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Machine Learning‐Based Clustering of Oceanic Lagrangian Particles: Identification of the Main Pathways of the Labrador Current

M. Jutras, N. Planat,C. O. Dufour, L. C. Talbot

Journal of advances in modeling earth systems(2024)SCI 2区

McGill Univ

Cited 0|Views3
Abstract
Modeled geospatial Lagrangian trajectories are widely used in Earth Science, including in oceanography, atmospheric science and marine biology. The typically large size of these data sets makes them arduous to analyze, and their underlying pathways challenging to identify. Here, we show that we can use a machine learning unsupervised k‐means++ clustering method combined with expert aggregation of clusters to identify the pathways of the Labrador Current from a large set of modeled Lagrangian trajectories. The presented method requires simple pre‐processing of the data, including a Cartesian correction on longitudes and a principal component analysis reduction. The clustering is performed in a kernelized space and uses a larger number of clusters than the number of expected pathways. To identify the main pathways, similar clusters are grouped into pathway categories by experts in the circulation of the region of interest. We find that the Labrador Current mainly follows a westward‐flowing and an eastward retroflecting pathway (20% and 50% of the flow, respectively) that compensate each other through time in a see‐saw behavior. These pathways experience a strong variability (representing through time 4%–42% and 24%–73% of the flow, respectively). Two thirds of the retroflection occurs at the tip of the Grand Banks, and one quarter at Flemish Cap. The westward pathway is mostly fed by the on‐shelf branch of the Labrador Current, and the eastward pathway by the shelf‐break branch. Among the pathways of secondary importance, we identify a previously unreported one that feeds the subtropics across the Gulf Stream.
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Lagrangian tracking,oceanography,unsupervised clustering,machine learning
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要点】:本文提出了一种基于机器学习的无监督k-means++聚类方法,结合专家聚合,成功识别了拉布拉多洋流的路径,发现了新的次要路径,对理解海洋环流有重要意义。

方法】:使用k-means++聚类方法,对模型化拉格朗日轨迹数据进行预处理(包括经度笛卡尔修正和主成分分析降维),并在核空间中执行聚类,然后通过专家对相似集群进行路径分类。

实验】:实验使用了模型化的拉格朗日轨迹数据集,通过聚类分析得出拉布拉多洋流主要遵循向西流动和向东反转向路径,并在专家指导下对路径进行了分类,发现了一条以前未报告的次要路径,该路径跨越墨西哥湾流向副热带地区输送。