Title: Complexity, Land use and Cellular Automata Modelling
1Complexity, Land use and Cellular Automata
Modelling
- Guy Engelen
- VITO Flemish Institute for Technological
Research - Centre for Integrated Environmental Studies
- Boeretang 200, 2400 Mol, Belgium
- guy.engelen_at_vito.be
- RIKS bv
- Abtstraat 2A, 6200 AL Maastricht, The Netherlands
- http//www.riks.nl
2Once upon a time
Dynamicspatial interaction based models
Net growth gains - losses
GIS - Geographical Information Systems
3 15 years ago
Dynamicspatial interaction based models
High-resolution Spatially-dynamic
Net growth gains - losses
GIS - Geographical Information Systems
4Morphogenesis, spatial organisation and spatial
interaction (micro macro)
5Cellular Automata capture the Process behind the
morphogenesis
- Cellular Automata are explicitly dynamic,
representing change over time - Cellular Automata are explicitly spatial, since
they are defined on an n-dimensional grid
6Example of a Cellular Automata Conways Life
(Gardner, 1970)
7Characteristics of CA models (1)
- Spatially-dynamic model enabling extreme spatial
detail. - Simple and intuitive. They start with local
relationships and behavioural rules. Complexity
without complication (Couclelis 1986). - Self-organising systems with emergent properties
locally defined rules resulting in macroscopic
ordered structures. Massive amounts of
individual actions result in the spatial
structures that we know and recognise. - Bottom-up approach to spatial modelling.
- Open. They generate a range of possible futures.
- ButThey are not normative they show what
could happen rather than what should happen.
8Characteristics of CA models (2)
- A universal Turing machine is formally equivalent
to a Cellular Automata CA can mimic the action
of any physical system - Straightforward linkage with (raster) GIS, easy
integration of additional spatial attributes - CA can be modelled using computers with no loss
of precision - CA are irreversible and irreducible . There are
no computations or algorithms to speed up the
cellular automata simulation. There is no way
but simulation to predict their evolution. - Cellular Automata models confirm that modelling
is about exploration rather than prediction.
Reality is simply too complex to be captured in a
model. (sharpened intuition, informed
speculation, and educated guess (Couclelis,
1997)).
9Generalisation of the CA Concept
- Practical applications in the spatial sciences
have involved the following amendments to the
basic CA principles - CA-space
- from infinite to finite
- from homogeneity to non-homogeneity
- regularity (cells) to irregularity (polygons).
- Neighbourhood
- from stationarity to non-stationarity
- From isotropy to non-isotropy.
- Transition function
- From universal (all cells all states) to
non-universal - from invariance to time variance
- from deterministic to probabilistic.
- Time steps
- from regularity to non-regularity.
- System closure
- from closed to open.
10Generalisation of the CA Concept
- Practical applications have involved the
following amendments to the CA principles - CA-space
- from infinite to finite
- from homogeneity to non-homogeneity
- regularity (cells) to irregularity (polygons).
- Neighbourhood
- from stationarity to non-stationarity
- from isotropy to non-isotropy.
- Transition function
- From universal (all cells all states) to
non-universal - from invariance to time variance
- from deterministic to probabilistic.
- Time steps
- from regularity to non-regularity.
- System closure
- from closed to open.
11CA model for Land use Change (1992-2005)
- Cellular space
- 2-D space, consisting of equally sized square
cells (size limited by capacity of the pc). - States are the actual land uses.3 classes
- Active states or Function states
- Passive states
- Features.
- Cells may have additional attributes
- Suitability (static / dynamic)
- Accessibility (static / dynamic)
- Zoning status (quasi static).
- Maximum 32 states
- Grid size 25 - 1000 m
12CA model for Land use Change (1992-2005)
- Circular Neighbourhood, maximum radius 8 cells.
- Circular because square neighbourhoods have
abias towards diamond shaped spatial
patterns(Li and Yeh, 2000, Hagen 2000) - Larger than Moore because socio-economicinteracti
ons take place over longer distancesthan next
neighbours (more than diffusion alone) - Spatial agents perceive of their immediate
neigh-bourhood as anything between 50 and 5000
m(real estate studies) (Urban Studies, 2001,
Vol. 38, No. 12) - Interactions change with distance (Geoghegan,
2002 green areas on residential) - Information passing in the CA. Relation between
time and spatial expansion in the CA. - Practical choice 8 23.
- enables studying the importance of resolution
(Grass, 1996) - multi-raster applications and linkages with other
modelling approaches (Lorek, Sonnenschein) - provides better solutions for Patch problems.
13CA model for Land use Change (1992-2006)
- Transition rules representing
- Locational preferences of spatial agents in
competition for space - Appreciation of the proximity of other competing
or befriended activities and static elements in
the immediate neighbourhood - Willingness to develop or give-up activity in a
particular location.
Commerce
Water
Housing
Forest
Industry
- Push and pull forces,agglomeration benefits,
inertia, etc - The rule set consists of all the significant
rules(2-3/function suffices) - Interaction weights have relative value
withinthe model only.
Commerce
Industry
Housing
14Transition rules
- Rules express the locational preferences and
locational behaviour of spatial agents in a
survival of the fittest situation - Rules express their willingness to produce or
give up floor space (see also Webster and Wu,
2001) - Rules express (on a relative scale) how they
value the presence of other functions and land
uses / land covers in their neighbourhood. - Effect at distance 0 of the function on itself
- Inertia expressing the strength with which the
existing land use will stick to its present
location. - Effect at distance 0 of any other function on
the function - Ease of re-conversion the ease with which a new
land use will take over from the existing land
use.
15Transition rules
Effects at distance gt 0 No interaction Attracti
on positive agglomeration benefits diminishing
with distance. Repulsion negative agglomeration
benefits diminishing with distance Change in
type of interaction from attraction to repulsion
or/ and vice versa. Strong interaction with far
neighbours, abruptly falling Gradual
decay, Strong interaction with immediate
neighbours, gradually falling Sphere of
influence short tail the interaction is limited
to short distances long tail the interaction
effect works over longer distances.
16Transition Rule Change cells to land-use for
which they have the highest transition potential
untill the demands are met.
Time Loop
17Bottom-up Agent based approach to morphogenesis
18Simulating the growth of Cincinnati from 1840
till 1960
19Simulation (left) vs. Reality (right)
20Transition Rule Change cells to land-use for
which they have the highest transition potential
untill the demands are met.
Time Loop
21ConstrainedCellular Automata
- The Cellular Automata dynamics evolve in a
non-homogeneous geographical space defined by GIS
attributes and layers (see also most of the
others) - Their overall dynamics are not determined by the
micro Cellular Automata transition rules, but
by processes at a larger macro scale (see also
most of the others) - Cellular Automata models have been integrated
with more traditional dynamic models, which in
the most general case are regionalised (spatial
interaction based) (Engelen et al., 1993).
22EU-JRC MOLAND Modelling Framework(Example
Greater Dublin)
- Scenarios on Demographic growth and on jobgrowth
in 3 economic sectors (Industry, Commerce and
Services) for the whole area.
Global Greater Dublin
Macro
- Dynamic Spatial interaction-based model.
Allocates and re-allocates the population and the
economic activities among the 9 counties. - Takes regional information on population and jobs
as well as local information on the quantity and
quality of space as an input.
Regional 9 Counties
- Cellular Automata based model. Takes the regional
figures as an input and allocates the population
and jobs to cellular units. - Returns aggregate information to the regional
model relative to the quantity and quality of the
space available in the counties.
Local 630,000 cells of 4ha each
Micro
23Transition Rule Change cells to land-use for
which they have the highest transition potential
until Regional demands are met.
Time Loop
24Macro-level - RegionalDynamic spatial
interaction based
f ( )
All economic activities, jobs, population, zoning
, suitability, accessibility, in zone and at a
distance
For each of the 9 counties, this model calculates
on a yearly basis the changing number of
inhabitants and jobs in the selected economic
sectors.
25Macro-level - GlobalGrowth scenarios
Scenarios on demographic and job growth in the
selected economic sectors (Industry, Commerce and
Services) for the whole modelled area
26Building a new application
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28Assessing planning alternativesDynamic
indicators at several geographical levels
29MOLAND Flooding risks in Pordenone, Italy (EU-JRC)
Pordenone 2002 floods
(source Brezger, 2004)
30MOLAND Flooding risks in Pordenone, Italy (EU-JRC)
Floodable areas in 2000
Urbanised in 2000
F River bed. Frequently flooded P3 Very high
risk. Areas close to dikes P2 High risk.
Critical area with 100-year event discharges P1
Moderate risk. Areas flooded in 2002 and 1996.
31MOLAND Flooding risks in Pordenone, Italy (EU-JRC)
Population density (inh/ha) in 2000
Land use in 2000
32MOLAND Flooding risks in Pordenone, Italy (EU-JRC)
Urbanised in 2000
Urbanised in 2020
33MOLAND Flooding risks in Pordenone, Italy (EU-JRC)
Floodable areas
Land use in the floodable areas
jaar
34MOLAND Flooding risks in Pordenone, Italy (EU-JRC)
Flooding risk
- Dangerous cocktail
- Urbanisation in the floodable area
- Increased frequency and importance of extreme
weather events caused by climate change.
Urbanised area per risk category
jaar
35What else other CA-work is there at RIKS?
- Calibrations, validations of various applications
have shown that the Constrained Cellular Automata
modelling methodology and type of models works
fine in general - That these models can be readily and usefully
applied for practical planning purposes - Models have been developed that integrate
physical processes, represented at the cellular
level, enabling to work with a dynamic
suitability - Models have been developed that have a so-called
two-step land use allocation - Models have been developed that combine
Individual Based Models (IBM) with Cellular
Automata (Beach Plover Model and Lobster model)
36Variable grid Cellular Automata the way ahead?
- Applications coupling CA with spatial interaction
based models work fine for areas consisting of
reasonably uniform, equally sized zones (ex. The
Netherlands) - They work less well for areas consisting of
widely different zones (ex. Larger Dublin
Metropolitan Area)
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38The solutionEliminate the regions?
- Each cell is allocated a certain amount of the
activity corresponding to its land use. Real
cell densities can be worked with, rather than
regional densities - The cell neighbourhood is expanded to include the
entire area modelled.
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41The solutionEliminate the regions?
- Each cell is allocated a certain amount of the
activity corresponding to its land use. Real
cell densities can be worked with, rather than
regional densities - The cell neighbourhood is expanded to include the
entire area modelled. - The neighbourhood weighting functions now capture
the distance decay effects previously represented
in the macro model. - Each cell is now effectively its own region,
competing with all others for activity. - Cell figures are aggregated per administrative
entities to enable usage at the macro-level, but
also calibration and validation. - First results seem promising, but more research
work is required, starting next Monday -)
42The END