Matrix: TSOPF/TSOPF_FS_b162_c4

Description: transient optimal power flow, Full-Space. Guangchao Geng, Zhejiang Univ

TSOPF/TSOPF_FS_b162_c4 graph
(undirected graph drawing)


TSOPF/TSOPF_FS_b162_c4 dmperm of TSOPF/TSOPF_FS_b162_c4
scc of TSOPF/TSOPF_FS_b162_c4

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  • Matrix group: TSOPF
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  • download as a MATLAB mat-file, file size: 10 MB. Use UFget(2223) or UFget('TSOPF/TSOPF_FS_b162_c4') in MATLAB.
  • download in Matrix Market format, file size: 7 MB.
  • download in Rutherford/Boeing format, file size: 6 MB.

    Matrix properties
    number of rows40,798
    number of columns40,798
    nonzeros2,398,220
    structural full rank?yes
    structural rank40,798
    # of blocks from dmperm2
    # strongly connected comp.2
    explicit zero entries0
    nonzero pattern symmetrysymmetric
    numeric value symmetrysymmetric
    typereal
    structuresymmetric
    Cholesky candidate?no
    positive definite?no

    authorG. Geng
    editorT. Davis
    date2009
    kindpower network problem
    2D/3D problem?no

    Additional fieldssize and type
    bsparse 40798-by-1

    Notes:

    Transient stability-constrained optimal power flow (TSOPF) problems from     
    Guangchao Geng, Institute of Power System, College of Electrical Engineering,
    Zhejiang University, Hangzhou, 310027, China.  (genggc AT gmail DOT com).    
    Matrices in the  Full-Space (FS) group are symmetric indefinite, and are best
    solved with MA57.  Matrices in the the Reduced-Space (RS) group are best     
    solved with KLU, which for these matrices can be 10 times faster than UMFPACK
    or SuperLU.                                                                  
    

    Ordering statistics:result
    nnz(chol(P*(A+A'+s*I)*P')) with AMD9,592,874
    Cholesky flop count5.5e+09
    nnz(L+U), no partial pivoting, with AMD19,144,950
    nnz(V) for QR, upper bound nnz(L) for LU, with COLAMD167,804,664
    nnz(R) for QR, upper bound nnz(U) for LU, with COLAMD229,543,166

    For a description of the statistics displayed above, click here.

    Maintained by Tim Davis, last updated 12-Mar-2014.
    Matrix pictures by cspy, a MATLAB function in the CSparse package.
    Matrix graphs by Yifan Hu, AT&T Labs Visualization Group.