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首页> 外文期刊>Hydrology and Earth System Sciences >Circulation pattern based parameterization of a multiplicative random cascade for disaggregation of observed and projected daily rainfall time series
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Circulation pattern based parameterization of a multiplicative random cascade for disaggregation of observed and projected daily rainfall time series

机译:基于循环模式的可乘随机级联参数化,用于分解观测和预计的每日降雨时间序列

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The use of multiplicative random cascades (MRCs) for temporal rainfall disaggregation has been extensively studied in the past. MRCs are appealing for rainfall disaggregation due to their formal simplicity and the possibility to extract the model parameters directly from observed high resolution rainfall data. These parameters, however, represent the rainfall characteristics of the observation period. Since rainfall characteristics of different time slices are changing due to climate variability, we propose a parameterization approach for MRCs to adjust the parameters according to past (observed) or future (projected) time series. This is done on the basis of circulation patterns (CPs) by extracting a distinct MRC parameterization from high resolution rainfall data, as observed on days governed by each individual CP. The parameterization approach is tested by comparing the statistical properties of disaggregated rainfall time series of two time slices, 1969–1979 and 1989–1999, to the results obtained by two other disaggregation methods (a conceptually similar MRC without CP-based parameterization and a recombination approach) and to the statistical properties of observed hourly rainfall data. In this context, all three approaches use rainfall data of the time slice 1989–1999 for parameterization. We found that the inclusion of CPs into the parameterization of a MRC yields hourly time series that better reproduce the properties of observed rainfall in time slice 1989–1999, as compared to the simple MRC. Despite similar results of both MRCs in the validation period of 1969–1979, we can conclude that the CP-based parameterization approach is applicable for temporal rainfall disaggregation in time slices distinct from the parameterization period. This approach accounts for changes in rainfall characteristics due to changes in the frequency of occurrence of the CPs and allows generating hourly rainfall from daily data, as often provided by a statistical downscaling of global climate change.
机译:过去已经广泛研究了使用乘性随机级联(MRC)进行时间降雨分解的情况。由于MRC形式简单,并且可以直接从观测的高分辨率降雨数据中提取模型参数,因此呼吁进行降雨分类。但是,这些参数代表了观测期的降雨特征。由于不同时间段的降雨特征会因气候变化而变化,因此我们提出了一种MRC的参数化方法,以根据过去(观测)或未来(预计)时间序列调整参数。这是在循环模式(CP)的基础上完成的,方法是从高分辨率降雨数据中提取不同的MRC参数,如在每个CP所控制的日期所观察到的。通过比较两个时间片1969-1979年和1989-1999年两个时间片的分解降雨时间序列的统计特性与其他两种分解方法(在概念上相似的MRC,没有基于CP的参数化和重新组合)获得的结果,对参数化方法进行了测试。方法)和观测到的每小时降雨数据的统计特性。在这方面,所有这三种方法都使用1989-1999年时间片的降雨数据进行参数化。我们发现,与简单的MRC相比,将CPs包含在MRC的参数化中可以产生每小时的时间序列,该时间序列可以更好地重现1989-1999年时间段内观测到的降雨的特性。尽管两个MRC在1969-1979年的验证期内都取得了相似的结果,但我们可以得出结论,基于CP的参数化方法适用于与参数化周期不同的时间片中的时间降雨分解。这种方法解决了由于CP发生频率变化而引起的降雨特征变化,并允许从每日数据中产生每小时降雨,这通常是由全球气候变化的统计缩减所提供的。

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