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首页> 外文期刊>Stochastic environmental research and risk assessment >Incorporating daily rainfalls to derive rainfall DDF relationships at ungauged sites in Hong Kong and quantifying their uncertainty
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Incorporating daily rainfalls to derive rainfall DDF relationships at ungauged sites in Hong Kong and quantifying their uncertainty

机译:结合每日降雨量以得出香港未开垦地点的降雨DDF关系并量化其不确定性

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摘要

Rainfall depth-duration-frequency (DDF) relationships are essential inputs for the design and management of various hydrosystem infrastructures (e.g., urban drainages, dams, dykes, etc.). In many cases, rainfall DDF relationships are required at a location where there is no gauge. However, due to the presence of intrinsic randomness of the precipitation process, limited rainfall record, and spatial interpolation, the derived DDF relationships at ungauged sites are subject to uncertainty. This is especially true in Hong Kong with regard to record length. To enhance the utilization of available rainfall data, a daily precipitation-based DDF generation framework for conventional rain gauges in Hong Kong has been developed by the authors utilizing a scaling model. In this article, the methodological framework is extended to derive rainfall DDF relationships at ungauged sites. Owing to the non-linearity and complexity of the modeling process, exact statistical features of derived DDF relationships are difficult to obtain. In this study, Harr's probabilistic point estimation method, known for its computational simplicity and accuracy, is applied to quantify the uncertainty features of rainfall DDF relationships derived for ungauged sites in Hong Kong. For illustration, four locations in different geographical locations in Hong Kong are considered. The results show that the uncertainty associated with the estimated statistical moments of annual maximum daily rainfall is significant in contributing to the overall uncertainty of derived rainfall DDF relationships.
机译:降雨深度-持续时间-频率(DDF)关系是设计和管理各种水文系统基础设施(例如城市排水,水坝,堤防等)的必要输入。在许多情况下,在没有仪表的地方需要降雨DDF关系。但是,由于降水过程的内在随机性,有限的降雨记录和空间插值的存在,在未覆盖地点的导出DDF关系存在不确定性。就记录长度而言,在香港尤其如此。为了提高对可用降雨数据的利用,作者利用比例模型开发了每日基于降水的DDF生成框架,用于香港传统雨量计。在本文中,方法框架得到了扩展,可以导出未开垦地点的降雨DDF关系。由于建模过程的非线性和复杂性,很难获得派生DDF关系的确切统计特征。在这项研究中,以其计算简单性和准确性着称的Harr概率点估计方法被用于量化从香港未覆盖站点获得的降雨DDF关系的不确定性特征。为了说明,考虑了香港不同地理位置的四个位置。结果表明,与估计的年度最大每日降雨量的统计时刻相关的不确定性在导致派生降雨DDF关系的总体不确定性方面具有重要意义。

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