在涡动南大洋航道模型中利用深度学习从卫星观测数据推断极圈传输和翻转强度

IF 4.4 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Shuai Meng, Andrew L. Stewart, Georgy Manucharyan
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引用次数: 0

摘要

南大洋通过南极环极洋流(ACC)连接大洋的主要盆地,并关闭全球经向翻转环流(MOC)。观测这些传输是一项挑战,因为要计算密度坐标中的传输,需要对海流、温度和盐度进行三维中尺度分辨率测量。以前的研究曾提出利用数据驱动方法,通过卫星测量推断次表层传输来规避这些限制。然而,目前还不清楚这些方法能否识别南大洋的次表层传输特征,因为南大洋在高度异质的平均分层和环流上叠加了高能中尺度涡场。本研究以理想化的南大洋通道模型为试验平台,采用深度学习技术将 ACC 和 MOC 上下分支的传输与海面高度(SSH)和洋底压力(OBP)联系起来。一个关键结果是卷积神经网络对ACC传输和MOC强度产生了娴熟的预测(技能得分分别为∼ ${\sim} $ 0.74和∼ ${\sim} $ 0.44)。在从日到十年的时间尺度上,这些预测的技能是相似的,但如果省略 SSH 或 OBP 作为预测因子,预测技能就会大大降低。使用全连接或线性神经网络可以得到类似准确的 ACC 传输预测结果,但对 MOC 强度的预测技能却大大降低。我们的研究结果表明,深度学习提供了一条将南大洋的带状传输和倾覆环流与遥感测量联系起来的途径,即使存在明显的中尺度变率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Circumpolar Transport and Overturning Strength Inferred From Satellite Observables Using Deep Learning in an Eddying Southern Ocean Channel Model

Circumpolar Transport and Overturning Strength Inferred From Satellite Observables Using Deep Learning in an Eddying Southern Ocean Channel Model

The Southern Ocean connects the ocean's major basins via the Antarctic Circumpolar Current (ACC), and closes the global meridional overturning circulation (MOC). Observing these transports is challenging because three-dimensional mesoscale-resolving measurements of currents, temperature, and salinity are required to calculate transport in density coordinates. Previous studies have proposed to circumvent these limitations by inferring subsurface transports from satellite measurements using data-driven methods. However, it is unclear whether these approaches can identify the signatures of subsurface transport in the Southern Ocean, which exhibits an energetic mesoscale eddy field superposed on a highly heterogeneous mean stratification and circulation. This study employs Deep Learning techniques to link the transports of the ACC and the upper and lower branches of the MOC to sea surface height (SSH) and ocean bottom pressure (OBP), using an idealized channel model of the Southern Ocean as a test bed. A key result is that a convolutional neural network produces skillful predictions of the ACC transport and MOC strength (skill score of ${\sim} $ 0.74 and ${\sim} $ 0.44, respectively). The skill of these predictions is similar across timescales ranging from daily to decadal but decreases substantially if SSH or OBP is omitted as a predictor. Using a fully connected or linear neural network yields similarly accurate predictions of the ACC transport but substantially less skillful predictions of the MOC strength. Our results suggest that Deep Learning offers a route to linking the Southern Ocean's zonal transport and overturning circulation to remote measurements, even in the presence of pronounced mesoscale variability.

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来源期刊
Journal of Advances in Modeling Earth Systems
Journal of Advances in Modeling Earth Systems METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
11.40
自引率
11.80%
发文量
241
审稿时长
>12 weeks
期刊介绍: The Journal of Advances in Modeling Earth Systems (JAMES) is committed to advancing the science of Earth systems modeling by offering high-quality scientific research through online availability and open access licensing. JAMES invites authors and readers from the international Earth systems modeling community. Open access. Articles are available free of charge for everyone with Internet access to view and download. Formal peer review. Supplemental material, such as code samples, images, and visualizations, is published at no additional charge. No additional charge for color figures. Modest page charges to cover production costs. Articles published in high-quality full text PDF, HTML, and XML. Internal and external reference linking, DOI registration, and forward linking via CrossRef.
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