18th Conference on Weather Analysis and Forecasting and the 14th Conference on Numerical Weather Prediction

P1.4

Moisture analysis in the DAO physical-space/finite-volume data assimilation system

Dick P. Dee, NASA/GSFC, Greenbelt, MD; and A. M. da Silva

The Physical-space/Finite-volume Data Assimilation System (fvDAS) is the next generation global atmospheric data assimilation system in development at the Data Assimilation Office at NASA's Goddard Space Flight Center. It is based on a new finite-volume general circulation model jointly developed by NASA and NCAR, and on the Physical-Space Statistical Analysis System (PSAS) developed at the DAO. One of the innovative features of the fvDAS concerns the analysis of atmospheric moisture.

Model-based assimilation of atmospheric moisture observations is complicated by the lack of meaningful error statistics, both for the data themselves and for the background estimates provided by the model. Part of the problem is the high variability, in time and space, of actual moisture fields in the atmosphere. Since data assimilation methods essentially produce spatially smoothed averages of observations and background, it is crucial that the variable chosen to represent moisture lends itself well to averaging. This is not the case, for example, for variables that have traditionally been used for moisture analysis, including atmospheric water vapor mixing ratio and the logarithm of specific humidity.

Based on a statistical analysis of observed-minus-forecast residuals collected in different regions and different seasons, we show that a more suitable analysis variable is obtained by scaling the observed mixing ratio by the model's saturation mixing ratio. This variable is similar to relative humidity but does not present the difficulties associated with analyzing actual relative humidity data, which is an inherently multivariate problem requiring information about covariances between temperature and moisture errors. Use of the 'pseudo' relative humidity computed from the model's saturation mixing ratio, however, leads to a univariate analysis for which approximate error covariances are relatively easy to obtain.

We will show, based on statistics of observed-minus-forecast residuals, that the introduction of this new moisture variable causes a significant improvement of the quality of the moisture analysis. We will also describe our method of assimilating total precipitable water in the fvDAS, and present preliminary results that show the impact of these data on the assimilation.

Poster Session 1, Poster Session - Numerical Data Assimilation Techniques—with Coffee Break
Monday, 30 July 2001, 2:30 PM-4:00 PM

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