基于状态空间模型的泛北极海冰季节预报

IF 8.5 1区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Wei Wang, Weidong Yang, Lei Wang, Guihua Wang, Ruibo Lei
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引用次数: 0

摘要

人为气候变化导致的北极海冰迅速减少对土著社区、生态系统和全球气候系统构成了重大风险。这种情况强调了精确的季节性海冰预报的迫切必要性。虽然动态模型在短期预报中表现良好,但在长期预报中会遇到限制,而且计算量很大。深度学习模型虽然计算效率更高,但在处理复杂的海冰动态时,往往难以管理季节变化和不确定性。在本研究中,我们引入了IceMamba,这是一种深度学习架构,在状态空间模型中集成了复杂的注意力机制。通过对包括动力、统计和深度学习方法在内的25种著名预测模型的对比分析,我们的实验结果表明,IceMamba对泛北极海冰浓度具有出色的季节性预测能力。具体而言,IceMamba在平均RMSE和异常相关系数(ACC)方面优于所有测试模型,在综合冰缘误差(IIEE)方面排名第二。这种创新的方法提高了我们预测和减轻海冰变化影响的能力,为旨在适应气候变化的战略提供了重要的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Seasonal forecasting of Pan-Arctic sea ice with state space model

Seasonal forecasting of Pan-Arctic sea ice with state space model

The rapid decline of Arctic sea ice resulting from anthropogenic climate change poses significant risks to indigenous communities, ecosystems, and the global climate system. This situation emphasizes the immediate necessity for precise seasonal sea ice forecasts. While dynamical models perform well for short-term forecasts, they encounter limitations in long-term forecasts and are computationally intensive. Deep learning models, while more computationally efficient, often have difficulty managing seasonal variations and uncertainties when dealing with complex sea ice dynamics. In this research, we introduce IceMamba, a deep learning architecture that integrates sophisticated attention mechanisms within the state space model. Through comparative analysis of 25 renowned forecast models, including dynamical, statistical, and deep learning approaches, our experimental results indicate that IceMamba delivers excellent seasonal forecasting capabilities for Pan-Arctic sea ice concentration. Specifically, IceMamba outperforms all tested models regarding average RMSE and anomaly correlation coefficient (ACC) and ranks second in Integrated Ice Edge Error (IIEE). This innovative approach enhances our ability to foresee and alleviate the effects of sea ice variability, offering essential insights for strategies aimed at climate adaptation.

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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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