Understanding predictive uncertainty in hydrologic modeling: The challenge of identifying input and structural errors
University of Newcastle Australia
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Abstract
Meaningful quantification of data and structural uncertainties in conceptual rainfall‐runoff modeling is a major scientific and engineering challenge. This paper focuses on the total predictive uncertainty and its decomposition into input and structural components under different inference scenarios. Several Bayesian inference schemes are investigated, differing in the treatment of rainfall and structural uncertainties, and in the precision of the priors describing rainfall uncertainty. Compared with traditional lumped additive error approaches, the quantification of the total predictive uncertainty in the runoff is improved when rainfall and/or structural errors are characterized explicitly. However, the…
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5Topics & keywords
Topics
Keywords
- Uncertainty quantification
- Prior probability
- Inference
- Identifiability
- Computer science
- Bayesian inference
- Predictive inference
- Bayesian probability
UN Sustainable Development Goals
- Climate action
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