Analysis of urban sprawl dynamics using machine learning, CA-Markov chain, and the Shannon entropy model: a case study in Mbombela City, South Africa

Paidamwoyo Mhangara, Eskinder Gidey, Rabia Manjoo
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Abstract

Over half of the world’s population resides in urban areas. We anticipate that this pattern will become more evident, notably in South Africa. Therefore, research on urban spirals, both past and projected, is necessary for efficient urban land use planning and management. This study aims to assess the spatio-temporal urban sprawl dynamics from 2003 to 2033 in Mbombela, South Africa. We employed robust approaches such as machine learning, the cellular automata-Markov chain, and the Shannon entropy model to look at how urban sprawl changes over time using both the Landsat 4–5 Thematic Mapper and the 8 Operational Land Imagers. We conducted this study to bridge the gaps in existing research, which primarily focuses on past and current urban growth trends rather than future trends. The findings indicated that the coverage of built-up areas and vegetation has expanded by 1.98 km2 and 13.23 km2 between the years 2003 and 2023. On the other hand, the amount of land continues to decrease by -12.56 km2 and − 2.65 km2 annually, respectively. We anticipate an increase in the built-up area and vegetation to a total of 7.60 km2 and 0.57 km2, respectively, by the year 2033. We anticipate a total annual decline of -7.78 km2 and − 0.39 km2 in water bodies and open land coverage, respectively. This work has the potential to assist planners and policymakers in improving sustainable urban land-use planning.
利用机器学习、CA-马尔可夫链和香农熵模型分析城市无计划扩展动态:南非姆博贝拉市案例研究
世界上一半以上的人口居住在城市地区。我们预计这种模式将变得更加明显,尤其是在南非。因此,为了有效地进行城市土地利用规划和管理,有必要对过去和预测的城市螺旋进行研究。本研究旨在评估南非姆博贝拉从 2003 年到 2033 年的时空城市扩张动态。我们采用了机器学习、蜂窝自动机-马尔可夫链和香农熵模型等稳健方法,利用大地遥感卫星 4-5 专题成像仪和 8 个实用土地成像仪研究城市无计划扩展如何随时间变化。现有研究主要关注过去和当前的城市增长趋势,而不是未来趋势,我们开展这项研究是为了弥补这些研究的不足。研究结果表明,从 2003 年到 2023 年,城市建成区和植被覆盖面积分别扩大了 1.98 平方公里和 13.23 平方公里。另一方面,土地面积每年分别减少-12.56 平方公里和-2.65 平方公里。我们预计到 2033 年,建筑面积和植被面积将分别增加到 7.60 平方公里和 0.57 平方公里。我们预计水体和空地覆盖面积每年将分别减少-7.78 平方公里和-0.39 平方公里。这项工作有望帮助规划者和决策者改善可持续的城市土地利用规划。
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