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Parameter Estimation Method and Updating of Regional Prediction Equations for Ungaged Sites for the Desert Region of California

机译:加州沙漠地区未测量场地的参数估计方法和区域预测方程的更新

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The U.S. Geological Survey (USGS) is currently updating at-site flood frequency estimates for USGS streamflow-gaging stations in the desert region of California. The at-site flood-frequency analysis is complicated by short record lengths (less than 20 years is common) and numerous zero flows/low outliers at many sites. Estimates of the three parameters (mean, standard deviation, and skew) required for fitting the log Pearson Type 3 (LP3) distribution are likely to be highly unreliable based on the limited and heavily censored at-site data. In a generalization of the recommendations in Bulletin 17B, a regional analysis was used to develop regional estimates of all three parameters (mean, standard deviation, and skew) of the LP3 distribution. A regional skew value of zero from a previously published report was used with a new estimated mean squared error (MSE) of 0.20. A weighted least squares (WLS) regression method was used to develop both a regional standard deviation and a mean model based on annual peak-discharge data for 33 USGS stations throughout California's desert region. At-site standard deviation and mean values were determined by using an expected moments algorithm (EMA) method for fitting the LP3 distribution to the logarithms of annual peak-discharge data. Additionally, a multiple Grubbs-Beck (MGB) test, a generalization of the test recommended in Bulletin 17B, was used for detecting multiple potentially influential low outliers in a flood series. The WLS regression found that no basin characteristics could explain the variability of standard deviation. Consequently, a constant regional standard deviation model was selected, resulting in a log-space value of 0.91 with a MSE of 0.03 log units. Yet drainage area was found to be statistically significant at explaining the site-to-site variability in mean. The linear WLS regional mean model based on drainage area had a pseudo-R_δ~2 of 51 percent and a MSE of 0.32 log units. The regional parameter estimates were then used to develop a set of equations for estimating flows with 50-, 20-, 10-, 4-, 2-, 1-, 0.5-, and 0.2-percent annual exceedance probabilities for ungaged basins. The final equations are functions of drainage area. Average standard errors of prediction for these regression equations range from 214.2 to 856.2 percent.
机译:美国地质调查局(USGS)目前正在为加利福尼亚沙漠地区的USGS流量监测站更新现场洪水频率估算值。现场洪水频率分析由于记录时间短(通常少于20年)以及许多站点的大量零流量/低异常值而变得复杂。基于有限且经过严格审查的现场数据,拟合对数Pearson Type 3(LP3)分布所需的三个参数(平均值,标准偏差和偏斜)的估计可能非常不可靠。在公告17B中对建议的概括中,使用了区域分析来开发LP3分布的所有三个参数(均值,标准差和偏斜)的区域估计。使用以前发布的报告中的区域偏斜值为零,新的估计均方误差(MSE)为0.20。加权最小二乘(WLS)回归方法用于基于加州沙漠地区33个USGS站的年度峰值流量数据,开发区域标准差和均值模型。现场标准偏差和平均值是通过使用期望矩算法(EMA)方法确定的,以使LP3分布与年度高峰流量数据的对数拟合。此外,使用多重Grubbs-Beck(MGB)测试(公告17B中推荐的测试的一般化)来检测洪水序列中的多个潜在影响较低的离群值。 WLS回归发现,没有盆地特征可以解释标准偏差的变化。因此,选择了一个恒定的区域标准差模型,得到的对数空间值为0.91,MSE为0.03个对数单位。然而,发现流域面积在解释均值间差异方面具有统计学意义。基于流域面积的线性WLS区域均值模型的伪R_δ〜2为51%,MSE为0.32 log单位。然后,使用区域参数估计值来开发一组方程式,以估算未开垦盆地的年度超标概率为50%,20%,10%,4-,2-,1-,0.5%和0.2%的流量。最终方程是流域面积的函数。这些回归方程的平均预测标准误差为214.2%至856.2%。

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