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Geography 4203 / 5203 GIS & Spatial Modeling Class 2: Spatial Doing - A discourse about analysis and modeling in a spatial context

Updates Class homepage at: http://www.colorado.edu/geography/class_homepages/geog_4203 _s08/ Handouts online (step by step) Some PDFs for readings discussions can already be downloaded Reminder for readings topics pick up (next week: fields vs. objects) Statistics and GIS levels

The GIS Levels at Geog GIS 1: Fundamentals of GIS, data structures and operations GIS 2: GIS modeling, raster based approaches, concepts and techniques of modeling for complex spatial problems GIS 3: GIS programming, developing and implementing new functionality and methods for GIS and spatial modeling overlap / transition / prerequisites definition

Last Lecture You obtained some ideas of what this course is about and what you can expect from classes and exercises You have seen how broad the range of topics will be - so we have a lot to do You have an impression of the rules, don ts and do s for this course

Today s Outline We will look closer at some important terms such as spatial (data) analysis or spatial modeling and will talk about different taxonomies We will see some examples to clarify how to use spatial analysis How can we better understand these terms and what are the central issues of spatial analysis and spatial modeling?

Learning Objectives Conceptually understand important key terms and considerations Understand why many different classifications and definitions exist and what the common sense between them is Getting a sense for how we can explore terminology that comes with an ambiguous flavor of meaning

Introduction In GIS 2 we will talk a lot about spatial modeling and spatial analysis and this is what we do when working with the GIS toolsets Before going into any detail we need to know how to understand these umbrella terms

Finding the Beginning Let s try to approach something like an understanding of what is spatial analysis? Or even spatial data analysis? spatial modeling? Does it help to define/classify them? Or does it make more sense just to understand what we are doing? Here a first historical example

The Broad Street Pump Cholera outbreak in Soho / London, England 1854 Dr. Snow and his theory of contaminated water in wells Monitored the epidemic by interviews Leads to the pump at Broad Street Removal of the handle saved an unknown number of live Find more at: http://www.ph.ucla.edu/epi/snow.html Or in: Tufte, E.R. 1997. Visual Explanations

Snow s Map Snow mapped the monitored cases and could determine the location of the well closest to these cases This was genius-like! Snow as the pioneer of modern epidemiology which uses spatial analysis to a high degree

Defining Spatial Analysis? Longley et al. 2005: Spatial analysis is a set of methods whose results change when the locations of the objects being analyzed change Perspective: Analytical toolset that takes into account the spatial frame

Defining Spatial Analysis? Goodchild, 1988: The true value of GIS lies in their ability to analyze spatial data using the techniques of spatial analysis. Spatial analysis provides the valueadded products from existing datasets Perspective: Gaining valuable products from spatial data?

Defining Spatial Analysis? Goodchild (et al.) 1987/1992: (SDA) is a set of techniques devised to support a spatial perspective on data. To distinguish it from other forms of analysis, it might be defined as a set of techniques whose results are dependent on the locations of the objects or events being analyzed, requiring access to both the locations and the attributes of objects. Perspective: Techniques using Locational and attribute information

Defining Spatial Analysis? Haining 1994: [SDA] is a body of methods and techniques for analyzing events at a variety of spatial scales, the results of which depend upon the spatial arrangement of the events. Perspective: Techniques that address scale and spatial patterns?

Defining Spatial Analysis? We stop here! You will find many other definitions in different contexts - but how much do they help? Altogether we might say: Spatial analysis has something to do with deriving information from data using the spatial context of the problem and the data (e.g. their distributions or patterns) It is exactly this - space - which makes it different Maybe we understand more if we look at some taxonomies of operators for spatial analysis such as

Based on Classes of Techniques Longley et al. 2001: Tried to classify relevant techniques of spatial analysis based on conceptual frameworks Perspective: Analytical toolset for querying, measuring, transforming, describing, optimizing and hypothesis-testing

Based on Conceptual Models Burrough and McDonnell 1998: Divide spatial operations in two different categories - depending on the conceptual model (which was not only successful) Entities: Attribute operations, Distance/location operations, Operations using built-in spatial topology Fields: Interpolation, Terrain analysis, Spatial filtering, etc.

Based on the Data Model Tomlin 1990: -made efforts to codify analysis (map algebra for rasters) -identified four basic classes of operations -defined an associated language termed cartographic modeling (basis for command syntax in many GIS packages)

Does it help? As you can see there are (as expected) many different approaches to build a taxonomy You have seen three of them: one based on category of technique, one based on the conceptual model and one based on the data model used What most of them have in common is: They include most of the (functional) operations in a GIS, somehow Let s look at some examples

Example 1: Exploring & Describing Fire scares in forests Total portion of burned area, classes Mean and median size of patches & std. deviation of patch size Shape (compactness) of patches (circularity: M = 4 *area / perim 2 ) Comparing burned with non-burnt areas Comparison with properties of other gaps/patches (harvested or blow-down) Distance to other burnt patches University of Freiburg

Example 2: Explaining the Occurrence Trying to explain the occurrence of forest fires by analyzing and exploring the available data Formulating Hypotheses (fuel, climatic condidtions, land use, traffic) and data needed Sampling (autocorrelation) Significant variables for regression analysis? Evaluation of predictions wildfire.com

Example 3: Criteria-Based Planning Suitablity analysis Criteria (what means) Quantification (how to) Overlay Function formulation

So maybe it s rather: How to use SA? The three examples gave you an impression in which contexts SA can be used (and this comes along with Openshaw and Goodchild & Longley in Longley et al. 2005 Explore / describe spatial patterns and relationships (exploratory/descriptive approach) Testing hypotheses regarding spatial patterns and relationships (explanatory/confirmatory approach) Simple analysis for criteria evaluation

So what about Spatial Modeling? Modeling per se is one of the most overloaded terms anywhere Reason enough to think about what exactly we think of by referring to spatial modeling Generally, a model is a (simplified) description of reality (static reproduction, conceptual description) Modeling can (or should) be considered as a process

Modeling Process and its Components Prior to carrying out the modeling process it is helpful to find answers to four questions (DeMers 1,5): What is the model to tell us (explaining, predicting relationships or consequences / evaluating situations for resource uses, )? Or simply: Do we understand what the problem is? What type of data do I need? How to create a design to put the model together? How to apply existing tools, carefully and appropriately to derive meaningful models? Validation and verification as important steps are touched later

What is GIS Modeling? GIS Modeling is a PROCESS Need of a way to think spatially How to represent (abstract) our world in a GIS? What are the visible or functional patterns What are the spatial relationships between representations in the geographic space? What can these relationships tell us and how can we combine/measure/examine them to derive meaningful models? As always, a structure is helpful!!

What is a Spatial Model Spatial models (at some places GIS models) might describe basic properties and processes for a set of spatial features (Bolstad 13 - you have heard about this) The aim is to study spatial objects or phenomena in the real world As you can imagine we also find dozens of definitions and many different classification schemes - we will look at three of them

Spatial and GIS Models I (Bolstad) Cartographic models: temporally static, combined spatial datasets, operations and functions for problem-solving Spatio-temporal models dynamics in space and time, time-driven processes Network models: modeling of resources (flow, accumulation) as limited to networks

Cartographic Models Ranking and Weighting of criteria

Spatio-temporal Models

Spatial and GIS Models II (Goodchild 2003) Data models: Entities and fields as conceptual models Static modeling: taking inputs to transform them into outputs using sets of tools and functions Dynamic modeling: iterative, sets of initial conditions, apply transformations to obtain a series of predictions at time intervals

Spatial and GIS Models III (DeMers 2005) Based on purpose descriptive - passive, description of the study area prescriptive - active, imposing best solution Based on methodology stochastic - based on statistical probabilities deterministic - based on known functional linkages and interactions Based on logic inductive - general models based on ind. data deductive - from general to specific using known factors and relationships

What do Spatial Models Do? Using spatial data Making use of combined functional capabilities such as analytical tools for spatial and non-spatial computation, GIS and programming languages The focus is on the meaning of the model - modeling is more than just applying analytical tools Representing meaningful features, events and processes in geographical space

Summary Spatial analysis and spatial modeling are two important terms for GIScience We tried to explore what stands behind them by looking at definitions, taxonomies and examples However, an understanding of the methods we use (exploring / explaining) and of the problem we face (modeling) are central The aim of spatial modeling is to derive a meaningful representation of events, occurrences or processes by making use of the power of spatial analysis

References Longley P.A., M. F. Goodchild, D. J. Maguire and D. W. Rhind. 2005. Geographic Information Systems and Science. Second Edition. John Wiley, Chichester, 2005. Goodchild, M.F. 2003. Geographic Information Science and Systems for Environmental Management. Annual Review of Environment and Resources. Vol. 28: 493-519. Burrough, P.A. and McDonnell, R.A. 1998. Principles of Geographical Information Systems. London: Oxford. Goodchild, M F. 1988. Modeling error in objects and fields. Accuracy of Spatial Databases Meeting; Montecito, CA; (USA); Dec. 1988. pp. 107-113. 1990 Tomlin, C.D. 1991 Cartographic Modeling. In Maguire, D., Goodchild, M.F., and Rhind, D. (Eds.) Geographic Information Systems: Principles and Applications. London: Longman: 361-374. Goodchild, M. F., 1987, Towards an enumeration and classification of GIS functions. Proceedings, /CIS 87: the Research Agenda, edited by R. T. Aangeenbrug and Y. M. Schiffman (Washington, DC: NASA), 11, 67-77.