利用基于物理学的策略将年度全球平均地表温度预测提前到 2 个月

IF 8.5 1区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES npj Climate and Atmospheric Science Pub Date : 2024-09-19 DOI:10.1038/s41612-024-00736-9
Ke-Xin Li, Fei Zheng, Jiang Zhu, Jin-Yi Yu, Noel Keenlyside
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引用次数: 0

摘要

全球平均地表温度(GMST)的跨年度预测为了解气候多变性对经济和社会的影响提供了重要依据。2023-2024 年全球平均地表温度的明显升高表明,地球可能已经积聚了足够的热量来引发大范围的灾害,这突出表明有必要建立准确的短期全球平均地表温度预测,以提供及时和可持续的公共服务。然而,捕捉全球海洋观测系统的高频年变率(ANV)成分是一项挑战,因为它容易受到季节内到年际(ISI)噪声的影响,尤其是在北半球的中高纬度地区。在 11 月和 12 月平均这些 ISI 变化可有效提高信号的清晰度(尤其是海洋上空),并掩盖陆地上不可预测的噪声。通过预测 11 月和 12 月的平均全球海洋观测系统,提取 ANV 可预测性,建立了全球海洋观测系统年度预测策略。这种方法成功地将1980-2022年期间的精确全球海洋温差后报提前了2个月,超过了现有气候模式的性能,并加强了对全球海洋温差年际变化的预警。
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Advancing annual global mean surface temperature prediction to 2 months lead using physics based strategy
Interannual global mean surface temperature (GMST) forecast provides critical insights into the economic and societal implications of climate variability. The pronounced GMST elevation in 2023–2024 indicates that the Earth may have accumulated enough heat to cause widespread disasters, underscoring the necessity for establishing accurate short-term GMST predictions to offer timely and sustainable public service. However, capturing high-frequency annual variability (ANV) component of GMST poses challenges due to its susceptibility to intraseasonal-to-interannual (ISI) noises, particularly across the Northern Hemisphere’s mid-to-high latitudes. Averaging these ISI variations in November and December effectively enhances signal clarity, especially over oceans, and masks unpredictable noises on land. By forecasting the average GMST for November and December to extract ANV predictability, a strategy for annual GMST prediction was established. This approach successfully advanced precise GMST hindcasts by up to 2-months during 1980–2022, exceeding performance of existing climate models and boosting early warning for interannual GMST shifts.
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来源期刊
npj Climate and Atmospheric Science
npj Climate and Atmospheric Science Earth and Planetary Sciences-Atmospheric Science
CiteScore
8.80
自引率
3.30%
发文量
87
审稿时长
21 weeks
期刊介绍: npj Climate and Atmospheric Science is an open-access journal encompassing the relevant physical, chemical, and biological aspects of atmospheric and climate science. The journal places particular emphasis on regional studies that unveil new insights into specific localities, including examinations of local atmospheric composition, such as aerosols. The range of topics covered by the journal includes climate dynamics, climate variability, weather and climate prediction, climate change, ocean dynamics, weather extremes, air pollution, atmospheric chemistry (including aerosols), the hydrological cycle, and atmosphere–ocean and atmosphere–land interactions. The journal welcomes studies employing a diverse array of methods, including numerical and statistical modeling, the development and application of in situ observational techniques, remote sensing, and the development or evaluation of new reanalyses.
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