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Insight and Evidence Motivating the Simplification of Dual-Analysis Hybrid Systems into Single-Analysis Hybrid SystemsMany hybrid data assimilation systems currently used for NWP employ some form of dual-analysis system approach. Typically a hybrid variational analysis is responsible for creating initial conditions for high-resolution forecasts, and an ensemble analysis system is responsible for creating sample perturbations used to form the flow-dependent part of the background error covariance required in the hybrid analysis component. In many of these, the two analysis components employ different methodologies, e.g., variational and ensemble Kalman filter. In such cases, it is not uncommon to have observations treated rather differently between the two analyses components; recentering of the ensemble analysis around the hybrid analysis is used to compensated for such differences. Furthermore, in many cases, the hybrid variational high-resolution system implements some type of four-dimensional approach, whereas the underlying ensemble system relies on a three-dimensional approach, which again introduces discrepancies in the overall system. Connected to these is the expectation that one can reliably estimate observation impact on forecasts issued from hybrid analyses by using an ensemble approach based on the underlying ensemble strategy of dual-analysis systems. Just the realization that the ensemble analysis makes substantially different use of observations as compared to their hybrid counterpart should serve as enough evidence of the implausibility of such expectation. This presentation assembles numerous anecdotal evidence to illustrate the fact that hybrid dual-analysis systems must, at the very minimum, strive for consistent use of the observations in both analysis sub-components. Simpler than that, this work suggests that hybrid systems can reliably be constructed without the need to employ a dual-analysis approach. In practice, the idea of relying on a single analysis system is appealing from a cost-maintenance perspective. More generally, single-analysis systems avoid contradictions such as having to choose one sub-component to generate performance diagnostics to another, possibly not fully consistent, component.
Document ID
20180001947
Acquisition Source
Goddard Space Flight Center
Document Type
Presentation
Authors
Todling, Ricardo
(NASA Goddard Space Flight Center Greenbelt, MD, United States)
Diniz, F. L. R.
(Student Research Collaborator)
Takacs, L. L.
(Science Systems and Applications, Inc. Lanham, MD, United States)
Suarez, M. J.
(Science Collaborator)
Date Acquired
March 19, 2018
Publication Date
March 5, 2018
Subject Category
Geosciences (General)
Report/Patent Number
GSFC-E-DAA-TN53592
Meeting Information
Meeting: International Symposium on Data Assimilation (2018)
Location: Munich
Country: Germany
Start Date: March 5, 2018
End Date: March 9, 2018
Sponsors: Ludwig-Maximilians-Univ.
Funding Number(s)
CONTRACT_GRANT: NNG17HP01C
Distribution Limits
Public
Copyright
Public Use Permitted.
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