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Modeling urban growth and spatial structure in Nanjing, China with GIS and remote sensing.

机译:使用GIS和遥感对中国南京的城市增长和空间结构进行建模。

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摘要

This research focuses on the use of GIS, remote sensing and spatial modeling for studies on urban growth and spatial structure. Previous studies on urban growth modeling have not elaborated the spatial heterogeneity of urban growth pattern, which, however, is well recognized. The census population data is widely used for investigating urban spatial structure, but it has inherent various problems which can lead to biased analysis results. Studies on urban growth and spatial structure of Chinese cities remain limited due to the data availability and methodology development. In this dissertation, I initiate a new analysis framework and a new method to address these critical issues through a case study of Nanjing, China.; The study first set up urban land expansion models for Nanjing in the period of 1988-2000. Landsat imageries are processed and classified to provide land use data in 1988 and 2000. GIS data are used to provide spatial variables inputs for the land use conversion models. A combined land use data sampling is conducted to obtain land use sample points for the proposed models. Classic logistic regression is used to reveal the urban land expansion from a global view. Furthermore, a logistic geographically weighted regression (GWR) model is set up to reveal the local variations of influence of spatial factors on urban land expansion. The study finds that the logistic GWR significantly improved the global logistic regression model and verifies that the influences of explanatory variables of urban growth are spatially varying. An urban growth probability surface is then generated based on the variable and parameter surfaces. This new framework for analyzing urban growth pattern may open a new direction for urban growth modeling.; Second, the dissertation develops a new method, which utilizes detailed urban land parcel and building data to generate population surface of Nanjing in 2000. With this method, populations of small areas at intraurban level can be estimated much more accurately, and moreover, the generation is not constrained to any pre-defined resolution of raster land use data, thus different cell size can be chosen with changing scale and research contexts. The case study finds that despite suburbanization, Nanjing remains a compact city, and population density declines quickly with the increase of distance from the central business district (CBD). Based on the generated population surface, the dissertation also uses exploratory spatial data analysis to investigate spatial associations between non-residential land uses and population density. It finds that population suburbanization in Nanjing has been limited to the inner suburb area where population is densely distributed without substantial commercial and office land development and that commercial activities influence population distribution and suburbanization more significantly than industrial suburbanization.; This dissertation concludes with several suggestions on future research foci.
机译:这项研究的重点是利用GIS,遥感技术和空间模型来研究城市增长和空间结构。先前有关城市增长模型的研究并未阐述城市增长模式的空间异质性,但是,这一点已广为人知。人口普查数据被广泛用于调查城市空间结构,但它固有的各种问题可能导致分析结果出现偏差。由于数据的可获得性和方法的发展,对中国城市的城市增长和空间结构的研究仍然很有限。本文以南京为例,提出了一个新的分析框架和新方法来解决这些关键问题。该研究首先在1988-2000年建立了南京市的城市土地扩展模型。 Landsat影像经过处理和分类以提供1988和2000年的土地利用数据。GIS数据用于为土地利用转换模型提供空间变量输入。进行了土地利用数据的联合采样,以获取拟议模型的土地利用采样点。使用经典逻辑回归从全球视角揭示城市土地扩张。此外,建立了逻辑地理加权回归(GWR)模型以揭示空间因素对城市土地扩张影响的局部变化。研究发现,逻辑GWR显着改善了全球逻辑回归模型,并验证了城市增长的解释变量的影响在空间上是变化的。然后根据变量和参数表面生成城市增长概率表面。这种分析城市增长模式的新框架可能会为城市增长建模开辟新的方向。其次,本文提出了一种新方法,该方法利用详细的城市地块和建筑数据生成南京市2000年的人口表面。使用这种方法,可以更准确地估算城市内水平的小区域人口,并且可以估算不受任何预先定义的栅格土地使用数据分辨率的限制,因此可以根据不断变化的规模和研究环境选择不同的像元大小。案例研究发现,尽管郊区化,南京仍然是一个紧凑的城市,人口密度随着与中央商务区(CBD)距离的增加而迅速下降。基于生成的人口表面,本文还利用探索性的空间数据分析来研究非住宅土地利用与人口密度之间的空间联系。研究发现,南京的人口郊区化仅限于人口密集而没有大量商业和办公用地开发的内郊地区,与工业郊区化相比,商业活动对人口分布和郊区化的影响更大。本文最后对未来的研究重点提出了一些建议。

著录项

  • 作者

    Luo, Jun.;

  • 作者单位

    The University of Wisconsin - Milwaukee.;

  • 授予单位 The University of Wisconsin - Milwaukee.;
  • 学科 Geography.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 127 p.
  • 总页数 127
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然地理学;遥感技术;
  • 关键词

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