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Towards improved objective analysis of lake surfacewater temperature in a NWP model: preliminaryassessment of statistical properties

机译:在NWP模型中改善湖泊表面 r n水温的客观分析:统计属性的初步 r

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Information about the statistical structure of the lake surface water temperature (LSWT) field is needed for assimilation of lake observations into Numerical Weather Prediction (NWP) models, to describe the lake surface state at each grid-point containing lakes. In this study, we obtain the autocorrelation function for LSWT from two types of observations, in situ and satellite-based. We use summer time measurements during 2010-2014 over selected Fennoscandian lakes and Northern European domain. The estimated autocorrelations decrease exponentially (from 0.99 to 0.73 for in situ and from 0.97 to 0.61 for satellite observations), when the distance between observations increases from zero to one thousand kilometres. A large difference in lake depth leads to a decrease of the correlation. Typical error standard deviation of LSWT observations was found to be 0.9 degrees C for in situ observations and 1.2 degrees C for satellite observations. The exponential approximation for the LSWT autocorrelation functions is proposed, which depends on both the distance and the difference in lake depth. These results are directly applicable for the LSWT objective analysis in NWP. New autocorrelation functions, which allow interpolation of observations within and between lakes, were used in numerical experiments with the High-Resolution Limited Area Model (HIRLAM). In this preliminary assessment, we suggest adaptation of the presently used functions by increasing the influence radius and taking into account the lake depth difference. Generalization of the results to cover the melting and freezing seasons, their assessment for different geographical areas as well as their application to other prognostic lake variables within NWP are foreseen.
机译:为了将湖泊观测值同化为数值天气预报(NWP)模型,需要用到有关湖泊地表水温(LSWT)字段的统计结构的信息,以描述包含湖泊的每个网格点处的湖泊表面状态。在这项研究中,我们从两种类型的观测中获得了LSWT的自相关函数,即原位观测和基于卫星的观测。我们使用2010-2014年期间在部分芬诺斯堪的亚湖泊和北欧地区进行的夏季时间测量。当观测之间的距离从零增加到一千公里时,估计的自相关呈指数下降(原位从0.99减小到0.73,卫星观测从0.97减小到0.61)。湖深的较大差异会导致相关性降低。 LSWT观测的典型误差标准偏差对于原位观测为0.9摄氏度,对于卫星观测为1.2摄氏度。提出了LSWT自相关函数的指数近似,它取决于距离和湖泊深度的差异。这些结果可直接用于NWP中的LSWT客观分析。通过高分辨率有限面积模型(HIRLAM),在数值实验中使用了新的自相关函数,该函数可以对湖泊内部和湖泊之间的观测值进行插值。在此初步评估中,我们建议通过增加影响半径并考虑湖泊深度差异来适应当前使用的功能。预计将对结果进行概括以涵盖融化和冻结季节,对不同地理区域的评估以及将其应用于NWP中其他预后的湖泊变量。

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