statistical surfaces: dem’s
DESCRIPTION
Statistical surfaces: DEM’s. Geog 4103, March 22. Real world phenomena represented as: . DISCRETE: homogeneous or spatially averaged units, e.g. subwatersheds, counties, polygons VECTOR FIELDS: discretized as grid cells or meshes RASTER. What are surfaces ?. - PowerPoint PPT PresentationTRANSCRIPT
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Statistical surfaces:DEM’s
Geog 4103, March 22
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Real world phenomena represented as:
• DISCRETE: – homogeneous or spatially averaged units, e.g.
subwatersheds, counties, polygons – VECTOR
• FIELDS:– discretized as grid cells or meshes – RASTER
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What are surfaces?
• Features that contain Z values distributed throughout area defines by (x,y) coordinate pairs
• Z values can be any measurable phenomena that varies across space (temperature, elevation, precipitation, etc…)– called “field” like, or continuous data
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What is a field?
• a conceptual model of geographic variation • at every point in the frame (x,y) there exists
a single value of a variable Z e.g. a field of temperature e.g. a field of land surface elevation
• the variable may be measured on any scale temperature - degrees Celsius elevation - meters above sea level
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Field data are continuous
• a field is spatially continuous by definition values exist everywhere
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A) CELLSB) REGULARLY SPACED POINTSC) IRREGULARLYSPACED POINTSD) CONTOURSE) POLYGONSF) TINs- Triangulated Irregular Network
Representation of field phenomena
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Isarithmic Mapping
Data measuredat points
Derived data
- used for continuous data
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Spatial sampling
Regular lattice•restricted to X,Y locations
Irregular lattice•not restricted•based on knowledge about how smooth/rugged the surface is
e.g. elevation
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Two methods of representing a surface inside a computer
• Vector surfaces: – TIN’s (Triangulated Irregular Network)
• Raster surfaces: – DEM (Digital Elevation Model)
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RASTER vs. VECTOR DIGITAL ELEVATION MODEL
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Triangulated Irregular Network (TIN)
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Triangulated Irregular Network
(TIN)
-continuous mesh of triangles.-triangles vary in size based on roughness/complexity of terrain.- Large vs. small triangles
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• A raster representation is composed of a series of layers, each with a theme
• Typically used to represent ‘field-like’ geographic phenomena
Raster Data Model
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Raster Grid
– but most common raster is composed of squares, called grid cells
– grid cells are analogous to pixels in remote sensing images and computer graphics
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Raster ResolutionSpatial resolution = the distance that one side of a grid cell represents on the ground
1
2244
11
44
11
244
12
33
33
2
22
22
= grid cell resolution
The higher the resolution (smaller the grid cell), the higher the precision, but the greater the cost in data storage
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The DEM / DTM
• Digital elevation models = a way of representing surfaces.
• Quantitative model of a topographic surface in digital form.
• data sets are continuous surfaces.
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Elevation data
• Source of DEMs and TINs
• Process of interpolation - creating continuous data from point data