The use of the annual maximum series for flood frequency analyses limits the considered information to one event per year and one sample that is assumed to be homogeneous. However, flood may have different generating processes, such as snowmelt, heavy rainfall or long-duration rainfall, which makes the assumption of homogeneity questionable. Flood types together with statistical flood-type-specific mixture models offer the possibility to consider the different flood-generating processes separately and therefore obtain homogeneous sub-samples. The combination of flood types in a mixture model then gives classical flood quantiles for given return periods. This higher flexibility comes to the cost of more distribution parameters, which may lead to a higher uncertainty in the estimation. This study compares the classical flood frequency models such as the annual maximum series with the type-specific mixture model for different scenarios relevant for design flood estimation in terms of Bias and variance. Thee results show that despite the higher number of parameters, the mixture model is preferable compared to the classical models, if a high number of flood events per year occurs and/or the flood types differ significantly in their distribution parameters.
翻译:洪水频率分析使用年度最大量序列进行洪水频率分析,使所考虑的信息限于每年一次的事件,而一个样本则假定是同质的,然而,洪水可能具有不同的产生过程,如雪融、暴雨或长期降雨等,这就使人对同一性的假设产生疑问。洪水类型和统计性洪水类型特有的混合模型有可能分别考虑不同的洪水产生过程,从而获得同一的子样本。混合模型中的洪水类型组合为特定返回期提供了典型的洪水量。这种更大的灵活性在于更多的分布参数的成本,这可能导致估算中更大的不确定性。这项研究比较了典型的洪水频率模型,如年度最大量序列,与不同情况下设计洪水估算的不同情景的具体类型混合物模型,从Bias和差异的角度来看。结果显示,尽管参数数量较高,但是如果每年发生大量洪水事件,而且/或洪水类型在分布参数上有很大差异,混合物模型比经典模型要好得多。