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Geospatial Analysis of Building Structures in Megacity Dhaka: the Use of Spatial Statistics for Promoting Data-driven Decision-making

机译:地理空间分析的建筑结构大城市达卡:空间统计数据的使用促进数据驱动的决策

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摘要

Information on spatial building structures is limited, but it can support efficient planning and management in the context of fast-growing big cities in many developing countries. In this paper, we present a spatial analysis approach that includes an estimate of building intensity in the megacity of Dhaka and a spatial analysis using spatial statistics. The entire city was divided into regular grids and the building intensity (both horizontal and vertical) was extracted using vector type building information; the spatial statistics were calculated on the basis of Moran’s I and Gini indices. The variability of the estimated spatial statistics is interpreted according to co-relationship or clustering patterns with the location of the central business district (CBD) area as well as the public bus transit infrastructure (routes and stops). The results show that the residential building structure intensity is prominent and the concentrations are distributed all over the city. The mixed-use type building structures show highest clustering, with fewer outliers in the old part of the city. The vertical-use intensities indicate extreme clustering within highly intensified building activity in the nearby CBD area. The higher presence of low-low clustering of horizontal intensity indicated low development at the suburban area. However, the strongly clustered grid cells within residential sector as well as horizontal development classes are less accessible by bus transit within a defined catchment area, whereas the service sector and vertical development type seem to be more accessible. This type of geographic approach, visualization, and statistical information can help in making data-driven planning decisions with the advantage of monitoring urban development; however, the modeling sensitivity and uncertainties in the building data set remain open for further investigation.
机译:空间建筑结构的信息有限,但它可以支持有效的计划和管理在快速增长的背景下大了在许多发展中国家的城市。篇文章中,我们提出一个空间分析方法这包括建立强度的估计在大城市达卡和空间分析利用空间统计数据。分为普通网格和建筑强度(横向和纵向)使用向量类型建筑物信息提取;空间统计计算莫兰的我和基尼指数。变化的估计空间统计数据根据co-relationship或解释集群模式的位置中央商务区(CBD)以及区域公共汽车交通基础设施(路线和停止)。建筑结构强度是著名的浓度分布在城市。多用途类型建筑结构显示最高的聚类,用更少的离群值老城市的一部分。强度指示极端集群内高度加强建筑活动附近的CBD区域。集群水平低强度表示发展郊区地区。住宅内强烈集群网格细胞部门以及水平发展类不通公共汽车交通在吗定义排水区,而服务部门和垂直发展似乎类型更容易。方法、可视化和统计信息可以帮助使数据驱动规划决策的优势监测城市发展;建模的敏感性和不确定性构建数据集进行进一步保持开放的心态调查。

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