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Modelling urban growth evolution and land-use changes using GIS based cellular automata and SLEUTH models: the case of Sana’a metropolitan city, Yemen

An effective and efficient planning of an urban growth and land use changes and its impact on the environment requires information about growth trends and patterns amongst other important information. Over the years, many urban growth models have been developed and used in the developed countries fo...

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Published in:Environmental earth sciences 2013-09, Vol.70 (1), p.425-437
Main Authors: Al-shalabi, Mohamed, Billa, Lawal, Pradhan, Biswajeet, Mansor, Shattri, Al-Sharif, Abubakr A. A
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description An effective and efficient planning of an urban growth and land use changes and its impact on the environment requires information about growth trends and patterns amongst other important information. Over the years, many urban growth models have been developed and used in the developed countries for forecasting growth patterns. In the developing countries however, there exist a very few studies showing the application of these models and their performances. In this study two models such as cellular automata (CA) and the SLEUTH models are applied in a geographical information system (GIS) to simulate and predict the urban growth and land use change for the City of Sana’a (Yemen) for the period 2004–2020. GIS based maps were generated for the urban growth pattern of the city which was further analyzed using geo-statistical techniques. During the models calibration process, a total of 35 years of time series dataset such as historical topographical maps, aerial photographs and satellite imageries was used to identify the parameters that influenced the urban growth. The validation result showed an overall accuracy of 99.6 %; with the producer’s accuracy of 83.3 % and the user’s accuracy 83.6 %. The SLEUTH model used the best fit growth rule parameters during the calibration to forecasting future urban growth pattern and generated various probability maps in which the individual grid cells are urbanized assuming unique “urban growth signatures”. The models generated future urban growth pattern and land use changes from the period 2004–2020. Both models proved effective in forecasting growth pattern that will be useful in planning and decision making. In comparison, the CA model growth pattern showed high density development, in which growth edges were filled and clusters were merged together to form a compact built-up area wherein less agricultural lands were included. On the contrary, the SLEUTH model growth pattern showed more urban sprawl and low-density development that included substantial areas of agricultural lands.
doi_str_mv 10.1007/s12665-012-2137-6
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subjects Accuracy
Aerial photography
Agricultural land
Applied geophysics
Areal geology
Areal geology. Maps
Biogeosciences
Calibration
data collection
decision making
Developed countries
Developing countries
Earth and Environmental Science
Earth Sciences
Earth, ocean, space
Environmental impact
Environmental Science and Engineering
Exact sciences and technology
Forecasting
Geochemistry
Geographic information systems
Geologic maps, cartography
Geology
growth models
Hydrology/Water Resources
Internal geophysics
Land
Land use
land use change
LDCs
Mathematical models
Original Article
probability
Remote sensing
Satellite navigation systems
spatial data
Terrestrial Pollution
time series analysis
Topographic mapping
Urban areas
Urban development
urban planning
Urban sprawl
urbanization
title Modelling urban growth evolution and land-use changes using GIS based cellular automata and SLEUTH models: the case of Sana’a metropolitan city, Yemen
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