Geospatial Modeling Maps and Animated Geography

62
Geospatial Modeling Maps and Animated Geography E. Lynn Usery Professor, University of Georgia Research Geographer, U.S. Geological Survey

description

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 - PowerPoint PPT Presentation

Transcript of Geospatial Modeling Maps and Animated Geography

Page 1: Geospatial Modeling  Maps and Animated Geography

Geospatial Modeling Maps and Animated Geography

E. Lynn Usery

Professor, University of Georgia

Research Geographer, U.S. Geological Survey

Page 2: Geospatial Modeling  Maps and Animated Geography

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.

Page 3: Geospatial Modeling  Maps and Animated Geography

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

Page 4: Geospatial Modeling  Maps and Animated Geography

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

Page 5: Geospatial Modeling  Maps and Animated Geography

Global Landcover – Mollweide Projection

Page 6: Geospatial Modeling  Maps and Animated Geography
Page 7: Geospatial Modeling  Maps and Animated Geography

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

Page 8: Geospatial Modeling  Maps and Animated Geography
Page 9: Geospatial Modeling  Maps and Animated Geography
Page 10: Geospatial Modeling  Maps and Animated Geography
Page 11: Geospatial Modeling  Maps and Animated Geography
Page 12: Geospatial Modeling  Maps and Animated Geography
Page 13: Geospatial Modeling  Maps and Animated Geography
Page 14: Geospatial Modeling  Maps and Animated Geography

Cartographic Model for Profitability

Page 15: Geospatial Modeling  Maps and Animated Geography
Page 16: Geospatial Modeling  Maps and Animated Geography

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

Page 17: Geospatial Modeling  Maps and Animated Geography
Page 18: Geospatial Modeling  Maps and Animated Geography
Page 19: Geospatial Modeling  Maps and Animated Geography
Page 20: Geospatial Modeling  Maps and Animated Geography

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

Page 21: Geospatial Modeling  Maps and Animated Geography
Page 22: Geospatial Modeling  Maps and Animated Geography

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)

Page 23: Geospatial Modeling  Maps and Animated Geography

Classes of Operations for Entities

• Attribute operations

• Distance/location operations

• Topological operations

Page 24: Geospatial Modeling  Maps and Animated Geography

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

Page 25: Geospatial Modeling  Maps and Animated Geography
Page 26: Geospatial Modeling  Maps and Animated Geography
Page 27: Geospatial Modeling  Maps and Animated Geography

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.

Page 28: Geospatial Modeling  Maps and Animated Geography

Retrieving Entities with Only Attributes

Page 29: Geospatial Modeling  Maps and Animated Geography

Retrieval and Recode

Page 30: Geospatial Modeling  Maps and Animated Geography

Reclassification

Page 31: Geospatial Modeling  Maps and Animated Geography

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

Page 32: Geospatial Modeling  Maps and Animated Geography

Polygon Overlay – Sliver Problem

Page 33: Geospatial Modeling  Maps and Animated Geography

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.

Page 34: Geospatial Modeling  Maps and Animated Geography

Spatial Buffering

Page 35: Geospatial Modeling  Maps and Animated Geography

Connectivity Operators

Page 36: Geospatial Modeling  Maps and Animated Geography

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

Page 37: Geospatial Modeling  Maps and Animated Geography

AGNPS

• Agricultural Non-Point Pollution Source

Page 38: Geospatial Modeling  Maps and Animated Geography

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

Page 39: Geospatial Modeling  Maps and Animated Geography
Page 40: Geospatial Modeling  Maps and Animated Geography
Page 41: Geospatial Modeling  Maps and Animated Geography

Input Parameter Generation

• 22 parameters; varying degrees of computational development– Simple, straightforward, complex

Page 42: Geospatial Modeling  Maps and Animated Geography

Input Parameter Generation

Page 43: Geospatial Modeling  Maps and Animated Geography

Details on Generation of Parameters

• Cell Number • Receiving Cell Number

• SCS Curve Number– Uses both soil and land cover to resolve curve number

Page 44: Geospatial Modeling  Maps and Animated Geography

Details on Generation of Parameters

• Slope Shape Factor

Page 45: Geospatial Modeling  Maps and Animated Geography

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

Page 46: Geospatial Modeling  Maps and Animated Geography

Creating AGNPS Output

• AGNPS creates a nonpoint source (“.nps”) file

• ASCII file like the input; tabular, numerical form

Page 47: Geospatial Modeling  Maps and Animated Geography

AGNPS

Output

Page 48: Geospatial Modeling  Maps and Animated Geography

• AGNPS Output

Page 49: Geospatial Modeling  Maps and Animated Geography

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

Page 50: Geospatial Modeling  Maps and Animated Geography

Creating AGNPS Output Images

Page 51: Geospatial Modeling  Maps and Animated Geography

Creating AGNPS Images

Page 52: Geospatial Modeling  Maps and Animated Geography

Model of Sea Level Rise

• Data inputs– Elevation – Gtopo 30– Population -- Landscan– Land Cover – Global Land Cover

• 30 arc-sec resolution cells (approximately 1 km at the Equator)

• Most accurate global data available

• Model for eastern North America only

Page 53: Geospatial Modeling  Maps and Animated Geography
Page 54: Geospatial Modeling  Maps and Animated Geography
Page 55: Geospatial Modeling  Maps and Animated Geography
Page 56: Geospatial Modeling  Maps and Animated Geography

Flood_5m.gif

Page 57: Geospatial Modeling  Maps and Animated Geography

flood_30m.gif

Page 58: Geospatial Modeling  Maps and Animated Geography

Urban Growth -- SLEUTH

• Model of converting land to urban from other uses

• Cellular Automata model based on probabilities from Monte Carlo stochastic simulation

• Model begins with an existing urban base (i.e, some cells are urban and others non-urban based on historical land cover data)

Page 59: Geospatial Modeling  Maps and Animated Geography

Urban Growth -- SLEUTH

• Non-urban cells change to urban based on 7 controlling variables (GIS layers) and user specified parameters controlling growth

• Variables: Slope, Land Cover, Elevation, Urban, Transportation, Hillshade

• Types of growth: – Spontaneous Growth– New Spreading Centers– Edge Growth– Road-Influenced Growth

Page 60: Geospatial Modeling  Maps and Animated Geography
Page 61: Geospatial Modeling  Maps and Animated Geography
Page 62: Geospatial Modeling  Maps and Animated Geography