Exploring multiyear-to-decadal North Atlantic sea level predictability and prediction using machine learning

IF 8.5 1区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES npj Climate and Atmospheric Science Pub Date : 2024-10-22 DOI:10.1038/s41612-024-00802-2
Qinxue Gu, Liping Zhang, Liwei Jia, Thomas L. Delworth, Xiaosong Yang, Fanrong Zeng, William F. Cooke, Shouwei Li
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Abstract

Coastal communities face substantial risks from long-term sea level rise and decadal sea level variations, with the North Atlantic and U.S. East Coast being particularly vulnerable under changing climates. Employing a self-organizing map-based framework, we assess the North Atlantic sea level variability and predictability using 5000-year sea level anomalies (SLA) from two preindustrial control model simulations. Preferred transitions among patterns of variability are identified, revealing long-term predictability on decadal timescales related to shifts in Atlantic meridional overturning circulation phases. Combining this framework with model-analog techniques, we demonstrate prediction skill of large-scale SLA patterns and low-frequency coastal SLA variations comparable to that from initialized hindcasts. Moreover, additional short-term predictability is identified after the exclusion of low-frequency signals, which arises from slow gyre circulation adjustment triggered by the North Atlantic Oscillation-like stochastic variability. This study highlights the potential of machine learning to assess sources of predictability and to enable long-term climate prediction.

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利用机器学习探索多年至十年北大西洋海平面的可预测性和预测性
沿海社区面临着长期海平面上升和十年海平面变化的巨大风险,北大西洋和美国东海岸在不断变化的气候条件下尤其脆弱。我们采用基于自组织地图的框架,利用来自两个工业化前控制模型模拟的 5000 年海平面异常值(SLA)来评估北大西洋海平面的变异性和可预测性。确定了变率模式之间的优先转换,揭示了与大西洋经向翻转环流阶段变化有关的十年时间尺度上的长期可预测性。通过将这一框架与模式模拟技术相结合,我们证明了大尺度 SLA 模式和低频沿岸 SLA 变化的预测能力与初始化后报的预测能力相当。此外,在剔除低频信号后,还发现了额外的短期可预测性,这种可预测性来自北大西洋涛动引发的缓慢回旋环流调整。这项研究凸显了机器学习在评估可预测性来源和实现长期气候预测方面的潜力。
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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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