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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ASSESSING THE MICRO-SCALE TEMPERATURE-HUMIDITY INDEX (THI) ESTIMATED FROM UNMANNED AERIAL SYSTEMS AND SATELLITE DATA
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ASSESSING THE MICRO-SCALE TEMPERATURE-HUMIDITY INDEX (THI) ESTIMATED FROM UNMANNED AERIAL SYSTEMS AND SATELLITE DATA

机译:评估从无人机的空中系统和卫星数据估计的微尺度温度湿度指数(THI)

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Direct heat and moisture conditions can lead to discomfort for humans and animals and can decrease health performance. The discomfort index or temperature-humidity index (THI) represents an important indicator that measures the heat sensed by humans for different climate conditions. In extreme situations, heatstroke may occur, which in unfortunate cases will lead to death. Many research studies have been conducted on the urban heat island (UHI) phenomenon, although a majority of such work focuses on regional-scale analyses and emphasizes the thermal trend through larger administrative units. Fewer micro-scale analyses have been performed at the local scale to detect the potential area for increased THI within a city. This work seeks to estimate the THI at the micro-scale level by utilizing the thermal camera on-board of unmanned aerial systems (UASs). Thermal information of the surface and visual images are collected by the UAS, while a thermohygrometer is used to collect the air temperature and the relative humidity at the ground surface for ground truth information. Solar radiation and wind exposure modeled from digital surface model (DSM) and normalized difference vegetation index (NDVI) data are used as explanatory variables, and a random forest machine learning method is implemented to model the spatial distribution of the THI. The results and discussion will provide future possibilities for micro-scale analyses of the UHI.
机译:直接热和水分条件可导致人类和动物的不适,可以减少健康的表现。不适指数或温度湿度指数(THI)代表了一种测量人类感受到不同气候条件的热量的重要指标。在极端情况下,可能会发生中暑,这在不幸的情况下会导致死亡。在城市热岛(UHI)现象上进行了许多研究研究,尽管大多数此类工作侧重于区域规模分析,并通过较大的行政单位强调热趋势。在本地规模上进行了较少的微观分析,以检测城市内增加THI的潜在区域。这项工作旨在通过利用无人驾驶空中系统(UASS)的热相机来估计微尺度水平的THI。表面和视觉图像的热信息由UA收集,而热敏度用于收集地面上的空气温度和地面表面的相对湿度。从数字表面模型(DSM)和归一化差异植被指数(NDVI)数据建模的太阳辐射和风曝光用作解释变量,并且实现了随机林机器学习方法来模拟THI的空间分布。结果和讨论将为UHI的微观分析提供未来的可能性。

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