An uncertainty partition approach for inferring interactive hydrologic risks
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Published:2020-09-22
Issue:9
Volume:24
Page:4601-4624
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ISSN:1607-7938
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Container-title:Hydrology and Earth System Sciences
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language:en
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Short-container-title:Hydrol. Earth Syst. Sci.
Author:
Fan YuruiORCID, Huang Kai, Huang Guohe, Li Yongping, Wang Feng
Abstract
Abstract. Extensive uncertainties exist in hydrologic risk analysis. Particularly for interdependent hydrometeorological extremes, the random features in individual variables and their dependence structures may lead to bias and
uncertainty in future risk inferences. In this study, an iterative factorial
copula (IFC) approach is proposed to quantify parameter uncertainties and
further reveal their contributions to predictive uncertainties in risk
inferences. Specifically, an iterative factorial analysis (IFA) approach is
developed to diminish the effect of the sample size and provide reliable
characterization for parameters' contributions to the resulting risk
inferences. The proposed approach is applied to multivariate flood risk
inference for the Wei River basin to demonstrate the applicability of IFC
for tracking the major contributors to resulting uncertainty in a
multivariate risk analysis framework. In detail, the multivariate risk model
associated with flood peak and volume will be established and further
introduced into the proposed iterative factorial analysis framework to
reveal the individual and interactive effects of parameter uncertainties on
the predictive uncertainties in the resulting risk inferences. The results
suggest that uncertainties in risk inferences would mainly be attributed to
some parameters of the marginal distributions, while the parameter of the dependence structure (i.e. copula function) would not produce noticeable
effects. Moreover, compared with traditional factorial analysis (FA), the
proposed IFA approach would produce a more reliable visualization for
parameters' impacts on risk inferences, while the traditional FA would
remarkably overestimate the contribution of parameters' interaction to the
failure probability in AND (i.e. all variables would exceed the
corresponding thresholds) and at the same time underestimate the contribution of parameters' interaction to the failure probabilities in OR
(i.e. one variable would exceed its corresponding threshold) and Kendall
(i.e. the correlated variables would exceed a critical multivariate
threshold).
Funder
National Basic Research Program of China National Natural Science Foundation of China Natural Sciences and Engineering Research Council of Canada
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences,General Engineering,General Environmental Science
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