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On the need for physical constraints in deep learning rainfall–runoff projections under climate change: a sensitivity analysis to warming and shifts in potential …
Deep learning (DL) rainfall–runoff models outperform conceptual, process-based models in
a range of applications. However, it remains unclear whether DL models can produce …
a range of applications. However, it remains unclear whether DL models can produce …
Probing the limit of hydrologic predictability with the Transformer network
For a number of years since their introduction to hydrology, recurrent neural networks like
long short-term memory (LSTM) networks have proven remarkably difficult to surpass in …
long short-term memory (LSTM) networks have proven remarkably difficult to surpass in …
A comprehensive study of deep learning for soil moisture prediction
Soil moisture plays a crucial role in the hydrological cycle, but accurately predicting soil
moisture presents challenges due to the nonlinearity of soil water transport and variability of …
moisture presents challenges due to the nonlinearity of soil water transport and variability of …
Identifying structural priors in a hybrid differentiable model for stream water temperature modeling
Although deep learning models for stream temperature (Ts) have recently shown
exceptional accuracy, they have limited interpretability and cannot output untrained …
exceptional accuracy, they have limited interpretability and cannot output untrained …
Towards interpretable physical‐conceptual catchment‐scale hydrological modeling using the mass‐conserving‐perceptron
We investigate the applicability of machine learning technologies to the development of
parsimonious, interpretable, catchment‐scale hydrologic models using directed‐graph …
parsimonious, interpretable, catchment‐scale hydrologic models using directed‐graph …
A differentiable, physics-based hydrological model and its evaluation for data-limited basins
W Ouyang, L Ye, Y Chai, H Ma, J Chu, Y Peng… - Journal of …, 2025 - Elsevier
Recent advancements in deep learning (DL) have significantly improved hydrological
modeling by extracting generalities from large-sample datasets and enhancing predictive …
modeling by extracting generalities from large-sample datasets and enhancing predictive …