...
首页> 外文期刊>Hydrology and Earth System Sciences Discussions >A stochastic space-time rainfall forecasting system for real time flow forecasting I: Development of MTB conditional rainfall scenario generator
【24h】

A stochastic space-time rainfall forecasting system for real time flow forecasting I: Development of MTB conditional rainfall scenario generator

机译:用于实时流量预测的随机时空降雨预测系统I:MTB条件降雨情景生成器的开发

获取原文
           

摘要

The need for the development of a method for generating an ensemble of rainfall scenarios, which are conditioned on the observed rainfall, and its place in the HYREX programme is discussed. A review of stochastic models for rainfall, and rainfall forecasting techniques, is followed by a justification for the choice of the Modified Turning Bands (MTB) model in this context. This is a stochastic model of rainfall which is continuous over space and time, and which reproduces features of real rainfall fields at four distinct scales: raincells, cluster potential regions, rainbands and the overall outline of a storm at the synoptic scale. The model can be used to produce synthetic data sets, in the same format as data from a radar. An inversion procedure for inferring a construction of the MTB model which generates a given sequence of radar images is described. This procedure is used to generate an ensemble of future rainfall scenarios which are consistent with a currently observed storm. The combination of deterministic modelling at the large scales and stochastic modelling at smaller scales, within the MTB model, makes the system particularly suitable for short-term forecasts. As the lead time increases, so too does the variability across the set of generated scenarios.
机译:讨论了开发一种生成降雨情景的方法的需求,该方法以观测的降雨为条件,并确定其在HYREX程序中的位置。在审查了随机降雨模型和降雨预报技术之后,提出了在这种情况下选择修正转弯带(MTB)模型的理由。这是一个随机的降雨模型,在空间和时间上是连续的,并且以四个不同的尺度再现了真实降雨场的特征:雨单元,簇潜在区域,雨带和天气总尺度上的风暴总轮廓。该模型可用于生成合成数据集,格式与来自雷达的数据相同。描述了用于推断生成给定雷达图像序列的MTB模型的构造的反演程序。此过程用于生成与当前观测到的风暴相一致的未来降雨情景的集合。在MTB模型中,大规模确定性建模与较小规模的随机建模相结合,使得该系统特别适合于短期预测。随着交付时间的增加,所生成的方案集之间的差异也随之增加。

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