Quantifying Streamflow Prediction Uncertainty Through Process‐Aware Data‐Driven Models
Abhinanda Roy,
K. S. Kasiviswanathan
Abstract:The hydrological model simulation accompanied with uncertainty quantification helps enhance their overall reliability. Since uncertainty quantification including all the sources (input, model structure and parameter) is challenging, it is often limited to only addressing model parametric uncertainty, neglecting other uncertainty sources. This paper focuses on exploiting the potential of state‐of‐the‐art data‐driven models (or DDMs) in quantifying the prediction uncertainty of process‐based hydrological models.… Show more
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