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耦合输运-生物地球化学模型中的三维变分同化方案:地中海生物地球化学特性预测

A 3-D variational assimilation scheme in coupled transport-biogeochemical models: Forecast of Mediterranean biogeochemical properties.

作者信息

Teruzzi Anna, Dobricic Srdjan, Solidoro Cosimo, Cossarini Gianpiero

机构信息

Istituto Nazionale di Oceanografia e di Geofisica Sperimentale Trieste, Italy.

Centro Euro-Mediterraneo sui Cambiamenti Climatici Bologna, Italy.

出版信息

J Geophys Res Oceans. 2014 Jan;119(1):200-217. doi: 10.1002/2013JC009277. Epub 2014 Jan 13.

DOI:10.1002/2013JC009277
PMID:26213670
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4508912/
Abstract

[1] Increasing attention is dedicated to the implementation of suitable marine forecast systems for the estimate of the state of the ocean. Within the framework of the European MyOcean infrastructure, the pre-existing short-term Mediterranean Sea biogeochemistry operational forecast system has been upgraded by assimilating remotely sensed ocean color data in the coupled transport-biogeochemical model OPATM-BFM using a 3-D variational data assimilation (3D-VAR) procedure. In the present work, the 3D-VAR scheme is used to correct the four phytoplankton functional groups included in the OPATM-BFM in the period July 2007 to September 2008. The 3D-VAR scheme decomposes the error covariance matrix using a sequence of different operators that account separately for vertical covariance, horizontal covariance, and covariance among biogeochemical variables. The assimilation solution is found in a reduced dimensional space, and the innovation for the biogeochemical variables is obtained by the sequential application of the covariance operators. Results show a general improvement in the forecast skill, providing a correction of the basin-scale bias of surface chlorophyll concentration and of the local-scale spatial and temporal dynamics of typical bloom events. Further, analysis of the assimilation skill provides insights into the functioning of the model. The computational costs of the assimilation scheme adopted are low compared to other assimilation techniques, and its modular structure facilitates further developments. The 3D-VAR scheme results especially suitable for implementation within a biogeochemistry operational forecast system.

摘要

[1] 人们越来越关注实施合适的海洋预报系统以评估海洋状态。在欧洲MyOcean基础设施框架内,已有的短期地中海生物地球化学业务预报系统通过使用三维变分资料同化(3D-VAR)程序,将遥感海洋颜色数据同化到耦合的输运-生物地球化学模型OPATM-BFM中进行了升级。在本研究中,3D-VAR方案用于在2007年7月至2008年9月期间校正OPATM-BFM中包含的四个浮游植物功能群。3D-VAR方案使用一系列不同的算子分解误差协方差矩阵,这些算子分别考虑垂直协方差、水平协方差以及生物地球化学变量之间的协方差。同化解在一个降维空间中找到,生物地球化学变量的创新通过依次应用协方差算子获得。结果表明预报技能总体上有所提高,校正了表层叶绿素浓度的盆地尺度偏差以及典型水华事件的局地尺度时空动态。此外,对同化技能的分析有助于深入了解模型的运行情况。与其他同化技术相比,所采用的同化方案计算成本较低,其模块化结构便于进一步发展。3D-VAR方案特别适合在生物地球化学业务预报系统中实施。

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