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首页> 外文期刊>Journal of Applied Meteorology and Climatology >MCMC-Based Assessment of the Error Characteristics of a Surface-Based Combined Radar Passive Microwave Cloud Property Retrieval
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MCMC-Based Assessment of the Error Characteristics of a Surface-Based Combined Radar Passive Microwave Cloud Property Retrieval

机译:基于MCMC的基于表面的组合式雷达无源微波云特性检索误差特性评估

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Collocated active and passive remote sensing measurements collected at U.S. Department of Energy Atmospheric Radiation Measurement Program sites enable simultaneous retrieval of cloud and precipitation properties and air motion. Previous studies indicate the parameters of a bimodal cloud particle size distribution can be effectively constrained using a combination of passive microwave radiometer and radar observations; however, aspects of the particle size distribution and particle shape are typically assumed to be known. In addition, many retrievals assume the observation and retrieval error statistics have. Gaussian distributions and use least squares minimization techniques to find a solution. In truth, the retrieval error characteristics are largely unknown. Markov chain Monte Carlo (MCMC) methods can be used to produce a robust estimate of the probability distribution of a retrieved quantity that is nonlinearly related to the measurements and that has non-Gaussian error statistics. In this work, an MCMC algorithm is used to explore the error characteristics of cloud property retrievals from surface-based W-band radar and low-frequency microwave radiometer observations for a case of orographic snowfall. In this particular case, it is found that a combination of passive microwave radiometer measurements with radar reflectivity and Doppler velocity is sufficient to constrain the liquid and ice particle size distributions, but only if the width parameter of the assumed gamma particle size distribution and mass dimensional relationships are specified. If the width parameter and mass dimensional relationships are allowed to vary realistically, a unique retrieval of the liquid and ice particle size distribution for this orographic snowfall case is rendered far more problematic
机译:在美国能源部大气辐射测量计划站点收集的主动和被动遥感测量并置,可以同时检索云和降水性质以及空气运动。先前的研究表明,结合使用无源微波辐射计和雷达观测,可以有效地约束双峰云粒径分布的参数;然而,通常假定粒径分布和颗粒形状的方面是已知的。另外,许多检索都假定具有观察和检索错误统计信息。高斯分布并使用最小二乘最小化技术找到解决方案。实际上,检索错误的特性在很大程度上是未知的。马尔可夫链蒙特卡罗(MCMC)方法可用于生成与测量值非线性相关且具有非高斯误差统计信息的取回数量概率分布的可靠估计。在这项工作中,MCMC算法用于探索地形降雪情况下从基于地面的W波段雷达和低频微波辐射计观测中获取云属性的误差特征。在这种特殊情况下,发现无源微波辐射计测量与雷达反射率和多普勒速度的组合足以约束液体和冰的粒度分布,但前提是假定的伽马粒度分布的宽度参数和质量尺寸关系被指定。如果允许宽度参数和质量尺寸关系实际变化,那么对于这种降雪情况来说,唯一获取液体和冰粒大小分布的问题将变得更加棘手。

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