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qld
linear quadratic programming solver
Calling Sequence
[x [,lagr [,info]]] = qld(Q, p, C, b, ci, cs, me [,tol])
Arguments
- Q
real positive definite symmetric matrix (dimension
n x n
).- p
real (column) vector (dimension
n
)- C
real matrix (dimension
(me + md) x n
)- b
RHS column vector (dimension
(me + md)
)- ci
column vector of lower-bounds (dimension
n
). If there are no lower bound constraints, putci = []
. If some components ofx
are bounded from below, set the other (unconstrained) values ofci
to a very large negative number (e.g.ci(j) = -number_properties('huge')
.- cs
column vector of upper-bounds. (Same remarks as above).
- me
number of equality constraints (i.e.
C(1:me,:)*x = b(1:me)
)- tol
Floatting point number, required precision.
- x
optimal solution found.
- lagr
vector of Lagrange multipliers.
If lower and upper-bounds
ci, cs
are provided,lagr
hasme + md + 2* n
components. The componentslagr(1:me + md)
are associated with the linear constraints andlagr (me + md + 1 : 2 * n)
are associated with the lower and upper bounds constraints.If an upper-bound (resp. lower-bound) constraint
i
is activelagr(i)
is > 0 (resp. <0). If no bounds are provided,lagr
has onlyme + md
components.On successful termination, all values of
lagr
with respect to inequalities and bounds should be greater or equal to zero.- info
integer, return the execution status instead of sending errors.
info==1 : Too many iterations needed
info==2 : Accuracy insufficient to statisfy convergence criterion
info==5 : Length of working array is too short
info==10: The constraints are inconsistent
Description
This function requires Q
to be positive definite,
if it is not the case, one may use the contributed toolbox "quapro".
Examples
//Find x in R^6 such that: //C1*x = b1 (3 equality constraints i.e me=3) C1= [1,-1,1,0,3,1; -1,0,-3,-4,5,6; 2,5,3,0,1,0]; b1=[1;2;3]; //C2*x <= b2 (2 inequality constraints i.e md=2) C2=[0,1,0,1,2,-1; -1,0,2,1,1,0]; b2=[-1;2.5]; //with x between ci and cs: ci=[-1000;-10000;0;-1000;-1000;-1000];cs=[10000;100;1.5;100;100;1000]; //and minimize 0.5*x'*Q*x + p'*x with p=[1;2;3;4;5;6]; Q=eye(6,6); //No initial point is given; C=[C1;C2]; b=[b1;b2]; me=3; [x,lagr]=qld(Q,p,C,b,ci,cs,me) //Only linear constraints (1 to 4) are active (lagr(1:6)=0):
See Also
The contributed toolbox "quapro" may also be of interest, in
particular for singular Q
.
Used Functions
ql0001.f
in
modules/optimization/src/fortran/ql0001.f
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