Exponential Curve fitting

7 次查看(过去 30 天)
Hello,
I am fairly new to Matlab and have been teaching myself for a few months. I have written a code to curve fit some data and calculate time and rate constants for the exponential recovery for some data. I have been running into some problems curve fitting the data, and I cannot figure out where the problem is. The code will fit some data, and have issues with others. Any help would be great! Below, I will post the curve fitting function code, and also the data I am trying to fit.
Thanks in Advance!!!!
Here is the Curve Fitting Function:
function [estimates, model] = curvefit(xdata, ydata)
% fits data to the curve y(x)=A-B*e(-lambda*x))
start_point = [1,1,1];
model =@efun;
estimates = fminsearch(model, start_point);
% expfun accepts curve parameters as inputs, and outputs sse,
% the sum of squares error for A -B* exp(-lambda * xdata) - ydata,
% and the FittedCurve.
function [sse,FittedCurve] = efun(v)
A=v(1);
B=v(2);
lambda=v(3);
FittedCurve =A - B*exp(-lambda*xdata);
ErrorVector=FittedCurve-ydata;
sse = sum(ErrorVector .^2);
end
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
Here is some data I am trying to fit with this code
xdata=[0;10.7;21.2;31.7;41.9;52.2;62.6;72.6;82.9;92.9;103.2;113.2;123.5;133.8;144;154.3;164.9;175.2;185.5;196;206.9;217.2;227.4;237.7;248.3];
ydata=[-2.5808;-2.1815;-1.6986;-1.2984;-0.9516;-0.7136;-0.4505;-0.3751;-0.3165;-0.2603;-0.2263;-0.1996;-0.1658;-0.1983;-0.2140;-0.2365;-0.1680;-0.1751;-0.1757;-0.1827;-0.1968;-0.1811;-0.1550;-0.1901;-0.1510];
  1 个评论
the cyclist
the cyclist 2011-10-3
Can you be more specific about what you mean by "have issues with other [data]"? MATLAB throws an error? The fit is not as good as you think it should be? Be as specific as you can.

请先登录,再进行评论。

采纳的回答

Matt Tearle
Matt Tearle 2011-10-3
Looks a whole lot like a typical local-vs-global minimum issue. The minimum that fminsearch finds depends heavily on the initial guess. Change the line start_point = [1,1,1]; to start_point = rand(1,3); then run the following lines a few times:
xdata=[0;10.7;21.2;31.7;41.9;52.2;62.6;72.6;82.9;92.9;103.2;113.2;123.5;133.8;144;154.3;164.9;175.2;185.5;196;206.9;217.2;227.4;237.7;248.3];
ydata=[-2.5808;-2.1815;-1.6986;-1.2984;-0.9516;-0.7136;-0.4505;-0.3751;-0.3165;-0.2603;-0.2263;-0.1996;-0.1658;-0.1983;-0.2140;-0.2365;-0.1680;-0.1751;-0.1757;-0.1827;-0.1968;-0.1811;-0.1550;-0.1901;-0.1510];
[c,f] = curvefit(xdata,ydata)
[~,ymod] = f(c);
plot(xdata,ydata,'o',xdata,ymod)
Sometimes you'll see the weird result, sometimes it will work nicely.
So... what can you do?
  1. find some way to get an estimate of the coefficients (for start_point)
  2. use a global optimization routine (if you have Global Opt Toolbox), such as multistart
  3. fake multistart. Use a random starting point, then do something like:
xdata=[0;10.7;21.2;31.7;41.9;52.2;62.6;72.6;82.9;92.9;103.2;113.2;123.5;133.8;144;154.3;164.9;175.2;185.5;196;206.9;217.2;227.4;237.7;248.3];
ydata=[-2.5808;-2.1815;-1.6986;-1.2984;-0.9516;-0.7136;-0.4505;-0.3751;-0.3165;-0.2603;-0.2263;-0.1996;-0.1658;-0.1983;-0.2140;-0.2365;-0.1680;-0.1751;-0.1757;-0.1827;-0.1968;-0.1811;-0.1550;-0.1901;-0.1510];
numattempts = 50;
err = Inf;
for k=1:numattempts
[c,f] = curvefit(xdata,ydata);
[thiserr,thismodel] = f(c);
if thiserr<err
err = thiserr;
coeffs = c;
ymodel = thismodel;
end
end
disp(coeffs)
plot(xdata,ydata,'o',xdata,ymodel)
  2 个评论
Terence Ryan
Terence Ryan 2011-10-3
Hello Matt,
Thanks for your help. I think I understand what you are saying, but let me just repeat it for my sake. The curvefit I have written searches for local minima, which can be altered heavily by the starting_point. I have thought about provide initial 'guesses' for these coefficients, but I thought this method could bias my results in way that is not ideal...
The code you have provided above uses a random starting_point. The added code the create a 'fake multistart' seems to work great.
Thanks for the Help! I think this has solved my problems!!! If anyone has other suggestions send them along.
Matt Tearle
Matt Tearle 2011-10-4
Exactly! You can also incorporate things like The Cyclist suggested. Note that start_point = rand(1,3); makes initial values in the range [0,1], so you might want to scale these, to allow a greater range.

请先登录,再进行评论。

更多回答(1 个)

the cyclist
the cyclist 2011-10-3
I think a more stringent tolerance for the fit will get you what you want. Use these lines in place of your call to fminsearch:
options = optimset('Display','iter','TolFun',1e-16);
estimates = fminsearch(model, start_point,options);
  1 个评论
Terence Ryan
Terence Ryan 2011-10-3
Sorry I should have been more clear about the 'issues' I am having. For some data the fit does not appear to be accurate. Sometimes, the data look exponential, but the curve fit code returns a square curve (Time constant = 0.29 sec). Other issues are just with the accuracy of the curve. The residuals of the curve fit are all substantially positive numbers towards the end of the data (i.e.- the curve never touches the baseline data.) Your addition for more stringent tolerance looks like it has helped a great deal, so thanks for the help! Any more advice would be so helpful.
I am also getting the following output after running the curve fit:
Exiting: Maximum number of function evaluations has been exceeded
- increase MaxFunEvals option.
Current function value: 0.069213
Any suggestions on this?

请先登录,再进行评论。

类别

Help CenterFile Exchange 中查找有关 Curve Fitting Toolbox 的更多信息

标签

Community Treasure Hunt

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

Start Hunting!

Translated by