...
首页> 外文期刊>Stochastic environmental research and risk assessment >A hybrid stochastic-weather-generation method for temporal disaggregation of precipitation with consideration of seasonality and within-month variations
【24h】

A hybrid stochastic-weather-generation method for temporal disaggregation of precipitation with consideration of seasonality and within-month variations

机译:考虑季节和月内变化的降雨时间随机分解的混合随机天气生成方法

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Linking atmospheric and hydrological models is challenging because of a mismatch of spatial and temporal resolutions in which the models operate: dynamic hydrological models need input at relatively fine temporal (daily) scale, but the outputs from general circulation models are usually not realistic at the same scale, even though fine scale outputs are available. Temporal dimension downscaling methods called disaggregation are designed to produce finer temporal-scale data from reliable larger temporal-scale data. Here, we investigate a hybrid stochastic weather-generation method to simulate a high-frequency (daily) precipitation sequence based on lower frequency (monthly) amounts. To deal with many small precipitation amounts and capture large amounts, we divide the precipitation amounts on rainy days (with non-zero precipitation amounts) into two states (named moist and wet states, respectively) by a pre-defined threshold and propose a multi-state Markov chain model for the occurrences of different states (also including non-rain days called dry state). The truncated Gamma and censored extended Burr XII distributions are then employed to model the precipitation amounts in the moist and wet states, respectively. This approach avoids the need to deal with discontinuity in the distribution, and ensures that the states (dry, moist and wet) and corresponding amounts in rainy days are well matched. The method also considers seasonality by constructing individual models for different months, and monthly variation by incorporating the low-frequency amounts as a model predictor. The proposed method is compared with existing models using typical catchment data in Australia with different climate conditions (non-seasonal rainfall, summer rainfall and winter rainfall patterns) and demonstrates better performances under several evaluation criteria which are important in hydrological studies.
机译:链接大气模型和水文模型具有挑战性,因为模型在其中使用的时空分辨率不匹配:动态水文模型需要在相对精细的时间(每日)范围内进行输入,但是一般环流模型的输出通常在同一条件下并不现实规模,即使可以使用精细规模的输出。时间维度降尺度方法(称为分解)旨在从可靠的较大时间尺度数据中生成更精细的时间尺度数据。在这里,我们研究一种混合随机天气生成方法,以基于较低频率(每月)量模拟高频(每天)降水序列。为了处理许多小的降水量并捕获大量的降水,我们将雨天的降水量(非零降水量)按预先定义的阈值分为两个状态(分别称为湿状态和湿状态),并提出一个状态马尔可夫链模型用于不同状态的发生(也包括称为非雨天的干旱状态)。然后采用截断的伽玛和删失扩展的Burr XII分布分别模拟湿润和湿润状态下的降水量。这种方法避免了处理分布中的不连续性的需要,并确保状态(干燥,潮湿和潮湿)和雨天中的相应量完全匹配。该方法还通过构建不同月份的单个模型来考虑季节性,并通过将低频量作为模型预测器来考虑每月变化。所提出的方法与使用不同气候条件(非季节性降雨,夏季降雨和冬季降雨模式)的澳大利亚典型流域数据的现有模型进行了比较,并在水文研究重要的几种评估标准下表现出更好的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号