In fmincon I set the linear constraint x1+x2+x3=12, but the sum of decision variables in the iteration result does not meet the condition

조회 수: 2 (최근 30일)
I saved the changes of three decision variables in the iteration process. At the end of the iteration, each variable tends to be stable, but does not meet the linear constraints I set.
Here is the variable change process, the sum of varaible is 11 not 12
  댓글 수: 4
汉森 戴
汉森 戴 2022년 11월 29일
편집: 汉森 戴 2022년 11월 29일
hope you can give me some suggestion.
here is my code(four portfolio total)
1st: (main.m)
clc;clear;
%% Parameter initialization
bb = [0.3 0.4 0.3]; pp = [5 5 5]; mm = [4.5 5 6]; cc = [1 5 7];nn = 13.6; TKK = [6 1 2 3]; REE = [11 13 15];
namda = [4:1:13]; %namda is the sum of decision variables
xx = [];
for i=1:length(namda)
%The optimal solution module is substituted
[x, y(i)] = M2Mallocation(bb,pp,mm,cc,namda(i),TKK,REE);
xx = [xx,sum(x)]; %Verify that the decision variable sum satisfies the linear constraint (whether the sum of x is namda)
end
figure(1);
stem(xx);
figure(2);
plot(namda,y,':r*');hold on;
2nd: (optf.m)
function f = optf(x) %Objective function
global b c p m c
f = b(1).*(1/(m(1)-x(1)) + 1/(m(2)-x(2)) + 1/(m(3)-x(3)))...
+ b(2).*(x(1).*c(1)/(m(1)-x(1)) + x(2).*c(2)/(m(2)-x(2)) + x(3).*c(3)/(m(3)-x(3)))...
+ b(3).*(x(1).*p(1)/(m(1)-x(1)) + x(2).*p(2)/(m(2)-x(2)) + x(3).*p(3)/(m(3)-x(3)));
3rd: (limf.m)
function [g,h] = limf(x) %Nonlinear constraints
global p m TK RE
g = [1/(m(1) - x(1))-TK(1)+TK(2);1/(m(2) - x(2))-TK(1)+TK(3);1/(m(3) - x(3))-TK(1)+TK(4);...
x(1).*p(1)/(m(1) - x(1))-RE(1);x(2).*p(2)/(m(2) - x(2))-RE(2); x(3).*p(3)/(m(3) - x(3))-RE(3)];
h = [];
4th:(M2Mallocation.m)
function [x,y] = M2Mallocation(b1,p1,m1,c1,n1,TK1,RE1)
global b m c n TK RE p
b = b1; p = p1; m = m1; c = c1; n = n1; TK = TK1; RE = RE1;
options = optimoptions('fmincon',...
'Algorithm','sqp',...
'StepTolerance',1e-5, 'MaxFunctionEvaluations', 1e5,'OptimalityTolerance',1e-40,...
'ConstraintTolerance',1e2,'MaxIter', 10);
[x,y] = fmincon('optf',ones(3,1),[],[],[1,1,1],n,[],[m(1);m(2);m(3)],...
'limf', options);
i make a experiment on this code,namda is the sum of decision variables(Linear constraints in fmincon),so i traverse namda then take the the sum of x in result to determine whether the x of the output is satisfied with linear constraints(x1 + x2 + x3 = namda).the result is that at beginning the linear constraint is satisfied at first, but it is not satisfied later.
theoretically, the two points should be 12 and 13.
汉森 戴
汉森 戴 2022년 11월 29일
but in picture(mode = 1),decision variables tend to stabilize and converge during the iteration process,no change more.

댓글을 달려면 로그인하십시오.

채택된 답변

Torsten
Torsten 2022년 11월 29일
편집: Torsten 2022년 11월 29일
Tighten your ConstraintTolerance, and you'll see that fmincon converges to an infeasible point for n=12 and n=13.
1st: (main.m)
clc;clear;
%% Parameter initialization
bb = [0.3 0.4 0.3]; pp = [5 5 5]; mm = [4.5 5 6]; cc = [1 5 7];nn = 13.6; TKK = [6 1 2 3]; REE = [11 13 15];
namda = [4:1:13]; %namda is the sum of decision variables
xx = [];
for i=1:length(namda)
%The optimal solution module is substituted
[x, y(i)] = M2Mallocation(bb,pp,mm,cc,namda(i),TKK,REE);
xx = [xx,sum(x)]; %Verify that the decision variable sum satisfies the linear constraint (whether the sum of x is namda)
end
Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Local minimum possible. Constraints satisfied. fmincon stopped because the size of the current step is less than the value of the step size tolerance and constraints are satisfied to within the value of the constraint tolerance. Converged to an infeasible point. fmincon stopped because the size of the current step is less than the value of the step size tolerance but constraints are not satisfied to within the value of the constraint tolerance. Converged to an infeasible point. fmincon stopped because the size of the current step is less than the value of the step size tolerance but constraints are not satisfied to within the value of the constraint tolerance.
figure(1);
stem(xx);
figure(2);
plot(namda,y,':r*');hold on;
2nd: (optf.m)
function f = optf(x) %Objective function
global b c p m c
f = b(1).*(1/(m(1)-x(1)) + 1/(m(2)-x(2)) + 1/(m(3)-x(3)))...
+ b(2).*(x(1).*c(1)/(m(1)-x(1)) + x(2).*c(2)/(m(2)-x(2)) + x(3).*c(3)/(m(3)-x(3)))...
+ b(3).*(x(1).*p(1)/(m(1)-x(1)) + x(2).*p(2)/(m(2)-x(2)) + x(3).*p(3)/(m(3)-x(3)));
end
3rd: (limf.m)
function [g,h] = limf(x) %Nonlinear constraints
global p m TK RE
g = [1/(m(1) - x(1))-TK(1)+TK(2);1/(m(2) - x(2))-TK(1)+TK(3);1/(m(3) - x(3))-TK(1)+TK(4);...
x(1).*p(1)/(m(1) - x(1))-RE(1);x(2).*p(2)/(m(2) - x(2))-RE(2); x(3).*p(3)/(m(3) - x(3))-RE(3)];
h = [];
end
4th:(M2Mallocation.m)
function [x,y] = M2Mallocation(b1,p1,m1,c1,n1,TK1,RE1)
global b m c n TK RE p
b = b1; p = p1; m = m1; c = c1; n = n1; TK = TK1; RE = RE1;
options = optimoptions('fmincon',...
'Algorithm','sqp',...
'StepTolerance',1e-5, 'MaxFunctionEvaluations', 1e5,'OptimalityTolerance',1e-40,...
'ConstraintTolerance',1e-3,'MaxIter', 10);
[x,y,exitflag,~] = fmincon(@optf,ones(3,1),[],[],[1,1,1],n,[],[m(1);m(2);m(3)],...
@limf, options);
end
  댓글 수: 3
Torsten
Torsten 2022년 11월 29일
I don't know what the reason is that your sum constraint cannot be satisfied.
Maybe it contradicts your constraints defined in limf - I didn't check it in detail.

댓글을 달려면 로그인하십시오.

추가 답변 (0개)

카테고리

Help CenterFile Exchange에서 Sensitivity Analysis에 대해 자세히 알아보기

제품

Community Treasure Hunt

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

Start Hunting!

Translated by