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GIS Lecture 11: Spatial Analyst

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Track changes over time and determine patterns ... actual number of heart attacks in OCHA (these are only ones with bystander help) ... – PowerPoint PPT presentation

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Title: GIS Lecture 11: Spatial Analyst


1
GIS Lecture 11 Spatial Analyst
2
Outline
  • Spatial Analyst Overview
  • Grid Maps
  • Raster Layers
  • Raster Masks
  • Kernel Density Smoothing
  • Site Suitability Study
  • Poverty Risk Model

3
Spatial Analyst Overview
4
Spatial Analyst
  • Traditional GIS
  • Spatial queries, buffer analysis, overlay
    analysis
  • Spatial Analyst
  • Quantify spatial patterns and relationships
  • Track changes over time and determine patterns
  • Identify anomalous spatial patterns using
    mathematical statistics
  • Statistical significance and verifying conclusions

5
Primary Features
  • Data analysis
  • Allows rapid generation of maps that are based on
    complex statistics
  • Surface modeling
  • Creates predicted surface (grid maps) from
    unmeasured points based on statistical analysis
    of measured points

6
Load Spatial Analyst Extension
  • Tools, Extensions

7
Grid Maps
8
Grid Maps
  • Divides geographic space into uniform blocks
    called cells
  • Every cell represents a certain specified portion
    of the earth, such as a square mile, kilometer,
    meter, etc.
  • Each cell is given a value that describes the
    site, such as elevation, land use type, number of
    crimes, etc.

9
Grid Map Example
  • Housing units in City of Pittsburgh
  • Census Block Centroids
  • Kernel Density Raster Map

10
Raster Layers
11
Raster Basemap
  • Free from U.S. Geological Survey (USGS)
  • Digital Elevation Model (DEM)
  • NED shaded relief, 1/3 arc second

12
Raster Basemap
  • Land use map
  • NLCD 2001

13
Raster Layer Properties
  • All raster maps are rectangular coordinate system

14
Create Raster Mask
  • Conversion Tools
  • Feature to Raster

15
Create Grid Map
  • Convert TIF to Grid
  • Export TIF

16
Environment Settings
  • Settings for environment tools
  • Set once to use throughout project

17
Extract Raster Masks
  • Extract (Clip) Land Use to Pgh Mask

18
Hillshade Raster
  • Hillshade function simulates illumination of a
    surface
  • Gives 3D appearance
  • Parameters
  • Altitude of light source above surfaces horizon
  • Angle (azimuth) relative to true north

19
Create Hillshade Raster
  • DEM to Hillshade

20
Resultant Hillshade Layer
  • Original hillshade layer
  • Modified hillshade layer

21
Kernel Density Smoothing
22
Kernel Density Smoothing
  • Analyzes out of heart attack incidences in
    Pittsburgh
  • Uses point shapefile of census block centroids
    and point shapefile of out of hospital cardiac
    arrests (OHCA shapefile)
  • Estimates the incidence of heart attacks per unit
    area (density)
  • Two parameters
  • Cell size
  • Search radius

23
Existing Maps
  • OHCA and existing raster land use map
  • Heart attack locations are in developed areas

24
Existing Maps
  • Point centroids with population
  • OHCA points

25
Density Map
  • Create density map for heart attack incidence
  • Pittsburgh blocks average 300 ft per side in
    length
  • 2.5 blocks reasonable for defibrillator locations
  • Look at areas 5 blocks by 5 blocks or 1,500 ft
  • 150 ft cell size

26
Resultant Density Map
  • Shown with standard deviation and custom color
    ramp

27
Resultant Density Map
  • OHCA added
  • Note cluster in Downtown Pittsburgh where people
    work but dont live

28
Raster Value Points
  • Extracts point estimates from raster surface for
    each OHCA point
  • Use extracted densities multiplied by block areas
    to estimate number of heart attacks
  • Better predictor of heart attacks

29
Extract Raster Value Points
  • Extraction Toolset

30
Resultant Layer
  • OHCAPredicted shapefile
  • Has attribute value, RASTERVALU, which is an
    estimate of heart attack density per sq foot, in
    the vicinity of each block

31
Calculate Predicted Heart Attacks
  • Resultant estimate will be larger than actual
    number of heart attacks in OCHA (these are only
    ones with bystander help)
  • Expression to calculate prediction
  • 5 RASTERVALU AREA
  • five is for 5 year sample of heart attack data
    in OHCA

32
Scatter Plot
  • Actual vs. predicted heart attacks
  • Pittsburgh has 7,466 blocks
  • 1,509 blocks with heart attacks

33
Resultant Graph
  • At the scale of blocks, predicted values
    correlate poorly with actual values
  • Factors other than population residence is needed

34
Site Suitability Study
35
Site Suitability Study
  • Evaluates other factors for heart attack
    predictability (e.g. commercial land use)
  • Uses 600 foot buffer around commercial areas

36
Convert Buffers to Raster
37
Kernel Density Map
  • Create a kernel density map to use for
    calculations

38
Calculate Simple Query
  • Query kernel density map (HeartAttack) for areas
    that have high density and merit a defibrillator
  • 25 block area(1,500 ft x 1,500 ft , 2.25 x 106 sq
    ft of area)
  • 10 or more heart attacks every 5 years in
    locations where bystander help is possible
  • Heart attack density
  • 10 heart attacks/ 2.25 x 106 sq ft /0.000004444

39
Calculate Simple Query
  • Raster Calculator

40
Simple Query Result
41
Calculate Compound Query
  • Add second criteria commercial buffer

42
Compound Query Result
43
Poverty Risk Model
44
Model for Risk Index
  • Poverty study as another risk for heart attacks
  • Population below poverty income line
  • Female headed household with children
  • Population with less than HS education
  • Workforce who are unemployed
  • Improper linear model for poverty
  • Calculate Z-score values
  • Data selected by subtracting the mean and
    dividing by the standard deviation for above
    variables, then averaging them

45
Risk Model Base Layers
  • Block Groups
  • NoHighSch2 (ho high school degree)
  • Male16Unem (males in workforce who are
    unemployed)
  • Poverty (population below poverty income)
  • Blocks
  • FHH (female headed households with children)

46
Risk Model Base Layers
  • Difficult to represent using vectors

47
Create New Model
  • New toolbox and model

48
Kernel Density Layers
  • Create kernel density layer for first input

49
Kernel Density Layers
  • Create kernel density layer for additional input

50
Standard Deviation Statistics
  • Mean and standard deviation for raster layers

51
Raster Algebra Expression
  • Poverty Index

52
Finished Model
53
Poverty Contour Map
  • Poverty index of 1 or higher

54
Summary
  • Spatial Analyst Overview
  • Grid Maps
  • Raster Layers
  • Raster Masks
  • Kernel Density Smoothing
  • Site Suitability Study
  • Poverty Risk Model
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