Quantifying Structural Uncertainty in Hydrologic Models
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Craig, James
Tolson, Bryan
Tolson, Bryan
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University of Waterloo
Abstract
Hydrologic models are essential tools for understanding watershed processes and supporting
water resource management. However, their predictions are inherently uncertain
due to imperfect model structures (structural uncertainty), parameter estimation challenges
(parameter uncertainty), and limitations in observational data and model forcings
(input uncertainty). Bayesian inference has become a widely used framework for quantifying
these uncertainties because it enables probabilistic parameter estimation and prediction
while formally incorporating prior information and observational evidence. Despite these
advantages, the application of Bayesian methods to complex hydrologic models remains
computationally demanding, and the resulting predictive uncertainty often represents a
combination of multiple uncertainty sources (including input, parameter, and structural
uncertainties) that are difficult to interpret individually. These limitations reduce the effectiveness
of Bayesian uncertainty analysis as a diagnostic tool for improving hydrologic
models.
This thesis develops methodological advances to improve the efficiency and interpretability
of Bayesian uncertainty quantification in hydrologic modeling. The research focuses on
two challenges: improving the computational feasibility of Bayesian inference for complex
models and separating the sources of uncertainty represented within Bayesian predictive
distributions. To address these challenges, new methods are developed and evaluated using
both regional and continental-scale hydrologic datasets.
1. A machine learning–assisted framework is developed to improve the efficiency of
Bayesian joint inference for hydrologic models. The proposed approach integrates
machine learning techniques with Bayesian calibration to facilitate exploration of
complex posterior parameter distributions and reduce the computational burden associated
with traditional sampling methods. The framework is evaluated using twelve
watersheds from the MOPEX dataset and demonstrates improved inference performance
while maintaining reliable uncertainty quantification.
2. A variance decomposition methodology is introduced to identify and quantify the
sources of uncertainty embedded within Bayesian predictions. While Bayesian calibration
provides probabilistic estimates of model outputs, it does not directly attribute
predictive uncertainty to individual components of the modeling framework.
The proposed method decomposes posterior predictive uncertainty into interpretable
components, enabling a clearer understanding of how different aspects of the modeling
process contribute to overall uncertainty.
3. The proposed uncertainty decomposition framework is applied to a large-scale hydrologic
analysis across approximately 3,000 watersheds in North America. This
continental-scale application enables the systematic evaluation of spatial patterns in
hydrologic model uncertainty and reveals how dominant uncertainty sources vary
across hydroclimatic and physiographic regions.
Together, the contributions of this thesis improve both the computational efficiency
and the interpretability of Bayesian uncertainty estimates in hydrologic modeling. The
proposed approaches provide tools for diagnosing uncertainty sources and evaluating model
reliability, which can support more transparent hydrological predictions across a range of
environmental and water resource applications.