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Spatial-temporal rainfall modelling for flood risk estimation

机译:时空降雨模型用于洪水风险评估

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摘要

Some recent developments in the stochastic modelling of single site and spatial rainfall are summarised. Alternative single site models based on Poisson cluster processes are introduced, fitting methods are discussed, and performance is compared for representative UK hourly data. The representation of sub-hourly rainfall is discussed, and results from a temporal disaggrega-tion scheme are presented. Extension of the Poisson process methods to spatial-temporal rainfall, using radar data, is reported. Current methods assume spatial and temporal stationarity; work in progress seeks to relax these restrictions. Unlike radar data, long sequences of daily raingauge data are commonly available, and the use of generalized linear models (GLMs) (which can represent both temporal and spatial non-stationarity) to represent the spatial structure of daily rainfall based on raingauge data is illustrated for a network in the North of England. For flood simulation, disaggregation of daily rainfall is required. A relatively simple methodology is described, in which a single site Poisson process model provides hourly sequences, conditioned on the observed or GLM-simu-lated daily data. As a first step, complete spatial dependence is assumed. Results from the River Lee catchment, near London, are promising. A relatively comprehensive set of methodologies is thus provided for hydrological application.
机译:总结了单站点随机模拟和空间降雨的一些最新进展。介绍了基于Poisson聚类过程的替代性单站点模型,讨论了拟合方法,并比较了具有代表性的英国小时数据的性能。讨论了亚小时降雨的表示形式,并给出了时间分解方案的结果。据报道,利用雷达数据将泊松过程方法扩展到时空降雨。当前的方法假定空间和时间的平稳性。在建工程旨在放宽这些限制。与雷达数据不同,通常可以使用长序列的日雨量计数据,并说明了使用广义线性模型(GLM)(可以表示时间和空间非平稳性)来表示基于雨量计数据的日雨的空间结构在英格兰北部的网络。对于洪水模拟,需要对每日降雨量进行分类。描述了一种相对简单的方法,其中单站点泊松过程模型根据观察到的或GLM模拟的每日数据提供每小时的序列。第一步,假定完全的空间依赖性。伦敦附近的李河集水区的结果令人鼓舞。因此提供了一套相对全面的方法用于水文应用。

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