# Kernel Interpolation With Barriers (Geostatistical Analyst)

Mit der Geostatistical Analyst-Lizenz verfügbar.

## Zusammenfassung

A moving window predictor that uses the shortest distance between points so that points on either side of the line barriers are connected.

How Kernel Interpolation With Barriers works

## Verwendung

• The absolute feature barrier employs a non-Euclidean distance approach rather than a line-of-sight approach. The line-of-sight approach requires that a straight line between the measured location and the location where the prediction is required do not intersect the barrier feature. If the distance around the barrier is within the searching neighborhood specifications, then it will be considered in this non-Euclidean distance approach.

• The processing time is dependent on the complexity of the barrier feature classes geometry. Tools in the Generalization toolset can be used to create a new feature class by smoothing or deleting some of these features.

• For Exponential, Gaussian, and Constant kernel functions, a smoothing factor is applied so the kernels have a finite radius that is equal to the specified bandwidth.

## Syntax

`KernelInterpolationWithBarriers(in_features, z_field, {out_ga_layer}, {out_raster}, {cell_size}, {in_barrier_features}, {kernel_function}, {bandwidth}, {power}, {ridge}, {output_type})`
 Parameter Erklärung Datentyp in_features The input point features containing the z-values to be interpolated. Feature Layer z_field Field that holds a height or magnitude value for each point. This can be a numeric field or the Shape field if the input features contain z-values or m-values. Field out_ga_layer(optional) The geostatistical layer produced. This layer is required output only if no output raster is requested. Geostatistical Layer out_raster(optional) The output raster. This raster is required output only if no output geostatistical layer is requested. Raster Dataset cell_size(optional) The cell size at which the output raster will be created.This value can be explicitly set in the Environments by the Cell Size parameter.If not set, it is the shorter of the width or the height of the extent of the input point features, in the input spatial reference, divided by 250. Analysis Cell Size in_barrier_features(optional) Absolute barrier features using non-Euclidean distances rather than line-of-sight distances. Feature Layer kernel_function(optional) The kernel function used in the simulation. EXPONENTIAL — The function grows or decays proportionally. GAUSSIAN — Bell-shaped function that falls off quickly toward plus/minus infinity. QUARTIC — Fourth-order polynomial function. EPANECHNIKOV — A discontinuous parabolic function. POLYNOMIAL5 — Fifth-order polynomial function. CONSTANT —An indicator function. String bandwidth(optional) Used to specify the maximum distance at which data points are used for prediction. With increasing bandwidth, prediction bias increases and prediction variance decreases. Double power(optional) Sets the order of the polynomial. Long ridge(optional) Used for the numerical stabilization of the solution of the system of linear equations. It does not influence predictions in the case of regularly distributed data without barriers. Predictions for areas in which the data is located near the feature barrier or isolated by the barriers can be unstable and tend to require relatively large ridge parameter values. Double output_type(optional) Surface type to store the interpolation results.For more information about the output surface types, see What output surface types can the interpolation models generate? PREDICTION —Prediction surfaces are produced from the interpolated values.PREDICTION_STANDARD_ERROR — Standard Error surfaces are produced from the standard errors of the interpolated values. String

## Codebeispiel

KernelInterpolationWithBarriers example 1 (Python window)

Interpolate point features onto a rectangular raster using a barrier feature class.

``````import arcpy
arcpy.env.workspace = "C:/gapysamples/data"
arcpy.KernelInterpolationWithBarriers_ga("ca_ozone_pts", "OZONE", "outKIWB",
"C:/gapyexamples/output/kiwbout", "2000",
"ca_outline", "QUARTIC", "", "", "50", "PREDICTION")``````
KernelInterpolationWithBarriers example 2 (stand-alone Python script)

Interpolate point features onto a rectangular raster using a barrier feature class.

``````# Name: KernelInterpolationWithBarriers_Example_02.py
# Description: Kernel Interpolation with Barriers is a moving window predictor
#   that uses non-Euclidean distances.
# Requirements: Geostatistical Analyst Extension

# Import system modules
import arcpy

# Set environment settings
arcpy.env.workspace = "C:/gapyexamples/data"

# Set local variables
inPointFeatures = "ca_ozone_pts.shp"
zField = "ozone"
outLayer = "outKIWB"
outRaster = "C:/gapyexamples/output/kiwbout"
cellSize = 2000.0
inBarrier = "ca_outline.shp"
kernelFunction = "QUARTIC"
bandwidth = ""
power = ""
ridgeParam = "50"
outputType = "PREDICTION"

# Execute KernelInterpolationWithBarriers
arcpy.KernelInterpolationWithBarriers_ga(inPointFeatures, zField, outLayer, outRaster,
cellSize, inBarrier, kernelFunction, bandwidth,
power, ridgeParam, outputType)``````

## Lizenzinformationen

• Basic: Erfordert Geostatistical Analyst
• Standard: Erfordert Geostatistical Analyst