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New Approaches to Spatial AnalysisChapter 12

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Title: New Approaches to Spatial AnalysisChapter 12


1
New Approaches to Spatial AnalysisChapter 12
  • Theoretical chapter biological and ecological
    processes and models basis for spatial models
  • Recent Changes in GIS-- Technical and
    Theoretical
  • Geocomputation- developing field
  • Spatial Modeling Developments recent advances
    and linking of models to GIS

2
Chapter points
  • Describe computer powers impact on GIS field.
  • Outline briefly the implications of complexity
    with this
  • Describe emerging geographic analysis techniques
  • Describe cellular automation and agent based
    modelsapplications
  • Outline ways of coupling spatial models to GIS

3
Advent of GIS and Spatial Analysis
  • Spatial Analysis existed long before-1911
  • Journal of GIS emerged in 1987
  • Contemporary GIS materialized and became popular
    during the information age, huge expansion of
    computers, while Spatial Analysis came about much
    earlier.

4
Complexity of Computers
  • New scientific non-linear view of the world
  • Complex systems analysis biology and
    thermodynamics
  • Limit to power of prediction in nonlinear systems
    -- Why are weather forecasts always
    wrongespecially in Denver?
  • Computers are critical to describe relationships
    in complex analysis- crucial to development of
    theories of complexity.

5
Huge array of new computer tools
  • Automated toolsarrays of datadiscovery of new
    ways of analyzing relationships and
    processesmethods have no mathematical
    assumptions about underlying causes of
    patternscan be used for investigation of
    non-linear phenomena.
  • Computer modeling and Simulation important in
    Geography and distinct from statistical
    processesrepresent world as its, actual causal
    mechanisms

6
Geocomputation
  • Definition the use of computers to tackle
    geographical problems that are too complex for
    manual techniques.
  • Vague what would be a better definition?
    Computational complexity?
  • Stan Openshaw-- Centre for computational
    Geography at the University of Leeds. Asks can
    we use cheap computer power in place of brain
    power to help us discover patterns in geospatial
    data?
  • Leads into idea of Artificial Intelligence...

7
Geocomputation Artificial Intelligence
  • Artificial Intelligence-- attempt to endow a
    computer with some of the intelligence
    capabilities of intelligent life forms without
    imitating exactly the same information processing
    steps of humans or biological systems
  • First things first need a intelligent
    approachhumans versus computers GAM discussed
    in Chapter 5..
  • Adaptability and effective use of information are
    key to a human investigation approach.
  • AI being applied to Geographical problems
    discussed next.

8
Geocomputation AI ApplicationsExpert Systems
  • Expert Systemsearliest approach (knowledge
    reasoning intelligence)
  • construct a formal representation of the
    human-expert knowledge in some field of data that
    is of interest, knowledge base is stored in a set
    of production rules if then conditional
    statements. May be more complexweights or
    probabilities before final action
  • Inference systemguides the expert system through
    its knowledge baserules to apply and order to
    apply them
  • Knowledge acquisition system and output
    deviceacquiring the knowledge and storage of
    rules on why the particular conclusion was
    obtained.
  • Limited applications in geography, suited best
    for narrowly defined, well-understood fields of
    application

9
Geocomputation AI ApplicationsArtificial Neural
Networks
  • Artificial Neural Networks (ANNs)
  • brain-like structure intelligence
  • simple model of braininterconnected set of
    neurons, a neuron being a simple element with an
    input and output
  • Value of output signal to weighted sum of input
    signals, signal values are usually 0 or 1
  • Hidden layers connecting neurons
  • Supervised (known data)adjusted connection
    weights to activity, classify input data by
    learning the subtle patterns in data set example
    signal levels in remote sensing data
  • unsupervised mode (traditional)--similar to
    clustering analysis solution.
  • Similar to multivariate statistical methodsmaps
    combinations of input X onto combinations of
    Ymay take any form, not limited to logistic
    regression.

10
ANN Examples
  • Linear classifier
  • can only draw straight lines though the cases as
    boundaries between the two classesnumerous wrong
    classifications
  • clear on knowledge base and how one arrived at
    solution
  • Neural Network
  • ANN has potential to draw any line shape through
    the cloud of observationsproduces a much more
    accurate classificationno way of knowing this is
    going to perform better, but results show that
    ANN handles larger, more complex problems (scale
    up better)
  • problem of overtrainingmatched too well to
    training data set, learned idiosyncrasies too
    well
  • black-box solutionsonly see the solution not
    whats on the inside. OK for land cover maps,
    not so good for fire risk maps.

11
Geocomputation AI ApplicationsGenetic Algorithms
  • Another AI techniquegenerate answers without the
    how or why.
  • Loosely modeled on Evolutiongenetic adaptation
    and mutations that have evolved because they are
    successful
  • Coding scheme devised to represent candidate
    solutionssimplest level, string of binary digits
    1001001010001
  • Potential solution scored on fitness
    criteriasuccessful solutions allowed to breed
  • Crossover or mutationrandom exchanges between
    strings to produce new strings or randomly
    flipping bits on current pop, slight changes are
    better than huge randomization.
  • Now rare in spatial analysis and GIS literature.

12
Geocomputation AI ApplicationsAgent-Based
Systems
  • Also called Agent Technologyan agent is a
    computer program with various properties
  • Autonomyhas the capacity for independent action
  • Reactivitycan react in various ways to its
    current environment
  • Goal Directionmakes use of its capabilities to
    pursue the current tasks at hand
  • Intelligent/communicate with other agents solve
    problems in multiagent systems, example internet
    search engines
  • Openshaw and MacGills space-time attribute
    creature

13
Spatial Models
  • Instead of random models, develop process models
    that explicitly represent the real processes and
    mechanisms that operate to produce the observable
    geographical world action
  • Possible to use in 3 different ways
  • - as a basis for pattern measurement and
    hypothesis testing
  • - for prediction
  • - to enable exploration and understanding of how
    processes works in the real world
  • Judgment about plausibility becomes as important
    as results, especially crucial for prediction and
    exploration example using closed models to
    describe open systems of the real worldsometimes
    this is necessary because to use an open system
    would be impractical.

14
Spatial Modelscellular Automata
  • Applicable to Raster GISa grid consisting of
    nominal variable, a finite number of discrete
    states.
  • Cell states changes/evolves according to model
    time step, current state of the cell and
    neighbors in the latticeagain biology.
  • Classic CA, John Conways Game of Life, can be
    used to represent a geographical process

15
Cellular Automata
16
Two-dimensional automata
17
Spatial Models Agent Models
  • Agents represent humans in a real simulated
    environment
  • Model Building Tools and Programs Star Logo (MIT
    media lab) Ascape (Brookings Institute) Swarm
    (Santa Fe Institute).
  • Cellular Models versus Agent Modelsprediction of
    permanent landscape features versus movement of
    people across a landscapeimportant for future
    research
  • Predicting the past versus predicting the
    futurehow well does a model that predicts
    historical records be used to predict future
    occurrences?
  • Equifinality problem-Open and closed model
    problem again, what is the theoretical
    plausibilityneeds to be tested again and again.

18
FinallyCoupling Models and GIS
  • Importanthow the different spatial models can be
    connected to the vast range of geospatial data?
  • Models used in GIS for geographical data types
    are different than those used in spatial
    modeling.
  • Most significantGIS data are static whereas in
    spatial models are dynamic
  • Software design problem of how to make spatio-
    temporal data rapidly accessible....

19
Three Approaches to GIS Modeling
  • Loose Couplingfiles transferred between a GIS
    and the modeldynamics are calculated in model
    and displayed in GIS
  • Tight Couplingeach system write files that can
    be read by the otherstill difficult to view
    moving images in a GIS, each image requires a new
    files and still a slow process.
  • Integrated Model and GIS systems do exist
  • - putting the required GIS functions in the
    model
  • - putting model functions in a GISharder
  • - develop a generic language for building models
    in a GIS environment.
  • Latter two approaches being explored by
    researchers
  • - Magical
  • - GRASS GIS
  • (Geographic Resources Analysis Support System)
  • - PC Raster
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