LiuT_GIS_Jan22_brief

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GIS PROGRESS BRIEF Tianyuan Liu Jan 22 2016

Transcript of LiuT_GIS_Jan22_brief

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GIS PROGRESS BRIEFTianyuan Liu

Jan 22 2016

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Outline

■ Cluster Presentation (for Annotation Purpose)

■ Probability surfaces

■ Spatial weighted overlay (distance to TRO + density)

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CLUSTER PRESENTATION

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Aggregate Points

■ Generate polygons to enclose points that shows clustered patterns

– Tool: Cartography Tools/Generalization/Aggregate Points

– Simplify the presentation of clusters

■ Use the polygons to intersect with existing building footprints

– Potentially identify the buildings where the person spends long time

■ Caveats:

– Oversimplify the cluster

■ Cluster of 3 points or more

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Aggregate Points

Distance=50m

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Aggregate Points

Distance=30m

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Aggregate Points

Distance=10m

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Intersection with building footprintsUsing distance=10m as an example

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Intersection with building footprintsFootprint data

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Map Partition

■ Generate grids based on the number of features

– # of points>500

– # of points>1,000

– # of points>10,000

■ Shape size of the grids and intensity of cluster is negatively related

– Smaller grids indicates more intense cluster

■ Select the shape with smallest size and intersect with building footprint

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#>500

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#>10000

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Building selection

#>500

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Building selection

#>1000

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Building selection

#>10000

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PROBABILITY SURFACE

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Intra-polation

■ Empirical Bayesian Kriging

– Integrate the proximal points together

– Collect the points=create z-value for calculation

– Predict the total number of points in the raster cell

■ Kernel Density (cont’d)

– Original points layer

– Kernel density + reclassify

– The raster cell need further specification

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EBK

Estimating the total counts based on the

integrated points

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Kernel density

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SPATIAL WEIGHT OVERLAY

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Spatial Weight Overlay (testing)

■ Using multiple factors to calculate the weights of each raster cell

– Euclidean distance to TROs 1(furthest) -5(nearest)

– Point density (potentially smoking events) 1(most sparse)-6(most clustered)

– Other factors

■ Caveats

– The weights need to be adjusted based on the importance of the factors

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Raster cells with highest weights

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TRO EXPOSURE EVALUATION

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Total count of numbers within the geometric buffer

■ Using TRO buffers to intersect the original data points

– 30m buffer

– 30-50m buffer ring

– 50-100m buffer ring

■ Rank the TROs by the total number of points fall in the three buffer (ring)

■ Most exposed TROs and the distribution of activity points within the buffer

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Total Count of Points Falling in the Buffers

69126

2782

0

500

1000

1500

2000

2500

3000

0_30 30_50 50_100

buffer

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2466

134 91 52 41 22 20 17 13 130

500

1000

1500

2000

2500

3000

88 188 18 87 28 29 111 241 38 214

sum

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Distribution of the # of points

0%

10%

20%

30%

40%

50%

60%

70%

80%

90%

100%

88 188 18 87 28 29 111 241 38 214

% of points falling in the three buffer zones

0_30buffer 30_50buffer 50_100buffer

2% 3%

95%

%

0_30buffer 30_50buffer 50_100buffer

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Most exposed TROs

TRO_ID 0_30buffer 30_50buffer 50_100buffer final name

88 7 17 2442 bull market

188 1 0 133 Walmart

18 5 55 31 Sunshine BP

87 4 3 45 Fast Food Mart

28 3 17 21 Han Dee Hugos 76

29 3 0 19 Carolina Food Mart

111 0 0 20 Academy Quick Stop

241 11 5 1 0

38 9 1 3 Stop 1 food mart

214 8 0 5 Walgreens

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TRO 88 & 87