globalchange  > 气候变化事实与影响
DOI: 10.5194/hess-21-2615-2017
Scopus记录号: 2-s2.0-85020226939
论文题名:
Estimating extreme river discharges in Europe through a Bayesian network
作者: Paprotny D; , Morales-Nápoles O
刊名: Hydrology and Earth System Sciences
ISSN: 10275606
出版年: 2017
卷: 21, 期:6
起始页码: 2615
结束页码: 2636
语种: 英语
Scopus关键词: Bayesian networks ; Catchments ; Land use ; Rivers ; Runoff ; Bayesian Networks (bns) ; Computational power ; Dependency structures ; Discharge predictions ; Hydrological modelling ; Statistical approach ; Statistical modeling ; Substantial variations ; Climate change ; Bayesian analysis ; climate change ; estimation method ; flood ; hydrological modeling ; land use ; network analysis ; river basin ; river discharge ; Europe
英文摘要: Large-scale hydrological modelling of flood hazards requires adequate extreme discharge data. In practise, models based on physics are applied alongside those utilizing only statistical analysis. The former require enormous computational power, while the latter are mostly limited in accuracy and spatial coverage. In this paper we introduce an alternate, statistical approach based on Bayesian networks (BNs), a graphical model for dependent random variables. We use a non-parametric BN to describe the joint distribution of extreme discharges in European rivers and variables representing the geographical characteristics of their catchments. Annual maxima of daily discharges from more than 1800 river gauges (stations with catchment areas ranging from 1.4 to 807ĝ€000ĝ€km2) were collected, together with information on terrain, land use and local climate. The (conditional) correlations between the variables are modelled through copulas, with the dependency structure defined in the network. The results show that using this method, mean annual maxima and return periods of discharges could be estimated with an accuracy similar to existing studies using physical models for Europe and better than a comparable global statistical model. Performance of the model varies slightly between regions of Europe, but is consistent between different time periods, and remains the same in a split-sample validation. Though discharge prediction under climate change is not the main scope of this paper, the BN was applied to a large domain covering all sizes of rivers in the continent both for present and future climate, as an example. Results show substantial variation in the influence of climate change on river discharges. The model can be used to provide quick estimates of extreme discharges at any location for the purpose of obtaining input information for hydraulic modelling.
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/79165
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作者单位: Department of Hydraulic Engineering, Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 11, Delft, Netherlands

Recommended Citation:
Paprotny D,, Morales-Nápoles O. Estimating extreme river discharges in Europe through a Bayesian network[J]. Hydrology and Earth System Sciences,2017-01-01,21(6)
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