Towards a theory of optimal localisation

All practical ensemble-based atmospheric data assimilation (DA) systems use localisation to reduce the damaging impact of spurious long-range correlations arising from the finite ensemble size. However, the form of the localisation function is generally ad-hoc, and requires expensive tuning to optim...

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Main Author: Jonathan Flowerdew
Format: Article
Language:English
Published: Taylor & Francis Group 2015-02-01
Series:Tellus: Series A, Dynamic Meteorology and Oceanography
Subjects:
Online Access:http://www.tellusa.net/index.php/tellusa/article/view/25257/pdf_3
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spelling doaj-962fe53df41b445d8949e55f568d0f6d2020-11-25T01:16:17ZengTaylor & Francis GroupTellus: Series A, Dynamic Meteorology and Oceanography1600-08702015-02-0167011810.3402/tellusa.v67.2525725257Towards a theory of optimal localisationJonathan Flowerdew0Met Office, Exeter, United KingdomAll practical ensemble-based atmospheric data assimilation (DA) systems use localisation to reduce the damaging impact of spurious long-range correlations arising from the finite ensemble size. However, the form of the localisation function is generally ad-hoc, and requires expensive tuning to optimise the system. For the case of a single observation and known true background error correlation, we derive an expression for the localisation factor that minimises the expected root-mean-square (RMS) analysis error. Idealised tests show this formulation performs well for multiple observations provided their density is not too high. The width of the optimal localisation function scales with the width of the underlying correlation, but does not have the same shape. The optimal observation-space localisation for a single spatially integrating observation depends on the observation-to-gridpoint background error correlation, making it broader than the optimal localisation for point observations and potentially competitive with model-space localisation. A new form of hybrid DA is proposed in which localisation damps the sample correlations towards their climatological mean rather than zero, reducing the RMS error and potentially improving the dynamic balance of the analysis. The presence of variance errors causes the optimal localisation factor to depend on the ratio of observation to background error variance, and raises the possibility that a small amount of variance damping may be beneficial. For dense observations, a more elaborate theory is required, which will almost certainly depend on the observation network. We present some preliminary analysis of the features of the multi-observation problem, which for instance suggests that the optimal solution may involve different localisation factors in the numerator and denominator of the Kalman filter equation. We note that even optimal localisation gives an expected RMS error which exceeds that of perfect DA, contrary to the assumption made by ‘deterministic’ ensemble filters.http://www.tellusa.net/index.php/tellusa/article/view/25257/pdf_3ensemble data assimilationsampling errorsample correlationSchur productintegrating observationshybrid data assimilation
collection DOAJ
language English
format Article
sources DOAJ
author Jonathan Flowerdew
spellingShingle Jonathan Flowerdew
Towards a theory of optimal localisation
Tellus: Series A, Dynamic Meteorology and Oceanography
ensemble data assimilation
sampling error
sample correlation
Schur product
integrating observations
hybrid data assimilation
author_facet Jonathan Flowerdew
author_sort Jonathan Flowerdew
title Towards a theory of optimal localisation
title_short Towards a theory of optimal localisation
title_full Towards a theory of optimal localisation
title_fullStr Towards a theory of optimal localisation
title_full_unstemmed Towards a theory of optimal localisation
title_sort towards a theory of optimal localisation
publisher Taylor & Francis Group
series Tellus: Series A, Dynamic Meteorology and Oceanography
issn 1600-0870
publishDate 2015-02-01
description All practical ensemble-based atmospheric data assimilation (DA) systems use localisation to reduce the damaging impact of spurious long-range correlations arising from the finite ensemble size. However, the form of the localisation function is generally ad-hoc, and requires expensive tuning to optimise the system. For the case of a single observation and known true background error correlation, we derive an expression for the localisation factor that minimises the expected root-mean-square (RMS) analysis error. Idealised tests show this formulation performs well for multiple observations provided their density is not too high. The width of the optimal localisation function scales with the width of the underlying correlation, but does not have the same shape. The optimal observation-space localisation for a single spatially integrating observation depends on the observation-to-gridpoint background error correlation, making it broader than the optimal localisation for point observations and potentially competitive with model-space localisation. A new form of hybrid DA is proposed in which localisation damps the sample correlations towards their climatological mean rather than zero, reducing the RMS error and potentially improving the dynamic balance of the analysis. The presence of variance errors causes the optimal localisation factor to depend on the ratio of observation to background error variance, and raises the possibility that a small amount of variance damping may be beneficial. For dense observations, a more elaborate theory is required, which will almost certainly depend on the observation network. We present some preliminary analysis of the features of the multi-observation problem, which for instance suggests that the optimal solution may involve different localisation factors in the numerator and denominator of the Kalman filter equation. We note that even optimal localisation gives an expected RMS error which exceeds that of perfect DA, contrary to the assumption made by ‘deterministic’ ensemble filters.
topic ensemble data assimilation
sampling error
sample correlation
Schur product
integrating observations
hybrid data assimilation
url http://www.tellusa.net/index.php/tellusa/article/view/25257/pdf_3
work_keys_str_mv AT jonathanflowerdew towardsatheoryofoptimallocalisation
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