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Hybrid Data-Driven Models for Hydrological Simulation and Projection on the Catchment Scale

Author

Listed:
  • Salem Gharbia

    (Department of Environmental Science & Centre for Environmental Research Innovation and Sustainability (CERIS), Institute of Technology Sligo, F91 YW50 Sligo, Ireland
    Centre for Mathematical Modelling and Intelligent Systems for Health and Environment (MISHE), Institute of Technology Sligo, F91 YW50 Sligo, Ireland)

  • Khurram Riaz

    (Department of Environmental Science & Centre for Environmental Research Innovation and Sustainability (CERIS), Institute of Technology Sligo, F91 YW50 Sligo, Ireland
    Centre for Mathematical Modelling and Intelligent Systems for Health and Environment (MISHE), Institute of Technology Sligo, F91 YW50 Sligo, Ireland)

  • Iulia Anton

    (Department of Environmental Science & Centre for Environmental Research Innovation and Sustainability (CERIS), Institute of Technology Sligo, F91 YW50 Sligo, Ireland
    Centre for Mathematical Modelling and Intelligent Systems for Health and Environment (MISHE), Institute of Technology Sligo, F91 YW50 Sligo, Ireland)

  • Gabor Makrai

    (Department of Computer Science, The University of York, York YO10 5DD, UK)

  • Laurence Gill

    (Department of Civil, Structural and Environmental Engineering, Trinity College, D02 PN40 Dublin, Ireland)

  • Leo Creedon

    (Centre for Mathematical Modelling and Intelligent Systems for Health and Environment (MISHE), Institute of Technology Sligo, F91 YW50 Sligo, Ireland)

  • Marion McAfee

    (Centre for Mathematical Modelling and Intelligent Systems for Health and Environment (MISHE), Institute of Technology Sligo, F91 YW50 Sligo, Ireland)

  • Paul Johnston

    (Department of Civil, Structural and Environmental Engineering, Trinity College, D02 PN40 Dublin, Ireland)

  • Francesco Pilla

    (Department of Planning and Environmental Policy, University College Dublin (UCD), D04 V1W8 Dublin, Ireland)

Abstract

Changes in streamflow within catchments can have a significant impact on agricultural production, as soil moisture loss, as well as frequent drying and wetting, may have an effect on the nutrient availability of many soils. In order to predict future changes and explore the impact of different scenarios, machine learning techniques have been used recently in the hydrological sector for simulation streamflow. This paper compares the use of four different models, namely artificial neural networks (ANNs), support vector machine regression (SVR), wavelet-ANN, and wavelet-SVR as surrogate models for a geophysical hydrological model to simulate the long-term daily water level and water flow in the River Shannon hydrological system in Ireland. The performance of the models has been tested for multi-lag values and for forecasting both short- and long-term time scales. For simulating the water flow of the catchment hydrological system, the SVR-based surrogate model performs best overall. Regarding modeling the water level on the catchment scale, the hybrid model wavelet-ANN performs the best among all the constructed models. It is shown that the data-driven methods are useful for exploring hydrological changes in a large multi-station catchment, with low computational cost.

Suggested Citation

  • Salem Gharbia & Khurram Riaz & Iulia Anton & Gabor Makrai & Laurence Gill & Leo Creedon & Marion McAfee & Paul Johnston & Francesco Pilla, 2022. "Hybrid Data-Driven Models for Hydrological Simulation and Projection on the Catchment Scale," Sustainability, MDPI, vol. 14(7), pages 1-23, March.
  • Handle: RePEc:gam:jsusta:v:14:y:2022:i:7:p:4037-:d:782211
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    References listed on IDEAS

    as
    1. J. Drisya & D. Sathish Kumar & Thendiyath Roshni, 2021. "Hydrological drought assessment through streamflow forecasting using wavelet enabled artificial neural networks," Environment, Development and Sustainability: A Multidisciplinary Approach to the Theory and Practice of Sustainable Development, Springer, vol. 23(3), pages 3653-3672, March.
    2. Elnaz Sharghi & Vahid Nourani & Hessam Najafi & Amir Molajou, 2018. "Emotional ANN (EANN) and Wavelet-ANN (WANN) Approaches for Markovian and Seasonal Based Modeling of Rainfall-Runoff Process," Water Resources Management: An International Journal, Published for the European Water Resources Association (EWRA), Springer;European Water Resources Association (EWRA), vol. 32(10), pages 3441-3456, August.
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