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Maximum Nighttime Urban Heat Island (UHI) Intensity Simulation by Integrating Remotely Sensed Data and Meteorological Observations

机译:集成遥感数据和气象观测资料的最大夜间城市热岛(UHI)强度模拟

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Remote sensing of the urban heat island (UHI) effect has been conducted largely through simple correlation and regression between the UHI's spatial variations and surface characteristics. Few studies have examined the surface UHI from a temporal perspective and related it with climatic and meteorological factors. By selecting the city of Beijing, China, as the study area, the purpose of this research was to evaluate the applicability and feasibility of the support vector machine (SVM) technique to model the daily maximum nighttime UHI intensity (MNUHII) based on integration of MODIS land products and meteorological observations. First, a Gaussian surface model was used to calculate the city's MNUHIIs. Then, SVM regression models were developed to predict the MNUHII from the following variables: the normalized difference vegetation index (NDVI), surface albedo, atmospheric aerosol optical depth (AOD), relative humidity (RH), sunshine hour (SH), and precipitation (PREP). Results demonstrate that the accuracy of the SVM regression in predicting the MNUHII was around 0.8$,^{circ}{hbox{C}}$ to 1.3$,^{circ}{hbox{C}}$ ; in addition, the SVM regression outperformed the multiple linear regression and the artificial neural network with backpropagation. A scenario analysis indicates that the relationships between the MNUHII and its influencing factors varied with time and season and were impacted by previous precipitation. The RH and AOD were the most important factors that influenced the MNUHII. In addition, previous precipitation could significantly mitigate the MNUHII. The results suggest that future investigations on the surface UHI effect should consider the climatic and meteorological conditions in addition to the surface characteristics.
机译:城市热岛(UHI)效应的遥感主要是通过UHI空间变化与地表特征之间的简单相关和回归来进行的。很少有研究从时间的角度检查地表UHI并将其与气候和气象因素相关联。通过选择中国北京作为研究区域,本研究的目的是评估基于支持向量机(SVM)技术的模型,该模型可通过综合利用SVM来模拟每日最大夜间UHI强度(MNUHII)。 MODIS土地产品和气象观测。首先,使用高斯表面模型来计算城市的MNUHII。然后,开发了SVM回归模型以从以下变量预测MNUHII:归一化植被指数(NDVI),地表反照率,大气气溶胶光学深度(AOD),相对湿度(RH),日照时间(SH)和降水(PREP)。结果表明,SVM回归预测MNUHII的准确性约为0.8 $,^ {circ} {hbox {C}} $至1.3 $,^ {circ} {hbox {C}} $;此外,SVM回归优于带有反向传播的多元线性回归和人工神经网络。情景分析表明,MNUHII及其影响因素之间的关系随时间和季节而变化,并受先前降水的影响。 RH和AOD是影响MNUHII的最重要因素。此外,先前的降水可能会大大减轻MNUHII。结果表明,未来对地表超高热效应的研究除了地表特征外,还应考虑气候和气象条件。

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