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Efficient ensemble forecasting of marine ecology with clustered 1D models and statistical lateral exchange: application to the Red Sea

机译:聚类一维模型和统计横向交换对海洋生态的有效总体预报:在红海中的应用

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Forecasting the state of large marine ecosystems is important for many economic and public health applications. However, advanced three-dimensional (3D) ecosystem models, such as the European Regional Seas Ecosystem Model (ERSEM), are computationally expensive, especially when implemented within an ensemble data assimilation system requiring several parallel integrations. As an alternative to 3D ecological forecasting systems, we propose to implement a set of regional one-dimensional (1D) water-column ecological models that run at a fraction of the computational cost. The 1D model domains are determined using a Gaussian mixture model (GMM)-based clustering method and satellite chlorophyll-a (Chl-a) data. Regionally averaged Chl-a data is assimilated into the 1D models using the singular evolutive interpolated Kalman (SEIK) filter. To laterally exchange information between subregions and improve the forecasting skills, we introduce a new correction step to the assimilation scheme, in which we assimilate a statistical forecast of future Chl-a observations based on information from neighbouring regions. We apply this approach to the Red Sea and show that the assimilative 1D ecological models can forecast surface Chl-a concentration with high accuracy. The statistical assimilation step further improves the forecasting skill by as much as 50%. This general approach of clustering large marine areas and running several interacting 1D ecological models is very flexible. It allows many combinations of clustering, filtering and regression technics to be used and can be applied to build efficient forecasting systems in other large marine ecosystems.
机译:预测大型海洋生态系统的状态对于许多经济和公共卫生应用都很重要。但是,高级的三维(3D)生态系统模型(例如欧洲区域海洋生态系统模型(ERSEM))在计算上非常昂贵,尤其是在需要多个并行集成的集成数据同化系统中实施时。作为3D生态预测系统的替代方法,我们建议实施一组区域一维(1D)水柱生态模型,其运行成本仅为计算成本的一小部分。使用基于高斯混合模型(GMM)的聚类方法和卫星叶绿素-a(Chl-a)数据确定一维模型域。使用奇异演化内插卡尔曼(SEIK)滤波器将区域平均Chl-a数据吸收到1D模型中。为了在子区域之间横向交换信息并提高预测技能,我们对同化方案引入了新的校正步骤,其中,我们根据来自邻近区域的信息对未来Chla观测的统计预测进行同化。我们将此方法应用于红海,并表明同化一维生态模型可以高精度预测地表Chl-a浓度。统计同化步骤将预测技能进一步提高了50%。这种对大型海洋区域进行聚类并运行多个相互作用的一维生态模型的通用方法非常灵活。它允许使用聚类,过滤和回归技术的许多组合,并可用于在其他大型海洋生态系统中建立有效的预测系统。

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