fmincon step size and speed

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Hussein Ammar
Hussein Ammar el 30 de Oct. de 2019
Comentada: Hussein Ammar el 3 de Nov. de 2019
Hello all,
I'm using fmincon to solve a nonconvex optimization problem. Mainly my problem is optimizing some function over a 2D area, where the optimizing variables are the x and y coordinates of N points, so my minimizer myX for my objective function f(myX) is a (2 by N) matrix representing the x and y coordinates. For this optimization, I'm interested in changes >1 meter because my objective function is not very sensitive for small changes in x and y.
So, mainly I have these two problems:
  • The step size of fmincon is very small. I'm using this configuration for fmincon:
myoptions = optimoptions(@fmincon,'Algorithm','interior-point','Display','iter', 'FiniteDifferenceStepSize', 5,...
'TolX', 1, 'UseParallel',1);
Example of the output:
First-order Norm of
Iter F-count f(x) Feasibility optimality step
0 21 -1.660633e+00 0.000e+00 7.942e-04
1 42 -1.660634e+00 0.000e+00 7.942e-04 1.598e-03
Local minimum possible. Constraints satisfied.
fmincon stopped because the size of the current step is less than
the selected value of the step size tolerance and constraints are
satisfied to within the default value of the constraint tolerance.
As you can see, the objective function f(myX) is slightly changing (that is also happening to x and y coordinates). In this simulation I'm starting from points that satisfy the constraints but they are very far from optimality. So, how can I change the step size of fmincon (I'm interested in steps greater than 1 meter or changes on objective function that is greater than 0.1).
  • My objective function and constraint contain integral that needs to be evaluated numerically, so fmin is very slow. Are there ways to speed up fmincon.
Best Regards and thank you in advance for your help.

Respuesta aceptada

Alan Weiss
Alan Weiss el 31 de Oct. de 2019
It sounds like you need to use the Global Optimization Toolbox solver patternsearch with a large value of the MeshTolerance option, like 3/4. You should also change the InitialMeshSize option to 16 or so, and, because your objective function is slow, consider using the Cache option. You seem to have about 20 control variables, so patternsearch should work fine.
The reason I say this is that fmincon is a gradient-based solver, but your function is insensitive to small changes.
Alan Weiss
MATLAB mathematical toolbox documentation
  5 comentarios
Alan Weiss
Alan Weiss el 3 de Nov. de 2019
I'm sorry that the solver is not performing satisfactorily, but it was really not designed for this kind of problem. I suggest that you get a trial version of Global Optimization Toolbox and try the patternsearch solver, which was designed for this kind of problem. Or, try surrogateopt with the workaround for nonlinear constraints given in this example.
Also, you can find the meaning of the fields in the output structure in the fmincon documentation.
Good luck,
Alan Weiss
MATLAB mathematical toolbox documentation
Hussein Ammar
Hussein Ammar el 3 de Nov. de 2019
I think fmincon can still get good solutions for this problem. I just need to try different configurations for the parameters in optimoptions and see which one works better. Thank you.

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