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Analysis of urban heat islands by using multi-sensor and multi-temporal remote sensing images.

机译:使用多传感器和多时间遥感影像分析城市热岛。

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摘要

This doctoral dissertation research has developed models to facilitate in characterization, analysis and monitoring of urban heat islands (UHI). Over the past few years there has been evidence of mass migration of the population towards urban areas which has led to the increase in the number of mega cities (cities with more than 10 million in population) around the world. According to the UN in 2007 around 60% (from 40% in 2000) of world populations was living in urban areas. This increase in population density in and around cities has lead to several problems related to environment such as air quality, water quality, development of Urban Heat Islands (UHI), etc. The purpose of this doctoral dissertation research was to develop a synergetic merger of remote sensing with advancements in data mining techniques to address modeling and monitoring of UHI in space and in time.;The effect of urban heat islands in space and over time was analyzed within this research using exploratory and quantitative models. Visualization techniques including animation were experimented with developing a mechanism to view and understand the UHI over a city. Association rule mining models were implemented to analyze the relationship between remote sensing images and geographic information system (GIS) data. This model was implemented using three different remote sensing images i.e., Advanced Space borne Thermal Emission and Reflection Radiometer (ASTER), Landsat and Moderate Resolution Imaging Spectroradiometer (MODIS). The effect of the spatial resolution on the model and the phenomenon were analyzed in detail to determine variables which strongly associate with land use land cover (LULC) in space and in time. A non-parametric process convolution model was developed and was used to characterize UHI from MODIS time series images. The resulting characterized images were used to study the relationship between LULC and UHI. The behavior of UHI including its movement and magnitude was analyzed in space and time.;The intellectual merits of these methods are two-fold; first, they will be a forerunner in the development and implementation of association rule mining algorithm within remote sensing image analysis framework. Second, since most of the existing UHI models are parametric in nature; the non-parametric approach is expected to overcome the existing problems within characterization and analysis. Parametric models pose problems (in terms of efficiency, since the implementation of such models are time consuming and need human intervention) while analyzing UHI effect from multiple imageries. These proposed models are expected to aid in effective spatial characterization and facilitate in temporal analysis and monitoring of UHI phenomenon.
机译:这项博士论文研究开发了模型,以有助于表征,分析和监测城市热岛(UHI)。在过去的几年中,有证据表明人口向城市地区大规模迁移,这导致世界上特大城市(人口超过1000万的城市)的数量增加。根据联合国的数据,2007年世界人口的约60%(2000年为40%)生活在城市地区。城市及其周围人口密度的增加导致了一些与环境有关的问题,例如空气质量,水质,城市热岛(UHI)的发展等。本博士论文研究的目的是发展对环境的协同合并。利用数据挖掘技术的进步进行遥感,以解决UHI在空间和时间上的建模和监测问题。在本研究中,使用探索性和定量模型分析了城市热岛在空间和时间上的影响。对包括动画在内的可视化技术进行了试验,以开发一种机制来查看和理解城市上的UHI。实施关联规则挖掘模型以分析遥感图像与地理信息系统(GIS)数据之间的关系。该模型是使用三个不同的遥感图像实现的,即先进的星载热发射和反射辐射计(ASTER),陆地卫星和中分辨率成像光谱仪(MODIS)。详细分析了空间分辨率对模型和现象的影响,以确定与空间和时间上的土地利用土地覆盖率(LULC)密切相关的变量。开发了一个非参数过程卷积模型,并将其用于从MODIS时间序列图像表征UHI。所得的特征图像用于研究LULC和UHI之间的关系。分析了UHI的行为,包括其运动和幅度,在时空上进行了分析。首先,他们将是在遥感图像分析框架内开发和实施关联规则挖掘算法的先驱。其次,由于大多数现有的UHI模型本质上都是参数化的;非参数方法有望克服表征和分析中存在的问题。在分析来自多个图像的UHI效果时,参数模型会带来问题(就效率而言,因为此类模型的实现非常耗时且需要人工干预)。这些提议的模型有望有助于有效的空间表征,并有助于UHI现象的时间分析和监视。

著录项

  • 作者

    Rajasekar, Umamaheshwaran.;

  • 作者单位

    Indiana State University.;

  • 授予单位 Indiana State University.;
  • 学科 Climate Change.;Remote Sensing.;Environmental Sciences.;Urban and Regional Planning.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 277 p.
  • 总页数 277
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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