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Geographic Information Systems
GIS Analysis and Modeling
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5. (6) Spatial Interpolation
Predict the unknown value at a location using the known values at surrounding area Linear interpolation Thiessen polygon Inverse distance weighted Trend surface Fourier series Kriging
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5. (6) Spatial Interpolation
Linear interpolation Known and predicted values after interpolation Known values
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5. (6) Spatial Interpolation
Thiessen polygon - Defines area of influence around a point in a way that polygon boundaries are equidistant to neighboring points
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Obstetrical Delivery Hospital Regions (Constructed Using Thiessen Polygons): North Carolina, 1989
This map uses Thiessen polygons to construct regions: in this case, obstetrical delivery hospital regions. This technique can be utilized with little technology, using nodal points to construct polygons and, ultimately, regions. Source: “Using Geographic Methods to Understand Health Issues,” U.S. Department of Health and Human Services is Spatial Interpolation?
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3. Interpolation – Proximal ..
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5. (6) Spatial Interpolation
Inverse Distance weighted - IDW works by using a weight based on the distances from an unknown value to known values Arthur Lambor, Cornel University © Paul Bolstad, GIS Fundamentals
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5. (6) Spatial Interpolation
Trend surface - Polynomial regression to fit a least-square surface to the input points First-order (linear) trend surface Second-order (quadratic) trend surface is Spatial Interpolation?
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Trends of one, two, and three independent variables for polynomial equations of the first, second, and third orders (after Harbaugh, 1964).
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5. (6) Spatial Interpolation
Fourier series Single harmonic in X1 direction Two harmonics in X1 direction Single harmonic in both X1 and X2 directions Two harmonics in both directions
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5. (6) Spatial Interpolation
Kriging - It takes one step further from inverse distance weighted interpolation because it accounts for not only the distances between a location with unknown value to the locations with known values, but also distances between the location with known values Arthur Lambor, Cornel University
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Theissen Arthur Lambor, Cornel University
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Inverse Distance Weighting
Arthur Lambor, Cornel University
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Kriging Arthur Lambor, Cornel University
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5. (7) Proximity Analysis (Buffering)
The identification of a zone of interest around an entity or a set of entities
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Buffering
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Buffering A multi-distance buffer (each ring is 150 m)
A single distance buffer (250 m)
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5. (8) Network Analysis A network is a set of interconnected lines making up a set of features through which resources can flow The shortest path problem The traveling salesperson problem Location-allocation
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The Shortest Path Problem
An evaluation of links and turns required to traverse a network between required stops It can be the shortest, fastest, or least-costly route between any number of origins and destinations, with any number of intermediate points
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The Shortest Path Problem
Shortest and fastest routes
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The Shortest Path Problem
Traffic assignment
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The Traveling Salesperson Problem
An evaluation of best sequence to visit each of a set of stops and the best route between the stops
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Vehicle Routing/Dispatching
Pickup and delivery routing
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Location-Allocation A match between supply and demand involving the movement of people, goods, information, and services Determining what areas are within 10 minutes of a fire station Locating schools within 30 min walking distance for children
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Location Allocation Delineate service areas
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Location Allocation Evaluate possible facility locations
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Trip Generation/Production
Estimate the number of trips, by purpose, that are produced or originate in each zone of a study area
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Readings Chapter 5,6,9,10
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