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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Land surface temperature variation and major factors in Beijing, China. (Special Issue: 2008 Resource Directory)
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Land surface temperature variation and major factors in Beijing, China. (Special Issue: 2008 Resource Directory)

机译:中国北京的地表温度变化和主要因素。 (特刊:2008资源目录)

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Land surface temperature (LST) is a significant parameter in urban environmental analysis. Current research mainly focuses on the impact of land-use and land-cover (LULC) on LST. Seldom has research examined LST variations based on the integration of biophysical and demographic variables, especially for a rapidly developing city such as Beijing, China. This study combines the techniques of remote sensing and geographic information system (GIS) to detect the spatial variation of LST and determine its quantitative relationship with several biophysical and demographic variables based on statistical modeling for the central area of Beijing. LST and LULC data were retrieved from a Landsat Thematic Mapper (TM) image. Building heights were delimited from the shadows identified on a panchromatic SPOT image. The integration of LULC and census data was further applied to retrieve grid-based population density. Results indicate that the LST pattern was non-symmetrical and non-concentric with high temperature zones clustered towards the south of the central axis and within the fourth ring road. The percentage of forest, farmland, and water per grid cell were found to be most significant factors, which can explain 71.3 percent of LST variance. Principal component regression analysis shows that LST was positively correlated with the percentage of low density built-up, high density built-up, extremely-high buildings, low buildings per grid cell, and population density, but was negatively correlated with the percentage of forest, farmland, and water bodies per grid cell. The findings of this study can be applied as the theoretical basis for improving urban planning for mitigating the effects of urban heat islands.
机译:地表温度(LST)是城市环境分析中的重要参数。当前的研究主要集中在土地利用和土地覆盖(LULC)对LST的影响上。很少有研究基于生物物理和人口统计变量的整合来研究LST的变化,特别是对于中国北京等快速发展的城市。这项研究结合了遥感和地理信息系统(GIS)的技术,以检测LST的空间变化,并基于北京中心地区的统计模型确定其与几个生物物理和人口统计学变量的定量关系。 LST和LULC数据是从Landsat Thematic Mapper(TM)图像检索得到的。建筑物的高度与全色SPOT图像上标识的阴影区分开来。 LULC和人口普查数据的集成被进一步应用于检索基于网格的人口密度。结果表明,LST模式是非对称和非同心的,高温区域聚集在中心轴的南部和第四环路内。发现每个网格单元的森林,农田和水的百分比是最重要的因素,这可以解释LST方差的71.3%。主成分回归分析表明,LST与低密度建筑,高密度建筑,极高建筑物,每个网格单元低建筑物和人口密度的百分比呈正相关,而与森林百分比呈负相关,农田和每个网格单元的水体。这项研究的结果可以作为改善城市规划以减轻城市热岛效应的理论基础。

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