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Detecting flow features in scarce trajectory data using networks derived from symbolic itineraries: an application to surface drifters in the North Atlantic

机译:使用从符号行程的网络检测稀缺轨迹数据中的流量特征:在北大西洋浮出的应用程序

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The basin-wide surface transport of tracers such as heat, nutrients and plastic in the North Atlantic Ocean is organized into large-scale flow structures such as the Western Boundary Current and the Subtropical and Subpolar gyres. Being able to identify these features from drifter data is important for studying tracer dispersal but also for detecting changes in the large-scale surface flow due to climate change. We propose a new and conceptually simple method to detect groups of trajectories with similar dynamical behaviour from drifter data using network theory and normalized cut spectral clustering. Our network is constructed from conditional bin-drifter probability distributions and naturally handles drifter trajectories with data gaps and different lifetimes. The eigenvalue problem of the respective Laplacian can be replaced by a singular value decomposition of a related sparse data matrix. The construction of this matrix scales with O(NM+Nτ), where N is the number of particles, M the number of bins and τ the number of time steps. The concept behind our network construction is rooted in a particle's symbolic itinerary derived from its trajectory and a state space partition, which we incorporate in its most basic form by replacing a particle's itinerary by a probability distribution over symbols. We represent these distributions as the links of a bipartite graph, connecting particles and symbols. We apply our method to the periodically driven double-gyre flow and successfully identify well-known features. Exploiting the duality between particles and symbols defined by the bipartite graph, we demonstrate how a direct low-dimensional coarse definition of the clustering problem can still lead to relatively accurate results for the most dominant structures and resolve features down to scales much below the coarse graining scale. Our method also performs well in detecting structures with incomplete trajectory data, which we demonstrate for the double-gyre flow by randomly removing data points. We finally apply our method to a set of ocean drifter trajectories and present the first network-based clustering of the North Atlantic surface transport based on surface drifters, successfully detecting well-known regions such as the Subpolar and Subtropical gyres, the Western Boundary Current region and the Caribbean Sea.
机译:北大西洋中的盆地围绕示踪剂的表面传输,如热,营养物质和塑料,组织成大规模的流动结构,如西边界电流和亚热带和亚波拉旋转。能够识别来自漂移数据的这些特征对于研究示踪剂分散而言是重要的,而且还用于检测由于气候变化引起的大规模表面流动的变化。我们提出了一种新的和概念上简单的方法来检测具有与使用网络理论的漂移数据的类似动态行为的轨迹组和归一化切割光谱聚类。我们的网络由条件Bin-Drifter概率分布构造,自然处理具有数据间隙和不同寿命的漂移轨迹。各种拉普拉斯的特征值问题可以通过相关稀疏数据矩阵的奇异值分解来替换。该矩阵的构造与O(nm + nτ)进行缩放,其中n是粒子的数量,m的数量和τ的时间次数。我们网络建设背后的概念植根于源自轨迹的象征性的行程和状态空间分区,我们通过在符号上通过概率分布替换粒子的行程来纳入最基本的形式。我们将这些分布代表为双链图的链接,连接粒子和符号。我们将我们的方法应用于定期驱动的双重流量并成功识别众所周知的功能。利用二分类图定义的粒子和符号之间的二元性,我们演示了聚类问题的直接低维粗定义如何导致最主导结构的相对准确的结果,并将功能解析为低于粗糙的粗糙度规模。我们的方法在检测具有不完整轨迹数据的结构方面还表现良好,我们通过随机删除数据点来证明双层流量。我们终于将我们的方法应用于一组海洋漂移轨迹,并以基于表面漂移器的北大西洋地面传输的第一个基于网络的聚类,成功地检测了众所周知的区域,例如亚波拉尔和亚热带旋转,西部边界电流区域和加勒比海。

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