Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030

Abstract Since the end of apartheid in 1994, South Africa has experienced significant urban population growth, with major cities undergoing particularly rapid expansion. Understanding spatial urban expansion in developing cities, such as Rustenburg, is essential for sustainable infrastructure planni...

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Main Authors: Paidamwoyo Mhangara, Eskinder Gidey, Bruce Steadman Mayise
Format: Article
Language:English
Published: Nature Portfolio 2025-05-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-04304-w
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author Paidamwoyo Mhangara
Eskinder Gidey
Bruce Steadman Mayise
author_facet Paidamwoyo Mhangara
Eskinder Gidey
Bruce Steadman Mayise
author_sort Paidamwoyo Mhangara
collection DOAJ
description Abstract Since the end of apartheid in 1994, South Africa has experienced significant urban population growth, with major cities undergoing particularly rapid expansion. Understanding spatial urban expansion in developing cities, such as Rustenburg, is essential for sustainable infrastructure planning, environmental management, and service provision. This study modeled the spatial extent of urban growth in Rustenburg from 1994 to 2022 using Extreme Gradient Boosting (XGB) and predicted future urban expansion from 2022 to 2030 through the Cellular Automata Simulation in the MOLUSCE plugin. The results indicate that in 1994, water bodies covered 88,303 hectares, developed areas covered 125,763 hectares, and vegetation occupied 2,513,336 hectares. By 2022, vegetated regions covered 5,104,145 hectares, developed areas increased to 586,017 hectares, and mining zones expanded to 113,224 hectares. Furthermore, the landscape featured disjointed urban areas, varied natural ecosystems, and significant fragmentation in undeveloped zones. In 2022, the number of water patches increased to 27,845, built-up areas to 60,690, vegetated areas to 102,119, bare land to 80,921, and mining areas to 23,296 patches. The Kappa statistics ranged from 0.93 (93%) to 0.99 (99%), demonstrating high reliability in simulating urban growth patterns. An overall accuracy of 95% and a Kappa statistic of 0.93 are indeed higher than the mean scientifically accepted accuracy level of 85% for urban growth analysis. These findings highlight significant changes in land use and landscape fragmentation over time and provide critical insights into urban growth patterns and their implications for water security, sustainable development, and community livelihoods in Rustenburg, South Africa. By examining these patterns, we can better plan for sustainable infrastructure, manage environmental impacts, and improve service provision in rapidly expanding urban areas.
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spelling doaj-art-e947c5e94ae2411c820601ce1bb230492025-08-20T03:22:03ZengNature PortfolioScientific Reports2045-23222025-05-0115111410.1038/s41598-025-04304-wUsing extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030Paidamwoyo Mhangara0Eskinder Gidey1Bruce Steadman Mayise2School of Geography, Archaeology and Environmental Studies, Faculty of Science, University of the WitwatersrandSchool of Geography, Archaeology and Environmental Studies, Faculty of Science, University of the WitwatersrandSchool of Geography, Archaeology and Environmental Studies, Faculty of Science, University of the WitwatersrandAbstract Since the end of apartheid in 1994, South Africa has experienced significant urban population growth, with major cities undergoing particularly rapid expansion. Understanding spatial urban expansion in developing cities, such as Rustenburg, is essential for sustainable infrastructure planning, environmental management, and service provision. This study modeled the spatial extent of urban growth in Rustenburg from 1994 to 2022 using Extreme Gradient Boosting (XGB) and predicted future urban expansion from 2022 to 2030 through the Cellular Automata Simulation in the MOLUSCE plugin. The results indicate that in 1994, water bodies covered 88,303 hectares, developed areas covered 125,763 hectares, and vegetation occupied 2,513,336 hectares. By 2022, vegetated regions covered 5,104,145 hectares, developed areas increased to 586,017 hectares, and mining zones expanded to 113,224 hectares. Furthermore, the landscape featured disjointed urban areas, varied natural ecosystems, and significant fragmentation in undeveloped zones. In 2022, the number of water patches increased to 27,845, built-up areas to 60,690, vegetated areas to 102,119, bare land to 80,921, and mining areas to 23,296 patches. The Kappa statistics ranged from 0.93 (93%) to 0.99 (99%), demonstrating high reliability in simulating urban growth patterns. An overall accuracy of 95% and a Kappa statistic of 0.93 are indeed higher than the mean scientifically accepted accuracy level of 85% for urban growth analysis. These findings highlight significant changes in land use and landscape fragmentation over time and provide critical insights into urban growth patterns and their implications for water security, sustainable development, and community livelihoods in Rustenburg, South Africa. By examining these patterns, we can better plan for sustainable infrastructure, manage environmental impacts, and improve service provision in rapidly expanding urban areas.https://doi.org/10.1038/s41598-025-04304-wUrban expansionGoogle earth engineExtreme gradient boosting modelRustenburgSouth Africa
spellingShingle Paidamwoyo Mhangara
Eskinder Gidey
Bruce Steadman Mayise
Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030
Scientific Reports
Urban expansion
Google earth engine
Extreme gradient boosting model
Rustenburg
South Africa
title Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030
title_full Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030
title_fullStr Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030
title_full_unstemmed Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030
title_short Using extreme gradient boosting for predictive urban expansion analysis in Rustenburg, South Africa from 2000 to 2030
title_sort using extreme gradient boosting for predictive urban expansion analysis in rustenburg south africa from 2000 to 2030
topic Urban expansion
Google earth engine
Extreme gradient boosting model
Rustenburg
South Africa
url https://doi.org/10.1038/s41598-025-04304-w
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