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Event-based stochastic point rainfall resampling for statistical replication and climate projection of historical rainfall series

机译:基于事件的随机点降雨重采样,用于统计复制和历史降雨系列的气候预测

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摘要

Continuous and long rainfall series are a necessity in rural and urban hydrology for analysis and design purposes. Local historical point rainfall series often cover several decades, which makes it possible to estimate rainfall means at different timescales, and to assess return periods of extreme events. Due to climate change, however, these series are most likely not representative of future rainfall. There is therefore a demand for climate-projected long rainfall series, which can represent a specific region and rainfall pattern as well as fulfil requirements of long rainfall series which includes climate changes projected to a specific future period. This paper presents a framework for resampling of historical point rainfall series in order to generate synthetic rainfall series, which has the same statistical properties as an original series. Using a number of key target predictions for the future climate, such as winter and summer precipitation, and representation of extreme events, the resampled historical series are projected to represent rainfall properties in a future climate. Climate-projected rainfall series are simulated by brute force randomization of model parameters, which leads to a large number of projected series. In order to evaluate and select the rainfall series with matching statistical properties as the key target projections, an extensive evaluation procedure is developed.
机译:为了分析和设计目的,连续和长时间降雨序列是农村和城市水文学的必要条件。当地历史点降雨序列通常涵盖数十年,这使得可以估计不同时间尺度的降雨平均值,并评估极端事件的返回期。但是,由于气候变化,这些序列很可能不能代表未来的降雨。因此,存在对气候预测的长降雨序列的需求,该序列可以代表特定的地区和降雨模式,并且满足长降雨序列的要求,其中包括对未来特定时期的气候变化的预测。本文提出了一个历史点降雨序列的重采样框架,以生成合成降雨序列,该序列具有与原始序列相同的统计特性。利用对未来气候的许多关键目标预测(例如冬季和夏季降水以及极端事件的表示),预计重采样的历史序列将代表未来气候中的降雨特性。气候预测的降雨序列是通过模型参数的蛮力随机化来模拟的,这导致了大量的预测序列。为了评估和选择具有匹配统计特性的降雨序列作为关键目标预测,开发了广泛的评估程序。

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