#include "f2c.h" #include "blaswrap.h" /* Table of constant values */ static integer c__1 = 1; /* Subroutine */ int dgebal_(char *job, integer *n, doublereal *a, integer * lda, integer *ilo, integer *ihi, doublereal *scale, integer *info) { /* System generated locals */ integer a_dim1, a_offset, i__1, i__2; doublereal d__1, d__2; /* Local variables */ doublereal c__, f, g; integer i__, j, k, l, m; doublereal r__, s, ca, ra; integer ica, ira, iexc; extern /* Subroutine */ int dscal_(integer *, doublereal *, doublereal *, integer *); extern logical lsame_(char *, char *); extern /* Subroutine */ int dswap_(integer *, doublereal *, integer *, doublereal *, integer *); doublereal sfmin1, sfmin2, sfmax1, sfmax2; extern doublereal dlamch_(char *); extern integer idamax_(integer *, doublereal *, integer *); extern /* Subroutine */ int xerbla_(char *, integer *); logical noconv; /* -- LAPACK routine (version 3.1) -- */ /* Univ. of Tennessee, Univ. of California Berkeley and NAG Ltd.. */ /* November 2006 */ /* .. Scalar Arguments .. */ /* .. */ /* .. Array Arguments .. */ /* .. */ /* Purpose */ /* ======= */ /* DGEBAL balances a general real matrix A. This involves, first, */ /* permuting A by a similarity transformation to isolate eigenvalues */ /* in the first 1 to ILO-1 and last IHI+1 to N elements on the */ /* diagonal; and second, applying a diagonal similarity transformation */ /* to rows and columns ILO to IHI to make the rows and columns as */ /* close in norm as possible. Both steps are optional. */ /* Balancing may reduce the 1-norm of the matrix, and improve the */ /* accuracy of the computed eigenvalues and/or eigenvectors. */ /* Arguments */ /* ========= */ /* JOB (input) CHARACTER*1 */ /* Specifies the operations to be performed on A: */ /* = 'N': none: simply set ILO = 1, IHI = N, SCALE(I) = 1.0 */ /* for i = 1,...,N; */ /* = 'P': permute only; */ /* = 'S': scale only; */ /* = 'B': both permute and scale. */ /* N (input) INTEGER */ /* The order of the matrix A. N >= 0. */ /* A (input/output) DOUBLE PRECISION array, dimension (LDA,N) */ /* On entry, the input matrix A. */ /* On exit, A is overwritten by the balanced matrix. */ /* If JOB = 'N', A is not referenced. */ /* See Further Details. */ /* LDA (input) INTEGER */ /* The leading dimension of the array A. LDA >= max(1,N). */ /* ILO (output) INTEGER */ /* IHI (output) INTEGER */ /* ILO and IHI are set to integers such that on exit */ /* A(i,j) = 0 if i > j and j = 1,...,ILO-1 or I = IHI+1,...,N. */ /* If JOB = 'N' or 'S', ILO = 1 and IHI = N. */ /* SCALE (output) DOUBLE PRECISION array, dimension (N) */ /* Details of the permutations and scaling factors applied to */ /* A. If P(j) is the index of the row and column interchanged */ /* with row and column j and D(j) is the scaling factor */ /* applied to row and column j, then */ /* SCALE(j) = P(j) for j = 1,...,ILO-1 */ /* = D(j) for j = ILO,...,IHI */ /* = P(j) for j = IHI+1,...,N. */ /* The order in which the interchanges are made is N to IHI+1, */ /* then 1 to ILO-1. */ /* INFO (output) INTEGER */ /* = 0: successful exit. */ /* < 0: if INFO = -i, the i-th argument had an illegal value. */ /* Further Details */ /* =============== */ /* The permutations consist of row and column interchanges which put */ /* the matrix in the form */ /* ( T1 X Y ) */ /* P A P = ( 0 B Z ) */ /* ( 0 0 T2 ) */ /* where T1 and T2 are upper triangular matrices whose eigenvalues lie */ /* along the diagonal. The column indices ILO and IHI mark the starting */ /* and ending columns of the submatrix B. Balancing consists of applying */ /* a diagonal similarity transformation inv(D) * B * D to make the */ /* 1-norms of each row of B and its corresponding column nearly equal. */ /* The output matrix is */ /* ( T1 X*D Y ) */ /* ( 0 inv(D)*B*D inv(D)*Z ). */ /* ( 0 0 T2 ) */ /* Information about the permutations P and the diagonal matrix D is */ /* returned in the vector SCALE. */ /* This subroutine is based on the EISPACK routine BALANC. */ /* Modified by Tzu-Yi Chen, Computer Science Division, University of */ /* California at Berkeley, USA */ /* ===================================================================== */ /* .. Parameters .. */ /* .. */ /* .. Local Scalars .. */ /* .. */ /* .. External Functions .. */ /* .. */ /* .. External Subroutines .. */ /* .. */ /* .. Intrinsic Functions .. */ /* .. */ /* .. Executable Statements .. */ /* Test the input parameters */ /* Parameter adjustments */ a_dim1 = *lda; a_offset = 1 + a_dim1; a -= a_offset; --scale; /* Function Body */ *info = 0; if (! lsame_(job, "N") && ! lsame_(job, "P") && ! lsame_(job, "S") && ! lsame_(job, "B")) { *info = -1; } else if (*n < 0) { *info = -2; } else if (*lda < max(1,*n)) { *info = -4; } if (*info != 0) { i__1 = -(*info); xerbla_("DGEBAL", &i__1); return 0; } k = 1; l = *n; if (*n == 0) { goto L210; } if (lsame_(job, "N")) { i__1 = *n; for (i__ = 1; i__ <= i__1; ++i__) { scale[i__] = 1.; /* L10: */ } goto L210; } if (lsame_(job, "S")) { goto L120; } /* Permutation to isolate eigenvalues if possible */ goto L50; /* Row and column exchange. */ L20: scale[m] = (doublereal) j; if (j == m) { goto L30; } dswap_(&l, &a[j * a_dim1 + 1], &c__1, &a[m * a_dim1 + 1], &c__1); i__1 = *n - k + 1; dswap_(&i__1, &a[j + k * a_dim1], lda, &a[m + k * a_dim1], lda); L30: switch (iexc) { case 1: goto L40; case 2: goto L80; } /* Search for rows isolating an eigenvalue and push them down. */ L40: if (l == 1) { goto L210; } --l; L50: for (j = l; j >= 1; --j) { i__1 = l; for (i__ = 1; i__ <= i__1; ++i__) { if (i__ == j) { goto L60; } if (a[j + i__ * a_dim1] != 0.) { goto L70; } L60: ; } m = l; iexc = 1; goto L20; L70: ; } goto L90; /* Search for columns isolating an eigenvalue and push them left. */ L80: ++k; L90: i__1 = l; for (j = k; j <= i__1; ++j) { i__2 = l; for (i__ = k; i__ <= i__2; ++i__) { if (i__ == j) { goto L100; } if (a[i__ + j * a_dim1] != 0.) { goto L110; } L100: ; } m = k; iexc = 2; goto L20; L110: ; } L120: i__1 = l; for (i__ = k; i__ <= i__1; ++i__) { scale[i__] = 1.; /* L130: */ } if (lsame_(job, "P")) { goto L210; } /* Balance the submatrix in rows K to L. */ /* Iterative loop for norm reduction */ sfmin1 = dlamch_("S") / dlamch_("P"); sfmax1 = 1. / sfmin1; sfmin2 = sfmin1 * 2.; sfmax2 = 1. / sfmin2; L140: noconv = FALSE_; i__1 = l; for (i__ = k; i__ <= i__1; ++i__) { c__ = 0.; r__ = 0.; i__2 = l; for (j = k; j <= i__2; ++j) { if (j == i__) { goto L150; } c__ += (d__1 = a[j + i__ * a_dim1], abs(d__1)); r__ += (d__1 = a[i__ + j * a_dim1], abs(d__1)); L150: ; } ica = idamax_(&l, &a[i__ * a_dim1 + 1], &c__1); ca = (d__1 = a[ica + i__ * a_dim1], abs(d__1)); i__2 = *n - k + 1; ira = idamax_(&i__2, &a[i__ + k * a_dim1], lda); ra = (d__1 = a[i__ + (ira + k - 1) * a_dim1], abs(d__1)); /* Guard against zero C or R due to underflow. */ if (c__ == 0. || r__ == 0.) { goto L200; } g = r__ / 2.; f = 1.; s = c__ + r__; L160: /* Computing MAX */ d__1 = max(f,c__); /* Computing MIN */ d__2 = min(r__,g); if (c__ >= g || max(d__1,ca) >= sfmax2 || min(d__2,ra) <= sfmin2) { goto L170; } f *= 2.; c__ *= 2.; ca *= 2.; r__ /= 2.; g /= 2.; ra /= 2.; goto L160; L170: g = c__ / 2.; L180: /* Computing MIN */ d__1 = min(f,c__), d__1 = min(d__1,g); if (g < r__ || max(r__,ra) >= sfmax2 || min(d__1,ca) <= sfmin2) { goto L190; } f /= 2.; c__ /= 2.; g /= 2.; ca /= 2.; r__ *= 2.; ra *= 2.; goto L180; /* Now balance. */ L190: if (c__ + r__ >= s * .95) { goto L200; } if (f < 1. && scale[i__] < 1.) { if (f * scale[i__] <= sfmin1) { goto L200; } } if (f > 1. && scale[i__] > 1.) { if (scale[i__] >= sfmax1 / f) { goto L200; } } g = 1. / f; scale[i__] *= f; noconv = TRUE_; i__2 = *n - k + 1; dscal_(&i__2, &g, &a[i__ + k * a_dim1], lda); dscal_(&l, &f, &a[i__ * a_dim1 + 1], &c__1); L200: ; } if (noconv) { goto L140; } L210: *ilo = k; *ihi = l; return 0; /* End of DGEBAL */ } /* dgebal_ */