通过开放源代码数据的空间分析监测巴基斯坦四个主要城市的人口变化和城市增长

IF 2.7 Q1 GEOGRAPHY Annals of GIS Pub Date : 2023-01-17 DOI:10.1080/19475683.2023.2166989
Rana Waqar Aslam, H. Shu, Andaleeb Yaseen
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引用次数: 5

摘要

城市是一个复杂而动态的实体,与人类密切相关,这意味着需要进行多时间观测来分析和理解城市背景。目前,开源数据和地理空间智能正在成为探索、监测和预测城市面积增长和人口增长状况的重要手段。在过去几十年里,农村地区的失业和缺乏基础设施促进了巴基斯坦各城市中心无计划和随意的城市化。本研究的重点是探索开放源代码/免费提供的数据集在城市制图和空间监测方面的潜力。该研究利用谷歌地球引擎对过去40年的陆地卫星图像进行分类,给出了巴基斯坦快速发展城市的空间视角,并发现了城市之间的扩张模式。研究发现,近40年来,随着人口的增长,建成区面积显著增加,人口增长与建成区扩张之间存在较强的正相关关系。利用开源数据(Landsat图像和LandScan数据),本研究提供了一个谷歌地球引擎支持的统计分析和机器学习的技术解决方案,以空间监测巴基斯坦四个主要城市的人口变化和城市增长。毫无疑问,我们的工作成果将为政策制定者、政府官员和市民提供及时和具有成本效益的信息,以实现更可持续的城市化。
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Monitoring the population change and urban growth of four major Pakistan cities through spatial analysis of open source data
ABSTRACT Cities are complex and dynamic entities in close proximity of people, implying multi temporal observations to analyse and understand the urban context. At present, open-source data and geospatial intelligence are becoming the important means of exploring, monitoring and predicting urban status of area growth and population increase. In last few decades, unemployment and absence of infrastructures in the rural areas promoted the unplanned and haphazard urbanization across the urban centres in Pakistan. This study focuses on exploring the potential of open-source/freely available datasets for city mapping and monitoring spatially. The study gives a spatial perspective of rapidly growing cities of Pakistan using Google Earth Engine to classify Landsat images over last four decades, and discovers sprawl patterns across cities. The study works out that the built-up area is significantly increasing with population growth over four decades and there is a strong positive correlation between population growth and built-up expansion. Using Open-Source Data (Landsat images and LandScan data), this study has offered a technical solution of Google Earth Engine-supported analysis of statistics and machine learning to spatially monitoring the population change and urban growth of four major Pakistan cities. It is undoubted that our working results will provide the timely and cost-effective information to policymakers, Govt Officials and citizens for more sustainable urbanization.
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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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