Download presentation
Presentation is loading. Please wait.
Published byGarey Hoover Modified over 9 years ago
1
Chapter 11 Spatial Analysis Credit to Prof Michael Goodchild
2
n Methods for working with spatial data to detect patterns, anomalies to find answers to questions to test or confirm theories (deductive reasoning) to generate new theories and generalizations (inductive reasoning) n Methods for adding value to data in doing scientific research in trying to convince others What is spatial analysis?
3
n A collaboration between human and machine the machine does things the human finds too tedious, difficult, complex to do by hand the human directs, makes interpretations and inferences n Ranging from simple to complex some methods are mathematically sophisticated e.g. statistical tests other methods are visual, intuitive, simple e.g. making and examining maps
4
The Snow map n Cholera outbreak in Soho, 1854 n Dr John Snow and the pump n inference regarding the transmission mechanism for cholera n see www.jsi.com n updating Snow Openshaw's map of childhood leukemia in N England
5
n Data types Discrete objects (points, lines, areas) Fields spatially intensive, spatially extensive nominal, ordinal, interval, ratio, cyclic variables n Application domains n Objectives Types of spatial analysis
6
n nominal e.g. vegetation class no implied order, no arithmetic operations no average "central" value is the commonest class (mode) n Ordinal e.g. ranking from best to worst implied order, but no arithmetic operations no average "central" value has half of cases above, half below (median) Data types
7
n Interval e.g. Fahrenheit temperature differences make sense arbitrary zero point "central" value is the mean n Ratio e.g. weight ratios make sense absolute zero point "central" value is the mean n Cyclic e.g. aspect be careful with arithmetic average of 1 and 359 is 180
8
n Queries and reasoning n Measurements n Transformations n Descriptive summaries n Optimization n Hypothesis testing Six distinct objectives
9
n In ArcMap n map view n table view n linked views n histogram view n scatterplot view QUERIES
10
n Exploratory spatial data analysis n interactive methods to explore spatial data n use of linked views n finding anomalies n mining large masses of data n SQL n structured or standard query language n e.g. SELECT FROM counties WHERE median value > 100,000
11
n We spend our lives in the vague world of human discourse "is Santa Barbara north of LA?" a GIS needs to know exactly what is meant by "north of" is Reno east or west of San Diego? we tend to think of the US as a square, with two N-S coasts how to design a GIS to provide driving directions? to direct people through airports? REASONING WITH GIS
12
a GIS would be easier to use if could "think" and "talk" more like humans or if there could be smooth transitions between our vague world and its precise world in our vague world, terms like "north of" are context-specific geographically relevant terms like "across" or "in" have many meanings
13
n Measurements are often difficult to make by hand from maps MEASUREMENT WITH GIS
20
n Buffering n Point in polygon n Polygon overlay n Spatial interpolation n Density estimation TRANSFORMATIONS
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.