Exploration of spatial scale sensitivity in geographic cellular automata
Authored by DJ Marceau, A Menard
Date Published: 2005
DOI: 10.1068/b31163
Sponsors:
United Kingdom Natural Environment Research Council (NERC)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Model Code URLs:
Model code not found
Abstract
Cellular automata (CA) are individual-based models in which states, time, and space are discrete. Spatiotemporal dynamics emerge from the
simple and local interactions of the cells. When using CA in a
geographic context, nontrivial questions have to be answered about the
choice of spatial scale, namely cell size and neighbourhood
configuration. However, the spatial scale decisions involved in the
elaboration of geographic cellular automata (GCA) are often made
arbitrarily or in relation to data availability. The objective of this
study is to evaluate the sensitivity of GCA to spatial scale. A
stochastic GCA was built to model land-cover change in the Maskoutains
region (Quebec, Canada). The transition rules were empirically derived
from two Landsat-TM (30 in resolution) images taken in 1999 and 2002
that have been resampled to four resolutions (100, 200, 500, 1000m). Six
different neighbourhood configurations were considered (Moore, Von
Neumann, and circular approximations of 2, 3, 4, and 5 cell radii).
Simulations were performed for each of the thirty spatial scale
scenarios. Results show that spatial scale has a considerable impact on
simulation dynamics in terms of both land-cover area and spatial
structure. The spatial scale domains present in the results reveal the
nonlinear relationships that link the spatial scale components to the
simulation results.
Tags
Simulation
Dynamics
Land-use changes
San-francisco
Urban-growth
Information-systems
Areal unit problem
Statistical-analysis
Aggregation problem
Regional model