基于多算法和多尺度图像的城市热环境评价

L. Pei, Du Peijun, Cao Wen, Xia Junshi
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引用次数: 2

摘要

城市热岛遥感过去通常分别采用土地利用与土地覆盖(LULC)、归一化植被指数(NDVI)、归一化建筑指数(NDBI)和植被-不透水面(ISA)-土壤(V-I-S)模型。从整体上考察地表热格局与土地覆被类型、NDVI和VIS模式之间的关系。利用2种不同比例尺的遥感影像,采用3种不同算法得到地表温度,并采用SVM分类方法得到土地覆盖变化图。结果表明,采用改进的MWA算法从Landsat ETM+影像中提取地表温度更适合于分析徐州市城市结构与城市热岛的关系。通过分析地表温度与土地覆被类型的关系,也表明SVM分类结果与VIS具有较好的一致性。UHIs与各指标的相关性分析表明,在不同城市结构的不同区域,UHIs与各指标的相关性略有变化。热岛的特殊分布表明,建筑面积、裸地、半裸地和开发中土地的温度高于其他地表类型,而UHIs的较高温度与某些土地覆盖类型有关,且呈分散分布。通过对NDVI、NDBI和LST的整合分析,证实了LST与NDBI存在强正相关关系,LST与NDVI存在负相关关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of urban heat environment using multi-algorithm and multi-scale images
Remote sensing of Urban Heat Islands (UHIs) usually used Land Use and Land Cover (LULC), Normalized Difference Vegetation Index (NDVI), normalized difference built-up index (NDBI) and Vegetation-Impervious Surface Area (ISA)-Soil (V-I-S) model separately in the past. The purpose of this paper is to examine the relationship between surface thermal patterns with land cover types, NDVI and VIS model as a whole. LST was derived using three different algorithms from remotely sensed images at two different scales and LUCC map was obtained by SVM classification method. The results demonstrate that LST retrieval from Landsat ETM+ image by improved MWA algorithm is more suitable for analyzing relationship between urban structures with urban heat islands in Xuzhou. By analyzing the relationship between LST and land cover type, it also indicated that SVM classified result and VIS have a good uniformity. The analytical correlation between UHIs and different indices indicated that correlation between indices with UHIs change slightly among the different fraction in different city structures. The special distribution of heat island shows that building area, bare land, semi-bare land and land under development are warmer than other surface type, and higher temperature in the UHIs was related to certain land cover types and distributed with a scattered pattern. By making an integration analysis of NDVI, NDBI and LST, it was confirmed that strong positive correlations between LST and NDBI existed, as with negative correlations between LST and NDVI.
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