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Improving the accuracy of tipping-bucket rain records using disaggregation techniques

机译:使用分解技术提高翻斗雨记录的准确性

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摘要

We present a methodology able to infer the influence of rainfall measurement errors on the reliability of extreme rainfall statistics. We especially focus on systematic mechanical errors affecting the most popular rain intensity measurement instrument, namely the tipping-bucket rain-gauge (TBR). Such uncertainty strongly depends on the measured rainfall intensity (RI) with systematic underestimation of high RIs, leading to a biased estimation of extreme rain rates statistics. Furthermore, since intense rain-rates are usually recorded over short intervals in time, any possible correction strongly depends on the time resolution of the recorded data sets. We propose a simple procedure for the correction of low resolution data series after disaggregation at a suitable scale, so that the assessment of the influence of systematic errors on rainfall statistics become possible. The disaggregation procedure is applied to a 40-year long rain-depth dataset recorded at hourly resolution by using the IRP (Iterated Random Pulse) algorithm. A set of extreme statistics, commonly used in urban hydrology practice, have been extracted from simulated data and compared with the ones obtained after direct correction of a 12-year high resolution (1 min) RI series. In particular, the depth-duration—frequency curves derived from the original and corrected data sets have been compared in order to quantify the impact of non-corrected rain intensity measurements on design rainfall and the related statistical parameters. Preliminary results suggest that the IRP model, due to its skill in reproducing extreme rainfall intensities at fine resolution in time, is well suited in supporting rainfall intensity correction techniques.
机译:我们提出了一种能够推断降雨测量误差对极端降雨统计数据的可靠性的影响的方法。我们特别关注影响最流行的雨强度测量仪器(即倾卸式雨量计(TBR))的系统性机械误差。这种不确定性在很大程度上取决于测得的降雨强度(RI),而系统地低估了高RI,从而导致极端降雨率统计数据的估计偏差。此外,由于通常在较短的时间间隔内记录下大雨量,因此任何可能的校正都强烈取决于所记录数据集的时间分辨率。我们提出了一个简单的程序,用于在适当规模下分解后校正低分辨率数据序列,从而使评估系统误差对降雨统计的影响成为可能。通过使用IRP(迭代随机脉冲)算法,将分解过程应用于以小时分辨率记录的40年长的雨深数据集。从模拟数据中提取了一组常用于城市水文实践的极端统计数据,并将其与直接校正12年高分辨率(1分钟)RI系列后获得的数据进行了比较。特别是,比较了从原始数据集和校正后的数据集中得出的深度-持续时间-频率曲线,以量化未经校正的降雨强度测量对设计降雨和相关统计参数的影响。初步结果表明,IRP模型由于能够及时以精细的分辨率再现极端降雨强度,因此非常适合支持降雨强度校正技术。

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