 0.901858288833670 0.920519265282326 0.936593924749780 0.950212931632136].'; % I have transposed the data just to copy it here so that it does not occupy much, it is a 60x1 matrix.
% fitting function
yfit = @(a)a(1)*theta_i.^5+a(2)*theta_i.^4+a(3)*theta_i.^3+a(4)*theta_i.^2+a(5)*theta_i+a(6);
% function to minimize
fun = @(a)yfit(a)-x_b;
% initial values
x0 = ones(6,1);
x = lsqnonlin(fun,x0);
Local minimum possible. lsqnonlin stopped because the final change in the sum of squares relative to its initial value is less than the value of the function tolerance.
% plot
figure, hold on
plot(theta_i,x_b);
plot (theta_i,yfit(x));
  4 件のコメント
Fabio Freschi
Fabio Freschi 2023 年 10 月 9 日
@Torsten you are right... lsqnonlin is an automatic choice for me as first attempt with fitting
Fabio Freschi
Fabio Freschi 2023 年 10 月 9 日
移動済み: Matt J 2023 年 10 月 9 日
I changed the lsqnonlin with fminsearch. I had to play a little with options because I started from a blind initial guess
theta_i = (-29:1:30).';
x_b = [3.85802467750551e-09 1.23456782463727e-07 9.37499560538235e-07 3.95060948021886e-06 1.20562544833058e-05 2.99995500044892e-05 6.48397188022232e-05 0.000126411762446210 0.000227786552702836 0.000385728056932932 0.000621145743629370 0.000959539347420657 0.00143143208410479 0.00207278707531322 0.00292540015345999 0.00403726036144925 0.00546286733815604 0.00726349240257385 0.00950736754606585 0.0122697837643895 0.0156330772872862 0.0196864794049803 0.0245258028990383 0.0302529357565231 0.0369751111287854 0.0448039216911671 0.0538540470230045 0.0642416647639122 0.0760825205564049 0.0894896386199658 0.104570664671209 0.121424846210700 0.140139672234976 0.160787215323602 0.183420243663010 0.208068198426751 0.234733162130625 0.263385974705427 0.293962684097702 0.326361544655273 0.360440796277300 0.396017466794855 0.432867435598924 0.470726974599819 0.509295940232559 0.548242725593590 0.587210994794329 0.625828114407609 0.663715074344481 0.700497560449578 0.735817714176249 0.769346003776893 0.800792550572930 0.829917216722031 0.856537778826176 0.880535591658960 0.901858288833670 0.920519265282326 0.936593924749780 0.950212931632136].'; % I have transposed the data just to copy it here so that it does not occupy much, it is a 60x1 matrix.
% if it were to be plotted it would look like plot(theta_i,x_b), the theta_i vector is the horizontal axis and the x_b the vertical.
% fitting function
yfit = @(a)a(1)*theta_i.^5+a(2)*theta_i.^4+a(3)*theta_i.^3+a(4)*theta_i.^2+a(5)*theta_i+a(6);
% function to minimize
fun = @(a)sum((yfit(a)-x_b).^2);
% initial values
x0 = ones(6,1);
% options
options = optimset('MaxFunEvals',1e6,'MaxIter',1e6,'TolX',1e-16,'TolFun',1e-16);
% fminsearch
[x,fval,exitflag,output] = fminsearch(fun,x0,options);
% plot
figure, hold on
plot(theta_i,x_b);
plot (theta_i,yfit(x));

サインインしてコメントする。

その他の回答 (3 件)

Torsten
Torsten 2023 年 10 月 9 日
編集済み: Torsten 2023 年 10 月 9 日
Using a polynomial of degree 5 to fit your data is a bad idea because the higher the degree, the greater the oscillations between the measurement data.
If you insist on your idea, use "polyfit" instead of your code.

Matt J
Matt J 2023 年 10 月 9 日
編集済み: Matt J 2023 年 10 月 9 日
but when I set the function to be in polynomial or sinusoidal form it does not fit the curve to the experimental like it does with the cftool
Are you sure you wouldn't rather use a Gaussian curve model? It seems much more appropriate, and is easily obtained by downloading gaussfitn:
theta_i = -29:1:30;
x_b = [3.85802467750551e-09 1.23456782463727e-07 9.37499560538235e-07 3.95060948021886e-06 1.20562544833058e-05 2.99995500044892e-05 6.48397188022232e-05 0.000126411762446210 0.000227786552702836 0.000385728056932932 0.000621145743629370 0.000959539347420657 0.00143143208410479 0.00207278707531322 0.00292540015345999 0.00403726036144925 0.00546286733815604 0.00726349240257385 0.00950736754606585 0.0122697837643895 0.0156330772872862 0.0196864794049803 0.0245258028990383 0.0302529357565231 0.0369751111287854 0.0448039216911671 0.0538540470230045 0.0642416647639122 0.0760825205564049 0.0894896386199658 0.104570664671209 0.121424846210700 0.140139672234976 0.160787215323602 0.183420243663010 0.208068198426751 0.234733162130625 0.263385974705427 0.293962684097702 0.326361544655273 0.360440796277300 0.396017466794855 0.432867435598924 0.470726974599819 0.509295940232559 0.548242725593590 0.587210994794329 0.625828114407609 0.663715074344481 0.700497560449578 0.735817714176249 0.769346003776893 0.800792550572930 0.829917216722031 0.856537778826176 0.880535591658960 0.901858288833670 0.920519265282326 0.936593924749780 0.950212931632136 ] ;
params=gaussfitn(theta_i',x_b');
Local minimum possible. lsqcurvefit stopped because the final change in the sum of squares relative to its initial value is less than the value of the function tolerance.
[D,A,mu,sig]=deal(params{:});
x = D + A*exp( -0.5 * (theta_i-mu).^2/sig );
plot(theta_i,x_b,'x',theta_i,x); legend('Data', 'Gauss Fit','Location','SouthEast')
  1 件のコメント
Matt J
Matt J 2023 年 10 月 9 日
編集済み: Matt J 2023 年 10 月 9 日
With fminsearch:
theta_i = -29:1:30;
x_b = [3.85802467750551e-09 1.23456782463727e-07 9.37499560538235e-07 3.95060948021886e-06 1.20562544833058e-05 2.99995500044892e-05 6.48397188022232e-05 0.000126411762446210 0.000227786552702836 0.000385728056932932 0.000621145743629370 0.000959539347420657 0.00143143208410479 0.00207278707531322 0.00292540015345999 0.00403726036144925 0.00546286733815604 0.00726349240257385 0.00950736754606585 0.0122697837643895 0.0156330772872862 0.0196864794049803 0.0245258028990383 0.0302529357565231 0.0369751111287854 0.0448039216911671 0.0538540470230045 0.0642416647639122 0.0760825205564049 0.0894896386199658 0.104570664671209 0.121424846210700 0.140139672234976 0.160787215323602 0.183420243663010 0.208068198426751 0.234733162130625 0.263385974705427 0.293962684097702 0.326361544655273 0.360440796277300 0.396017466794855 0.432867435598924 0.470726974599819 0.509295940232559 0.548242725593590 0.587210994794329 0.625828114407609 0.663715074344481 0.700497560449578 0.735817714176249 0.769346003776893 0.800792550572930 0.829917216722031 0.856537778826176 0.880535591658960 0.901858288833670 0.920519265282326 0.936593924749780 0.950212931632136 ] ;
fun=@(p) mdlFcn(p,theta_i, x_b);
p=fminsearch(fun, [15,30]);
[~,DA,x]=fun(p);
plot(theta_i,x_b,'x',theta_i,x); legend('Data', 'Gauss Fit','Location','SouthEast')
function [cost,DA,x]=mdlFcn(p,theta, x_b)
g=exp( -0.5 * (theta(:)-p(1)).^2/p(2) );
G=[g.^0,g];
DA=G\x_b(:);
x=G*DA; %predicted curve
cost=norm(x-x_b(:));
end

サインインしてコメントする。


Xabier Tamayo
Xabier Tamayo 2023 年 10 月 9 日
The two ways that you have sent are very good and fast, but unfortunately they force me to use the fminsearch command. Any idea how to do it that way?
  3 件のコメント
Fabio Freschi
Fabio Freschi 2023 年 10 月 9 日
編集済み: Fabio Freschi 2023 年 10 月 9 日
Nice trick to make fminsearch "converge"...
Torsten
Torsten 2023 年 10 月 9 日
You should take @Fabio Freschi 's solution. It's more ... serious.

サインインしてコメントする。

カテゴリ

Help Center および File ExchangeInterpolation についてさらに検索

製品


リリース

R2022b

Community Treasure Hunt

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

Start Hunting!

Translated by