论文标题
Surfex的Scatsar-Swi同化:奥地利当地观察错误的影响
Assimilation of the SCATSAR-SWI with SURFEX: Impact of local observation errors in Austria
论文作者
论文摘要
在不同尺度上正确确定土壤水分对于在各个领域的应用很重要。我们旨在通过吸收多层土壤水分产品scatsar-swi(散射仪合成孔径雷达土壤水指数),以高级土壤水分生产具有高时空和空间分辨率。此外,我们探讨了发现对奥地利数值天气预测(NWP)的影响。数据同化系统由NWP模型AROME和Surfex离线数据同化组成,这些数据提供了大气强迫和土壤水分场作为相互输入。为了解决所采用的简化扩展卡尔曼滤波器对错误规范的已知灵敏度,我们使用Triple Colientation在本地计算了Scatsar-SWI的观察误差方差,并将它们实现为同化系统。对奥地利气象站测量的预测2 m温度和相对湿度的验证表明,与标准误差方法相比,局部误差方法对大气预测的实际影响对中性略有积极,具体取决于一年中的时间。针对网格水平的产品的土壤水分分析的直接验证显示,对于小观察误差而言,无偏的根平方误差的降解。
The proper determination of soil moisture on different scales is important for applications in a variety of fields. We aim to develop a high-level soil moisture product with high temporal and spatial resolution by assimilating the multilayer soil moisture product SCATSAR-SWI (Scatterometer Synthetic Aperture Radar Soil Water Index) into the surface model SURFEX. In addition, we probe the impact of the findings on the Numerical Weather Prediction (NWP) in Austria. The data assimilation system consists of the NWP model AROME and the SURFEX Offline Data Assimilation, which provide atmospheric forcing and soil moisture fields as mutual input. To address the known sensitivity of the employed simplified Extended Kalman Filter to the specification of errors, we compute the observation error variances of the SCATSAR-SWI locally using Triple Collocation Analysis and implement them into the assimilation system. The verification of the forecasted 2 m temperature and relative humidity against measurements of Austrian weather stations shows that the actual impact of the local error approach on the atmospheric forecast is slightly positive to neutral compared to the standard error approach, depending on the time of the year. The direct verification of the soil moisture analysis against a gridded water balance product reveals a degradation of the unbiased root mean square error for small observation errors.