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Line Analysis

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Line Analysis – PowerPoint PPT presentation

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Title: Line Analysis


1
Line Analysis
  • The nature of linear features
  • Attributes
  • Directional Statistics
  • Network Analysis
  • Shortest Path

2
The nature of linear features
  • Typically represented as lines on a map
  • Roads, rivers/streams, sewer lines
  • Lines may or may not be connected
  • Fault lines
  • Trajectories
  • Wind, migration routes
  • Networks have nodes connecting features

3
Examplefaults and rivers
4
http//www.gisca.adelaide.edu.au/gisca/pd/mapping_
aust_pop_results.html
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Attributes of linear features
  • Length
  • Data need to be projected!
  • Used to calculate the distance between two
    points, use the sum of segments to calculate the
    distance of a complex line

8
Measuring Lines in a Raster System
9
Method 1
Number of cells
Multiply by resolution of cell 50
10
Method 2
Center Point Distance
1.414
1
1
11
Orientation and Direction
  • Orientation
  • East/west or north/south
  • No direction implied (so no from-to)
  • Mapping the orientation of fallen trees in
    Petrified National Forest to determine if a storm
    caused the trees to fall
  • Measure either nominally or with angular measures
  • Direction
  • From one location to another
  • One way streets
  • Migration, shortest path routing, wind vectors

12
Orientation of LINES
  • Objects exhibit more than just distribution

13
Orientation of LINES
  • Objects exhibit more than just distribution
  • Direction is often related to a force (process)

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blow-down wind direction?
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DIRECTION of LINES
  • Objects exhibit more than just distribution

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Directional Statistics
  • Descriptive
  • sum, count, mean, max, range, variance, standard
    deviation
  • Total length and Straight line length
  • Ratio of the two (higher ratio implies more
    complexity in the line more curves)
  • Sinuosity
  • Important when curviness is a factor
  • e.g., rivers

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Direction and directional mean
  • Visually
  • add arrows
  • star or rose diagram
  • Statistically calculate the directional mean of
    all vectors

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DIRECTION of LINES
  • Distributions displayed as rose diagrams

28
DIRECTION of LINES
  • Q How to measure directionality?
  • A Find the resultant vector!
  • Find angle from base (theta)
  • Multiply X coordinate by the cos of theta
  • Multiply Y coordinate by sine of the theta
  • Sum values for all coordinates

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Directional mean
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How to calculate it
  • You may wonder why not just take the mean of the
    angles but this doesnt work. Why?
  • If all the vectors are in the same quadrat, then
    it would be OK
  • Otherwise, we need trigonometry to handle the
    angles

32
For example, if I had 2 vectors, one with an
angle of 2 degrees and the other with an angle of
358 degrees. Their mean direction would be 0 or
360 degrees. If calculated mathematically, you
would get 180 degrees completely wrong!!!
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Circular variance
  • Directional mean conceptually similar to
    central tendency
  • Still need something
  • that tells us how much
  • deviation there is in
  • our data
  • Shows the variability
  • of the directions

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Vectors that have similar direction
Vectors with similar directions resultant vector
is relative LONG and its length will be close to
n (remember the length of each vector is the same)
37
Vectors with very different directions
Resultant vector will be relative short compared
to n for n vectors zig-zag effect
38
Calculating circular variance
  • Need to first calculate the length of the
    resultant vector (OR)

39
Circular variance
Range of Sv is from 0 to 1 When length of or is
small all vectors go in different directions
then Sv is close to 1. When length of or is large
relative to n all vectors go generally the same
direction then Sv is close to 0.
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LINE PATTERNS
  • Common measurements of line patterns
  • Nearest neighbor distance between lines

1 - Randomly select point 2 - Draw perp. line to
each line 3 - Measure dist, calculate mean
42
LINE PATTERNS
  • Common measurements of line patterns
  • Line intersect methods
  • Draw random line or lines across map
  • Note where sample line intersects coverage
  • Random line that zigzags is called random walk
  • Perform statistical analysis on points that
    intersect line

43
LINE PATTERNS
  • If lines not random, then.
  • there is reason to believe a process other than
    random chance contributed to distribution

44
Topology
  • How lines (objects) are connected together
  • Any type where we care about the connection
    streams, roads, pipelines
  • Created with a connectivity matrix

45
Connectivity Matrix
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