Modeling global surface dust deposition using physics-informed neural networks

IF 8.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Communications Earth & Environment Pub Date : 2024-12-20 DOI:10.1038/s43247-024-01942-2
Constanza A. Molina Catricheo, Fabrice Lambert, Julien Salomon, Elwin van ’t Wout
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Abstract

Paleoclimatic measurements serve to understand Earth System processes and evaluate climate model performances. However, their spatial coverage is generally sparse and unevenly distributed across the globe. Statistical interpolation methods are the prevalent techniques to grid such data, but these purely data-driven approaches sometimes produce results that are incoherent with our knowledge of the physical world. Physics-Informed Neural Networks follow an innovative approach to data analysis and physical modeling through machine learning, as they incorporate physical principles into the data-driven learning process. Here, we develop a machine-learning algorithm to reconstruct global maps of atmospheric dust surface deposition fluxes from paleoclimatic archives for the Holocene and Last Glacial Maximum periods. We design an advection-diffusion equation that prevents dust particles from flowing upwind. Our physics-informed neural network improves on kriging interpolation by allowing variable asymmetry around data points. The reconstructions display realistic dust plumes from continental sources towards ocean basins following prevailing winds. Physics-Informed Neural Networks trained with natural dust values and paleoclimatic measurements can reconstruct the global dust deposition during the Holocene and Last Glacial Maximum, complementing traditional kriging reconstruction methods.

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利用物理信息神经网络模拟全球地表尘埃沉积
古气候测量有助于了解地球系统过程和评估气候模式的性能。然而,它们的空间覆盖范围通常很稀疏,在全球分布不均匀。统计插值方法是网格化这类数据的流行技术,但这些纯粹的数据驱动方法有时会产生与我们对物理世界的认识不一致的结果。物理信息神经网络采用创新的方法,通过机器学习进行数据分析和物理建模,因为它们将物理原理纳入数据驱动的学习过程中。在这里,我们开发了一种机器学习算法,从全新世和末次极大冰期的古气候档案中重建全球大气尘埃表面沉积通量图。我们设计了一个平流扩散方程,防止灰尘颗粒逆风流动。我们的物理信息神经网络通过允许数据点周围的可变不对称来改进克里格插值。重建显示了真实的沙尘羽流,从大陆源头随着盛行风流向海洋盆地。利用自然沙尘值和古气候测量数据训练的物理信息神经网络可以重建全新世和末次盛冰期的全球沙尘沉积,补充了传统的克里格重建方法。
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来源期刊
Communications Earth & Environment
Communications Earth & Environment Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
8.60
自引率
2.50%
发文量
269
审稿时长
26 weeks
期刊介绍: Communications Earth & Environment is an open access journal from Nature Portfolio publishing high-quality research, reviews and commentary in all areas of the Earth, environmental and planetary sciences. Research papers published by the journal represent significant advances that bring new insight to a specialized area in Earth science, planetary science or environmental science. Communications Earth & Environment has a 2-year impact factor of 7.9 (2022 Journal Citation Reports®). Articles published in the journal in 2022 were downloaded 1,412,858 times. Median time from submission to the first editorial decision is 8 days.
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