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Sensitivity of goodness-of-fit statistics to rainfall data rounding off

机译:拟合优度统计对四舍五入的降雨数据的敏感性

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An analysis based on the L-moments theory suggests of adopting the generalized Pareto distribution to interpret daily rainfall depths recorded by the rain-gauge network of the Hydrological Survey of the Sardinia Region. Nevertheless, a big problem, not yet completely resolved, arises in the estimation of a left-censoring threshold able to assure a good fitting of rainfall data with the generalized Pareto distribution. In order to detect an optimal threshold, keeping the largest possible number of data, we chose to apply a "failure-to-reject" method based on goodness-of-fit tests, as it was proposed by Choulakian and Stephens [Choulakian, V., Stephens, M.A., 2001. Goodness-of-fit tests for the generalized Pareto distribution. Technometrics 43, 478-484]. Unfortunately, the application of the test, using percentage points provided by Choulakian and Stephens (2001), did not succeed in detecting a useful threshold value in most analyzed time series. A deeper analysis revealed that these failures are mainly due to the presence of large quantities of rounding off values among sample data, affecting the distribution of goodness-of-fit statistics and leading to significant departures from percentage points expected for continuous random variables. A procedure based on Monte Carlo simulations is thus proposed to overcome these problems.
机译:基于L矩理论的分析建议采用广义Pareto分布来解释撒丁岛地区水文测量的雨量计网络记录的每日降雨深度。然而,在估计左删截阈值时仍存在一个尚未完全解决的大问题,该阈值能够确保降雨数据与广义帕累托分布的良好拟合。为了检测最佳阈值并保持最大数量的数据,我们选择了基于拟合优度检验的“失败拒绝”方法,这是Choulakian和Stephens [Choulakian,V 。,Stephens,MA,2001。广义Pareto分布的拟合优度检验。 Technometrics 43,478-484]。不幸的是,使用Choulakian和Stephens(2001)提供的百分比进行的测试未能在大多数分析的时间序列中成功检测到有用的阈值。更深入的分析表明,这些失败主要是由于样本数据中存在大量舍入值,从而影响了拟合优度统计信息的分布,并导致与连续随机变量的预期百分比明显不同。因此,提出了一种基于蒙特卡洛模拟的方法来克服这些问题。

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