论文标题
深入学习使用卫星地球观测来对表面物理学领域进行质量控制
Deep learning for quality control of surface physiographic fields using satellite Earth observations
论文作者
论文摘要
有目的地构建的深度学习算法用于验证地球系统参数化(VESPER),以评估欧洲中期天气预测(ECMWF)综合预测系统(IFS)的质量的全球生理数据集的最新升级,该数据集用于数字天气预测和Climate predictict repictict repictict repations re eation。对神经网络回归模型进行了训练,以了解表面生理数据集以及ERA5的气象与MODIS卫星皮肤温度观察之间的映射。经过培训后,该工具将用于快速评估土地表面方案的升级质量。提高机器学习工具预测准确性的升级表明,在表面参数构度方案输入的表面场中的误差减少了。相反,表面场的不正确规格降低了Vesper可以做出预测的准确性。我们使用Vesper来评估永久湖泊和冰川最近升级的准确性,并计划升级以代表季节性变化的水体(即短暂的湖泊)。我们表明,对于已更新湖面的网格单元,陆地表面温度的预测准确性(即更新和原始生理数据集和原始生理数据集之间的绝对误差差异)平均提高了0.37 k,而对于湖泊的进步(或vice vicea)的范围为0.83 k,而湖泊的进步也有所提高。 K.我们强调了诸如Vesper之类的神经网络如何帮助表面参数化及其输入物理学的研究和开发,以更好地代表天气和气候模型中地球表面夫妇的过程。
A purposely built deep learning algorithm for the Verification of Earth-System ParametERisation (VESPER) is used to assess recent upgrades of the global physiographic datasets underpinning the quality of the Integrated Forecasting System (IFS) of the European Centre for Medium-Range Weather Forecasts (ECMWF), which is used both in numerical weather prediction and climate reanalyses. A neural network regression model is trained to learn the mapping between the surface physiographic dataset plus the meteorology from ERA5, and the MODIS satellite skin temperature observations. Once trained, this tool is applied to rapidly assess the quality of upgrades of the land-surface scheme. Upgrades which improve the prediction accuracy of the machine learning tool indicate a reduction of the errors in the surface fields used as input to the surface parametrisation schemes. Conversely, incorrect specifications of the surface fields decrease the accuracy with which VESPER can make predictions. We apply VESPER to assess the accuracy of recent upgrades of the permanent lake and glaciers covers as well as planned upgrades to represent seasonally varying water bodies (i.e. ephemeral lakes). We show that for grid-cells where the lake fields have been updated, the prediction accuracy in the land surface temperature (i.e mean absolute error difference between updated and original physiographic datasets) improves by 0.37 K on average, whilst for the subset of points where the lakes have been exchanged for bare ground (or vice versa) the improvement is 0.83 K. We also show that updates to the glacier cover improve the prediction accuracy by 0.22 K. We highlight how neural networks such as VESPER can assist the research and development of surface parameterizations and their input physiography to better represent Earth's surface couples processes in weather and climate models.