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Application of GIS and RS in Urban Growth Analysis and Modeling

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Spatial Modeling and Assessment of Urban Form

Abstract

Modeling of complex systems involves spatial and geographic aspects, such as urban areas. Such modeling requires approaches with capabilities of spatial and geographical analyses.

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Abdullahi, S., Pradhan, B. (2017). Application of GIS and RS in Urban Growth Analysis and Modeling. In: Pradhan, B. (eds) Spatial Modeling and Assessment of Urban Form. Springer, Cham. https://doi.org/10.1007/978-3-319-54217-1_13

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