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Having data of an exponential decay available, I would like to fit a curve through it. How can I do that in Matlab?

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    There is a nice demo on the Statistics Toolbox product page that discusses problems that can occur if you transform a nonlinear model to a linear one. mathworks.com/products/statistics/demos.html?file=/products/… The preferred method is to use nonlinear regression; deriving a set a "smart" starting conditions using the "linearize, least squares, delinearize" technique. Commented Mar 24, 2011 at 17:40
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    The comment by Richard Willey should really be the (accepted) answer. Linearizing and applying least squares as recommended in some of the answers is not a good idea since the transformation will give too much weight to small values. Better use nlinfit.
    – Lukas
    Commented Mar 26, 2012 at 12:54
  • Link from @richardwilley has been broken by The MathWorks. Updated version appears to be here.
    – horchler
    Commented May 15, 2015 at 20:41

5 Answers 5

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Try this:

ft=fittype('exp1');
cf=fit(time,data,ft)

This is when time and data are your data vectors; time is the independent variable and data is the dependent variable.

This will give you the coefficients of the exponential decay curve.

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  • how would one plot this?
    – Nick
    Commented Dec 11, 2014 at 11:53
  • @Adiel When i tried this I get an error as Undefined function 'diff' for input arguments of type 'cfit'. Error in cfit/plot (line 64) if any(diff(xdata)<0) Error in slopeFirst2hours (line 6) plot(time, cf, 'r') Can you tell me what I am doing wrong
    – clarkson
    Commented Sep 5, 2017 at 11:23
  • @clarkson You are right. It should be plotted with a single command- plot(cf,time,data)
    – Adiel
    Commented Sep 5, 2017 at 12:06
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If by fit you mean least squares, you should try lsqcurvefit

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cftool(X,Y) is the way to go. here's some linkage:

LINK1 LINK2

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Linearise, least squares, delinearise :-)

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  • You are right, although I thought there might be a package that does that for me automatically it is probably less time consuming to just do it manually rather than searching for it :)
    – Ingo
    Commented Mar 23, 2011 at 10:10
  • This is pretty short for an answer, but I upvoted it from -1 because it is helpful for users without the Curve Fitting toolbox.
    – FvD
    Commented Jan 6, 2015 at 8:11
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Matlab has a function called polyfit. It can fit curve to a data which can be represented in the form a*X^n+b*X^(n-1)+.....z. However if you are sure that the data is of some exponential decay you can try taking logarithm of the data first and then using the polyfit function. I thing that will work.

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