海洋预报对2020年7月日本强降雨预报的重要性

IF 2 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Yuya Baba
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引用次数: 3

摘要

利用区域大气模式和区域耦合模式对2020年7月日本强降雨事件进行了后播试验,以检验海洋预测对预测强降雨事件的重要性。这两个模型都能够预测7月上半月日本西部的第一个累积降雨量峰值。然而,只有耦合模型预测了发生在7月下半月的第二个高峰。在每个模式中,海平面压力(SLP)和源自现有大气河流(AR)的低层水汽流入有所不同。在区域大气模式中,随着过度潜热通量的增加,与不准确的低层水汽流入相关的误差增大,从而增强对流,导致不正确的SLP型。这一趋势似乎由于有一个规定的影响表面热通量的海表温度而得到加强。当像耦合模式那样预测海洋条件时,这种误差增长被调整表面热通量的海温变化所抑制,从而导致生成正确的SLP型。在这种情况下,特别是太平洋高压的正确SLP也可以预测AR流入的有利条件,从而可以预测强降雨。综上所述,考虑到大气对海温的反馈,海洋预报可以提高日本强降雨的可预测性,而日本强降雨的条件受附近AR的影响,因此海洋预报可以扩大天气预报的范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Importance of ocean prediction for heavy rainfall prediction over Japan in July 2020

Importance of ocean prediction for heavy rainfall prediction over Japan in July 2020

Hindcast experiments were performed for heavy rainfall events over Japan in July 2020 using a regional atmospheric model and a regional coupled model to examine the importance of ocean prediction for predicting heavy rainfall events. Both models were able to predict the first peak of accumulated rainfall over western Japan occurring in the first half of July. However, only the coupled model predicted the second peak that occurred in the second half of July. Sea level pressure (SLP) and low-level moisture inflow originating from an existing atmospheric river (AR) were found to differ in each model. In the regional atmospheric model, the error associated with the inaccurate low-level moisture inflow grew with rising excessive latent heat flux, which enhanced convection and resulted in incorrect SLP patterns. This trend seems to be enhanced by having a prescribed sea surface temperature (SST), which affects the surface heat flux. When ocean conditions are predicted as in the coupled model, such error growth is suppressed by changes in SST that adjust surface heat flux, and it leads to generation of the correct SLP patterns. With correct SLP especially for Pacific high in this case, favorable conditions for inflow from the AR can also be predicted, thus making it possible to predict the heavy rainfall. In conclusion, considering the atmospheric feedback on SST, ocean prediction can improve the predictability of heavy rainfall over Japan, the conditions for which are influenced by the nearby AR. Ocean prediction may therefore extend the range of weather forecasting.

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来源期刊
Atmospheric Science Letters
Atmospheric Science Letters METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
4.90
自引率
3.30%
发文量
73
审稿时长
>12 weeks
期刊介绍: Atmospheric Science Letters (ASL) is a wholly Open Access electronic journal. Its aim is to provide a fully peer reviewed publication route for new shorter contributions in the field of atmospheric and closely related sciences. Through its ability to publish shorter contributions more rapidly than conventional journals, ASL offers a framework that promotes new understanding and creates scientific debate - providing a platform for discussing scientific issues and techniques. We encourage the presentation of multi-disciplinary work and contributions that utilise ideas and techniques from parallel areas. We particularly welcome contributions that maximise the visualisation capabilities offered by a purely on-line journal. ASL welcomes papers in the fields of: Dynamical meteorology; Ocean-atmosphere systems; Climate change, variability and impacts; New or improved observations from instrumentation; Hydrometeorology; Numerical weather prediction; Data assimilation and ensemble forecasting; Physical processes of the atmosphere; Land surface-atmosphere systems.
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