Quickguide SDP Problem: Difference between revisions

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<math>
<math>
\begin{array}{rccccl} \min\limits_{x} & \multicolumn{5}{l}{f(x) = {c^T}x} &\\s/t & x_{L}  & \leq & x  & \leq & x_{U}  \\ & b_{L}  & \leq & Ax & \leq & b_{U} \\& \multicolumn{5}{r}{Q^{i}_0 + \Sum{k=1}{n} Q^{i}_{k}x_{k} \preccurlyeq 0,\qquad i=1,\ldots,m.} \\ \end{array}
\begin{array}{rccccl} \min\limits_{x} & {5}{l}{f(x) = {c^T}x} &\\s/t & x_{L}  & \leq & x  & \leq & x_{U}  \\ & b_{L}  & \leq & Ax & \leq & b_{U} \\& {5}{r}{Q^{i}_0 + \sum{k=1}{n} Q^{i}_{k}x_{k} \preccurlyeq 0,\qquad i=1,\ldots,m.} \\ \end{array}
</math>
</math>


where <math>c, x, x_L, x_U \in \MATHSET{R}^n</math>, <math>A \in \MATHSET{R}^{m_l
where <math>c, x, x_L, x_U \in \mathbb{R}^n</math>, <math>A \in \mathbb{R}^{m_l
   \times n}</math>, <math>b_L,b_U \in \MATHSET{R}^{m_l}</math> and <math>Q^{i}_{k}</math> are
   \times n}</math>, <math>b_L,b_U \in \mathbb{R}^{m_l}</math> and <math>Q^{i}_{k}</math> are
symmetric matrices of similar dimensions in each constraint <math>i</math>.
symmetric matrices of similar dimensions in each constraint <math>i</math>.
If there are several LMI constraints, each may have it's own
If there are several LMI constraints, each may have it's own
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This problem appears to be infeasible.
This problem appears to be infeasible.


<syntaxhighlight lang="matlab">
<source lang="matlab">
  % sdpQG is a small example problem for defining and solving
  % sdpQG is a small example problem for defining and solving
  % semi definite programming problems with linear matrix  
  % semi definite programming problems with linear matrix  
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  Result = tomRun('pensdp', Prob, 1);
  Result = tomRun('pensdp', Prob, 1);
</syntaxhighlight>
</source>

Latest revision as of 07:53, 17 January 2012

Notice.png

This page is part of the Quickguide Manual. See Quickguide.

The linear semi-definite programming problem with linear matrix inequalities (sdp) is defined as


where , , and are symmetric matrices of similar dimensions in each constraint . If there are several LMI constraints, each may have it's own dimension.

The following file defines and solves a problem in TOMLAB.

File: tomlab/quickguide/sdpQG.m

Open the file for viewing, and execute sdpQG in Matlab.

This problem appears to be infeasible.

 % sdpQG is a small example problem for defining and solving
 % semi definite programming problems with linear matrix 
 % inequalities using the TOMLAB format.
 
 Name = 'sdp.ps example 2';
 
 % Objective function
 c = [1 2 3]';
 
 % Two linear constraints 
 A =   [ 0 0 1 ; 5 6 0 ];
 b_L = [-Inf; -Inf];
 b_U = [ 3  ; -3 ];
 
 x_L = -1000*ones(3,1);
 x_U =  1000*ones(3,1);
 
 % Two linear matrix inequality constraints. It is OK to give only
 % the upper triangular part.
 SDP = [];
 % First constraint
 SDP(1).Q{1} = [2 -1 0 ; 0 2 0 ; 0 0 2]; 
 SDP(1).Q{2} = [2 0 -1 ; 0 2 0 ; 0 0 2];
 SDP(1).Qidx = [1; 3];
 
 % Second constraint
 SDP(2).Q{1} = diag( [0  1] );
 SDP(2).Q{2} = diag( [1 -1] );
 SDP(2).Q{3} = diag( [3 -3] );
 SDP(2).Qidx = [0; 1; 2];
 
 x_0 = [];
 
 Prob = sdpAssign(c, SDP, A, b_L, b_U, x_L, x_U, x_0, Name);
              
 Result = tomRun('pensdp', Prob, 1);