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Modeling outdoor thermal comfort using satellite imagery: A principle component analysis-based approach

机译:使用卫星图像建模室外热舒适性:基于原理分析的方法

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A harmful effect of anthropogenic activities in urban environments is the increases of thermal discomfort and subsequently, a negative effect on humans' mental and physical performance. Therefore, it is of high importance to detect, monitor, and predict thermal discomfort, especially its temporal and spatial patterns in cities. The objective of this study is to propose a new method for modeling outdoor thermal comfort based on remote sensing and climatic datasets. To do so, several datasets were utilized, including those from Landsat, Moderate Resolution Imaging Spectroradiometer (MODIS), Digital Elevation Model (DEM) from Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), and climatic datasets from local meteorological stations. The method was experimented in the city of Tehran, Iran. For modeling outdoor thermal comfort, the Least Squares Adjustment (LSA) model was presented based on the Principle Component Analysis (PCA). In this model, the Principle Components (PCs) of the environmental and surface biophysical parameters were considered as independent variables and Discomfort Index (DI) as dependent variable. Finally, by determining the optimal values of the adjustment coefficients for each independent variable, maps of outdoor thermal comfort at different timestamps were produced and analyzed. The results of the modeling showed that correlation coefficient and Root Mean Square Error (RMSE) between the modeled and observed outdoor thermal comfort values at the meteorological stations for the training data sets were 0.86 and 1.80, for the testing data set were 0.89 and 2.04, respectively, while it was 0.85 and 1.15 for the self-deployed devices. The average values of DI in warm season of year was 8.5 degrees C higher than the cold season of the year. Further, in both warm and cold seasons of year the mean value of DI for bare land was found higher than other land covers, whereas that of water bodies lower than others. Our findings suggest that efficiency can be achieved for modeling outdoor thermal comfort using LSA with remote sensing and climatic datasets.
机译:人为在城市环境中的有害效果是热不适的增加,随后对人类的心理和身体表现产生负面影响。因此,检测,监测和预测热不适,特别是其城市中的时间和空间模式具有很高的重要性。本研究的目的是提出一种基于遥感和气候数据集的户外热舒适建模的新方法。为此,利用了几个数据集,包括来自Landsat,中等分辨率成像光谱仪(MODIS),数字高度型号(DEM)的高级星载热发射和反射辐射计(Aster)以及来自当地气象站的气候数据集。该方法在伊朗市德黑兰市进行了实验。为了建模室外热舒适性,基于原理分量分析(PCA)提出了最小二乘调整(LSA)模型。在该模型中,将环境和表面生物物理参数的原理组分(PC)被认为是独立变量和不适指数(DI)作为受抚养变量。最后,通过确定每个独立变量的调整系数的最佳值,产生并分析不同时间戳的室外热舒适度的图。建模结果表明,训练数据集的气象站的模型和观察室外热舒适值之间的相关系数和均方误差(RMSE)为0.86和1.80,用于测试数据集是0.89和2.04,分别为自部署设备为0.85和1.15。比一年中温暖季节的DI的平均值高于今年寒冷季节的8.5摄氏度。此外,在一年中的温暖和冷的季节,裸地的平均值被发现比其他土地覆盖物更高,而水体的低于其他土地。我们的研究结果表明,可以实现使用LSA与遥感和气候数据集建模户外热舒适度的效率。

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