How can i solve this cost function?
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Hi,
I have a cost function which includes vectors and matrices:
v = [(1 / (0.47 * 0.94 * 1500)^2) (1 / (0.47 * 0.94 * 1700)^2) (1 / (0.47 * 0.94 * 2000)^2) (1 / (0.47 * 0.94 * 2200)^2)];
delta = diag(v);
nu = transpose([120 340]);
K = [((1.95 / (2*0.47)) .* [-1 1 -1 1]);...
1 1 1 1 ];
zeta = [2 0; 0 1];
%J = transpose(q) * delta * q + (transpose(K*q - nu)) * zeta * (K*q - nu) %Cost function
%q = transpose([X Y Z T]) %Output of cost function
I am trying to find q vector without any constraint. What kind of methods can be used to solve related equation?
Thanks,
8 Kommentare
Abhijit Nayak
am 29 Jun. 2022
Can you send the code for the function? The code you gave has no meaning for X,Y,Z,T variables which forms the q vector.
Walter Roberson
am 29 Jun. 2022
Is the task to minimize J? Is the task to find the q such that J becomes a all zero?
v = [(1 / (0.47 * 0.94 * 1500)^2) (1 / (0.47 * 0.94 * 1700)^2) (1 / (0.47 * 0.94 * 2000)^2) (1 / (0.47 * 0.94 * 2200)^2)]
delta = diag(v)
nu = transpose([120 340])
K = [((1.95 / (2*0.47)) .* [-1 1 -1 1]);...
1 1 1 1 ]
zeta = [2 0; 0 1]
Volcano
am 29 Jun. 2022
Guess, you want formulate this problem in LMI form?
q = rand(4, 1)
v = [(1 / (0.47 * 0.94 * 1500)^2) (1 / (0.47 * 0.94 * 1700)^2) (1 / (0.47 * 0.94 * 2000)^2) (1 / (0.47 * 0.94 * 2200)^2)];
delta = diag(v);
nu = transpose([120 340]);
K = [((1.95 / (2*0.47)) .* [-1 1 -1 1]);...
1 1 1 1 ];
zeta = [2 0; 0 1];
J = transpose(q) * delta * q + (transpose(K*q - nu)) * zeta * (K*q - nu) %Cost function
Volcano
am 29 Jun. 2022
Volcano
am 29 Jun. 2022
Akzeptierte Antwort
Weitere Antworten (1)
Hi @Volcano
I converted the matrix equation into a scalar equation. Since there is no constraint, fminunc() is used and the local minimum is found.
v = [(1 / (0.47 * 0.94 * 1500)^2) (1 / (0.47 * 0.94 * 1700)^2) (1 / (0.47 * 0.94 * 2000)^2) (1 / (0.47 * 0.94 * 2200)^2)];
delta = diag(v);
nu = transpose([120 340]);
K = [((1.95 / (2*0.47)) .* [-1 1 -1 1]); 1 1 1 1];
zeta = [2 0; 0 1];
% Cost function
J = @(q) v(1)*q(1).^2 + v(2)*q(2).^2 + v(3)*q(3).^2 + v(4)*q(4).^2 + zeta(1,1)*(K(1,1)*q(1) + K(1,2)*q(2) + K(1,3)*q(3) + K(1,4)*q(4) - nu(1)).^2 + zeta(2,2)*(K(2,1)*q(1) + K(2,2)*q(2) + K(2,3)*q(3) + K(2,4)*q(4) - nu(2)).^2;
% Initial guess of q solution
q0 = [1 1 1 1];
% Minimize unconstrained multivariable function
[q, fval] = fminunc(J, q0)
4 Kommentare
Volcano
am 29 Jun. 2022
It doesn't seem possible that it is a local minimum, because it is a convex problem. Possibly, fminunc's finite difference approximations to the gradient, or maybe the optimoption defaults, led to incomplete convergence. quadprog doesn't rely on approximate gradients, so it wouldn't have that difficulty to overcome.
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