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首页> 外文期刊>Geoscientific Model Development Discussions >Spin-up characteristics with three types of initial fields and the restart effects on forecast accuracy in the GRAPES global forecast system
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Spin-up characteristics with three types of initial fields and the restart effects on forecast accuracy in the GRAPES global forecast system

机译:具有三种类型的初始字段的旋转特性和重启对葡萄全球预测系统预测准确性的重新启动效果

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The spin-up refers to the dynamic and thermal adjustments made at the initial stage of numerical integration in order to reach a statistical equilibrium state. The analyses on the characteristics and effects of spin-ups are of great significance for optimizing the initial field of the model and improving its forecast skills. In this paper, three different initial fields are used in the experiments: the analysis field of four-dimensional variational (4D-VAR) assimilation, the 3? h prediction field in the operational forecasting system, and the Final (FNL) Operational Global Analysis data provided by National Centers for Environmental Prediction (NCEP). Following this, the characteristics of spin-ups in the version 2.3.1 of GRAPES (Global/Regional Assimilation and Prediction System) global forecast system (GRAPES_GFS2.3.1) under different initial fields are compared and analyzed. In addition, the influence of the lost cloud-field information on the spin-up and forecast results of the GRAPES model in the current operation is discussed as well. The results are as follows. With any initial field, the spin-up of GRAPES_GFS2.3.1 has to go through two stages – the dramatic adjustment in the first half-hour of integration and the slow dynamic and thermal adjustments afterwards. The spin-up in GRAPES_GFS2.3.1 lasts for at least 6? h , and the adjustment is gradually completed from lower to upper layers in the model. Therefore, in the evaluation of the GRAPES_GFS2.3.1, the forecast results in the first 6? h should be avoided, and the GRAPES_GFS2.3.1 with its own analysis field performs better than the one using FNL reanalysis data for the cold start in the spin-up because the variations in amplitude of the temperature and humidity tendency are smaller and the spin-up time is slightly shorter. Based on the 4D-VAR assimilation analysis field, the forecast in the operational model is artificially interrupted and restarted after 3? h of integration. In this process, as the cloud-field information is not retained, the spin-up should repeat in the model. The characteristics of spin-up are mostly consistent with those using the 4D-VAR assimilation analysis field as the initial field. However, as the cloud-field information is not retained in the current operation, the hydrometeor content in the atmosphere at the early stage of the forecast is underestimated, affecting the calculation accuracy of the radiation and causing a systematic positive bias of temperature and geopotential height fields at 500? hPa . In addition, the precipitation is also underestimated at the early stage of the simulation, affecting the forecast of typhoon tracks.
机译:旋转指的是指在数值积分的初始阶段进行的动态和热调节,以便达到统计平衡状态。对旋转特性和影响的分析对于优化模型的初始领域以及提高预测技能具有重要意义。在本文中,在实验中使用了三个不同的初始字段:四维变分(4d-var)同化的分析领域,3? H预测领域在运营预测系统中,以及国家环境预测中心提供的最终(FNL)运营全球分析数据(NCEP)。在此之后,比较和分析了在不同初始字段下的葡萄(全球/区域同化和预测系统)全球预测系统(GRAPES_GFS2.3.1)中的2.3.1版中旋转的特征。此外,还讨论了对当前操作中葡萄模型的擒录和预测结果的丢失云场信息的影响。结果如下。使用任何初始领域,抓钩的旋转_GFS2.3.1必须经过两个阶段 - 在第一半小时的整合和后续动态和热调节中的剧烈调整。抓住抓住葡萄_GFS2.3.1持续至少6个? h,调整从模型中的下层逐渐完成。因此,在评估葡萄_GFS2.3.1中,预测结果在前6次出现?应该避免h,并且葡萄_gfs2.3.1与其自己的分析字段比使用FNL再分析数据在旋转中的冷启动的情况表现更好,因为温度和湿度倾向的幅度的变化较小,旋转 - up时间稍短。基于4D-VAR同化分析领域,运营模型中的预测是人为中断并在3后重新启动? h融合。在此过程中,随着不保​​留云场信息,旋转应在模型中重复。旋转的特征主要与使用4D-VAR同化分析场的那些符合初始场。然而,随着云场信息在当前操作中不保留时,预测早期阶段的大气中的水流仪含量低估,影响了辐射的计算精度,并导致温度和地球态高度的系统正偏差500个字段? HPA。此外,在模拟的早期阶段也低估了沉淀,影响了台风轨迹的预测。

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