A sample reconstruction method based on a modified reservoir index for flood frequency analysis of non-stationary hydrological series

被引:0
作者
Zhongmin Liang
Jing Yang
Yiming Hu
Jun Wang
Binquan Li
Jianfei Zhao
机构
[1] Hohai University,College of Hydrology and Water Resources
[2] National Cooperative Innovation Center for Water Safety and Hydro-Science,Research Institute of Management Science, Business School
[3] Hohai University,undefined
来源
Stochastic Environmental Research and Risk Assessment | 2018年 / 32卷
关键词
Non-stationary; Modified reservoir index; Sample reconstruction; Flood frequency analysis; Reservoir; Uncertainty;
D O I
暂无
中图分类号
学科分类号
摘要
Flood extremes, affected by climate change and intense human activities, exhibit non-stationary characteristics. As a result, the stationarity assumption of traditional flood frequency analysis (FFA) cannot be satisfied. Generally, the impacts of human activities, especially water conservancy projects (i.e., reservoirs), on extreme flood series are much greater than those of climate change; therefore, new FFA methods must be developed to address the non-stationary flood extremes associated with large numbers of reservoirs. In this study, a new sample reconstruction method is proposed to convert the reservoir-influenced annual maximum flow (AMF) series from non-stationary to stationary, thus warranting the feasibility of the traditional FFA approach for non-stationary cases. To be more specifically, a modified reservoir index (MRI(t)) is proposed and the original non-stationary AMF series are converted to stationary series by multiplying by a scalar factor 1/(1 − MRI(t)), and thus traditional FFA can be adopted. Besides, Bayesian theory was applied to analyze the effect of uncertainty on the designed reconstructed AMF. As an example, the proposed method was applied to observations from Huangzhuang station located on the Hanjiang River. The original AMF observations from Huangzhuang displayed nonstationarity for the continuous construction of reservoirs in the basin. After applying the new method of sample reconstruction, the original AMF observations became stationary, and the designed AMFs were estimated using the reconstructed series and compared with those estimated based on the original observation series. In addition, Bayesian theory is adopted to quantify the uncertainty of designed reconstructed AMF and provide the expectation of the sampling distribution.
引用
收藏
页码:1561 / 1571
页数:10
相关论文
共 106 条
[21]  
Yang HB(1979)A non-parametric approach to the change-point problem Appl Stat 530 785-798
[22]  
Hu YM(2007)A regional Bayesian POT model for flood frequency analysis Stoch Environ Res Risk Assess 248 123-142
[23]  
Liang ZM(2015)Investigating the variation and non-stationarity in precipitation extremes based on the concept of event-based extreme precipitation J Hydrol 32 1255-1266
[24]  
Jiang XL(2001)Non-stationary approach to at-site flood frequency modelling I. Maximum likelihood estimation J Hydrol 47 464-474
[25]  
Bu H(2009)Flood frequency analysis for nonstationary annual peak records in an urban drainage basin Adv Water Resour 38 6-9
[26]  
Hu YM(2011)Nonstationarity: flood magnification and recurrence reduction factors in the United States J Am Water Resour Assoc 51 8198-8217
[27]  
Liang ZM(2005)Hydrological frequency calculation principle of inconsistent annual runoff series under changing environments J Wuhan Univ Hydraul Electr Eng 29 1019-1036
[28]  
Liu YW(2015)A framework of change-point detection for multivariate hydrological series Water Resour Res 53 457-465
[29]  
Zeng XF(2015)A regional Bayesian hierarchical model for flood frequency analysis Stoch Environ Res Risk Assess undefined undefined-undefined
[30]  
Wang D(2008)Periodicity of sediment load and runoff in the Yangtze River basin and possible impacts of climatic changes and human activities Hydrol Sci J undefined undefined-undefined