Optimisation functions: Skipping iterations if objective function returns an error or cannot run completely
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Goutham Jyothilal
le 5 Juil 2022
Modifié(e) : Goutham Jyothilal
le 8 Juil 2022
I am using the optimisation toolbox (both the normal one and the Global one) for problems of a certain kind. The objective function in these cases are custom user defined functions, dependent on multiple other scripts. Thus, in certain cases, the variables to be optimised might return an error on running the objective if certain conditions (Apart from bounds and constraints) are not met. Assuming these conditions vary between test cases ie. cannot be accomodated in a constraint, the optimisation stops right when any iteration throws up an error.
Is it possible to make these optimisation functions skip the particular iteration if it returns an error, update the variables and move on to the next iteration?
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Matt J
le 5 Juil 2022
Modifié(e) : Matt J
le 5 Juil 2022
Basically, the option available to you is to return inf from your objective when an error condition is reached. Some optimization algorithms will backtrack from inf values (e.g., fmincon's sqp algorithm) but not all.
function [fval]=myObjective(x)
try
%The usual code for the objective
fval=...
catch
fval=inf;
end
end
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