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lgrind_c

Table of contents
Procedure
Abstract
Required_Reading
Keywords
Brief_I/O
Detailed_Input
Detailed_Output
Parameters
Exceptions
Files
Particulars
Examples
Restrictions
Literature_References
Author_and_Institution
Version
Index_Entries

Procedure

   lgrind_c (Lagrange polynomial interpolation with derivative) 

   void lgrind_c ( SpiceInt            n,
                   ConstSpiceDouble  * xvals,
                   ConstSpiceDouble  * yvals,
                   SpiceDouble       * work,
                   SpiceDouble         x,
                   SpiceDouble       * p,
                   SpiceDouble       * dp )

Abstract

   Evaluate a Lagrange interpolating polynomial, for a specified
   set of coordinate pairs, at a specified abscissa value. Return
   both the value of the polynomial and its derivative.

Required_Reading

   None.

Keywords

   INTERPOLATION
   POLYNOMIAL


Brief_I/O

   VARIABLE  I/O  DESCRIPTION
   --------  ---  --------------------------------------------------
   n          I   Number of points defining the polynomial.
   xvals      I   Abscissa values.
   yvals      I   Ordinate values.
   work      I-O  Work space array.
   x          I   Point at which to interpolate the polynomial.
   p          O   Polynomial value at `x'.
   dp         O   Polynomial derivative at `x'.

Detailed_Input

   n           is the number of points defining the polynomial.
               The arrays `xvals' and `yvals' contain `n' elements.

   xvals,
   yvals       are arrays of abscissa and ordinate values that
               together define `n' ordered pairs. The set of points

                  ( xvals[i], yvals[i] )

               define the Lagrange polynomial used for
               interpolation. The elements of `xvals' must be
               distinct and in increasing order.

   work        is an n * 2 work space array, where `n' is the same
               dimension as that of `xvals' and `yvals'. It is used
               by this routine as a scratch area to hold
               intermediate results.

   x           is the abscissa value at which the interpolating
               polynomial is to be evaluated.

Detailed_Output

   p           is the value at `x' of the unique polynomial of
               degree n-1 that fits the points in the plane
               defined by `xvals' and `yvals'.

   dp          is the derivative at `x' of the interpolating
               polynomial described above.

Parameters

   None.

Exceptions

   1)  If any two elements of the array `xvals' are equal, the error
       SPICE(DIVIDEBYZERO) is signaled by a routine in the call tree of this
       routine.

   2)  If `n' is less than 1, the error SPICE(INVALIDSIZE) is
       signaled by a routine in the call tree of this routine.

   3)  This routine does not attempt to ward off or diagnose
       arithmetic overflows.

Files

   None.

Particulars

   Given a set of `n' distinct abscissa values and corresponding
   ordinate values, there is a unique polynomial of degree n-1, often
   called the "Lagrange polynomial", that fits the graph defined by
   these values. The Lagrange polynomial can be used to interpolate
   the value of a function at a specified point, given a discrete
   set of values of the function.

   Users of this routine must choose the number of points to use
   in their interpolation method. The authors of Reference [1] have
   this to say on the topic:

      Unless there is solid evidence that the interpolating function
      is close in form to the true function `f', it is a good idea to
      be cautious about high-order interpolation. We
      enthusiastically endorse interpolations with 3 or 4 points, we
      are perhaps tolerant of 5 or 6; but we rarely go higher than
      that unless there is quite rigorous monitoring of estimated
      errors.

   The same authors offer this warning on the use of the
   interpolating function for extrapolation:

      ...the dangers of extrapolation cannot be overemphasized:
      An interpolating function, which is perforce an extrapolating
      function, will typically go berserk when the argument `x' is
      outside the range of tabulated values by more than the typical
      spacing of tabulated points.

Examples

   The numerical results shown for this example may differ across
   platforms. The results depend on the SPICE kernels used as
   input, the compiler and supporting libraries, and the machine
   specific arithmetic implementation.

   1) Fit a cubic polynomial through the points

          ( -1, -2 )
          (  0, -7 )
          (  1, -8 )
          (  3, 26 )

      and evaluate this polynomial at x = 2.

      The returned value of `p' should be 1.0, since the
      unique cubic polynomial that fits these points is

                     3      2
         f(x)   =   x  + 2*x  - 4*x - 7

      The returned value of `dp' should be 16.0, since the
      derivative of f(x) is

          '           2
         f (x)  =  3*x  + 4*x - 4


      Example code begins here.


      /.
         Program lgrind_ex1
      ./
      #include <stdio.h>
      #include "SpiceUsr.h"

      int main( )
      {

         /.
         Local variables.
         ./
         SpiceDouble      p;
         SpiceDouble      dp;
         SpiceDouble      xvals [] = { -1., 0., 1., 3. };
         SpiceDouble      yvals [] = { -2., -7., -8., 26. };
         SpiceDouble      work  [4*2];
         SpiceInt         n = 4;

         lgrind_c ( n, xvals, yvals, work, 2., &p, &dp );

         printf( "P, DP = %f %f\n", p, dp );

         return ( 0 );
      }


      When this program was executed on a Mac/Intel/cc/64-bit
      platform, the output was:


      P, DP = 1.000000 16.000000


      Note that we could also have lgrind_c with the reference

         lgrind_c ( n, xvals, yvals, yvals, 2., &p, &dp );

      if we wished to; in this case `yvals' would have been
      modified on output.

Restrictions

   None.

Literature_References

   [1]  W. Press, B. Flannery, S. Teukolsky and W. Vetterling,
        "Numerical Recipes -- The Art of Scientific Computing,"
        chapters 3.0 and 3.1, Cambridge University Press, 1986.

Author_and_Institution

   N.J. Bachman        (JPL)
   J. Diaz del Rio     (ODC Space)
   E.D. Wright         (JPL)

Version

   -CSPICE Version 1.0.1, 01-NOV-2021 (JDR)

       Edited the header to comply with NAIF standard.

   -CSPICE Version 1.0.0, 24-AUG-2015 (EDW) (NJB)

Index_Entries

   interpolate function using Lagrange polynomial
   Lagrange interpolation
Fri Dec 31 18:41:09 2021