2024
DOI: 10.1109/access.2024.3351754
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Comparative Analysis of Artificial Intelligence Methods for Streamflow Forecasting

Yaxing Wei,
Huzaifa Bin Hashim,
Sai Hin Lai
et al.

Abstract: Deep learning excels at managing spatial and temporal time series with variable patterns for streamflow forecasting, but traditional machine learning algorithms may struggle with complicated data, including non-linear and multidimensional complexity. Empirical heterogeneity within watersheds and limitations inherent to each estimation methodology pose challenges in effectively measuring and appraising hydrological statistical frameworks of spatial and temporal variables. This study emphasizes streamflow foreca… Show more

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