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An Optimized-Parameter Spectral Clustering Approach to Coherent Structure Detection in Geophysical Flows

机译:地球物理流动相干结构检测的优化参数光谱聚类方法

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In Lagrangian dynamics, the detection of coherent clusters can help understand the organization of transport by identifying regions with coherent trajectory patterns. Many clustering algorithms, however, rely on user-input parameters, requiring a priori knowledge about the flow and making the outcome subjective. Building on the conventional spectral clustering method of Hadjighasem et al. (2016), a new optimized-parameter spectral clustering approach is developed that automatically identifies optimal parameters within pre-defined ranges. A noise-based metric for quantifying the coherence of the resulting coherent clusters is also introduced. The optimized-parameter spectral clustering is applied to two benchmark analytical flows, the Bickley Jet and the asymmetric Duffing oscillator, and to a realistic, numerically generated oceanic coastal flow. In the latter case, the identified model-based clusters are tested using observed trajectories of real drifters. In all examples, our approach succeeded in performing the partition of the domain into coherent clusters with minimal inter-cluster similarity and maximum intra-cluster similarity. For the coastal flow, the resulting coherent clusters are qualitatively similar over the same phase of the tide on different days and even different years, whereas coherent clusters for the opposite tidal phase are qualitatively different.
机译:在拉格朗日动态中,相干集群的检测可以通过识别具有相干轨迹模式的区域来帮助了解运输组织。然而,许多聚类算法依赖于用户输入参数,需要先验的关于流程并使结果主观性的知识。哈希斯姆等人的传统光谱聚类方法构建。 (2016),开发了一种新的优化参数频谱聚类方法,可自动识别预定义范围内的最佳参数。还介绍了用于量化所得相干簇的相干性的基于噪声的度量。优化参数光谱聚类应用于两个基准分析流量,Bickley Jet和非对称Duffing振荡器,以及逼真,数值产生的海洋沿海流程。在后一种情况下,使用观察到的真实漂移器的轨迹测试了所识别的基于模型的簇。在所有示例中,我们的方法成功地执行域的分区,以最小的聚类间相似性和最大簇内相似性。对于沿海流程,所得到的相干簇在不同日期甚至不同的潮汐的相同阶段定性相似,而相对的潮汐相的相干簇具有定性不同。

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