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Geospatial Modeling Maps and Animated Geography. E. Lynn Usery Professor, University of Georgia Research Geographer, U.S. Geological Survey. Models. Scale - Differs from reality only in size Iconic - Miniature copies of reality Analog - Alter size, some properties - glacier model with clay
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Geospatial Modeling Maps and Animated Geography E. Lynn Usery Professor, University of Georgia Research Geographer, U.S. Geological Survey
Models • Scale - Differs from reality only in size • Iconic - Miniature copies of reality • Analog - Alter size, some properties - glacier model with clay • Conceptual -- Diagrammatic process model • Usually with boxes and arrows, i.e., flowchart • Mathematical - Allows prediction • Probabilistic - Assumes components are related in random fashion -Subject to chance, express initial assumptions as set of probabilities and use probability theory. • Deterministic - Behavior controlled by natural laws.
Geospatial ModelsDefinition and Classification • A geospatial model is a simplified representation of geographic reality. • Model Types • Spatial – Generally static, model distributions • Examples include maps, GIS databases, and cartographic models (based on Map Algebra) • Process – Static or dynamic, model processes • Growth or accumulation • urban growth, climate change, sea level rise • Flows • spatial interaction, gravity model, location-allocation
Spatial Models -- Maps • Scale models, i.e., generalized representations of geographic phenomena • No map is accurate; all contain three types of errors from transformations • Spherical to plane • Three-dimensions to two-dimensions • Generalization • Selection • Simplification • Symbolization • Induction
Spatial Models--Cartographic Models • Map themes again geographically registered but combined with a sequence of operations (map algebra) that generate a desired result from a set of basic input data layers • Map layers become variables in map algebra with operators on and between variables • Operators include point, neighborhood, and global • Most commonly implemented with raster data layers
Cartographic Model of Human Effects on Animal Activity • Measure animal activity over different time periods • Determine change over time • Determine human activities over samespace and time • Compare the two activity levels to determine effects
Spatial Models-- GIS Databases • Map model placed in computer representation • Includes all error inherent in the map model • Usually include multiple maps of individual themes registered to a common spheroid, datum, projection, and coordinate system with associated attributes linked to geographic object (point, line, area) identifiers commonly stored in a relational database
Entity Model • What is it – attributes, theme • Where is it – location, space • When is it – time • What is its relation to other entities – proximity, connectivity (topology)
Classes of Operations for Entities • Attribute operations • Distance/location operations • Topological operations
Attribute Operations • Ui = f(A,B,C,D,…) • Where Ui is the derived attribute • A,B,C,D,… are attributes combined to derive Ui • F ( ) is a function of one or more of: • Logical (Boolean) • Arithmetical • Univariate statistics • Multivariate statistics • Multicriteria methods
Land Suitability Model • Soil mapping units of texture and pH • A is set of mapping units of Oregon Loam • B is set of mapping units for pH >= 7.0, then • X = A AND B finds all occurrences of Oregon Loam with pH >= 7.0. • X = A OR B finds all occurrences of Oregon Loam and all mapping units with pH >=7.0. • X = A XOR B finds all units that are either Oregon Loam or have a pH >= 7.0, nut not in combination • X = A NOT B finds all mapping units that are Oregon Loam where the pH is less than 7.0.
Deriving New Attributes • Empirical Regression Models • Temperature as function of elevation • T = 5.697 – 0.00443*E • where, T is temperature in degrees Celsius • and E is elevation in meters • Multivariate clustering
Distance OperatorsSpatial Buffering • Determine the number of fast food restaurants within 5 km of the White House. • Investigate the potential for water pollution in terms of proximity of filling stations to natural waterways. • Compute the total value of the houses lying within 200 m of the proposed route for a new road. • Compute the proportion of the world popultaion lying within 100 km of the sea.
Geospatial Process Models • Often use results of GIS Databases as steps in a process • Non-point Source Pollution -- AGNPS • Sea Level Rise • Urban Growth -- SLEUTH
AGNPS • Agricultural Non-Point Pollution Source
Introduction -- AGNPS • Operates on a cell basis and is a distributed parameter, event-based model • Requires 22 input parameters • Elevation, land cover, and soils data are the base for extraction of input parameters
Input Parameter Generation • 22 parameters; varying degrees of computational development • Simple, straightforward, complex
Details on Generation of Parameters • Cell Number • Receiving Cell Number • SCS Curve Number • Uses both soil and land cover to resolve curve number
Details on Generation of Parameters • Slope Shape Factor
Extraction Methods • Used object-oriented programming and macro languages • C/ C++ and EML • Manipulated the raster GIS databases with Imagine • Extracted parameters for each resolution for both boundaries using AGNPS Data Generator
Creating AGNPS Output • AGNPS creates a nonpoint source (“.nps”) file • ASCII file like the input; tabular, numerical form
Creating AGNPS Output Images • Output Image Creation • Combined “.nps” file with Parameter 1 to create multidimensional images • Users can graphically display AGNPS output • Process: create image with “x” layers, fill layers with AGNPS output data, set projection and stats for image • Multi-layered (bands) images per model event