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Research on the Contribution of Urban Land Surface Moisture to the Alleviation Effect of Urban Land Surface Heat Based on Landsat 8 Data

机译:基于Landsat 8数据的城市地表水分缓解城市地表热的贡献研究。

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This paper presents a new assessment method for alleviating urban heat island (UHI) effects by using an urban land surface moisture (ULSM) index. With the aid of Landsat 8 OLI/TIRS data, the land surface temperature (LST) was retrieved by a mono-window algorithm, and ULSM was extracted by tasselled cap transformation. Polynomial regression and buffer analysis were used to analyze the effects of ULSM on the LST, and the alleviation effect of ULSM was compared with three vegetation indices, GVI, SAVI, and FVC, by using the methods of grey relational analysis and Taylor skill calculation. The results indicate that when the ULSM value is greater than the value of an extreme point, the LST declines with the increasing ULSM value. Areas with a high ULSM value have an obvious reducing effect on the temperature of their surrounding areas within 150 m. Grey relational degrees and Taylor skill scores between ULSM and the LST are 0.8765 and 0.9378, respectively, which are higher than the results for the three vegetation indices GVI, SAVI, and FVC. The reducing effect of the ULSM index on environmental temperatures is significant, and ULSM can be considered to be a new and more effective index to estimate UHI alleviation effects for urban areas.
机译:本文提出了一种新的评估方法,可通过使用城市土地表面水分(ULSM)指数来缓解城市热岛效应(UHI)。借助Landsat 8 OLI / TIRS数据,通过单窗口算法检索地表温度(LST),并通过tasselled cap变换提取ULSM。利用多项式回归和缓冲分析法分析了ULSM对LST的影响,并通过灰色关联分析和泰勒技能计算的方法,将ULSM的缓解效果与三种植被指数GVI,SAVI和FVC进行了比较。结果表明,当ULSM值大于极限值时,LST随着ULSM值的增加而下降。 ULSM值高的区域对其周围150 m之内的温度具有明显的降低作用。 ULSM和LST之间的灰色关联度和泰勒技能得分分别为0.8765和0.9378,高于三个植被指数GVI,SAVI和FVC的结果。 ULSM指数对环境温度的降低作用是显着的,并且ULSM可以被认为是一种新的,更有效的指数,可以估算城市地区的UHI缓解效应。

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