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  • IWA Publishing  (2)
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  • IWA Publishing  (2)
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  • 1
    In: Journal of Hydroinformatics, IWA Publishing, Vol. 25, No. 3 ( 2023-05-01), p. 881-894
    Abstract: Streamflow forecasting is highly crucial in the domain of water resources. For this study, we coupled the Wavelet Transform (WT) and Artificial Neural Network (ANN) to forecast Gilgit streamflow at short-term (T0.33 and T0.66), intermediate-term (T1), and long-term (T2, T4, and T8) monthly intervals. Streamflow forecasts are uncertain due to stochastic disturbances caused by variations in snow-melting routines and local orography. To remedy this situation, decomposition by WT was undertaken to enhance the associative relation between the input and target sets for ANN to process. For ANN modeling, cross-correlation was used to guide input selection. Corresponding to six intervals, nine configurations were developed. Short-term intervals performed best, especially for T0.33; intermediate intervals showed decreasing performance. However, interestingly, performance regains back to a decent level for long-term forecasting. Almost all the models underestimate high flows and slightly overestimate low- to intermediate-flow conditions. At last, inference implicitly implies that shorter forecasting benefits from extrapolated trends, while the good results of long-term forecasting is associated to a larger recurrent pattern of the Gilgit River. In this way, weak performance for intermediate forecasting could be attributed to the insufficient ability of the model to capture either one of these patterns.
    Type of Medium: Online Resource
    ISSN: 1464-7141 , 1465-1734
    Language: English
    Publisher: IWA Publishing
    Publication Date: 2023
    detail.hit.zdb_id: 2020923-X
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  • 2
    Online Resource
    Online Resource
    IWA Publishing ; 2023
    In:  Journal of Water and Climate Change Vol. 14, No. 12 ( 2023-12-01), p. 4444-4464
    In: Journal of Water and Climate Change, IWA Publishing, Vol. 14, No. 12 ( 2023-12-01), p. 4444-4464
    Abstract: Streamflow forecasting holds pivotal importance for planning and decision-making in the domain of water resources management. The Chitral basin in Pakistan is characterized by high altitude and glaciated terrain. Simulating streamflows in this type of region is challenging due to complex orography and uncertain climate data. This complexity persuaded us to explore three frameworks (soil and water assessment tool (SWAT), artificial neural network (ANN), and hybrid of SWAT–ANN (H2)) for simulating the Chitral river under two different climate datasets (observed climatology (OC) and reconciled gridded climatology (RGC)) to give all six model combinations. Model evaluation was done first by indices (Nash–Sutcliff efficiency, Kling–Gupta efficiency, coefficient of determination, percent bias, and root mean square error) based on which we further assigned scores to models reflecting their performance during calibration and validation epochs. The research revealed that ANN-RGC stood first with 53 points, followed by H2-RGC (50 points) and SWAT-RGC (45 points). Trailing behind in the fourth and fifth positions were SWAT-RGC and SWAT-OC (26 points each), respectively, while ANN-OC finished last (22 points). In addition, this study proposed a bias scaling approach for simulation biases resulting in reduction in recession and baseflow biases and specifically improved low-scoring models. Despite ANN's superiority over conventional models, it could be of limited utility in uncertain or data-scarce conditions.
    Type of Medium: Online Resource
    ISSN: 2040-2244 , 2408-9354
    Language: English
    Publisher: IWA Publishing
    Publication Date: 2023
    detail.hit.zdb_id: 2552186-X
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