TY - JOUR
T1 - Three-stage hybrid modeling for real-time streamflow prediction in data-scarce regions
AU - Ali, Awad M.
AU - Abdallah, Mohammed
AU - Mohammadi, Babak
AU - Elzain, Hussam Eldin
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/6
Y1 - 2025/6
N2 - Study Region: The Upper Blue Nile Basin, Ethiopia Study focus: This study addresses the challenge of utilizing satellite-based precipitation data in rainfall-runoff models for regions with limited ground observations. We propose a three-stage methodology incorporating Variational Mode Decomposition (VMD) into a conceptual data-driven framework (CHM-VMD-ML). The method was tested on four PERSIANN family precipitation products (2005–2019) using two conceptual hydrological models (CHM: HBV and GR6J) and three machine learning models (ML: Random Forest Regression, Boosted Regression Forest, and CatBoost Regression), with VMD applied to improve model inputs. New hydrological insights: Our results highlight that integrating VMD significantly enhances the reliability of hydrological simulations driven by satellite precipitation data, particularly during low-flow periods. This approach reduces biases in PERSIANN products and improves overall model performance, as evidenced by an increase in Nash–Sutcliffe Efficiency values from 0.22–0.87 in the initial stage (CHM) to 0.74–0.92 in the final stage (CHM-VMD-ML). These findings underscore the importance of signal decomposition for refining data-driven models, facilitating better hydrological prediction and decision-making in data-scarce regions.
AB - Study Region: The Upper Blue Nile Basin, Ethiopia Study focus: This study addresses the challenge of utilizing satellite-based precipitation data in rainfall-runoff models for regions with limited ground observations. We propose a three-stage methodology incorporating Variational Mode Decomposition (VMD) into a conceptual data-driven framework (CHM-VMD-ML). The method was tested on four PERSIANN family precipitation products (2005–2019) using two conceptual hydrological models (CHM: HBV and GR6J) and three machine learning models (ML: Random Forest Regression, Boosted Regression Forest, and CatBoost Regression), with VMD applied to improve model inputs. New hydrological insights: Our results highlight that integrating VMD significantly enhances the reliability of hydrological simulations driven by satellite precipitation data, particularly during low-flow periods. This approach reduces biases in PERSIANN products and improves overall model performance, as evidenced by an increase in Nash–Sutcliffe Efficiency values from 0.22–0.87 in the initial stage (CHM) to 0.74–0.92 in the final stage (CHM-VMD-ML). These findings underscore the importance of signal decomposition for refining data-driven models, facilitating better hydrological prediction and decision-making in data-scarce regions.
KW - Conceptual hydrological modeling
KW - Machine learning
KW - PERSIANN family products
KW - Upper Blue Nile Basin
KW - Variational mode decomposition
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U2 - 10.1016/j.ejrh.2025.102337
DO - 10.1016/j.ejrh.2025.102337
M3 - Article
AN - SCOPUS:105001739982
SN - 2214-5818
VL - 59
JO - Journal of Hydrology: Regional Studies
JF - Journal of Hydrology: Regional Studies
M1 - 102337
ER -