Ensemble data assimilation with the parallel data assimilation framework PDAF
Contact
Lars.Nerger [ at ] awi.de
Abstract
The Parallel Data Assimilation Framework (PDAF) is a unified framework for ensemble data assimilation. PDAF has been developed to simplify the implementation of scalable ensemble data assimilation systems with existing high-dimensional numerical models. It provides support for the parallelization of the ensemble integration and fully implemented and parallelized ensemble Kalman and nonlinear filters. PDAF encapsulates the filter algorithms so that model and data assimilation developments can be conducted separately. I will review the structure and features of PDAF and discuss its use in different applications of ocean-biogeochemical and coupled atmosphere-ocean models.
Item Type
Conference
(Invited talk)
Authors
Divisions
Primary Division
Programs
Helmholtz Research Programs > PACES II (2014-2020) > TOPIC 4: Research in science-stakeholder interactions > WP 4.1: Operational analyses and forecasting
Primary Topic
Helmholtz Programs > Helmholtz Research Programs > PACES II (2014-2020) > TOPIC 4: Research in science-stakeholder interactions > WP 4.1: Operational analyses and forecasting
Publication Status
Published
Event Details
Seminar at German Weather Service DWD, Offenbach am Main, Germany, 25 September 2017.
Eprint ID
46137
Cite as
Nerger, L.
(2017):
Ensemble data assimilation with the parallel data assimilation framework PDAF
,
Seminar at German Weather Service DWD,
Offenbach am Main, Germany, 25 September 2017
.
Download
Share
Geographical region
Research Platforms
Campaigns
N/A
Actions