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SUSM: a scenario-based urban growth simulation model using remote sensing data

机译:SUSM:一种使用遥感数据的基于场景的城市增长模拟模型

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The introduction of the Foreign Direct Investment (FDI) policy in 1991 made India one of the fastest growing economies in the world. This has had a profound effect on India’s urbanization. The rapid urbanization of Indian cities poses a threat to natural and social environments, as expansion of the cities often outpaces the urban planning process. Thus, smart and strategic planning processes that use current and easily available datasets in combination with future urbanization scenarios are needed. To this end, we developed the scenario-based urban growth simulation model (SUSM), which can be used for impact analysis of different planning measures in both spatial and temporal contexts. SUSM uses remote sensing derived inputs, such as land use maps, slope, roads and centres of urban areas along with urban development scenarios. It uses logistic regression for calibration and a constrained stochastic cellular automaton for simulation of urban growth. SUSM is tested in one of the fastest growing urban agglomerations of India: The Pune metropolis, which covers an area of 1642?km 2 . SUSM is calibrated using urban growth maps derived from LANDSAT satellite images from 1992 to 2001. Subsequently, SUSM was used to simulate urban growth of Pune for 2013. A comparison of the SUSM simulation result with the actually measured urban growth derived from a LANDSAT 8 scene from 2013 is used to validate SUSM and to assess the effect of urban plans upon the growth of Pune. Our results show that: (i) SUSM is capable of predicting the location of future urbanization with an accuracy of 79% and a fuzzy kappa index of agreement 0.81; (ii) inclusion of official urban development plans as input for SUSM did not provide a better agreement with the observed growth; (iii) SUSM, parameterized with remote sensing data, can be used effectively to understand urban growth and assess the effects of alternative urban development plans in terms of the spatial expansion of cities.
机译:1991年外国直接投资(FDI)政策的引入使印度成为世界上增长最快的经济体之一。这对印度城市化有着深远的影响。印度城市的快速城市化构成了对自然和社会环境的威胁,因为城市的扩张经常出现城市规划过程。因此,需要使用当前和易于可用数据集的智能和战略规划流程与未来的城市化方案结合使用。为此,我们开发了基于场景的城市增长模拟模型(SUSM),可用于对空间和时间背景下不同规划措施的影响分析。 SUSM使用遥感派生输入,例如土地使用地图,坡度,道路和城市地区的中心以及城市发展场景。它使用校准物流回归和约束随机蜂窝自动机用于模拟城市生长。苏姆在印度增长最快的城市集群之一中进行了测试:浦那大都市,占地面积1642年的地区。使用1992年至2001年从Landsat卫星图像衍生的城市成长地图校准了SUSM。随后,SUSM用于模拟2013年浦那的城市增长。SUSM模拟结果与实际测量的城市生长源于Landsat 8场景的比较从2013年开始验证SUSM并评估城市计划对浦那的增长的影响。我们的研究结果表明:(i)SUSM能够预测未来城市化的位置,准确性为79%,而且对0.81的模糊kappa指数。 (ii)将官方城市发展计划纳入苏姆的投入没有提供与观察到的增长更好的协议; (iii)使用遥感数据参数化的SUSM可以有效地用于了解城市增长,并在城市的空间扩展方面评估替代城市发展计划的影响。

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