Title of article
Data assimilation for precipitation nowcasting using Bayesian inference
Author/Authors
Remi BarillecDan Cornford، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
16
From page
1050
To page
1065
Abstract
This work introduces a new variational Bayes data assimilation method for the stochastic estimation of precipitation dynamics using radar observations for short term probabilistic forecasting (nowcasting). A previously developed spatial rainfall model based on the decomposition of the observed precipitation field using a basis function expansion captures the precipitation intensity from radar images as a set of ‘rain cells’. The prior distributions for the basis function parameters are carefully chosen to have a conjugate structure for the precipitation field model to allow a novel variational Bayes method to be applied to estimate the posterior distributions in closed form, based on solving an optimisation problem, in a spirit similar to 3D VAR analysis, but seeking approximations to the posterior distribution rather than simply the most probable state. A hierarchical Kalman filter is used to estimate the advection field based on the assimilated precipitation fields at two times. The model is applied to tracking precipitation dynamics in a realistic setting, using UK Met Office radar data from both a summer convective event and a winter frontal event. The performance of the model is assessed both traditionally and using probabilistic measures of fit based on ROC curves. The model is shown to provide very good assimilation characteristics, and promising forecast skill. Improvements to the forecasting scheme are discussed.
Keywords
Precipitation , Data assimilation , Radar , Variational Bayes , Nowcasting
Journal title
Advances in Water Resources
Serial Year
2009
Journal title
Advances in Water Resources
Record number
1271999
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