Provided by: pdl_2.085-1ubuntu1_amd64 bug

NAME

       PDL::Slatec - PDL interface to the slatec numerical programming library

SYNOPSIS

        use PDL::Slatec;

        ($ndeg, $r, $ierr, $c) = polyfit($x, $y, $w, $maxdeg, $eps);

DESCRIPTION

       This module serves the dual purpose of providing an interface to parts of the slatec library and showing
       how to interface PDL to an external library.  Using this library requires a fortran compiler; the source
       for the routines is provided for convenience.

       Currently available are routines to: manipulate matrices; calculate FFT's; fit data using polynomials;
       and interpolate/integrate data using piecewise cubic Hermite interpolation.

   Piecewise cubic Hermite interpolation (PCHIP)
       PCHIP is the slatec package of routines to perform piecewise cubic Hermite interpolation of data.  It
       features software to produce a monotone and "visually pleasing" interpolant to monotone data.  According
       to Fritsch & Carlson ("Monotone piecewise cubic interpolation", SIAM Journal on Numerical Analysis 17, 2
       (April 1980), pp. 238-246), such an interpolant may be more reasonable than a cubic spline if the data
       contains both "steep" and "flat" sections.  Interpolation of cumulative probability distribution
       functions is another application.  These routines are cryptically named (blame FORTRAN), beginning with
       'ch', and accept either float or double ndarrays.

       Most of the routines require an integer parameter called "check"; if set to 0, then no checks on the
       validity of the input data are made, otherwise these checks are made.  The value of "check" can be set to
       0 if a routine such as "chim" has already been successfully called.

       •   If  not known, estimate derivative values for the points using the "chim", "chic", or "chsp" routines
           (the following routines require both the function ("f") and derivative  ("d")  values  at  a  set  of
           points ("x")).

       •   Evaluate,  integrate, or differentiate the resulting PCH function using the routines: "chfd"; "chfe";
           "chia"; "chid".

       •   If desired, you can check the monotonicity of your data using "chcm".

FUNCTIONS

   eigsys
       Eigenvalues and eigenvectors of a real positive definite symmetric matrix.

        ($eigvals,$eigvecs) = eigsys($mat)

       Note: this function should be extended to calculate only eigenvalues if called in scalar context!

   matinv
       Inverse of a square matrix

        ($inv) = matinv($mat)

   polyfit
       Convenience wrapper routine about the "polfit"  "slatec"  function.   Separates  supplied  arguments  and
       return values.

       Fit  discrete  data  in  a  least  squares  sense  by  polynomials in one variable.  Handles broadcasting
       correctly--one can pass in a 2D PDL (as $y) and it will pass back a 2D PDL, the rows  of  which  are  the
       polynomial regression results (in $r corresponding to the rows of $y.

        ($ndeg, $r, $ierr, $c, $coeffs, $rms) = polyfit($x, $y, $w, $maxdeg, [$eps]);

        $coeffs = polyfit($x,$y,$w,$maxdeg,[$eps]);

       where on input:

       $x  and $y are the values to fit to a polynomial.  $w are weighting factors $maxdeg is the maximum degree
       of polynomial to use and $eps is the required degree of fit.

       and the output switches on list/scalar context.

       In list context:

       $ndeg is the degree of polynomial actually used $r is the values of the  fitted  polynomial  $ierr  is  a
       return  status code, and $c is some working array or other (preserved for historical purposes) $coeffs is
       the polynomial coefficients of the best fit polynomial.  $rms is the rms error of the fit.

       In scalar context, only $coeffs is returned.

       Historically, $eps was modified in-place to  be  a  return  value  of  the  rms  error.   This  usage  is
       deprecated, and $eps is an optional parameter now.  It is still modified if present.

       $c is a working array accessible to Slatec - you can feed it to several other Slatec routines to get nice
       things out.  It does not broadcast correctly and should probably be fixed by someone.  If you are reading
       this, that someone might be you.

       This  version of polyfit handles bad values correctly.  Bad values in $y are ignored for the fit and give
       computed values on the fitted curve in the return.  Bad values in $x or $w are ignored for  the  fit  and
       result in bad elements in the output.

   polycoef
       Convenience  wrapper  routine  around  the  "pcoef"  "slatec" function.  Separates supplied arguments and
       return values.

       Convert the "polyfit"/"polfit" coefficients to Taylor series form.

        $tc = polycoef($l, $c, $x);

   polyvalue
       Convenience wrapper routine around the "pvalue" "slatec"  function.   Separates  supplied  arguments  and
       return values.

       For multiple input x positions, a corresponding y position is calculated.

       The  derivatives  PDL  is  one  dimensional  (of  size  "nder")  if  a single x position is supplied, two
       dimensional if more than one x position is supplied.

       Use the coefficients "c" generated by "polyfit" (or "polfit") to evaluate the polynomial  fit  of  degree
       "l", along with the first "nder" of its derivatives, at a specified point "x".

        ($yfit, $yp) = polyvalue($l, $nder, $x, $c);

   detslatec
       compute the determinant of an invertible matrix

         $mat = zeroes(5,5); $mat->diagonal(0,1) .= 1; # unity matrix
         $det = detslatec $mat;

       Usage:

         $determinant = detslatec $matrix;

         Signature: detslatec(mat(n,m); [o] det())

       "detslatec" computes the determinant of an invertible matrix and barfs if the matrix argument provided is
       non-invertible. The matrix broadcasts as usual.

       This  routine  was  previously  known  as  "det"  which  clashes  now  with  det  which  is  provided  by
       PDL::MatrixOps.

   fft
       Fast Fourier Transform

         $v_in = pdl(1,0,1,0);
         ($azero,$x,$y) = PDL::Slatec::fft($v_in);

       "PDL::Slatec::fft" is a convenience wrapper for "ezfftf", and performs a Fast  Fourier  Transform  on  an
       input vector $v_in. The return values are the same as for "ezfftf".

   rfft
       reverse Fast Fourier Transform

         $v_out = PDL::Slatec::rfft($azero,$x,$y);
         print $v_in, $vout
         [1 0 1 0] [1 0 1 0]

       "PDL::Slatec::rfft" is a convenience wrapper for "ezfftb", and performs a reverse Fast Fourier Transform.
       The  input  is  the  same as the output of "PDL::Slatec::fft", and the output of "rfft" is a data vector,
       similar to what is input into "PDL::Slatec::fft".

   svdc
         Signature: (x(n,p);[o]s(p);[o]e(p);[o]u(n,p);[o]v(p,p);[o]work(n);longlong job();longlong [o]info())

       singular value decomposition of a matrix

       svdc does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   poco
         Signature: (a(n,n);rcond();[o]z(n);longlong [o]info())

       Factor a real symmetric positive definite matrix and estimate the condition number of the matrix.

       poco  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   geco
         Signature: (a(n,n);longlong [o]ipvt(n);[o]rcond();[o]z(n))

       Factor a matrix using Gaussian elimination and estimate the condition number of the matrix.

       geco does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   gefa
         Signature: (a(n,n);longlong [o]ipvt(n);longlong [o]info())

       Factor a matrix using Gaussian elimination.

       gefa  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   podi
         Signature: (a(n,n);[o]det(two=2);longlong job())

       Compute the determinant and inverse of a certain  real  symmetric  positive  definite  matrix  using  the
       factors computed by "poco".

       podi  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   gedi
         Signature: (a(n,n);longlong [o]ipvt(n);[o]det(two=2);[o]work(n);longlong job())

       Compute the determinant and inverse of a matrix using the factors computed by "geco" or "gefa".

       gedi does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   gesl
         Signature: (a(lda,n);longlong ipvt(n);b(n);longlong job())

       Solve the real system "A*X=B" or "TRANS(A)*X=B" using the factors computed by "geco" or "gefa".

       gesl  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   rs
         Signature: (a(n,n);[o]w(n);longlong matz();[o]z(n,n);[t]fvone(n);[t]fvtwo(n);longlong [o]ierr())

       This subroutine calls the recommended sequence of subroutines from  the  eigensystem  subroutine  package
       (EISPACK) to find the eigenvalues and eigenvectors (if desired) of a REAL SYMMETRIC matrix.

       rs does not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is set
       for any of the input ndarrays.

   ezffti
         Signature: (longlong n();[o]wsave(foo))

       Subroutine  ezffti  initializes  the work array wsave() which is used in both "ezfftf" and "ezfftb".  The
       prime factorization of "n" together with a tabulation of the trigonometric  functions  are  computed  and
       stored in wsave().

       ezffti does not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   ezfftf
         Signature: (r(n);[o]azero();[o]a(n);[o]b(n);wsave(foo))

       ezfftf does not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   ezfftb
         Signature: ([o]r(n);azero();a(n);b(n);wsave(foo))

       ezfftb does not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   pcoef
         Signature: (longlong l();c();[o]tc(bar);a(foo))

       Convert the "polfit" coefficients to Taylor series form.  "c" and a() must be of the same type.

       pcoef  does not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   pvalue
         Signature: (longlong l();x();[o]yfit();[o]yp(nder);a(foo))

       Use the coefficients generated by "polfit" to evaluate the polynomial fit of degree "l", along  with  the
       first "nder" of its derivatives, at a specified point. "x" and "a" must be of the same type.

       pvalue does not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   chim
         Signature: (x(n);f(n);[o]d(n);longlong [o]ierr())

       Calculate the derivatives of (x,f(x)) using cubic Hermite interpolation.

       Calculate  the  derivatives  at  the given set of points ("$x,$f", where $x is strictly increasing).  The
       resulting set of points - "$x,$f,$d", referred to as the cubic Hermite representation - can then be  used
       in other functions, such as "chfe", "chfd", and "chia".

       The  boundary  conditions are compatible with monotonicity, and if the data are only piecewise monotonic,
       the interpolant will have an extremum at the switch points;  for  more  control  over  these  issues  use
       "chic".

       Error status returned by $ierr:

       •   0 if successful.

       •   > 0 if there were "ierr" switches in the direction of monotonicity (data still valid).

       •   -1 if "nelem($x) < 2".

       •   -3 if $x is not strictly increasing.

       chim  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   chic
         Signature: (longlong ic(two=2);vc(two=2);mflag();x(n);f(n);[o]d(n);wk(nwk);longlong [o]ierr())

       Calculate the derivatives of (x,f(x)) using cubic Hermite interpolation.

       Calculate the derivatives at the given points ("$x,$f", where $x is strictly increasing).   Control  over
       the  boundary  conditions  is  given  by the $ic and $vc ndarrays, and the value of $mflag determines the
       treatment of points where monotoncity switches  direction.  A  simpler,  more  restricted,  interface  is
       available using "chim".

       The  first  and second elements of $ic determine the boundary conditions at the start and end of the data
       respectively.  If the value is 0, then the default condition, as used by "chim", is adopted.  If  greater
       than  zero,  no  adjustment  for monotonicity is made, otherwise if less than zero the derivative will be
       adjusted.  The allowed magnitudes for ic(0) are:

       •   1 if first derivative at x(0) is given in vc(0).

       •   2 if second derivative at x(0) is given in vc(0).

       •   3 to use the 3-point difference formula for d(0).  (Reverts to the default b.c. if "n < 3")

       •   4 to use the 4-point difference formula for d(0).  (Reverts to the default b.c. if "n < 4")

       •   5 to set d(0) so that the second derivative is continuous at x(1).  (Reverts to the default  b.c.  if
           "n < 4")

       The values for ic(1) are the same as above, except that the first-derivative value is stored in vc(1) for
       cases 1 and 2.  The values of $vc need only be set if options 1 or 2 are chosen for $ic.

       Set  "$mflag  =  0"  if interpolant is required to be monotonic in each interval, regardless of the data.
       This causes $d to be set to 0 at all switch points. Set $mflag to be non-zero to use a formula  based  on
       the 3-point difference formula at switch points. If "$mflag > 0", then the interpolant at swich points is
       forced  to  not  deviate  from  the data by more than "$mflag*dfloc", where "dfloc" is the maximum of the
       change of $f on this interval and its two immediate neighbours.  If "$mflag < 0", no such control  is  to
       be imposed.

       The  ndarray  $wk  is  only  needed  for  work  space. However, I could not get it to work as a temporary
       variable, so you must supply it; it is a 1D ndarray with "2*n" elements.

       Error status returned by $ierr:

       •   0 if successful.

       •   1 if "ic(0) < 0" and d(0) had to be adjusted for monotonicity.

       •   2 if "ic(1) < 0" and d(n-1) had to be adjusted for monotonicity.

       •   3 if both 1 and 2 are true.

       •   -1 if "n < 2".

       •   -3 if $x is not strictly increasing.

       •   -4 if "abs(ic(0)) > 5".

       •   -5 if "abs(ic(1)) > 5".

       •   -6 if both -4 and -5  are true.

       •   -7 if "nwk < 2*(n-1)".

       chic does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   chsp
         Signature: (longlong ic(two=2);vc(two=2);x(n);f(n);[o]d(n);wk(nwk);longlong [o]ierr())

       Calculate the derivatives of (x,f(x)) using cubic spline interpolation.

       Calculate  the  derivatives,  using  cubic  spline interpolation, at the given points ("$x,$f"), with the
       specified boundary conditions.  Control over the  boundary  conditions  is  given  by  the  $ic  and  $vc
       ndarrays.   The  resulting  values  -  "$x,$f,$d" - can be used in all the functions which expect a cubic
       Hermite function.

       The first and second elements of $ic determine the boundary conditions at the start and end of  the  data
       respectively.  The allowed values for ic(0) are:

       •   0 to set d(0) so that the third derivative is continuous at x(1).

       •   1 if first derivative at x(0) is given in "vc(0").

       •   2 if second derivative at "x(0") is given in vc(0).

       •   3 to use the 3-point difference formula for d(0).  (Reverts to the default b.c. if "n < 3".)

       •   4 to use the 4-point difference formula for d(0).  (Reverts to the default b.c. if "n < 4".)

       The values for ic(1) are the same as above, except that the first-derivative value is stored in vc(1) for
       cases 1 and 2.  The values of $vc need only be set if options 1 or 2 are chosen for $ic.

       The  ndarray  $wk  is  only  needed  for  work  space. However, I could not get it to work as a temporary
       variable, so you must supply it; it is a 1D ndarray with "2*n" elements.

       Error status returned by $ierr:

       •   0 if successful.

       •   -1  if "nelem($x) < 2".

       •   -3  if $x is not strictly increasing.

       •   -4  if "ic(0) < 0" or "ic(0) > 4".

       •   -5  if "ic(1) < 0" or "ic(1) > 4".

       •   -6  if both of the above are true.

       •   -7  if "nwk < 2*n".

       •   -8  in case of trouble solving the linear system for the interior derivative values.

       chsp does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   chfd
         Signature: (x(n);f(n);d(n);longlong check();xe(ne);[o]fe(ne);[o]de(ne);longlong [o]ierr())

       Interpolate function and derivative values.

       Given  a  piecewise  cubic  Hermite  function  -  such  as  from "chim" - evaluate the function ($fe) and
       derivative ($de) at a set of points ($xe).  If function values  alone  are  required,  use  "chfe".   Set
       "check" to 0 to skip checks on the input data.

       Error status returned by $ierr:

       •   0 if successful.

       •   >0 if extrapolation was performed at "ierr" points (data still valid).

       •   -1 if "nelem($x) < 2"

       •   -3 if $x is not strictly increasing.

       •   -4 if "nelem($xe) < 1".

       •   -5 if an error has occurred in a lower-level routine, which should never happen.

       chfd  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   chfe
         Signature: (x(n);f(n);d(n);longlong check();xe(ne);[o]fe(ne);longlong [o]ierr())

       Interpolate function values.

       Given a piecewise cubic Hermite function - such as from "chim" - evaluate the function ($fe) at a set  of
       points  ($xe).   If  derivative values are also required, use "chfd".  Set "check" to 0 to skip checks on
       the input data.

       Error status returned by $ierr:

       •   0 if successful.

       •   >0 if extrapolation was performed at "ierr" points (data still valid).

       •   -1 if "nelem($x) < 2"

       •   -3 if $x is not strictly increasing.

       •   -4 if "nelem($xe) < 1".

       chfe does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   chia
         Signature: (x(n);f(n);d(n);longlong check();la();lb();[o]ans();longlong [o]ierr())

       Integrate (x,f(x)) over arbitrary limits.

       Evaluate the definite integral of a piecewise cubic Hermite function over an arbitrary interval, given by
       "[$la,$lb]".  $d should contain the derivative values, computed by "chim".  See "chid" if the integration
       limits are data points.  Set "check" to 0 to skip checks on the input data.

       The values of $la and $lb do not have to lie within $x, although the resulting  integral  value  will  be
       highly suspect if they are not.

       Error status returned by $ierr:

       •   0 if successful.

       •   1 if $la lies outside $x.

       •   2 if $lb lies outside $x.

       •   3 if both 1 and 2 are true.

       •   -1 if "nelem($x) < 2"

       •   -3 if $x is not strictly increasing.

       •   -4 if an error has occurred in a lower-level routine, which should never happen.

       chia  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   chid
         Signature: (x(n);f(n);d(n);longlong check();longlong ia();longlong ib();[o]ans();longlong [o]ierr())

       Integrate (x,f(x)) between data points.

       Evaluate the definite integral of a a piecewise cubic Hermite function between x($ia) and x($ib).

       See "chia" for integration between arbitrary limits.

       Although using a fortran routine, the values of $ia and $ib are  zero  offset.   $d  should  contain  the
       derivative values, computed by "chim".  Set "check" to 0 to skip checks on the input data.

       Error status returned by $ierr:

       •   0 if successful.

       •   -1 if "nelem($x) < 2".

       •   -3 if $x is not strictly increasing.

       •   -4 if $ia or $ib is out of range.

       chid  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   chcm
         Signature: (x(n);f(n);d(n);longlong check();longlong [o]ismon(n);longlong [o]ierr())

       Check the given piecewise cubic Hermite function for monotonicity.

       The outout ndarray $ismon indicates over which intervals the function is monotonic.  Set "check" to 0  to
       skip checks on the input data.

       For the data interval "[x(i),x(i+1)]", the values of ismon(i) can be:

       •   -3 if function is probably decreasing

       •   -1 if function is strictly decreasing

       •   0  if function is constant

       •   1  if function is strictly increasing

       •   2  if function is non-monotonic

       •   3  if function is probably increasing

       If  "abs(ismon(i)) == 3", the derivative values are near the boundary of the monotonicity region. A small
       increase produces non-monotonicity, whereas a decrease produces strict monotonicity.

       The above applies to "i = 0 .. nelem($x)-1". The last element of  $ismon  indicates  whether  the  entire
       function is monotonic over $x.

       Error status returned by $ierr:

       •   0 if successful.

       •   -1 if "n < 2".

       •   -3 if $x is not strictly increasing.

       chcm  does  not process bad values.  It will set the bad-value flag of all output ndarrays if the flag is
       set for any of the input ndarrays.

   chbs
         Signature: (x(n);f(n);d(n);longlong knotyp();longlong nknots();t(tsize);[o]bcoef(bsize);longlong [o]ndim();longlong [o]kord();longlong [o]ierr())

       Piecewise Cubic Hermite function to B-Spline converter.

       The resulting B-spline representation of the data (i.e. "nknots", "t", "bcoeff", "ndim", and "kord")  can
       be evaluated by "bvalu" (which is currently not available).

       Array sizes: "tsize = 2*n + 4", "bsize = 2*n", and "ndim = 2*n".

       "knotyp"  is a flag which controls the knot sequence.  The knot sequence "t" is normally computed from $x
       by putting a double knot at each "x" and setting the end knot pairs according to the  value  of  "knotyp"
       (where "m = ndim = 2*n"):

       •   0 -   Quadruple knots at the first and last points.

       •   1 -   Replicate lengths of extreme subintervals: "t( 0 ) = t( 1 ) = x(0) - (x(1)-x(0))" and "t(m+3) =
           t(m+2) = x(n-1) + (x(n-1)-x(n-2))"

       •   2  -   Periodic placement of boundary knots: "t( 0 ) = t( 1 ) = x(0) - (x(n-1)-x(n-2))" and "t(m+3) =
           t(m+2) = x(n) + (x(1)-x(0))"

       •   <0 - Assume the "nknots" and "t" were set in a previous call.

       "nknots" is the number of knots and may be changed by the routine.  If "knotyp >= 0",  "nknots"  will  be
       set  to "ndim+4", otherwise it is an input variable, and an error will occur if its value is not equal to
       "ndim+4".

       "t" is the array of "2*n+4" knots for the B-representation and may be changed by the routine.  If "knotyp
       >= 0", "t" will be changed so that the interior double knots are equal to the x-values and  the  boundary
       knots  set  as  indicated above, otherwise it is assumed that "t" was set by a previous call (no check is
       made to verify that the data forms a legitimate knot sequence).

       Error status returned by $ierr:

       •   0 if successful.

       •   -4 if "knotyp > 2".

       •   -5 if "knotyp < 0" and "nknots != 2*n + 4".

       chbs does not process bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is
       set for any of the input ndarrays.

   polfit
         Signature: (x(n); y(n); w(n); longlong maxdeg(); longlong [o]ndeg(); [o]eps(); [o]r(n); longlong [o]ierr(); [o]a(foo); [o]coeffs(bar);[t]xtmp(n);[t]ytmp(n);[t]wtmp(n);[t]rtmp(n))

       Fit discrete data in a least squares sense by polynomials
                 in  one  variable.  x(), y() and w() must be of the same type.         This version handles bad
       values appropriately

       polfit processes bad values.  It will set the bad-value flag of all output ndarrays if the  flag  is  set
       for any of the input ndarrays.

AUTHOR

       Copyright  (C)  1997  Tuomas J. Lukka.  Copyright (C) 2000 Tim Jenness, Doug Burke.  All rights reserved.
       There is no warranty. You are allowed  to  redistribute  this  software  /  documentation  under  certain
       conditions. For details, see the file COPYING in the PDL distribution. If this file is separated from the
       PDL distribution, the copyright notice should be included in the file.

perl v5.38.2                                       2024-04-10                                        Slatec(3pm)