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Sensitivity of Skill Score Metric to Validate Lagrangian Simulations in Coastal Areas: Recommendations for Search and Rescue Applications

机译:技能评分度量的敏感性验证沿海地区的拉格朗日模拟:搜索和救援应用的建议

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摘要

Search and rescue (SAR) modeling applications, mostly based on Lagrangian tracking particle algorithms, rely on the accuracy of met-ocean forecast models. Skill assessment methods are therefore required to evaluate the performance of ocean models in predicting particle trajectories. The Skill Score (SS), based on the Normalized Cumulative Lagrangian Separation (NCLS) distance between simulated and satellite-tracked drifter trajectories, is a commonly used metric. However, its applicability in coastal areas, where most of the SAR incidents occur, is difficult and sometimes unfeasible, because of the high variability that characterizes the coastal dynamics and the lack of drifter observations. In this study, we assess the performance of four models available in the Ibiza Channel (Western Mediterranean Sea) and evaluate the applicability of the SS in such coastal risk-prone regions seeking for a functional implementation in the context of SAR operations. We analyze the SS sensitivity to different forecast horizons and examine the best way to quantify the average model performance, to avoid biased conclusions. Our results show that the SS increases with forecast time in most cases. At short forecast times (i.e., 6 h), the SS exhibits a much higher variability due to the short trajectory lengths observed compared to the separation distance obtained at timescales not properly resolved by the models. However, longer forecast times lead to the overestimation of the SS due to the high variability of the surface currents. Findings also show that the averaged SS, as originally defined, can be misleading because of the imposition of a lower limit value of zero. To properly evaluate the averaged skill of the models, a revision of its definition, the so-called SS∗, is recommended. Furthermore, whereas drifters only provide assessment along their drifting paths, we show that trajectories derived from high-frequency radar (HFR) effectively provide information about the spatial distribution of the model performance inside the HFR coverage. HFR-derived trajectories could therefore be used for complementing drifter observations. The SS is, on average, more favorable to coarser-resolution models because of the double-penalty error, whereas higher-resolution models show both very low and very high performance during the experiments.
机译:搜索和救援(SAR)建模应用,主要基于拉格朗日跟踪粒子算法,依靠欧海预测模型的准确性。因此,需要技能评估方法来评估海洋模型在预测粒子轨迹中的性能。基于模拟和卫星跟踪的漂移轨迹之间的归一化累积拉格朗日分离(NCLS)距离的技能评分(SS)是常用的公制。然而,它在大多数特定事件发生的沿海地区的适用性是困难的,有时是不可行的,因为具有沿海动力学和缺乏漂移观察的高度变化。在这项研究中,我们评估了伊维萨州渠道(西地中海)中有四种型号的表现,并评估了SS在寻求SAR运营情况下寻求功能性实施的沿海风险易发地区的适用性。我们分析了对不同预测视野的SS敏感性,并检查了量化平均模型性能的最佳方式,以避免偏见的结论。我们的结果表明,在大多数情况下,SS在预测时间内增加。在短期预测时(即6小时),SS由于在模型未正确解决的时间尺度下获得的分离距离而观察到的短轨迹长度,SS具有更高的可变性。然而,由于表面电流的高可变性,更长的预测次数导致SS的高度估计。调查结果还表明,由于最初定义的平均SS可以误导,因为施加较低限值为零。为了适当地评估模型的平均技能,建议修改其定义,所谓的SS *。此外,漂移器仅提供沿漂移路径提供评估,而我们表明从高频雷达(HFR)导出的轨迹有效地提供了关于HFR覆盖内部模型性能的空间分布的信息。因此,HFR衍生的轨迹可以用于补充漂移观察。平均而言,SS是由于双惩罚误差而更有利于拟商分辨率模型,而高分辨率模型在实验期间显示出非常低且非常高的性能。

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