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Stochastic evaluation of simple pairing approaches to reconstruct incomplete rainfall time series

机译:简单配对方法的随机评估以重建不完整的降雨时间序列

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摘要

Two-station pairing approaches are routinely used to infill missing information in incomplete rainfall databases. We evaluated the performance of three simple methodologies to reconstruct incomplete time series in presence of variable nonlinear correlation between data pairs. Nonlinearity stems from the statistics describing the marginal peak-over-threshold (POT) values of rainfall events. A Monte Carlo analysis was developed to quantitatively assess expected errors from the use of chronological pairing (CP) with linear and nonlinear regression and frequency pairing (FP). CP is based on a priori selection of regression functions, while FP is based on matching the probability of non-exceedance of an event from one time series with the probability of non-exceedance of a similar event from another time series. We adopted a generalized Pareto (GP) model to describe POT events, and a t-copula algorithm to generate reference nonlinearly correlated pairs of random temporal distributions distributed according with the GP model. The results suggest that the optimal methodology strongly depends on GP statistics. In general, CP seems to provide the lowest errors when GP statistics were similar and correlation became linear; we found that a power-2 function performs well for the selected statistics when the number of missing points is limited. FP outperforms the other methods when POT statistics are different and variables are markedly nonlinearly correlated. Ensemble-based results seem to be supported by the analysis of observed precipitation at two real-world gauge stations.
机译:通常使用两站配对方法在不完整的降雨数据库中填充丢失的信息。我们评估了三种简单方法在数据对之间存在可变非线性相关性的情况下重建不完整时间序列的性能。非线性源自描述降雨事件的边际峰值阈值(POT)值的统计数据。开发了蒙特卡洛(Monte Carlo)分析,以通过使用具有线性和非线性回归以及频率配对(FP)的时间配对(CP)来定量评估预期误差。 CP基于回归函数的先验选择,而FP基于一个时间序列中一个事件的不超过概率与另一个时间序列中一个类似事件的不超过概率匹配。我们采用广义Pareto(GP)模型来描述POT事件,并采用t-copula算法来生成根据GP模型分布的参考非线性相关的随机时间分布对。结果表明,最佳方法在很大程度上取决于GP统计数据。通常,当GP统计量相似且相关性呈线性关系时,CP似乎提供的错误最少。我们发现,当缺失点的数量受到限制时,幂2函数对于所选的统计数据表现良好。当POT统计信息不同且变量具有明显的非线性相关性时,FP优于其他方法。基于集合的结果似乎得到了两个实际测量站观测到的降水分析的支持。

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