This study presents a novel generative modeling approach for rainfall-runoff modeling that can accurately predict daily catchment runoff in response to climate forcing. Unlike conventional process-based lumped hydrological models, the proposed approach uses a small number of latent variables to characterize the runoff generation processes of different catchments.
The key highlights are:
The generative model was trained on climate forcing and discharge data from over 3,000 global catchments, achieving prediction accuracies comparable to deep learning models and conventional lumped models.
The model can effectively capture the hydrological behavior of catchments worldwide using an 8-dimensional latent variable representation, suggesting that a low-dimensional latent space can sufficiently characterize the runoff generation process.
The optimal latent variable values for a given catchment can be inferred solely from climate forcing and discharge data, without requiring detailed physical catchment properties.
While the generative model showed promising performance, challenges such as equifinality in parameter estimation and the need to explore the physical meaning of latent variables remain. Future research should focus on refining parameter estimation methods and understanding the physical significance of the latent dimensions.
This generative modeling approach offers a flexible and accurate alternative for hydrological modeling that requires minimal assumptions about the physical processes within a catchment.
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