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Impact of MSMR data on NCMRWF Global Data Assimilation System

机译:MSMR数据对NCMRWF全球数据同化系统的影响

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It is very essential to make use of non-conventional remotely sensed data mainly from various satellites for numerical weather prediction. IRS series of Indian satellites have been found very useful for various types of studies. Recently IRS-P4 wassuccessfully launched and its Multifrequency Scanning Microwave Radiometer (MSMR) sensor is giving near surface wind speed and total precipitable water content over oceanic region. An attempt has been made to assimilate directly these two geophysical parameters derived at 150km resolution, along with other global meteorological data, in the National Center for Medium Range Weather Forecasting (NCMRWF), New Delhi Global Data Assimilation System. (GDAS). The paper describes the development work done in utilizing the surface wind speed and the total precipitable water content data in the NCMRWF operational GDAS. The basic algorithms for assimilating the MSMR data directly in the global analysis scheme have been described. The analyzed fields produced after running the six hourly GDAS cycle have been examined and various aspects of the impact of this data set on the global analysis especially for Indian oceanic region have been evaluated. Other aspects like, penalty contributions, root mean square (rms) errors of various types of data both with respect to the analysis and the background field, etc. have been examined. The impact of additional IRS-P4 data on assimilation and model simulation is found to be positive and beneficial.
机译:利用主要来自各种卫星的非常规遥感数据进行数值天气预报非常重要。已发现IRS系列印度卫星对各种类型的研究非常有用。最近,IRS-P4成功发射,其多频扫描微波辐射计(MSMR)传感器正在提供近地表风速和整个海洋区域的总可沉淀水含量。在新德里全球数据同化系统国家中距离天气预报中心(NCMRWF)中,已尝试直接同化以150 km分辨率导出的这两个地球物理参数以及其他全球气象数据。 (GDAS)。本文介绍了在NCMRWF运行的GDAS中利用地表风速和总可降水量数据进行的开发工作。已经描述了在全局分析方案中直接吸收MSMR数据的基本算法。在运行了六个小时的GDAS周期后,已经检查了产生的分析场,并评估了该数据集对全球分析的影响的各个方面,尤其是对印度洋区域。已经检查了其他方面,例如惩罚贡献,关于分析和背景场的各种类型数据的均方根(rms)误差等。发现其他IRS-P4数据对同化和模型仿真的影响是积极的,也是有益的。

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