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Characterization of within-Day beginning times of storms for stochastic simulation.

机译:表征风暴的日内开始时间以进行随机模拟。

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The beginning times of storms within a day are often required for stochastic modeling purposes and for studies on plant growth. This study investigated the variation in frequency distributions of storm initiation time (SI time) within a day due to elevation changes and month. Actual storms without 24 h constraints were used, as opposed to simply bursts of precipitation within a 24 h period. Two methods of characterizing and quantifying these distributions were investigated: kernel density estimation (KDE), and a mixed doubly truncated normal (MDTN) distribution method using nonlinear curve fitting subject to bounds on the parameters. Parameter estimation methods were also investigated. Data came from the raingauge network maintained by the USDA-ARS at the Reynolds Creek Experimental Watershed in southwest Idaho over a 982 m elevation gradient. There was no difference between frequency distributions of SI time with elevation or precipitation type over the 147 km2 study area. There was a significant shift in SI-time distribution from earlier in the morning in late fall and winter to early afternoon during the spring and summer. Both the KDE and MDTN methods accurately characterized the observed histograms, which included near-uniform, single-mode, and bimodal distributions. The MDTN method worked well most of the time (~97%) but can have mathematical convergence problems. An SI-time analysis based on a 24 h cycle starting at 2100 h yielded a better fit to the data than a "standard day" defined to start at midnight using the MDTN method. Exploratory regressions between the four MDTN parameters and several readily available independent variables did not yield consistent or significant predictive relationships. Cumulative distributions for either the KDE or MDTN methods are suggested for stochastic modeling purposes on a monthly basis, as they represent well observed histograms of SI times. The KDE method is suggested for use because of its simplicity in ungauged areas as long as neighboring data are available. The methods have utility for characterizing time variation of other weather elements.
机译:随机建模和植物生长研究通常需要一天暴风雨的开始时间。这项研究调查了由于海拔和月份的变化,一天之内风暴开始时间(SI时间)的频率分布的变化。使用不受24小时限制的实际暴风雨,而不是在24小时内仅发生暴雨。研究了表征和量化这些分布的两种方法:核密度估计(KDE)和使用受参数限制的非线性曲线拟合的混合双截断正态(MDTN)分布方法。还研究了参数估计方法。数据来自USDA-ARS在位于爱达荷州西南部Reynolds Creek实验流域的海拔982 m高度处的雨量计网络。在147 km 2 研究区,SI时间的频率分布与海拔或降水类型之间没有差异。 SI时间分布从秋季和冬季的清晨到春季和夏季的午后发生了很大变化。 KDE和MDTN方法都可以准确地表征观察到的直方图,包括接近均匀的分布,单模分布和双峰分布。 MDTN方法在大多数情况下效果良好(约97%),但可能存在数学收敛性问题。与从MDTN方法定义为从午夜开始的“标准日”相比,基于从2100小时开始的24小时周期的SI时间分析对数据的拟合度更高。四个MDTN参数与几个容易获得的自变量之间的探索性回归未产生一致或重要的预测关系。对于随机建模目的,建议每月使用KDE或MDTN方法的累积分布,因为它们代表了SI时间的观察良好的直方图。建议使用KDE方法,因为只要有可用的相邻数据,它就可以在未覆盖区域中保持简单性。该方法可用于表征其他天气要素的时间变化。

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