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Non-parametric Stochastic Generation of Streamflow Series at Multiple Locations

机译:在多个位置的流序列的非参数随机生成

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摘要

A non-parametric method for generating stationary weekly hydrologic time series at multiple locations is presented. The procedure has three distinct steps: first, the Monte Carlo method is used to obtain 1000 years of simulated weekly flows having statistical properties as close as possible to the observed series; second, rearranging the order of simulated data in the series to achieve target spatial and temporal correlations within each simulated year; and third, the permutation of annual partial series to adjust the correlation of weekly streamflows at the beginning of a year with that at the end of a previous year while also adjusting the auto-correlation of annual flows. In this paper the method is applied for the first time on log-transformed data, and contributes to this methodology by introducing an additional criterion related to the possibility to obtain a desired frequency of occurrence of extremely dry years in the simulated series. The method is tested in two case studies, which use data from three hydrologic stations on the Studenica River in Serbia, and from seven stations in the Oldman River basin in Southern Alberta, Canada. The results show that the simulated data correspond to the observed data in all their stochastic properties and that they can be consequently used in the studies related to planning and design of reservoirs and other water management systems.
机译:提出了一种在多个位置生成每周固定水文时间序列的非参数方法。该过程分为三个不同的步骤:首先,使用蒙特卡洛方法获得具有统计特性的1000年的模拟周流量,该特性尽可能接近所观察到的序列;其次,重新排列系列中模拟数据的顺序,以在每个模拟年度内实现目标的时空相关性;第三,对年度偏序列进行置换,以调整年初与上年末的每周流量的相关性,同时还调整年度流量的自相关。在本文中,该方法首次应用于对数转换的数据,并通过引入与可能获得模拟序列中极端干旱年份的期望发生频率相关的附加准则,对该方法做出了贡献。在两个案例研究中对该方法进行了测试,这些案例使用了来自塞尔维亚斯图德尼察河上三个水文站以及加拿大南部艾伯塔省奥尔德曼河流域中七个站的数据。结果表明,模拟数据在所有随机特性上都与观测数据相对应,因此可以用于与水库规划和设计以及其他水管理系统有关的研究中。

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