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Surfer
Gridding
The gridding methods in Surfer allow you to produce
accurate contour, surface, wireframe, vector, image, and shaded relief maps from
your XYZ data. The data can be randomly dispersed over the map area, and
Surfer's gridding will interpolate your data onto a grid. You have a multitude
of gridding methods to choose from, so you can produce exactly the map you want.
With each gridding method you have complete control over the gridding
parameters. If your data are already collected in a regular rectangular array,
you can create a map directly from your data. Computer generated contour maps
have never been more accurate.
Gridding Features
- Interpolate from up to 1 billion XYZ data points
(limited by available memory)
- Produce grids with up to 100 million nodes
- Specify faults and breaklines when gridding
- Choose from one of the powerful gridding methods:
Inverse Distance, Kriging, Minimum Curvature, Polynomial Regression,
Triangulation, Nearest Neighbor, Shepard's Method, Radial Basis Functions,
Natural Neighbor, Moving Average, and Local Polynomial
- Specify isotropic or anisotropic weighting
- You have full control over the grid line geometry
including grid limits, grid spacing, and number of grid lines
- Customize search options based on user-defined data
sector parameters
- Specify search ellipses at any orientation and scaling
- Use spline smoothing and grid filtering to alter the
grid file
- Use grid math to perform mathematic operations between
grid files
- Use Nearest Neighbor to create grid files without
interpolation
- Use Triangulation to achieve accuracy with large data
sets faster
- Detrend a surface using Polynomial Regression, generate
regression coefficients in a report, and calculate residuals
- Use data exclusion filters to eliminate unwanted data
- Use duplicate data resolution techniques
- Generate a grid of Kriging standard deviations
- Specify point or block Kriging
- Generate a report of the gridding statistics and
parameters including ANOVA regression statistics
- Specify scales and range for each variogram model
- Extract subsets of grids or DEMs based on rows and
columns
- Transform, offset, rescale, rotate, and mirror grids
- Calculate first and second directional derivatives at
user-specified orientations
- Calculate differential and integral operators utilizing
gradient, Laplacian, biharmonic, and integrated volume operators
- Analyze your data with Fourier and spectral analysis
with Correlograms and Periodogram
- Generate grids from a user-specified function of two
variables
- Calculate grids with Data Metrics including: number of
points within search ellipse, distance to nearest and farthest neighbor,
median, average and offset distance to points within the search ellipse
- Use cross-validation to judge the suitability of the
gridding method for the particular data set
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