A simple column model to explore anticipated problems in variational assimilation of satellite observations
نویسندگان
چکیده
We investigate a simplified form of variational data assimilation in a fully nonlinear framework with the aim of extracting dynamical development information from a sequence of observations over time. Information on the vertical wind profile, w(z), and profiles of temperature, T (z, t), and total water content, qt(z, t), as functions of height, z, and time, t, are converted to brightness temperatures at a single horizontal location by defining a two-dimensional (vertical and time) variational assimilation testbed. The profiles of T and qt are updated using a vertical advection scheme. A basic cloud scheme is used to obtain the fractional cloud amount and, when combined with the temperature field, this information is converted into a brightness temperature, using a simple radiative transfer scheme. It is shown that our model exhibits realistic behaviour with regard to the prediction of cloud, but the effects of nonlinearity become non-negligible in the variational data assimilation algorithm. A careful analysis of the application of the data assimilation scheme to this nonlinear problem is presented, the salient difficulties are highlighted, and suggestions for further developments are discussed.
منابع مشابه
Four-dimensional variational data assimilation for inverse modelling of atmospheric methane emissions: method and comparison with synthesis inversion
A four-dimensional variational (4D-Var) data assimilation system for inverse modelling of atmospheric methane emissions is presented. The system is based on the TM5 atmospheric transport model. It can be used for assimilating large volumes of measurements, in particular satellite observations and quasi-continuous in-situ observations, and at the same time it enables the optimization of a large ...
متن کاملExperience and Lessons Learned regarding Configuration and Control of an Advanced 4 Dimensional Variational Satellite Data Assimilation System P2.5
The Regional Atmospheric Modeling and Data Assimilation System (RAMDAS) is a 4 dimensional variational analysis (4DVAR) data assimilation algorithm (Zupanski et. al. 2004) developed at the Cooperative Institute for Research in the Atmosphere (CIRA) at Colorado State University (CSU). The current version of RAMDAS assimilates satellite observations from the Geostationary Operational Environmenta...
متن کاملNumerical Weather Prediction for High-impact Weather in a Changing Climate: Assimilation of Dynamical Information from Satellite Imagery
Operational weather prediction systems do not currently make full use of infra-red satellite observations that are affected by the presence of cloud. Observations that are affected by cloud are routinely discarded during pre-processing. This is because cloud causes large, unpredictable, and nonlinear changes in the observed radiances, and obscures the atmosphere underneath from view. This disru...
متن کاملAssimilation de mesures satellitaires dans des modèles numériques par méthodes de contrôle optimal. (Assimilation of satellite data into numerical models by optimal control methods)
Satellite data assimilation methods are investigated. There are mainly two kinds of technics : the sequential methods, derived from the Kalman filter and the variational methods, based on the adjoint equations of the optimal control theory. Variational methods are more recent. This work attempts to asses their potentialities in remote sensing through two examples. The frrst study, carried out w...
متن کاملAssimilating satellite microwave radiance measurements over the Antarctic
As there are few in situ observations in and around Antarctica, it is important to assess how assimilating remotely-sensed observations, such as satellite-observed radiances, can fill this observational gap. Thus, a month-long study was conducted over the Antarctic to examine forecast and analysis sensitivity to the assimilation of microwave radiance measurements. Several experiments were confi...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Environmental Modelling and Software
دوره 27 شماره
صفحات -
تاریخ انتشار 2012