Barnes interpolation (Barnes objective analysis)

Smoothing interpolation of unstructured N-dimensional data using Barnes objective analysis
487 download
Aggiornato 20 set 2016

Visualizza la licenza

BARNESN Barnes smoothing interpolation of unstructured data
Vq = BARNESN(X, V, Xv) returns the smoothing interpolation of
D-dimensional observations V(X) at query points Xq. Query points Xq are
created by meshing the vectors in the cell array Xv that define the
grid in each dimension. Smoothing interpolation is performed using
the Koch form of Barnes objective analysis [2]. Roughly, (in 2D) the
interpolated value (vq) at gridpoint (xq, yq) is determined as a
weighted-sum of the values (v) at data points (x, y), based on the
gaussian weighting function exp(-r^2 / s / g^j), where r is the
euclidian distance from (xq, yq) to (x, y), s is the Gaussian Variance,
and g is the Convergence Parameter.
-
Bibliography:
[1] Barnes, Stanley L. "Mesoscale objective map analysis using weighted
time-series observations." (1973)
[2] Koch, Steven E., Mary DesJardins, and Paul J. Kocin. "An
interactive Barnes objective map analysis scheme for use with
satellite and conventional data." Journal of Climate and Applied
Meteorology 22.9 (1983): 1487-1503.
[3] Daley, Roger. Atmospheric data anlysis. No. 2. Cambridge University
Press, 1993.
-
See documentation/help for more information.

Cita come

Lena Bartell (2026). Barnes interpolation (Barnes objective analysis) (https://it.mathworks.com/matlabcentral/fileexchange/58937-barnes-interpolation-barnes-objective-analysis), MATLAB Central File Exchange. Recuperato .

Compatibilità della release di MATLAB
Creato con R2016a
Compatibile con qualsiasi release
Compatibilità della piattaforma
Windows macOS Linux
Categorie
Scopri di più su Time Series in Help Center e MATLAB Answers
Riconoscimenti

Ispirato da: Barnes objective analysis

Versione Pubblicato Note della release
1.3.0.0

Update to appropriately handle the situation wherein some data points lie outside the grid (previously this just produced NaNs).

1.2.0.0

Fixed some errors in the algorithm implementation and implemented optimal parameters as default. Expanded functionality from 2D to N-dimensions.

1.1.0.0

Corrected typo in example implementation

1.0.0.0