Uncertainty Quantification of Hydrologic Predictions and Risk Analysis
Abstract
Hydrologic models are designed to simulate the rainfall-runoff processes through
conceptualizing and aggregating the complex, spatially distributed and highly interrelated
water, energy, and vegetation processes in a watershed into relatively simple mathematical
equations. A significant consequence of process conceptualization is that the model
parameters exhibit extensive uncertainties, leading to significant uncertainty in hydrologic
forecasts. Consequently, to facilitate more reliable probabilistic hydrologic predictions and
multivariate hydrologic risk analysis, innovative uncertainty quantification approaches are
desired in order to reveal the inherent uncertainty in hydrologic models.
Water is the life-giving resource required by all species on our planet and is the
integral link within ecosystems. Severe surplus or deficit of water, has been more
devastating in terms of deaths, suffering and economic damage, than other natural hazards
such as earthquakes and volcanoes. Consequently, hydrologic risk analysis is an essential
tool to analyze and predict flood events and provide decision support for actual flood
control. However, a flood is usually characterized by multidimensional characteristics,
including flood peak, flood volume and flood duration. Therefore, innovative multivariate
hydrologic risk analysis methods are required to reveal the interactive impact among flood
variables on hydrologic risk values.
In this dissertation research, a series of innovative methodologies have been
developed for uncertainty quantification of hydrologic models, and multivariate hydrologic
risk analysis. These methods include: (i) a PCM-based stochastic hydrological model for
uncertainty quantification in watershed systems; (ii) a coupled ensemble filtering and
probabilistic collocation (EFPC) approach for uncertainty quantification of hydrologic models; (iii) a hybrid sequential data assimilation and probabilistic collocation (SDAPC)
method for uncertainty quantification of hydrologic models; (iv) a copula-based bivariate
hydrologic risk for the Xiangxi River in the Three Gorges Reservoir (TGR) area, China;
(v) a hybrid entropy-copula method for bivariate hydrologic risk analysis for the Xiangxi
River in TGR area; and (vi) a coupled GMM-copula method for hydrologic risk analysis
for the Yichang Station of the Yangtze River.
The major accomplishments of this research are summarized as follows: (a) the
probabilistic collocation method is firstly integrated into the hydrologic model to reveal
the impacts of uncertainty in model parameters on the hydrologic predictions; (b) the
backward uncertainty quantification methods (EnKF and PF) and the forward uncertainty
prediction method (PCM) are integrated together through Gaussian anamorphosis to
provide a better treatment of the input, output, parameters and model structural
uncertainties in hydrologic models; (iii) an integrated risk indicator based on interactive
analysis of multiple flood variables and bivariate copulas is developed for exploring the
risk of concurrence of flood extremes such as flood peak and volume; and (iv) copulabased
hydrologic risk analysis methods are developed through integrating advanced nonparametric
distribution estimation (entropy and Gaussian mixture model) methods into the
copulas to improve the performance of copulas in quantifying the dependence among flood
variables. Reasonable results have been generated from the case studies. They provide
valuable bases for not only revealing the inherent probabilistic characteristics of hydrologic
predictions stemming from uncertain model parameters, but also exploring the
significance of effects from persisting high risk levels due to impacts from multiple
interactive flood variables.