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Introduction to GIS Modeling Week 7 — GIS Modeling Examples GEOG 3110 –University of Denver Presented by Joseph K. Berry W. M. Keck Scholar, Department of Geography, University of Denver Example Real-World Projects; Introduction to Spatial Statistics (revisited); mini-Project Working Session Class Logistics and Schedule Midterm Study Questions (hopefully you are participating in a study group) Midterm Exam …you will download and take the 2-hour exam online (honor system) sometime between 8:00 am Friday February 10 and must be completed by 5:00 pm Wednesday February 15 Blue Light Special …20 minutes of Instructor “Help” on midterm study question “toughies “ Exercise #6 (mini-project) — you will form your own teams (1 to 4 members) and tackle one of the eight projects; we will discuss the project “opportunities” in great detail later in class …assigned tonight Thursday, February 11 and final report due Monday, February 20 by 5:00pm Submit via two emails, one with report Body attached and the other with Appendix attached No Exercise Week 7 — a moment for “a dance of celebration” Exercises #8 and #9 — you can tailor to your interests by choosing to not complete either or both of these standard exercises; in lieu of an exercise, however, you must submit a short paper (4-8 pages) on a GIS modeling topic of your own choosing. I need to know your choices by next Wednesday as I will form new teams for exercises #8 and #9. Berry Map Analysis Evolution (Revolution) Traditional GIS Spatial Analysis …past six weeks Store Travel-Time (Surface) Forest Inventory Map • Points, Lines, Polygons • Cells, Surfaces • Discrete Objects • Continuous Geographic Space • Mapping and Geo-query • Contextual Spatial Relationships Traditional Statistics Spatial Statistics Spatial Distribution (Surface) Minimum= 5.4 ppm Maximum= 103.0 ppm Mean= 22.4 ppm StDev= 15.5 • Mean, StDev (Normal Curve) • Map of Variance (gradient) • Central Tendency • Spatial Distribution • Typical Response (scalar) • Numerical Spatial Relationships (Berry) BP Pipeline Routing (Global Model) The simulation is queued for processing then displayed as the Optimal Route (blue line) and 1% Optimal Corridor (cross-hatched) FC Fort Collins 4% Corridor SD 1% Corridor San Diego (digital slide show BP_Pipeline_routing) Optimal Path (Berry) Modeling Wildfire Risk Increased population growth into the wildland/urban interface raises the threat of disaster… …a practical method is needed to identify areas most likely to be impacted by wildfire so effective pre-treatment, suppression and recovery plans can be developed (digital slide show Wildfire Risk Modeling) (Berry) Modeling Retail Competition (digital slide show Combat Zone) (Berry) Is Technology Ahead of Science? “Maps as Data” • Is the "scientific method" relevant in the data-rich age of knowledge engineering? • Is the "random thing" pertinent in deriving mapped data? • Are geographic distributions a natural extension of numerical distributions? • Can spatial dependencies be modeled? • How can commercial “on-site studies" augment traditional research? (Berry) Map Analysis Evolution (Revolution) Traditional GIS Spatial Analysis Store Travel-Time (Surface) Forest Inventory Map • Points, Lines, Polygons • Cells, Surfaces • Discrete Objects • Continuous Geographic Space • Mapping and Geo-query • Contextual Spatial Relationships Traditional Statistics Spatial Statistics …next week Spatial Distribution (Surface) Minimum= 5.4 ppm Maximum= 103.0 ppm Mean= 22.4 ppm StDev= 15.5 • Mean, StDev (Normal Curve) • Map of Variance (gradient) • Central Tendency • Spatial Distribution • Typical Response (scalar) • Numerical Spatial Relationships (Berry) GIS and Map-ematical Perspectives (SA) Spatial Statistics Operations – Numerical Context GIS Perspective: Map Analysis Toolbox Surface Modeling (Density Analysis, Spatial Interpolation, Map Generalization) Spatial Data Mining (Descriptive, Predictive, Prescriptive) Map-ematical Perspective: Grid Map Layers Basic Descriptive Statistics (Min, Max, Median, Mean, StDev, etc.) Basic Classification (Reclassify, Binary/Ranking/Rating Suitability) Unique Map Descriptive Statistics (Roving Window Summaries) Map Comparison (Joint Coincidence, Statistical Tests) Surface Modeling (Density Analysis, Spatial Interpolation) Advanced Classification (Map Similarity, Maximum Likelihood, Clustering) Predictive Statistics (Map Correlation/Regression, Data Mining Engines) Berry Map-ematical Perspective (Examples) Keystone concept is… Geographic Distribution “Spatial Autocorrelation” Inverse Distance Weighted (IDW) spatial interpolation assigned distanceweighted average of sample points Standard Normal Curve Continuous Map Surface Discrete Point Map Average = 22.9 Geographic Space StDev = 18.7 …lots of NE locations exceed +1Stdev X= 22.9 Data Space + 1StDev (41.6) 22.9 -1StDev (4.2) Numeric Distribution …click anywhere on the histogram and all map locations in that range are highlighted …click anywhere on the map surface and the corresponding histogram pillar is highlighted Surface Modeling techniques are used to derive a continuous map surface from discrete point data– fits a Surface to the data. In Data Space, a standard normal curve can be fitted to the histogram of the map surface data to identify the “typical value” (Average)– fits a Curve. In Geographic Space, this typical value forms a horizontal plane implying the average is everywhere. Berry Spatial Interpolation (Spatial Distribution) The “iterative smoothing” process is similar to slapping a big chunk of modeler’s clay over the “data spikes,” then taking a knife and cutting away the excess to leave a continuous surface that encapsulates the peaks and valleys implied in the original field samples …mapping the Variance …repeated smoothing slowly “erodes” the data surface to a flat plane = AVERAGE (digital slide show SSTAT) (Berry) Visualizing Spatial Relationships Phosphorous (P) Geographic Distribution What spatial relationships do you SEE? …do relatively high levels of P often occur with high levels of K and N? …how often? …where? “Maps are numbers first, pictures later” Multivariate Analysis— each map layer is a continuous map variable with all of the math/stat “rights, privileges and responsibilities” therewith …simply “spatially organized “ sets of numbers (matrix) (Berry) Calculating Data Distance …an n-dimensional plot depicts the multivariate distribution— the distance between points determines the relative similarity in data patterns Actual data in JMP Pythagorean Theorem 2D Data Space: Dist = SQRT (a2 + b2) 3D Data Space: Dist = SQRT (a2 + b2 + c2) …expandable to N-space …this response pattern (high, high, medium) is the least similar point as it has the largest data distance from the comparison point (low, low, medium) (See Beyond Mapping III, “Topic 16”, Characterizing Spatial Patterns and Relationships, www.innovativegis.com/basis) (Berry) Clustering Maps …groups of “floating balls” in data space identify locations in the field with similar data patterns– data zones Spatial Data Mining Map surfaces are clustered to identify data pattern groups Relatively low responses in P, K and N Relatively high responses in P, K and N Geographic Space Data Space Clustered Data Zones …other techniques, such as Level Slicing, Similarity and Map Regression, can be used to discover relationships among map layers …map-ematics/statistics (Berry) The Precision Ag Process (Fertility example) As a combine moves through a field it 1) uses GPS to check its location then 2) checks the yield at that location to 3) create a continuous map of the yield variation every few feet. This map is Steps 1) – 3) 4) combined with soil, terrain and other maps to derive 5) a “Prescription Map” that is used to 6) adjust fertilization levels every few feet in the field (variable rate application). On-the-Fly Yield Map Step 4) Map Analysis Farm dB Zone 3 Cyber-Farmer, Circa 1992 Zone 2 Zone 1 Prescription Map Variable Rate Application Step 5) Step 6) (Berry) …mini-projects working session Who is doing what… Alicia and Michael are working on the Landslide Susceptibility Project Paulina and Graham are working on the Visual Exposure to Timber Harvesting Project Rob and Courtney are working on the Hugag Habitat Project Sharon and Mingming are working on the Wildfire Risk Analysis Project …deleted Spatial Analysis “enrichment” slide sets (Optional) (digital slide show ForestAccess) (digital slide show TerrainFeatures ) Topic 29 – Spatial Modeling in Natural Resources Topic 11 – Characterizing Micro Terrain Features (Berry)