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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/31628
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dc.contributor.advisorCoulibaly, Paulin-
dc.contributor.authorSheikh, Md Rasel-
dc.date.accessioned2025-05-06T15:14:21Z-
dc.date.available2025-05-06T15:14:21Z-
dc.date.issued2025-
dc.identifier.urihttp://hdl.handle.net/11375/31628-
dc.descriptionI wish to express my deepest gratitude to my supervisor, Prof. Paulin Coulibaly, for his unwavering guidance, encouragement, support, and patience throughout the research period. Achieving this significant milestone in my life would not have been possible without his invaluable assistance and mentorship.en_US
dc.description.abstractHydrologic modeling and forecasting play a critical role in water resource planning and management, helping to mitigate the socio-economic impacts of droughts and flood hazards. The accuracy and reliability of streamflow forecasting systems largely depend on the structure of hydrologic models and the quality of their inputs. To address the inherent limitations of individual models, multi-model or ensemble forecast merging has emerged as a promising approach to improve forecast accuracy by reducing uncertainty. However, the static nature of traditional merging weights introduces additional uncertainties, as model performance varies dynamically over time. This study aims to develop a dynamic framework for merging forecasts that adjusts weights over forecast lead times. Additionally, the framework explores whether integrating local and large-scale model forecasts can enhance accuracy. The research began with a comprehensive literature review to establish the state-of-the-art in hydrologic forecast merging (HFM) techniques, identifying their applications, advantages, and limitations. Recognizing the unique challenges of large-scale basins containing regulated sub-basins, the study first investigated calibration strategies for hydrologic models in highly regulated basins. Using time series features (TSFs) and Bayesian model averaging (BMA), a dynamic weights (TSF-Ws) estimation framework was then developed. Finally, the method was applied to integrate local and large-scale forecasts from natural and regulated sub-basins. A multi-site, multi-variable, and multi-objective calibration strategy, incorporating targeted water level operational constraints, is effective for highly regulated basins where dam operation and natural streamflow data are unavailable. Dynamic forecast merging significantly improves accuracy by reducing uncertainty, with the TSF-Ws-based method outperforming traditional static weights merging approaches. Integrating large-scale forecasts with locally calibrated ones proved advantageous when applying dynamic weights. The outcomes of this research provide valuable insights and potential for enhanced hydrologic forecasting, especially in real-time flood forecasting. However, the current weight estimation relies solely on BMA. Future research could explore advanced techniques, such as emerging physical system-based learning, for further estimating TSF-Ws to enhance forecast accuracy and adaptability.en_US
dc.language.isoenen_US
dc.subjectHydrologic forecast mergingen_US
dc.subjectDynamic weight estimationen_US
dc.subjectRegulated watershedsen_US
dc.subjectCalibration strategiesen_US
dc.subjectLocal-scale forecasten_US
dc.subjectLarge-scale forecasten_US
dc.titleDEVELOPMENT OF ADVANCED TECHNIQUES FOR MERGING LOCAL AND LARGE-SCALE HYDROLOGIC FORECASTSen_US
dc.title.alternativeHYDROLOGIC FORECAST MERGING USING DYNAMIC WEIGHTSen_US
dc.typeThesisen_US
dc.contributor.departmentEarth and Environmental Sciencesen_US
dc.description.degreetypeThesisen_US
dc.description.degreeDoctor of Philosophy (PhD)en_US
dc.description.layabstractHydrological modeling and forecasting play a vital role in effective water resource planning and flood mitigation by helping communities prepare for extreme events. Accurate streamflow forecasting is essential, but no single model performs reliably well under all conditions. This research develops an innovative merging framework that assigns time series features (TSFs)-based dynamic weights (TSF-Ws) to combine forecasts from multiple models, reflecting the ever-changing nature of hydrological systems. The methods are applied to real-time forecasts from local and large-scale models in Canadian watersheds. Key contributions include: 1) Identifying optimal calibration strategies for hydrological models in highly regulated watersheds; 2) Establishing a robust merging framework for estimating TSF-Ws to improve streamflow forecast accuracy across different lead times; and 3) Demonstrating the effectiveness of the TSF-Ws framework in merging local and large-scale models to enhance overall forecasting reliability. This research provides a foundation for integrating the TSF-Ws merging framework into operational flood prediction systems, enabling more accurate and timely responses to flood risks.en_US
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