Title: Chapter 16 - Spatial Interpolation
1Chapter 16 - Spatial Interpolation
- Triangulation
- Inverse-distance
- Kriging (optimal interpolation)
2What is Interpolation?
- Predicting the value of attributes at unsampled
sites from measurements made at point locations
within the same area or region - Predicting the value outside the area -
extrapolation - Creating continuous surfaces from point data -
the main procedures
3Types of Spatial Interpolation
- Global or Local
- Global-use every known points to estimate unknown
value. - Local use a sample of known points to estimate
unknown value. - Exact or inexact interpolation
- Exact predict a value at the point location
that is the same as its known value. - Inexact (approximate) predicts a value at the
point location that differs from its known value. - Deterministic or stochastic interpolation
- Deterministic provides no assessment of errors
with predicted values - Stochastic interpolation offers assessment of
prediction errros with estimated variances.
4Classification of Spatial Interpolation Methods
Global
Local
Stochastic
Deterministic
Stochastic
Deterministic
Regression (inexact)
Kriging (exact)
Trend surface (inexact)
Thiessen (exact) Density estimation(inexact) Inver
se distance weighted (exact) Splines (exact)
5Global Interpolation
- Global use all available data to provide
predictions for the whole area of interest, while
local interpolations operate within a small zone
around the point being interpolated to ensure
that estimates are made only with data from
locations in the immediate neighborhood. - Two types of global Trend surface and regression
methods
6Trend Surface Analysis
- Approximate points with known values with a
polynomial equation. - See Box 16.1
- Local polynomial interpolation uses a sample of
known points, such as convert TIN to DEM
7Local, deterministic methods
Define an area around the point
Find data point within neighborhood
Choose model
Evaluate point value
8Thiessen Polygon (nearest neighbor)
- Any point within a polygon is closer to the
polygons known point than any other known
points. - One observation per cell, if the data lie on a
regular square grid, then Thiessen polygons are
all equal, if irregular then irregular lattice of
polygons are formed - Delauney triangulation - lines joining the data
points (same as TIN - triangular irregular
network)
9Thiessen polygons
Delauney Triangulation
10Example data set
- soil data from Mass near the village of Stein in
the south of the Netherlands - all point data refer to a support of 10x10 m, the
are within which bulked samples were collected
using a stratified random sampling scheme - Heavy metal concentration measured
11Exercise create Thiessen polygon for zinc
concentration
- Create a new project
- Copy g\classes\4650_5650\data\3-22\Soil_poll.dbf
and import it to the project. - After importing the table into the project, you
need to create an event theme based on this table - Go to Tools gt Add XY Data and make sure the
Easting is shown in X and Northing is in
Y. (Dont worry the Unknown coordinate - Click on OK then the point theme will appear on
your project.
12This is what you might see on screen
13Create a polygon theme
- The next thing you need to do is provide the
Thiessen polygon a boundary so that the computing
of irregular polygons can be reasonable - Use ArcCatalog to create a new shapefile and name
it as Polygon.shp - Add this layer to your current project.
- Use Editor to create a polygon.
14Creating Polygon Theme
15Notes 1)Remember to stop Edits, otherwise your
polygon theme will be under editing mode all the
time2)Remember to remove the selected points
from the Soil_poll_data.txt. If you are done
so, your Thiessen polygons will be based on the
selected points only.
16Extent and Cell Size
- Go to Spatial Analyst gt Options and click on
tab and use Polygon as the Analysis Mask. - If the Analysis Mask is not set, the output layer
will have rectangular shape.
17Thiessen Polygon from Spatial Analyst
- Select Spatial Analyst gt Distance gt Allocation.
- In Assign to, select soil_poll Event and
- Change the default cell size to 0.1
- click OK to create cell in temporary folder.
18(No Transcript)
19Join Tables
- Join soil_poll Events to Alloc3 grid file by
ObjectID in Alloc3 and OID in soil_poll
Events. - Click Advanced button. Two options are
available for joining tables. - Open Attribute of Alloc3 (name may vary) and
view the joined fields.
20Zinc Concentration
Symbolize the grid with two-color ramp based on
Zn concentration
21Density Estimation
- Simple method divide total point value by the
cell size - Kernel estimation associate each known point
with a kernel function, a probability density
function.
22Exercise
- Compute density of the sampling points from
previous dataset. - If you use the xy-event points for calculation,
you might receive error message. - Convert this layer to shape file before using
Density function from Spatial Analyst. - Select your cell size (such as 1,) and search
radius as 5.
23Density function output
24Inverse Distance Weighted
- the value of an attribute z at some unsampled
point is a distance-weighted average of data
point occurring within a neighborhood, which
compute
estimated value at an unsampled point n number
of control points used to estimate a grid
point kpower to which distance is
raised ddistances from each control points to an
unsampled point
25Computing IDW
6
Z140
Z260
4
Z440
Z350
2
Use k 1
2 4 6 X
Do you get 49.5 for the red square?
26Exercise - generate a Inversion distance
weighting surface and contour
- Spatial Analyst gt Interpolate to Raster gt Inverse
Distance Weighted - Make sure you have set the Output cell size to 0.1
27Contouring
- create a contour based on the surface from IDW
28IDW and Contouring
29Problem - solution
- Unsampled point may have a higher data value than
all other controlled points but not attainable
due to the nature of weighted average an average
of values cannot be lesser or greater than any
input values - solution - Fit a trend surface to a set of control points
surrounding an unsampled point - Insert X and Y coordinates for the unsampled
point into the trend surface equation to estimate
a value at that point
30Splines
- draughtsmen used flexible rulers to trace the
curves by eye. The flexible rulers were called
splines - mathematical equivalents - localized - piece-wise polynomial function p(x) is
31Spline - math functions
- piece-wise polynomial function p(x) is
- p(x)pi(x) xiltxltxi1
- pj(xi)pj(xi) j0,1,,,,
- i1,2,,,,,,k-1
i1
x1
xk1
x0
xk
break points
32Spline
- r is used to denote the constraints on the spline
(the functions pi(x) are polynomials of degree m
or less - r 0 - no constraints on function
33Exercise create surface from spline
- have point data theme activated
- select Surface gt Interpolate Grid
- Define the output area and other parameters
- Select Spline in Method field, Zn for Z
Value Field and regularized as type
34Kriging
- Comes from Daniel Krige, who developed the method
for geological mining applications - Rather than considering distances to control
points independently of one another, kriging
considers the spatial autocorrelation in the data
35semivariance
20
Z1 Z2 Z3 Z4 Z5
10
20 30 35 40 50
10 20 30 40 50
Zi values of the attribute at control
points hmultiple of the distance between control
points nnumber of sample points
36Semivariance
h1, h2 h3 h4
21.88 91.67 156.25 312.50
(Z1-Z1h)2
100 25 25 25 175 8
225 100 100 425 6
400 225 625 4
625 625 2
(Z2-Z2h)2
(Z3-Z3h)2
(Z4-Z4h)2
sum 2(n-h)
37Modifications (in real world)
- Tolerance - direction and distance needed to be
considered
10m
1m
20o
5m
A
38semivariance
- the semivariance increases as h increases
distance increases -gt semivariance increases - nearby points to be more similar than distant
geographical data
39data no longer similar to nearby values
sill
range
h
40kriging computations
- we use 3 points to estimate a grid point
- again, we use weighted average
w1Z1 w2Z2w3Z3
estimated value at a grid point
Z1,Z2 and Z3 data values at the control
points w1,w2, and w3 weighs associated with
each control point
41- In kriging the weighs (wi) are chosen to minimize
the difference between the estimated value at a
grid point and the true (or actual) value at that
grid point. - The solution is achieved by solving for the wi
in the following simultaneous equations - w1?(h11) w2?(h12) w3?(h13) ?(h1g)
- w1?(h12) w2?(h22) w3?(h23) ?(h2g)
- w1?(h13) w2?(h32) w3?(h33) ?(h3g)
42- w1?(h11) w2?(h12) w3?(h13) ?(h1g)
- w1?(h12) w2?(h22) w3?(h23) ?(h2g)
- w1?(h13) w2?(h32) w3?(h33) ?(h3g)
- Where ?(hij)semivariance associated with
distance bet/w control points i and j. - ?(hig) the semivariance associated with the
distance bet/w ith control point and a grid
point. - Difference to IDW which only consider distance
bet/w the grid point and control points, kriging
take into account the variance between control
points too.
43Example
distance
1 2 3 g
Z1(1,4)50
0 3.16 2.24 2.24
1 2 3 g
Z3(3,3)25
0 2.24 1.00
0 1.41
Z(2,2)?
0
Z2(2,1)40
w10.00w231.6w322.422.4 w131.6w20.00w322.410.
0 w122.4w222.4w30.0014.1
?
?10h
h
44- 0.15(50)0.55(40) 0.30(25)
- 37
45Homework 6 due next Thursday midnight.
- Task 1 Chapter 16 tasks
- Task 2
- Calculate volume of contaminated Pb soil in
Thiessen polygon exercise based on range of every
50 ppm, assuming soil density of 1.65 g/cm3 and
only the top 1-foot soil is considered. - Use IDW to compute the volume of the contaminated
Pb - Use Kriging (if its working) to compute
concentration of Pb - Compare these three methods and see the
differences (use same output cell size for all
three methods) - In Doc file, describe your selection of cell
size, search radius and results from different
choice of cell sizes (if you have time to create
layers with different cell sizes.