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A spatio-temporal model for Red Sea surface temperature anomalies

机译:红海表面温度异常时空模型

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摘要

This paper details the approach of teamLancasterto the 2019 EVA data challenge, dealing with spatio-temporal modelling of Red Sea surface temperature anomalies. We model the marginal distributions and dependence features separately; for the former, we use a combination of Gaussian and generalised Pareto distributions, while the dependence is captured using a localised Gaussian process approach. We also propose a space-time moving estimate of the cumulative distribution function that takes into account spatial variation and temporal trend in the anomalies, to be used in those regions with limited available data. The team's predictions are compared to results obtained via an empirical benchmark. Our approach performs well in terms of the threshold-weighted continuous ranked probability score criterion, chosen by the challenge organiser.
机译:本文详述了TeamLancasterto的方法,2019年EVA数据挑战,处理红海表面温度异常的时空建模。我们分别模拟边际分布和依赖性特征;对于前者来说,我们使用高斯和广义帕累托分布的组合,而使用局部高斯过程方法捕获依赖。我们还提出了累计分布函数的时空移动估计,该估计考虑了异常中的空间变化和时间趋势,以便在具有有限的可用数据的区域中使用。将团队的预测与通过经验基准获得的结果进行比较。我们的方法在挑战组织者选择的阈值加权连续排名概率评分标准方面表现良好。

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