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A Coupled Data Assimilation Framework utilizing multifrequency passive microwave remote sensing in retrieval of land surface variables and integrated atmospheric variables: development and application over the Tibetan Plateau

机译:利用多频无源微波遥感耦合数据同化框架检索地表变量和大气综合变量:青藏高原的开发与应用

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摘要

Retrieval of land surface variables and atmospheric variables over land from passive microwave remote-sensing data sets has been a challenge for many years. A lot of progress has been made in these quests such as using cloud-resolving models and data assimilation. Data assimilation allows the integration of observations (including observation errors) into imperfect models, thereby yielding more improved model forecasts. In this work, a coupled data assimilation framework (CDAF) is proposed and applied to predict the evolution of land surface and atmospheric conditions. CDAF comprises a coupling of two data assimilation schemes, namely a land data assimilation scheme (LDAS) and an ice microphysics data assimilation scheme (IMDAS). This system has been developed and evaluated using data for the Tibetan Plateau. In this framework, both low-frequency and high-frequency passive microwave brightness temperatures (T_Bs) are assimilated. Low-frequency T_Bs are assimilated in the LDAS subsystem and used to obtain land surface conditions, which are subsequently used as improved initial conditions together with high-frequency T_Bs and assimilated in the IMDAS subsystem to obtain atmospheric conditions. The retrieved land surface variables and integrated atmospheric variables are demonstrated to show good agreement with observed land and atmosphere conditions such as those derived from point measurements of temperature and soil moisture (using the Soil Moisture and Temperature Measurement System (SMTMS)), sonde, Advanced Infrared Sounder (AIRS) and Global Precipitation Climatology Project (GPCP) products. The distribution of integrated cloud liquid water and cloud ice is shown to follow the observed cloud distribution over the study area. It is shown that by using IMDAS with modifications to account for precipitation and a good description of land surface emission, it is possible to obtain precipitation information of high fidelity over the land surface. Retrieved integrated water vapour using IMDAS shows correspondence with 'corrected' AIRS total precipitable water product. It is also shown that the relative humidity profile obtained from IMDAS agrees with the corresponding sonde profile. From the simulations, it is clear that by using the CDAF, there is marked improvement in the forecast conditions compared with the non-assimilation scenario for all of the variables considered. Comparisons with observed land surface conditions and inferences of atmosphere state from the Geostationally Operational Environmental Satellite Series 9 (GOES-9) InfraRed Channel 1 (IR1) brightness temperatures and the GCPC's cumulative daily precipitation indicate that the CDAF is able to generate reliable forecasts that agree with observation-derived products.
机译:多年来,从被动微波遥感数据集中检索陆地表面的地表变量和大气变量一直是一个挑战。在这些探索中已经取得了许多进展,例如使用云解析模型和数据同化。数据同化允许将观测值(包括观测误差)整合到不完善的模型中,从而产生更完善的模型预测。在这项工作中,提出了一个耦合数据同化框架(CDAF)并将其用于预测陆地表面和大气条件的演变。 CDAF包括两个数据同化方案的耦合,即陆地数据同化方案(LDAS)和冰微物理数据同化方案(IMDAS)。该系统是根据青藏高原的数据开发和评估的。在此框架中,低频和高频无源微波亮度温度(T_Bs)均被吸收。低频T_B在LDAS子系统中被吸收并用于获得地面条件,随后将其与高频T_B一起用作改进的初始条件,并在IMDAS子系统中被吸收以获得大气条件。经证明,所获得的陆地表面变量和大气综合变量与观测到的陆地和大气条件显示出良好的一致性,例如从温度和土壤湿度的点测量(使用土壤水分和温度测量系统(SMTMS))得出的那些,探空仪,高级红外测深仪(AIRS)和全球降水气候学项目(GPCP)产品。研究表明,整合的云状液态水和云冰的分布遵循研究区域内观测到的云状分布。结果表明,通过使用IMDAS进行了修改以解决降水问题并很好地描述了地表排放,可以获取整个地表高保真度的降水信息。使用IMDAS检索的综合水蒸气显示与“校正”的AIRS总可沉淀水产品相对应。还显示从IMDAS获得的相对湿度曲线与相应的探空仪曲线一致。从模拟中可以很明显地看出,通过使用CDAF,对于所有考虑的变量,与非同化方案相比,预测条件有了显着改善。与对地静止作战环境卫星系列9(GOES-9)红外通道1(IR1)的亮度温度和GCPC的每日累积降水量所观察到的地面状况和大气状态推断的比较表明,CDAF能够生成可靠的预报,这些预报符合与观察所得的产品。

著录项

  • 来源
    《International journal of remote sensing》 |2012年第24期|7774-7805|共32页
  • 作者单位

    Department of Geomatic Engineering and Geospatial Information Science, Kimathi University College of Technology, Nyeri, Kenya;

    Department of Civil Engineering, River and Environmental Engineering Laboratory, The University of Tokyo, Tokyo 113-8656, Japan;

    Department of Geomatic Engineering and Geospatial Information Science, Kimathi University College of Technology, Nyeri, Kenya;

    Department of Civil Engineering, River and Environmental Engineering Laboratory, The University of Tokyo, Tokyo 113-8656, Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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