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Assimilation of multiple data types for improved heat flux prediction: A one-dimensional field study

机译:同化多种数据类型以改善热通量预测:一维现场研究

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Accurate latent (LE) and sensible (H) heat flux partitioning from Land Surface Models (LSMs) is important for numerical weather prediction. Land data assimilation can play a key role in improving heat flux prediction by merging information from a range of remotely sensed products with LSMs. This paper demonstrates this potential for an open grassland site in Australia via one-dimensional experiments spanning a year-long period. With a focus on how a LSM is impacted, in-situ field observations were assimilated. Data types as available from passive microwave and thermal infra-red remote sensors were tested for their impact, with individual and joint assimilation of LE and H, near-surface soil moisture, and skin temperature observations-all on time scales approximating satellite overpass intervals. Assessed against independent data from field observations, the multi-observation approach of joint near-surface soil moisture and skin temperature assimilation made the greatest improvements to LE (expressed as daily evapotranspiration; ET), being slightly better than for joint LE and H assimilation. This result questions the value of using LE and H retrievals from thermal imagery within an assimilation context. Individually, skin temperature assimilation was one of the best performers for soil temperature estimates but with degraded root-zone soil moisture estimates and minimal ET improvements. Likewise, near-surface soil moisture assimilation produced the greatest root-zone soil moisture improvement but with relatively modest ET improvement. Combined near-surface soil moisture and skin temperature assimilation balanced the improvements to both soil moisture and temperature states along with strong improvements to ET estimates, highlighting the benefits of multi-observation assimilation.
机译:陆地表面模型(LSM)的准确潜热(LE)和显热(H)分区对于数值天气预报非常重要。土地数据同化可以通过将来自一系列遥感产品与LSM的信息进行合并,在改善热通量预测中发挥关键作用。本文通过为期一年的一维实验,证明了在澳大利亚开放草地场址上的潜力。着眼于LSM的影响方式,对现场实地观察进行了同化。测试了被动微波和热红外遥感器提供的数据类型的影响,对LE和H进行了个体和联合吸收,近地表土壤水分以及皮肤温度观测,所有这些时间尺度均接近卫星天桥间隔。根据来自野外观测的独立数据进行评估,联合近地表土壤水分和皮肤温度同化的多观测方法对LE的改善最大(表示为日蒸散量; ET),比联合LE和H联合略好。这个结果质疑了在同化背景下使用热成像的LE和H检索的价值。单独地,皮肤温度同化是评估土壤温度的最佳方法之一,但根区土壤水分的估算值却降低了,而ET改善却很小。同样,近地表土壤水分吸收对根区土壤水分的改善最大,但对ET的改善相对适度。近地表土壤水分和皮肤温度同化相结合,平衡了土壤水分和温度状态的改善以及ET估计值的显着改善,突出了多观测同化的好处。

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