User Guide 027: Difference between revisions
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l<sub>j</sub>(x) = Lagrange basis polynomials given by | l<sub>j</sub>(x) = Lagrange basis polynomials given by | ||
{{Equation|<math> l_j (x) = \prod_{1 < k \leq n+1 \ k\neq j} \frac{x - x_k}{x_j - x_k} </math>|16-2}} | {{Equation|<math> l_j (x) = \prod_{1 < k \leq n+1 | ||
\ k\neq j} \frac{x - x_k}{x_j - x_k} </math>|16-2}} | |||
The Lagrange basis polynomials are such that | The Lagrange basis polynomials are such that |
Revision as of 13:46, 4 May 2015
16 Appendix F: Piecewise Lagrangian Polynomial Interpolation
Piecewise polynomials in Lagrange form are given by
(16-1) |
where
yj= interpolation data values corresponding to xj
n = order or the interpolation polynomial
lj(x) = Lagrange basis polynomials given by
(16-2) |
The Lagrange basis polynomials are such that
( 16-3) |
One advantage of using Lagrange polynomials is that the interpolation weights (Lagrange basis functions lj ) are not a function of yj . This prop-erty is useful when many interpolations are needed for the same xj but different yj such as in the case of interpolating spatial datasets in time.