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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >GFDL's SPEAR Seasonal Prediction System: Initialization and Ocean Tendency Adjustment (OTA) for Coupled Model Predictions
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GFDL's SPEAR Seasonal Prediction System: Initialization and Ocean Tendency Adjustment (OTA) for Coupled Model Predictions

机译:GFDL的矛季节预测系统:耦合模型预测的初始化和海洋趋势调整(OTA)

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The next‐generation seasonal prediction system is built as part of the Seamless System for Prediction and EArth System Research (SPEAR) at the Geophysical Fluid Dynamics Laboratory (GFDL) of the National Oceanic and Atmospheric Administration (NOAA). SPEAR is an effort to develop a seamless system for prediction and research across time scales. The ensemble‐based ocean data assimilation (ODA) system is updated for Modular Ocean Model Version 6 (MOM6), the ocean component of SPEAR. Ocean initial conditions for seasonal predictions, as well as an ocean state estimation, are produced by the MOM6 ODA system in coupled SPEAR models. Initial conditions of the atmosphere, land, and sea ice components for seasonal predictions are constructed through additional nudging experiments in the same coupled SPEAR models. A bias correction scheme called ocean tendency adjustment (OTA) is applied to coupled model seasonal predictions to reduce model drift. OTA applies the climatological temperature and salinity increments obtained from ODA as three‐dimensional tendency terms to the MOM6 ocean component of the coupled SPEAR models. Based on preliminary retrospective seasonal forecasts, we demonstrate that OTA reduces model drift—especially sea surface temperature (SST) forecast drift—in coupled model predictions and improves seasonal prediction skill for applications such as El Ni?o–Southern Oscillation (ENSO). Plain Language Summary Dynamic seasonal prediction systems employ global climate models to predict climate variations on monthly to seasonal time scales. A new state‐of‐the‐art seasonal prediction system has been developed at the Geophysical Fluid Dynamics Laboratory (GFDL) of the National Oceanic and Atmospheric Administration (NOAA). The prediction models are based on GFDL's new component models participating in the Coupled Model Intercomparison Project Phase 6 (CMIP6). The new seasonal prediction system includes new ways to apply observational information to initialize the model simulations, including an updated data assimilation system for the Modular Ocean Model Version 6 (MOM6). Bias correction is applied to the coupled dynamic models to reduce prediction bias, namely, the gap between model‐simulated and real‐world climatology. Preliminary seasonal prediction experiments demonstrate reduced errors in the predicted climate state globally, as well as improved prediction skill for applications such as El Ni?o–Southern Oscillation (ENSO).
机译:下一代季节性预测系统是在国家海洋和大气管理局(NOAA)的地球物理流体动力学实验室(NOAA)的地球物理流体动力学实验室(GFDL)的预测和地球系统研究(SPEAR)的一部分。矛是一种努力开发一种无缝系统,用于跨时尺度的预测和研究。基于集合的海洋数据同化(ODA)系统更新了模块化海洋模型版本6(MOM6),Spear的海洋成分。 Ocean初始条件用于季节性预测,以及海洋状态估计,由MOM6 ODA系统在耦合的矛模型中产生。通过在相同的耦合矛模型中的额外喷出实验来构建季节性预测的大气,陆地和海冰部件的初始条件。偏置校正方案称为海洋趋势调整(OTA)被应用于耦合模型季节性预测以减少模型漂移。 OTA将从ODA获得的气候温度和盐度增量应用于耦合矛模型的MOM6海洋部件的三维趋势术语。基于初步回顾性季节性预测,我们证明OTA减少了模型漂移 - 特别是海表面温度(SST)预测漂移的耦合模型预测,并提高了EL NIα振荡(ENSO)等应用的季节性预测技巧。普通语言摘要动态季节性预测系统采用全球气候模型,以预测月度气候变化对季节性时间尺度。新的最先进的季节性预测系统已经在国家海洋和大气管理局(NOAA)的地球物理流体动力学实验室(GFDL)开发出来。预测模型基于参与耦合型号的新组件模型的GFDL的新组件模型(CMIP6)。新的季节性预测系统包括应用观测信息以初始化模型模拟的新方法,包括用于模块化海洋模型6版6(MOM6)的更新的数据同化系统。偏置校正应用于耦合的动态模型,以减少预测偏差,即模拟和现实世界气候之间的差距。初步季节性预测实验表明,全球预测的气候状态下降了误差,以及改善EL NI?O-Southern振荡(ENSO)的应用的预测技巧。

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