Publication | Closed Access
Examining the sensitivity of spatial scale in cellular automata Markov chain simulation of land use change
137
Citations
45
References
2019
Year
Environmental MonitoringEngineeringUrban ModellingLand UseLand CoverLand DegradationEnvironmental PlanningSpatial ScaleEarth ScienceSocial SciencesUrban Land UseEcological SimulationLand Use ChangeKappa CoefficientBiostatisticsLand-use PlanningGeographyUrban EcologyUrban PlanningLandscape Evolution ModelLand Cover MapUrban GeographyQuantitative Spatial ModelCellular AutomataRemote SensingSpatial Scale Sensitivity
Understanding the spatial scale sensitivity of cellular automata is crucial for improving the accuracy of land use change simulation. We propose a framework based on a response surface method to comprehensively explore spatial scale sensitivity of the cellular automata Markov chain (CA-Markov) model, and present a hybrid evaluation model for expressing simulation accuracy that merges the strengths of the Kappa coefficient and of Contagion index. Three Landsat-Thematic Mapper remote sensing images of Wuhan in 1987, 1996, and 2005 were used to extract land use information. The results demonstrate that the spatial scale sensitivity of the CA-Markov model resulting from individual components and their combinations are both worthy of attention. The utility of our proposed hybrid evaluation model and response surface method to investigate the sensitivity has proven to be more accurate than the single Kappa coefficient method and more efficient than traditional methods. The findings also show that the CA-Markov model is more sensitive to neighborhood size than to cell size or neighborhood type considering individual component effects. Particularly, the bilateral and trilateral interactions between neighborhood and cell size result in a more remarkable scale effect than that of a single cell size.
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