Probabilistic Machine Learning Estimation of Ocean Mixed Layer Depth From Dense Satellite and Sparse In Situ Observations

IF 4.4 2区 地球科学 Q1 METEOROLOGY & ATMOSPHERIC SCIENCES
Dallas Foster, David John Gagne II, Daniel B. Whitt
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引用次数: 12

Abstract

The ocean mixed layer plays an important role in the coupling between the upper ocean and atmosphere across a wide range of time scales. Estimation of the variability of the ocean mixed layer is therefore important for atmosphere-ocean prediction and analysis. The increasing coverage of in situ Argo profile data allows for an increasingly accurate analysis of the mixed layer depth (MLD) variability associated with deviations from the seasonal climatology. However, sampling rates are not sufficient to fully resolve subseasonal ( day) MLD variability. Yet, many multivariate observations-based analyses include implicit modeled subseasonal MLD variability. One analysis method is optimal interpolation of in situ data, but the interior analysis can be improved by leveraging surface data with regression or variational approaches. Here, we demonstrate how machine learning methods and satellite sea surface temperature, salinity, and height facilitate MLD estimation in a pilot study of two regions: the mid-latitude southern Indian and the eastern equatorial Pacific Oceans. We construct multiple machine learning architectures to produce weekly 1/2° gridded MLD anomaly fields (relative to a monthly climatology) with uncertainty estimates. We test multiple traditional and probabilistic machine learning techniques to compare both accuracy and probabilistic calibration. We validate our methodology by applying it to ocean model simulations. We find that incorporating sea surface data through a machine learning model improves the performance of spatiotemporal MLD variability estimation compared to optimal interpolation of Argo observations alone. These preliminary results are a promising first step for the application of machine learning to MLD prediction.

Abstract Image

基于密集卫星和稀疏原位观测的海洋混合层深度的概率机器学习估计
海洋混合层在大时间尺度上对上层海洋与大气的耦合起着重要作用。因此,估算海洋混合层的变率对于大气-海洋的预测和分析是重要的。原位Argo剖面数据覆盖范围的增加,使得对与季节气候偏差相关的混合层深度(MLD)变率的分析越来越准确。然而,采样率不足以完全解决分季节(日)MLD变异性。然而,许多基于多变量观测的分析包括隐式模拟的亚季节MLD变异性。一种分析方法是就地数据的最佳插值,但内部分析可以通过利用回归或变分方法利用地表数据来改进。在这里,我们展示了机器学习方法和卫星海面温度、盐度和高度如何在两个地区的试点研究中促进MLD估计:中纬度南印度和东赤道太平洋。我们构建了多个机器学习架构,以产生具有不确定性估计的每周1/2°网格化MLD异常场(相对于月度气候)。我们测试了多种传统和概率机器学习技术,以比较准确性和概率校准。我们通过将其应用于海洋模型模拟来验证我们的方法。我们发现,与Argo观测数据的最优插值相比,通过机器学习模型结合海面数据可以提高时空MLD变异性估计的性能。这些初步结果是机器学习应用于MLD预测的有希望的第一步。
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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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