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Mesoscale assimilation of rain-affected observations

机译:Messcore影响雨水影响的观察

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摘要

Important issues involving the assimilation of rain-affected observations using an adjoint mesoscale modeling system are addressed in this study. The adjoint model of the explicit moist physics parameterization is included in the modeling system, which allows for the calculation of gradients with respect to the initial hydrometeor concentrations (cloud water/ice, rain, snow, and graupel). Cloud-scale idealized four dimensional variational data assimilation experiments demonstrate the benefit of assimilating precipitation information and the ability of the adjoint model to produce useful gradients with respect to the hydrometeor fields. The agreement between model fields and observations is greater (especially for the early forecast hydrometeor fields) when rainy observations are incorporated into the assimilation process versus only assimilating conventional model data (windspeeds, temperature, pressure). Additional data assimilation experiments are conducted with microwave radiances. These data improve the initial precipitation structure of a tropical cyclone. These experiments are promising steps for the incorporation of rain-affected observations in operational data assimilation systems.
机译:在本研究中解决了涉及使用伴随中尺度建模系统同化雨水影响的观测的重要问题。显式湿润物理学参数化的伴随模型包括在建模系统中,其允许相对于初始水流仪浓度(云水/冰,雨,雪和Graupel)计算梯度。云尺度理想化的四维变分数据同化实验证明了同化降水信息的益处和伴随模型相对于水流仪领域产生有用梯度的能力。当雨多次观测纳入同化过程时,模型字段和观察之间的协议更大(特别是对于早期预测水流域),而不是同化常规模型数据(风速,温度,压力)。额外的数据同化实验是用微波辐射进行的。这些数据改善了热带气旋的初始降水结构。这些实验是在运营数据同化系统中纳入雨水影响的观察的有希望的步骤。

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