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Identification of homogeneous regions of near surface air temperature lapse rates across India

机译:识别印度近地表空气温度失效率的均匀区域

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摘要

Spatial variation of near surface temperature lapse rate is usually analysed by subjectively dividing the study area in to different sub-regions based on political or physiographic boundaries. This can often lead to unreliable results as near surface temperature lapse rate largely depends on regional conditions. In this study, homogeneous regions of near surface air temperature lapse rate across India have been identified for monthly mean minimum, mean, and mean maximum temperature using a probabilistic Gaussian mixture model clustering approach. For the delineated regions, lapse rates are estimated using weighted linear regression model. The weights corresponding to each station were obtained from the clustering approach. Results indicate that regions with uniform lapse rate vary across different months and a minimum of three regions is obtained for maximum temperature in April month. Further, temperature lapse rate estimates exhibit spatial and temporal variability, and are less steep than the Environmental lapse rate (-6.5 degrees C/km). The maximum spatial variability in lapse rate is observed in May for both maximum and minimum temperature. The delineation of entire India into homogeneous regions improves temperature interpolation when compared to results obtained by considering entire India as one region. A maximum improvement of 34% in root mean square error is observed in prediction of monthly mean temperature in March. The identified regions and the associated lapse rates are expected to improve the prediction of near surface temperature at ungauged locations across India.
机译:通常通过基于政治或地理学界限的不同子区域来分析近表面温度渗透率的空间变化。这通常会导致不可靠的结果,因为近表面温度渗透率在很大程度上取决于区域条件。在这项研究中,使用概率高斯混合模型聚类方法的每月平均最小,平均值,平均值,平均值,平均值的近视表面空气温度流失率的均匀区域。对于划定区域,使用加权线性回归模型估计失效率。从聚类方法获得对应于每个站的权重。结果表明,在4月份,最大温度下,具有均匀流失率的区域各不相同,最高温度可获得最高温度。此外,温度流逝速率估计表现出空间和时间变异性,并且陡峭而不是环境渗透率(-6.5摄氏度)。在最大和最小温度下,可以观察到渗透率的最大空间变异性。与通过将整个印度视为一个地区的结果相比,整个印度将整个印度划分为均匀区域的温度插值。在3月份预测月平均温度的预测中观察到均方根误差的最大提高34%。预期所确定的区域和相关的失效率预计将改善印度上未凝固地点的接近表面温度的预测。

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