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Impacts of atmospheric and oceanic initial conditions on boreal summer intraseasonal oscillation forecast in the BCC model

机译:大气和海洋初始条件对BCC模型北欧季节性震荡预测的影响

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摘要

In this paper, we evaluate the capability of the Beijing Climate Center Climate System Model (BCC-CSM) in simulating and forecasting the boreal summer intraseasonal oscillation (BSISO), using its simulation and sub-seasonal to seasonal (S2S) hindcast results. Results show that the model can generally simulate the spatial structure of the BSISO, but give relatively weaker strength, shorter period, and faster transition of BSISO phases when compared with the observations. This partially limits the model's capability in forecasting the BSISO, with a useful skill of only 9 days. Two sets of hindcast experiments with improved atmospheric and atmosphere/ocean initial conditions (referred to as EXP1 and EXP2, respectively) are conducted to improve the BSISO forecast. The BSISO forecast skill is increased by 2 days with the optimization of atmospheric initial conditions only (EXP1), and is further increased by 1 day with the optimization of both atmospheric and oceanic initial conditions (EXP2). These changes lead to a final skill of 12 days, which is comparable to the skills of most models participated in the S2S Prediction Project. In EXP1 and EXP2, the BSISO forecast skills are improved for most initial phases, especially phases 1 and 2, denoting a better description for BSISO propagation from the tropical Indian Ocean to the western North Pacific. However, the skill is considerably low and insensitive to initial conditions for initial phase 6 and target phase 3, corresponding to the BSISO convection's active-to-break transition over the western North Pacific and BSISO convection's break-to-active transition over the tropical Indian Ocean and Maritime Continent. This prediction barrier also exists in many forecast models of the S2S Prediction Project. Our hindcast experiments with different initial conditions indicate that the remarkable model errors over the Maritime Continent and subtropical western North Pacific may largely account for the prediction barrier.
机译:在本文中,我们评估了北京气候中心气候系统模型(BCC-CSM)在模拟和预测北方夏季震荡(BSISO)中的能力,利用其模拟和分季节来季节性(S2S)Hindcast结果。结果表明,与观察相比,该模型通常可以模拟BSISO的空间结构,但具有相对较弱的强度,更短的时间和BSISO阶段的转换。这部分限制了模型在预测BSISO方面的能力,只有9天的有用技能。进行两套具有改善的大气和大气/海洋初始条件的Hindcast实验(分别称为Exp1和Exp2)以改善BSISO预测。 BSISO预测技能增加了2天,仅优化大气初始条件(EXP1),并且在优化大气和海洋初始条件下进一步增加1天(EXP2)。这些变化导致了12天的最终技能,这与大多数型号的技能相当,参与S2S预测项目。在Exp1和Exp2中,对大多数初始阶段,特别是第1和第2阶段,提高了BSISO预测技能,表示更好地描述了对来自热带印度洋到西北太平洋的BSISO传播的更好描述。然而,对初始阶段6和目标阶段3的初始条件相当低,对应于BSISO对流对西北太平洋和热带印度人的突破积极过渡的初始条件的初始条件,对应于初始阶段6和目标阶段3的初始条件。海洋和海洋大陆。该预测屏障也存在于S2S预测项目的许多预测模型中。我们的Hindcast实验具有不同的初始条件,表明海洋大陆和亚热带西部北太平洋的显着模型错误可能主要占预测障碍。

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  • 来源
    《Theoretical and applied climatology》 |2020年第2期|393-406|共14页
  • 作者单位

    Shandong Meteorol Bur Jinan Shandong Peoples R China;

    China Meteorol Adm Climate Model Div Natl Climate Ctr & Lab Climate Studies 46 Zhongguancun Nandajie Beijing 100081 Peoples R China;

    Shandong Meteorol Bur Jinan Shandong Peoples R China;

    Nanjing Univ Nanjing Jiangsu Peoples R China;

    China Meteorol Adm Climate Model Div Natl Climate Ctr & Lab Climate Studies 46 Zhongguancun Nandajie Beijing 100081 Peoples R China;

    China Meteorol Adm Climate Model Div Natl Climate Ctr & Lab Climate Studies 46 Zhongguancun Nandajie Beijing 100081 Peoples R China;

    China Meteorol Adm Climate Model Div Natl Climate Ctr & Lab Climate Studies 46 Zhongguancun Nandajie Beijing 100081 Peoples R China;

    China Meteorol Adm Climate Model Div Natl Climate Ctr & Lab Climate Studies 46 Zhongguancun Nandajie Beijing 100081 Peoples R China;

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