Curve fitting toolbox giving different answer to custom function?

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AlexAS
AlexAS el 25 de Sept. de 2019
Respondida: Alex Sha el 28 de Sept. de 2019
Hello,
I have data which looks like this when plotted:
A custom equation summing a linear slope and a Gaussian gives me a really nice fit:
However, when I try to implement that as code, the fit fails pretty spectacularly.
% energy = 100-by-1 double
% counts = 100-by-1 double (both cropped from main data)
% if I use the toolbox to fit using 'energy' as the x-axis, it fails. However, if I use xdat it gives the result shown above.
xdat = linspace(1,length(counts), length(counts))';
% All this I copied from the 'Generate Code' option under 'File'. I thought I had a problem with StartPoint, but they're
[xData, yData] = prepareCurveData( xdat, counts );
% Set up fittype and options.
ft = fittype( '(m*x+c) + a1*exp(-((x-b1)/c1)^2)', 'independent', 'x', 'dependent', 'y' );
opts = fitoptions( 'Method', 'NonlinearLeastSquares' );
opts.Display = 'Off';
opts.StartPoint = [0.3302 0.2297 0.1139 0.3109 0.2284]; % these change, which I didn't expect when fitting the same data.
% Fit model to data.
[fitresult, gof] = fit( xData, yData, ft, opts );
plot(fitresult)
fitresult =
General model:
fitresult(x) = (m*x+c) + a1*exp(-((x-b1)/c1)^2)
Coefficients (with 95% confidence bounds):
a1 = 1042 (1024, 1059)
b1 = 59.75 (59.66, 59.85)
c = 311.4 (302.8, 319.9)
c1 = -7.268 (-7.415, -7.121)
m = -0.9449 (-1.094, -0.7957)
Any clue to where I am failing would be very much appreciated.
  3 comentarios
AlexAS
AlexAS el 26 de Sept. de 2019
Hi Alex, I've attached them. BW, Alex
the cyclist
the cyclist el 26 de Sept. de 2019
Sorry, is this an Alex-only question? Maybe I need to leave.

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Respuestas (2)

the cyclist
the cyclist el 25 de Sept. de 2019
Editada: the cyclist el 25 de Sept. de 2019
I don't fully understand what is going on here, but if I plot that function over the range 0:100 instead of 0:1, the shape of the curve is replicated:
x = 0 : 1 : 100;
a1 = 1042;
b1 = 59.75;
c = 311.4;
c1 = -7.268;
m = -0.9449;
fitresult = (m*x+c) + a1*exp(-((x-b1)/c1).^2);
figure
plot(x,fitresult)
That makes sense to me, since the exponential term clear has a peak where x == b1. I don't think the data you plotted in your first graph (which peaks around 1.05) is really what was fitted.
  1 comentario
AlexAS
AlexAS el 26 de Sept. de 2019
Thanks for this. I get the same result using your starting points, but it's still not clear to me where I'm going astray. However, I can at least move forward while I figure it out! Cheers, Alex

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Alex Sha
Alex Sha el 28 de Sept. de 2019
Hi, AlexAS, I get the global solution as fellow:
Root of Mean Square Error (RMSE): 23.9947153172582
Sum of Squared Residual: 58150.3826787827
Correlation Coef. (R): 0.996437682897764
R-Square: 0.992888055898666
Adjusted R-Square: 0.992742914182312
Determination Coef. (DC): 0.992888055898665
Chi-Square: 98.7754060511867
F-Statistic: 3350.60470214536
Parameter Best Estimate
---------- -------------
a1 1038.49566359074
b1 1.0436517640913
c 387.185685520493
c1 0.036134594114558
m -122.65365053643
c208.jpg

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