街区及其配置对未规划大都市地区城市增长预测的影响

IF 2.3 Q2 REMOTE SENSING Applied Geomatics Pub Date : 2024-07-10 DOI:10.1007/s12518-024-00566-7
Samarth Y. Bhatia, Kirtesh Gadiya, Gopal R. Patil, Buddhiraju Krishna Mohan
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引用次数: 0

摘要

快速的城市化进程,尤其是在印度等发展中国家,导致了无计划、无序的城市扩张。随着城市核心地区的饱和,城市周边地区也出现了增长,这给城市规划者带来了严峻的挑战。本研究旨在利用 1999 年至 2019 年的大地遥感卫星数据,研究快速增长的孟买大都市区(MMR)的城市增长模式,并评估街区配置对城市增长预测的影响。城市区域地图采用最大似然算法进行分类,并与潜在驱动因素一起用于测试三个层次的邻里考虑因素。第一个模型假定没有邻近地区的影响,第二个模型将邻近地区的建成区像素作为额外的潜在驱动变量,第三个模型使用蜂窝自动机(CA)。蜂窝自动机模型探索了邻域类型和大小、距离衰减和迭代的变化,以确定最佳配置。结果显示,二十年来(1999-2019 年)建成区面积增加了 89.44%。城市增长预测模型测试显示了邻里关系的重要性,第一个不考虑邻里关系的模型准确率最低(67%),而内置邻里关系模型的准确率更高(71%)。然而,采用 9 × 9 Moore 邻域、距离指数 β = 2 和两次迭代的基于 CA 的模型准确率最高(76%)。增长预测结果显示,五矿地区将出现新一轮的近郊增长,2019 年至 2029 年期间,城市总体面积将增长 25%,2029 年至 2039 年期间将增长 20%。这些结果为城市规划者做出明智决策和促进可持续发展提供了宝贵的工具。
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Effect of neighbourhood and its configurations on urban growth prediction of an unplanned metropolitan region

Rapid urbanisation, especially in developing countries like India, has resulted in unplanned and haphazard urban expansion. With saturated urban cores, growth is observed in the peri-urban areas, resulting in severe challenges for urban planners. The present study aims to study the urban growth patterns of the fast-growing Mumbai Metropolitan Region (MMR) using the Landsat data from 1999 to 2019 and to evaluate the neighbourhood configurations’ effect on urban growth prediction. The urban area maps are classified using a maximum likelihood algorithm and are used along with the potential drivers to test three levels of neighbourhood considerations. The first model assumes no neighbourhood effect, the second incorporates the built-up pixels in the neighbourhood as an additional potential driver variable, and the third uses a Cellular Automata (CA). The CA model explores variations in neighbourhood types and sizes, distance decay and iterations to identify the optimal configuration. The results show an 89.44% increase in built-up areas over two decades (1999-2019). The urban growth prediction model testing reveals the importance of neighbourhood, with the first model without neighbourhood consideration giving the least accuracy (67%) while the inbuilt neighbourhood model gives better results (71%). However, the CA-based model with a 9 × 9 Moore neighbourhood, distance exponent β = 2 and two iterations give the highest accuracy (76%). The growth prediction shows a new wave of peri-urban growth in MMR, with overall urban areas increasing by 25% between 2019 and 2029 and 20% between 2029 and 2039. The results provide urban planners with a valuable tool for informed decision-making and promoting sustainable development.

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来源期刊
Applied Geomatics
Applied Geomatics REMOTE SENSING-
CiteScore
5.40
自引率
3.70%
发文量
61
期刊介绍: Applied Geomatics (AGMJ) is the official journal of SIFET the Italian Society of Photogrammetry and Topography and covers all aspects and information on scientific and technical advances in the geomatics sciences. The Journal publishes innovative contributions in geomatics applications ranging from the integration of instruments, methodologies and technologies and their use in the environmental sciences, engineering and other natural sciences. The areas of interest include many research fields such as: remote sensing, close range and videometric photogrammetry, image analysis, digital mapping, land and geographic information systems, geographic information science, integrated geodesy, spatial data analysis, heritage recording; network adjustment and numerical processes. Furthermore, Applied Geomatics is open to articles from all areas of deformation measurements and analysis, structural engineering, mechanical engineering and all trends in earth and planetary survey science and space technology. The Journal also contains notices of conferences and international workshops, industry news, and information on new products. It provides a useful forum for professional and academic scientists involved in geomatics science and technology. Information on Open Research Funding and Support may be found here: https://www.springernature.com/gp/open-research/institutional-agreements
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