Norris Peter M, da Silva Arlindo M
Goddard Earth Sciences Technology and Research, University Space Research Association, Columbia, MD, USA.
Global Modeling and Assimilation Office, NASA Goddard Space Flight Center, Greenbelt, MD, USA.
Q J R Meteorol Soc. 2016 Jul;142(699):2505-2527. doi: 10.1002/qj.2843. Epub 2016 May 31.
A method is presented to constrain a statistical model of sub-gridcolumn moisture variability using high-resolution satellite cloud data. The method can be used for large-scale model parameter estimation or cloud data assimilation. The gridcolumn model includes assumed probability density function (PDF) intra-layer horizontal variability and a copula-based inter-layer correlation model. The observables used in the current study are Moderate Resolution Imaging Spectroradiometer (MODIS) cloud-top pressure, brightness temperature and cloud optical thickness, but the method should be extensible to direct cloudy radiance assimilation for a small number of channels. The algorithm is a form of Bayesian inference with a Markov chain Monte Carlo (MCMC) approach to characterizing the posterior distribution. This approach is especially useful in cases where the background state is clear but cloudy observations exist. In traditional linearized data assimilation methods, a subsaturated background cannot produce clouds via any infinitesimal equilibrium perturbation, but the Monte Carlo approach is not gradient-based and allows jumps into regions of non-zero cloud probability. The current study uses a skewed-triangle distribution for layer moisture. The article also includes a discussion of the Metropolis and multiple-try Metropolis versions of MCMC.
本文提出了一种利用高分辨率卫星云数据来约束亚网格柱湿度变率统计模型的方法。该方法可用于大规模模型参数估计或云数据同化。网格柱模型包括假定的概率密度函数(PDF)层内水平变率和基于copula的层间相关模型。本研究中使用的观测数据是中分辨率成像光谱仪(MODIS)的云顶气压、亮温和云光学厚度,但该方法应可扩展到对少数通道进行直接多云辐射同化。该算法是一种采用马尔可夫链蒙特卡罗(MCMC)方法来表征后验分布的贝叶斯推理形式。这种方法在背景状态清晰但存在多云观测的情况下特别有用。在传统的线性化数据同化方法中,不饱和背景无法通过任何无穷小的平衡扰动产生云,但蒙特卡罗方法不是基于梯度的,并且允许跳入非零云概率区域。本研究对层湿度使用了斜三角形分布。文章还讨论了MCMC的Metropolis版本和多重尝试Metropolis版本。