The role of random forest and Markov chain models in understanding metropolitan urban growth trajectory

IF 2.7 3区 农林科学 Q2 ECOLOGY
M. T. Badshah, Khadim Hussain, Arif Ur Rehman, Kaleem Mehmood, Bilal Muhammad, Rinto Wiarta, Rato Firdaus Silamon, Muhammad Anas Khan, Jinghui Meng
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Abstract

This study delves into the spatiotemporal dynamics of land use and land cover (LULC) in a Metropolitan area over three decades (1991–2021) and extends its scope to forecast future scenarios from 2031 to 2051. The intent is to aid sustainable land management and urban planning by enabling precise predictions of urban growth, leveraging the integration of remote sensing, GIS data, and observations from Landsat satellites 5, 7, and 8.The research employed a machine learning-based approach, specifically utilizing the random forest (RF) algorithm, for LULC classification. Advanced modeling techniques, including CA–Markov chains and the Land Change Modeler (LCM), were harnessed to project future LULC alterations, which facilitated the development of transition probability matrices among different LULC classes.The investigation uncovered significant shifts in LULC, influenced largely by socio-economic factors. Notably, vegetation cover decreased substantially from 49.21% to 25.81%, while forest cover saw an increase from 31.89% to 40.05%. Urban areas expanded significantly, from 7.55% to 25.59% of the total area, translating into an increase from 76.31 km2 in 1991 to 258.61 km2 in 2021. Forest area also expanded from 322.25 km2 to 409.21 km2. Projections indicate a further decline in vegetation cover and an increase in built-up areas to 371.44 km2 by 2051, with a decrease in forest cover compared to its 2021 levels. The predictive accuracy of the model was confirmed with an overall accuracy exceeding 90% and a kappa coefficient around 0.88.The findings underscore the model’s reliability and provide a significant theoretical framework that integrates socio-economic development with environmental conservation. The results emphasize the need for a balanced approach towards urban growth in the Islamabad metropolitan area, underlining the essential equilibrium between development and conservation for future urban planning and management. This study underscores the importance of using advanced predictive models in guiding sustainable urban development strategies.
随机森林和马尔科夫链模型在理解大都市城市增长轨迹中的作用
这项研究深入探讨了大都市地区三十年(1991-2021 年)间土地利用和土地覆盖(LULC)的时空动态,并将其范围扩大到预测 2031 年至 2051 年的未来情景。该研究采用了一种基于机器学习的方法,特别是利用随机森林(RF)算法进行 LULC 分类。该研究采用了基于机器学习的方法,特别是利用随机森林(RF)算法对土地利用、土地利用变化(LULC)进行分类。研究还利用了先进的建模技术,包括 CA-Markov 链和土地利用、土地利用变化模型(LCM),来预测未来土地利用、土地利用变化(LULC)的变化,这有助于在不同的土地利用、土地利用变化(LULC)类别之间建立过渡概率矩阵。值得注意的是,植被覆盖率从 49.21% 大幅下降到 25.81%,而森林覆盖率则从 31.89% 上升到 40.05%。城市面积大幅扩大,从占总面积的 7.55% 增加到 25.59%,即从 1991 年的 76.31 平方公里增加到 2021 年的 258.61 平方公里。森林面积也从 322.25 平方公里扩大到 409.21 平方公里。预测结果表明,到 2051 年,植被覆盖率将进一步下降,建成区面积将增加到 371.44 平方公里,森林覆盖率与 2021 年的水平相比将有所下降。该模型的预测准确性得到了证实,总体准确率超过 90%,卡帕系数约为 0.88。研究结果强调了该模型的可靠性,并提供了一个将社会经济发展与环境保护相结合的重要理论框架。研究结果强调了在伊斯兰堡大都市地区采用平衡方法实现城市发展的必要性,并强调了未来城市规划和管理中发展与保护之间的重要平衡。这项研究强调了使用先进预测模型指导可持续城市发展战略的重要性。
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来源期刊
CiteScore
4.50
自引率
6.20%
发文量
256
审稿时长
12 weeks
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