View Item 
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        JavaScript is disabled for your browser. Some features of this site may not work without it.

        Browse

        All of UU Student Theses RepositoryBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

        Hybrid streamflow modelling using machine learning and multi-model combination

        Thumbnail
        View/Open
        Thesis_ADS_HD_Ali_1635905.pdf (2.107Mb)
        Publication date
        2023
        Author
        Ali, Hassan
        Metadata
        Show full item record
        Summary
        Global hydrological models (GHMs) enable global estimation of freshwater availability, but their uncertainties and limitations hinder precise predictions. Multi-model combination (MMC) is a promising solution that combines the outputs of numerous hydrological models to create an ensembled output that surpasses the individual hydrological models. Moreover, the use of Machine Learning (ML) as a hybrid post-processing strategy is growing in popularity. However, there is a need to combine these two methods and investigate their performance in streamflow predictions. In this study, we demonstrate that using Random Forest (RF) as a nonlinear MMC approach significantly enhances streamflow forecasts when multiple global hydrological models' outputs are combined. In streamflow forecasting, the RF-MMC method outperforms individual models and linear MMC approaches, demonstrating its potential. In addition, incorporating catchment attributes improved the generalizability of the RF-MMC method when tested on a river basin that was not in the training set. Significant potential exists for the application of RF-MMC to generate accurate streamflow forecasts, thereby providing valuable support for water resource management, flood mitigation, and decision-making processes. Future research can investigate additional machine learning algorithms and incorporate additional variables to improve the predictive ability and generalizability of MMC strategies in hydrological modelling.
        URI
        https://studenttheses.uu.nl/handle/20.500.12932/44313
        Collections
        • Theses
        Utrecht university logo