A Penalized 4-D Var data assimilation method for reducing forecast error related to adaptive observations
نویسندگان
چکیده
Four dimensional variational (4D-Var) Data Assimilation (DA) method is used to find the optimal initial conditions by minimizing a cost function in which background information and observations are provided as the input of the cost function. The optimized initial conditions based on background error covariance matrix and observations improve the forecast. The targeted observations determined by using methods such as adjoint sensitivity, observation sensitivity or singular vectors may further improve the forecast. In this paper, we are proposing a new technique–consisting of a penalized 4D-Var DA method that is able to reduce the forecast error significantly. This technique consists in penalizing the cost function by a forecast aspect defined over the verification domain at the verification time. The results obtained using the penalized 4DVar method show that the initial condition is optimally estimated, thus resulting in a better forecast by significantly reducing the forecast error over the verification domain at verification time. Copyright c © 2011 John Wiley & Sons, Ltd.
منابع مشابه
A penalized four-dimensional variational data assimilation method for reducing forecast error related to adaptive observations
Four-dimensional variational (4D-Var) data assimilation method is used to find the optimal initial conditions by minimizing a cost function in which background information and observations are provided as the input of the cost function. The optimized initial conditions based on background error covariance matrix and observations improve the forecast. The targeted observations determined by usin...
متن کاملA Penalized 4-D Var data assimilation method for reducing forecast error
Four dimensional variational (4D-Var) Data Assimilation (DA) method is used to find the optimal initial conditions by minimizing cost function in which background information and observations are provided as the input of the cost function. The corrected initial condition based on background error covariance matrix and observations improve the forecast. The targeted observations determined by us...
متن کاملAdaptive Tuning , 4 D - Var and Representers In
Four dimensional variational data assimilation, called 4D-Var in the atmospheric sciences literature, is a method for combining forecast, dynamical systems equations, prior information about properties of the atmosphere, and heterogeneous observations, to get an estimate of the evolving state of the atmosphere. Summary: We (abstractly) generalize thètoy' weak 4D-Var model in Gong, Wahba, Johnso...
متن کاملDeveloping a dynamically based assimilation method for targeted and standard observations
In a recent study, a new method for assimilating observations has been proposed and applied to a small size nonlinear model. The assimilation is obtained by confining the analysis increment in the unstable subspace of the Observation-Analysis-Forecast (OAF) cycle system, in order to systematically eliminate the dynamically unstable components, present in the forecast error, which are responsibl...
متن کامل5.6 the Impact of Data Interaction on Targeted Observations with a 4d-var Data Assimilation and Forecast System
Adaptive observations strategies aim to improve the forecasting skill of numerical weather prediction systems by dynamically identifying optimal locations where additional (targeted) observational data must be collected. Despite many advances in the theoretical formulation and implementation of targeting methods (Palmer et al. 1998, Berliner et al. 1999, Baker and Daley 2000, Bishop et. al 2001...
متن کامل