Evolution and prospects of Earth system models: Challenges and opportunities

IF 10.8 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Earth-Science Reviews Pub Date : 2024-11-19 DOI:10.1016/j.earscirev.2024.104986
Xiaoduo Pan , Deliang Chen , Baoxiang Pan , Xiaozhong Huang , Kun Yang , Shilong Piao , Tianjun Zhou , Yongjiu Dai , Fahu Chen , Xin Li
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Abstract

Earth system models (ESMs) serve as vital tools for comprehensively simulating the intricate interplay of physical, chemical, and biological processes across the Earth system's diverse components. Here, we provide a brief overview of the historical development of ESMs and highlight key challenges posed by the intricate feedback mechanisms in the cryosphere, the nonlinear and long-term effects of the lithosphere, and the growing impacts of human activities for modeling Earth system. We then focus on the current opportunities in Earth system modeling, driven by the growing capacity for data-driven approaches such as machine learning (ML) and Artificial Intelligence (AI).
The next generation of ESMs should embrace dynamic frameworks that enable more precise representations of physical processes across a range of spatiotemporal scales. Multi-resolution models are pivotal in bridging the gap between global and regional scales, fostering a deeper understanding of local and remote influences. Data-driven methodologies including ML/AI offer promising avenues for advancing ESMs by harnessing a wide array of data sources and surmounting limitations inherent in traditional parameterization techniques. However, the integration of ML/AI into ESMs presents its own set of challenges, including the identification of suitable data sources, the seamless incorporation of ML/AI algorithms into existing modeling infrastructures, and the resolution of issues related to model interpretability and robustness. A harmonious amalgamation of physics-based and data-driven methodologies have the potential to produce ESMs that achieve greater precision and computational efficiency, better capturing the intricate dynamics of Earth system processes.
Although ESMs have made substantial progress in simulating the complex dynamics of Earth system's subsystems, there is still considerable work to be done. Prospects in the development of ESMs entail a deepened comprehension of pivotal subsystems, including the anthroposphere, lithosphere, and cryosphere. Adopting innovative technologies and methodologies, such as ML/AI and multi-resolution modeling, holds immense potential to substantially enhance our capability to anticipate and mitigate the consequences of human activities on the Earth system.
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地球系统模型的演化与展望:挑战与机遇
地球系统模型(ESMs)是综合模拟地球系统不同组成部分的物理、化学和生物过程的复杂相互作用的重要工具。在此,我们简要概述了esm的历史发展,并强调了冰冻圈复杂的反馈机制、岩石圈的非线性和长期影响以及人类活动对地球系统建模的日益增长的影响所带来的关键挑战。然后,我们关注当前地球系统建模的机会,这是由数据驱动方法(如机器学习(ML)和人工智能(AI))不断增长的能力所驱动的。下一代esm应该包含动态框架,使物理过程能够在一系列时空尺度上更精确地表示。多分辨率模式在弥合全球和区域尺度之间的差距、促进对地方和远程影响的更深入了解方面发挥着关键作用。包括ML/AI在内的数据驱动方法通过利用广泛的数据源和克服传统参数化技术固有的局限性,为推进esm提供了有前途的途径。然而,将ML/AI集成到esm中存在一系列挑战,包括识别合适的数据源,将ML/AI算法无缝整合到现有的建模基础设施中,以及解决与模型可解释性和鲁棒性相关的问题。基于物理和数据驱动的方法的和谐融合有可能产生更高精度和计算效率的esm,更好地捕捉地球系统过程的复杂动态。虽然esm在模拟地球系统子系统的复杂动力学方面取得了实质性进展,但仍有大量工作要做。esm的发展前景需要对关键子系统的深入理解,包括人类圈、岩石圈和冰冻圈。采用创新的技术和方法,如ML/AI和多分辨率建模,具有巨大的潜力,可以大大提高我们预测和减轻人类活动对地球系统造成的后果的能力。
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来源期刊
Earth-Science Reviews
Earth-Science Reviews 地学-地球科学综合
CiteScore
21.70
自引率
5.80%
发文量
294
审稿时长
15.1 weeks
期刊介绍: Covering a much wider field than the usual specialist journals, Earth Science Reviews publishes review articles dealing with all aspects of Earth Sciences, and is an important vehicle for allowing readers to see their particular interest related to the Earth Sciences as a whole.
期刊最新文献
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