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Evaluating Four Remote Sensing Methods for Estimating Surface Air Temperature on a Regional Scale

机译:评估四种遥感方法,用于估算区域范围的表面空气温度

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Surface air temperature is a basic meteorological variable to monitor the environment and assess climate change. Four remote sensing methods-the temperature-vegetation index (TVX), the univariate linear regression method, the multivariate linear regression method, and the advection-energy balance for surface air temperature (ADEBAT)-have been developed to acquire surface air temperature on a regional scale. To evaluate their utilities, they were applied to estimate the surface air temperature in northwestern China and were compared with each other through regressive analyses, t tests, estimation errors, and analyses on estimations of different underlying surfaces. Results can be summarized into three aspects: 1) The regressive analyses and t tests indicate that the multivariate linear regression method and the ADEBAT provide better accuracy than the other two methods. 2) Frequency histograms on estimation errors show that the multivariate linear regression method produces the minimum error range, and the univariate linear regression method produces the maximum error range. Errors of the multivariate linear regression method exhibit a nearly normal distribution and that of the ADEBAT exhibit a bimodal distribution, whereas the other two methods display negative skewness distributions. 3) Estimates on different underlying surfaces show that the TVX and the univariate linear regression method are significantly limited in regions with sparse vegetation cover. The multivariate linear regression method has estimation errors within 1 degrees C and without high levels of errors, and the ADEBAT also produces high estimation errors on bare ground.
机译:表面空气温度是一种碱性气象变量,以监测环境并评估气候变化。四种遥感方法 - 温度 - 植被指数(TVX),单变量线性回归方法,多变量线性回归方法,以及表面空气温度(ADEBAT)的平流 - 能量平衡 - 研磨机以获取表面空气温度区域规模。为了评估他们的公用事业,他们被应用于估计了中国西北部的表面空气温度,并通过回归分析,T试验,估计误差和分析了不同底层表面的估计来相互比较。结果可以概括为三个方面:1)回归分析和T测试表明多变量线性回归方法和Adebat提供比其他两种方法更好的精度。 2)估计误差上的频率直方图表明,多变量线性回归方法产生最小误差范围,并且单变量线性回归方法产生最大误差范围。多变量线性回归方法的误差表现出几乎正常的分布,并且Adebat的误差表现出双峰分布,而另外两种方法显示出负偏斜分布。 3)对不同底层表面的估计表明,TVX和单变量线性回归方法在具有稀疏植被覆盖的区域中受到显着限制。多变量线性回归方法在1摄氏度内具有估计误差,并且没有高水平的错误,并且Adebat也在裸机上产生高估计误差。

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