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Percorso a Costo Minimo / Analisi Costo-Distanza×Modello CA-Markov per il Cambiamento dell'Uso del Suolo×Modelli di Localizzazione-Assegnazione×
CampoAnalisi spazialeAnalisi spazialeAnalisi spaziale
FamigliaProcess / pipelineProcess / pipelineProcess / pipeline
Anno di origine199419971963
IdeatoreEdsger Dijkstra (shortest path); GIS cost-surface adaptationCellular automata (Clarke) + Markov chain (Muller & Middleton)Leon Cooper; S. L. Hakimi
TipoRaster cost-surface routingSpatio-temporal land-use change simulationSpatial facility-location optimization
Fonte seminaleDijkstra, E. W. (1959). A note on two problems in connexion with graphs. Numerische Mathematik, 1(1), 269–271. DOI ↗Clarke, K. C., Hoppen, S., & Gaydos, L. (1997). A self-modifying cellular automaton model of historical urbanization in the San Francisco Bay area. Environment and Planning B, 24(2), 247–261. DOI ↗Cooper, L. (1963). Location-allocation problems. Operations Research, 11(3), 331–343. DOI ↗
Aliascost-distance analysis, accumulated cost surface, least-cost corridor, en düşük maliyetli yolCA-Markov model, cellular automata Markov, land-use change simulation, CA-Markov arazi kullanımı modelifacility location, p-median problem, maximal covering location problem, yer-tahsis modelleri
Correlati334
SintesiLeast-cost path analysis finds the route between two locations that minimizes accumulated travel cost across a landscape, rather than minimizing straight-line distance. By encoding terrain, slope, land cover, and other frictions into a cost surface and accumulating cost outward from a source, it identifies optimal corridors for roads, pipelines, trails, power lines, and wildlife movement — a core raster-GIS technique built on Dijkstra's shortest-path logic.CA-Markov is a hybrid spatio-temporal model that projects land-use and land-cover change by combining a Markov chain — which predicts how much of each class will change — with cellular automata, which decide where that change happens. Widely used for urban-growth and land-cover forecasting, it answers both the quantity and the location of change, something neither component does well alone.Location-allocation models decide where to place a set of facilities and simultaneously assign demand points to them so as to optimize an objective such as total travel cost, worst-case distance, or population covered. Rooted in the operations-research work of Cooper (1963) and Hakimi (1964) and central to network GIS, they answer questions like where to site warehouses, hospitals, fire stations, or schools to best serve a spatially distributed population.
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ScholarGateConfronta i metodi: Least-Cost Path · CA-Markov · Location-Allocation. Consultato il 2026-06-18 da https://scholargate.app/it/compare