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Published in: Water Resources Management 2/2024

28-11-2023

Novel Approaches for Regionalising SWAT Parameters Based on Machine Learning Clustering for Estimating Streamflow in Ungauged Basins

Authors: Javier Senent-Aparicio, Patricia Jimeno-Sáez, Raquel Martínez-España, Julio Pérez-Sánchez

Published in: Water Resources Management | Issue 2/2024

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Abstract

Streamflow prediction in ungauged basins (PUB) is necessary for effective water resource management, flood assessment, and hydraulic engineering design. Spain is one of the countries in Europe expected to suffer the most from the consequences of climate change, notably an increase in flooding. The authors selected the Miño River basin in the northwest of Spain, which covers an area of 2,168 km2, to develop a novel approach for predicting streamflow in ungauged basins. This study presents a regionalisation of the soil and water assessment tool (SWAT), a semi-distributed, physically based hydrological model. The regionalisation approach transfers SWAT model parameters based on hydrological similarities between gauged and ungauged subbasins. The authors used k-means and expectation−maximisation (EM) machine learning clustering techniques to group 30 subbasins (9 gauged subbasins) into homogeneous, physical, similarity-based clusters. Furthermore, the regionalisation featured physiographic attributes (basin area, elevation, and channel length and slope) and climatic information (precipitation and temperature) for each subbasin. For each homogeneous group, the SWAT model was calibrated and validated for the gauged basins (donor basins), and the calibrated parameters were transferred to the pseudo-ungauged basins (receptor basins) for streamflow prediction. The results of the streamflow prediction in the pseudo-ungauged basins demonstrate satisfactory performance in most of the cases, with average NSE, R2, RSR, and RMSE values of 0.78, 0.91, 0.42, and 5.10 m3/s, respectively. The results contribute to water planning and management and flood estimation in the studied region and similar areas.

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Appendix
Available only for authorised users
Literature
go back to reference Abbaspour KC (2012) SWAT calibration and uncertainty Program—A user manual; SWAT-CUP-2012, 2012th edn. Swiss Federal Institute of Aquatic Science and Technology, Dubendorf, Switzerland Abbaspour KC (2012) SWAT calibration and uncertainty Program—A user manual; SWAT-CUP-2012, 2012th edn. Swiss Federal Institute of Aquatic Science and Technology, Dubendorf, Switzerland
go back to reference Arnold JG, Kiniry JR, Srinivasan R et al (2012) SWAT 2012 Input/Output Documentation Arnold JG, Kiniry JR, Srinivasan R et al (2012) SWAT 2012 Input/Output Documentation
go back to reference Basheer AA (2018b) New generation nano-adsorbents for the removal of emerging contaminants in water. J Mol Liq 261:583-593 Basheer AA (2018b) New generation nano-adsorbents for the removal of emerging contaminants in water. J Mol Liq 261:583-593
go back to reference Beza M, Hailu H, Teferi, G (2023) Modeling and Assessing Surface Water Potential Using Combined SWAT Model and Spatial Proximity Regionalization Technique for Ungauged Subwatershed of Jewuha Watershed, Awash Basin, Ethiopia. Adv Civ Eng 2023. https://doi.org/10.1155/2023/9972801 Beza M, Hailu H, Teferi, G (2023) Modeling and Assessing Surface Water Potential Using Combined SWAT Model and Spatial Proximity Regionalization Technique for Ungauged Subwatershed of Jewuha Watershed, Awash Basin, Ethiopia. Adv Civ Eng 2023. https://​doi.​org/​10.​1155/​2023/​9972801
go back to reference da Silva RM, Dantas JC, Beltrão JDA, Santos CA (2018) Hydrological simulation in a tropical humid basin in the Cerrado biome using the SWAT model. Hydrol Res 49:908–923CrossRef da Silva RM, Dantas JC, Beltrão JDA, Santos CA (2018) Hydrological simulation in a tropical humid basin in the Cerrado biome using the SWAT model. Hydrol Res 49:908–923CrossRef
go back to reference Di Z, Chang M, Guo P et al (2019a) Using real-Time Data and Unsupervised Machine Learning techniques to study large-scale spatio–temporal characteristics of Wastewater discharges and their influence on Surface Water Quality in the Yangtze River Basin. Water 11:1268. https://doi.org/10.3390/w11061268CrossRef Di Z, Chang M, Guo P et al (2019a) Using real-Time Data and Unsupervised Machine Learning techniques to study large-scale spatio–temporal characteristics of Wastewater discharges and their influence on Surface Water Quality in the Yangtze River Basin. Water 11:1268. https://​doi.​org/​10.​3390/​w11061268CrossRef
go back to reference Glavan M, White S, Holman IP (2011) Evaluation of river water quality simulations at a daily time step–experience with SWAT in the Axe Catchment, UK. Clean–Soil Air Water 39(1):43–54CrossRef Glavan M, White S, Holman IP (2011) Evaluation of river water quality simulations at a daily time step–experience with SWAT in the Axe Catchment, UK. Clean–Soil Air Water 39(1):43–54CrossRef
go back to reference Guo J, Su X (2019) Parameter sensitivity analysis of SWAT model for streamflow simulation with multisource precipitation datasets. Hydrol Res 50(3):861–877CrossRef Guo J, Su X (2019) Parameter sensitivity analysis of SWAT model for streamflow simulation with multisource precipitation datasets. Hydrol Res 50(3):861–877CrossRef
go back to reference Guse B, Reusser DE, Fohrer N (2014) How to improve the representation of hydrological processes in SWAT for a lowland catchment–temporal analysis of parameter sensitivity and model performance. Hydrol Process 28(4):2651–2670CrossRef Guse B, Reusser DE, Fohrer N (2014) How to improve the representation of hydrological processes in SWAT for a lowland catchment–temporal analysis of parameter sensitivity and model performance. Hydrol Process 28(4):2651–2670CrossRef
go back to reference Jain AK, Dubes RC (1988) Algorithms for Clustering Data. Prentice Hall Jain AK, Dubes RC (1988) Algorithms for Clustering Data. Prentice Hall
go back to reference Jiménez-Navarro IC, Jimeno-Sáez P, López-Ballesteros A, Pérez-Sánchez J, Senent-Aparicio J (2021) Impact of Climate Change on the hydrology of the forested Watershed that drains to Lake Erken in Sweden: an analysis using SWAT + and CMIP6 scenarios. Forests 12:1803. https://doi.org/10.3390/f12121803CrossRef Jiménez-Navarro IC, Jimeno-Sáez P, López-Ballesteros A, Pérez-Sánchez J, Senent-Aparicio J (2021) Impact of Climate Change on the hydrology of the forested Watershed that drains to Lake Erken in Sweden: an analysis using SWAT + and CMIP6 scenarios. Forests 12:1803. https://​doi.​org/​10.​3390/​f12121803CrossRef
go back to reference Nachtergaele FO, van Velthuizen H, Verelst L et al (2008) Harmonized world soil database. Food and Agriculture Organization of the United Nations, Rome, Italy Nachtergaele FO, van Velthuizen H, Verelst L et al (2008) Harmonized world soil database. Food and Agriculture Organization of the United Nations, Rome, Italy
go back to reference Neitsch SL, Arnold JG, Kiniry JR, Williams JR (2011) SWAT Theoretical Documentation Neitsch SL, Arnold JG, Kiniry JR, Williams JR (2011) SWAT Theoretical Documentation
go back to reference Ouallali A, Briak H, Aassoumi H et al (2020) Hydrological foretelling uncertainty evaluation of water balance components and sediments yield using a multi-variable optimization approach in an external Rif’s catchment. Morocco Alex Eng J 59(2):775–789CrossRef Ouallali A, Briak H, Aassoumi H et al (2020) Hydrological foretelling uncertainty evaluation of water balance components and sediments yield using a multi-variable optimization approach in an external Rif’s catchment. Morocco Alex Eng J 59(2):775–789CrossRef
go back to reference Raposo JR, Dafonte J, Molinero J (2013) Assessing the impact of future climate change on groundwater recharge in Galicia-Costa, Spain. Hydrogeol J 21:459–479CrossRef Raposo JR, Dafonte J, Molinero J (2013) Assessing the impact of future climate change on groundwater recharge in Galicia-Costa, Spain. Hydrogeol J 21:459–479CrossRef
go back to reference Razavi T, Coulibaly P (2013a) Streamflow Prediction in Ungauged basins: review of regionalization methods. J Hydrol Eng 18:958–975CrossRef Razavi T, Coulibaly P (2013a) Streamflow Prediction in Ungauged basins: review of regionalization methods. J Hydrol Eng 18:958–975CrossRef
go back to reference Sivapalan M, Takeuchi K, Franks SW et al (2003) IAHS decade on predictions in Ungauged basins (PUB), 2003–2012: shaping an exciting future for the hydrological sciences. Hydrol Sci J 48:857–880CrossRef Sivapalan M, Takeuchi K, Franks SW et al (2003) IAHS decade on predictions in Ungauged basins (PUB), 2003–2012: shaping an exciting future for the hydrological sciences. Hydrol Sci J 48:857–880CrossRef
Metadata
Title
Novel Approaches for Regionalising SWAT Parameters Based on Machine Learning Clustering for Estimating Streamflow in Ungauged Basins
Authors
Javier Senent-Aparicio
Patricia Jimeno-Sáez
Raquel Martínez-España
Julio Pérez-Sánchez
Publication date
28-11-2023
Publisher
Springer Netherlands
Published in
Water Resources Management / Issue 2/2024
Print ISSN: 0920-4741
Electronic ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-023-03678-8

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