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Uncertainty Quantification of Trajectory Clustering Applied to Ocean Ensemble Forecasts

机译:轨迹集群的不确定性量化适用于海洋集群预测

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Partitioning ocean flows into regions dynamically distinct from their surroundings based on material transport can assist search-and-rescue planning by reducing the search domain. The spectral clustering method partitions the domain by identifying fluid particle trajectories that are similar. The partitioning validity depends on the accuracy of the ocean forecasting, which is subject to several sources of uncertainty: model initialization, limited knowledge of the physical processes, boundary conditions, and forcing terms. Instead of a single model output, multiple realizations are produced spanning a range of potential outcomes, and trajectory clustering is used to identify robust features and quantify the uncertainty of the ensemble-averaged results. First, ensemble statistics are used to investigate the cluster sensitivity to the spectral clustering method free-parameters and the forecast parameters for the analytic Bickley jet, a geostrophic flow model. Then, we analyze an operational coastal ocean ensemble forecast and compare the clustering results to drifter trajectories south of Martha’s Vineyard. This approach identifies regions of low uncertainty where drifters released within a cluster predominantly remain there throughout the window of analysis. Drifters released in regions of high uncertainty tend to either enter neighboring clusters or deviate from all predicted outcomes.
机译:分区海洋流入与基于材料传输的周围环境不同的区域可以通过减少搜索域来帮助搜索和救援规划。光谱聚类方法通过识别类似的流体粒子轨迹来分区域。分区有效性取决于海洋预测的准确性,该预测受到几个不确定性的若干来源:模型初始化,物理过程的有限知识,边界条件和强制术语。代替单个模型输出,跨越多个潜在结果产生多种实现,并且轨迹群集用于识别鲁棒特征并量化集合平均结果的不确定性。首先,总体统计用于研究的谱聚类方法自由参数和用于解析比克利射流,一个地转流模型的预测参数群集灵敏度。然后,我们分析了一个运营的沿海海洋集合预测,并将聚类结果与玛莎葡萄园以南的漂移轨迹进行比较。该方法识别低不确定性的区域,其中在整个分析窗口中仍然存在群体内的漂移者。在高不确定性区域释放的漂移者倾向于进入相邻的群集或偏离所有预测结果。

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