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Cornell University
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16:54
(UTC -05:00) - https://snpoudel.github.io/
Highlights
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diff-hydro
diff-hydro PublicDifferentiable hydrological modeling with neural network-based physical parameter learning.
Jupyter Notebook 1
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DesignFlood-Change-Uncertainty
DesignFlood-Change-Uncertainty PublicUncertainty in design-flood change projection using process-based, deep learning and hybrid models.
Python 2
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Bayesian-Flood-Pooling
Bayesian-Flood-Pooling PublicThere is large uncertainty in hydrological change projections; this project explores Bayesian pooling techniques to improve the accuracy of change in design flood predictions under climate change.
Python 1
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LSTM-RainfallRunoff-Model
LSTM-RainfallRunoff-Model PublicPython script for a LSTM based rainfall-runoff hydrological model trained on multiple basins.
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Attention-LSTM-PUB
Attention-LSTM-PUB PublicA deep learning architecture that combines LSTM with attention to improve streamflow prediction in ungauged basins (PUB).
Python 1
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NEP-Hydro-Climate
NEP-Hydro-Climate PublicHydrological modeling and climate change impact assessment on key design statistics of small hydropower projects in Nepal.
Python 1
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