首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >QUANTITATIVE REMOTE SENSING ANALYSIS OF THERMAL ENVIRONMENT CHANGES IN THE MAIN URBAN AREA OF Guilin BASED ON GEE
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QUANTITATIVE REMOTE SENSING ANALYSIS OF THERMAL ENVIRONMENT CHANGES IN THE MAIN URBAN AREA OF Guilin BASED ON GEE

机译:基于GEE的桂林主要城区热环境变化的定量遥感分析

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The dynamic change of urban thermal environment caused by the change of land use type has become one of the important problems of urban ecological environment protection. In Guilin city as research area, based on the Google Earth Engine (GEE), the random forest algorithm was used to classify the land use classification of Landsat remote sensing images in 2010, 2014 and 2018, and the mono-window algorithm was used to calculate the surface temperature. The surface vegetation was solved according to the NDVI pixel binary model. Coverage, and finally dynamic statistics and comparative analysis of land use, vegetation cover and surface temperature. The main results as follows. (1) From 2010 to 2018, the average temperature in the main urban area of Guilin is on the rise (increased by 1.29 °C), and the temperature zones in each class are converted from low temperature zone, lower temperature zone and medium temperature zone to higher temperature zone and high temperature zone. (2) Lower temperature zone and the low temperature zone is mainly distributed in vegetation and water body coverage areas, while the medium temperature zone, higher temperature zone and the high temperature zone are mainly distributed in construction land and unused land cover area. (3) High vegetation cover area in 2014–2018 (reduced by 31.34%) The main reason for the sharp decline is the substantial increase in the area of construction land (expansion 30.19%). (4) GEE-based random forest algorithm Land use classification had higher classification accuracy (more than 80% in all three periods). The results can provide scientific basis for improving urban thermal environment and scientific reference for the development strategy of Guilin city.
机译:土地利用变化引起的城市热环境的动态变化已成为城市生态环境保护的重要问题之一。在桂林市作为研究领域,基于谷歌地球发动机(GEE),随机森林算法用于分类2010年和2018年Landsat遥感图像的土地利用分类,并使用单窗算法计算表面温度。根据NDVI像素二元模型解决了表面植被。覆盖范围,最后的动态统计和土地利用,植被覆盖和表面温度的比较分析。主要结果如下。 (1)从2010年到2018年,桂林主要城区的平均温度正在上升(增加1.29°C),每级温度区从低温区,较低的温度区和中温转换区域到较高温度区和高温区。 (2)较低温度区和低温区主要分布在植被和水体覆盖区域,而中等温度区,高温区和高温区主要分布在建筑用地和未使用的陆地覆盖区域。 (3)2014 - 2018年高植被覆盖面积(减少31.34%)急剧下降的主要原因是建设土地面积大幅增加(扩张30.19%)。 (4)基于GEE的随机林算法土地使用分类较高的分类准确性(三个时期超过80%)。结果可为改善城市热环境以及桂林市发展战略的科学借鉴提供科学依据。

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