Search Results - Hydrological Modeling using Machine Learning Methods

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    The importance of artificial intelligence-based methods in precipitation modeling studies: a bibliometric analysis by Aydin, Olgu, Kilar, Hatice

    ISSN: 0177-798X, 1434-4483
    Published: Vienna Springer Vienna 01.11.2025
    Published in Theoretical and applied climatology (01.11.2025)
    “… In this context, using Artificial Intelligence (AI), Artificial Neural Networks (ANN), Machine Learning (ML), and Deep Learning…”
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    Journal Article
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    Modeling and interpreting hydrological responses of sustainable urban drainage systems with explainable machine learning methods by Yang, Yang, Chui, Ting Fong May

    ISSN: 1607-7938, 1027-5606, 1607-7938
    Published: Katlenburg-Lindau Copernicus GmbH 11.11.2021
    Published in Hydrology and earth system sciences (11.11.2021)
    “… This study thus proposes a machine learning (ML) method to directly learn the statistical correlations between the hydrological responses of SuDS and the forcing variables at sub-hourly timescales from observation data…”
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    Journal Article
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    Challenges in Applying Machine Learning Models for Hydrological Inference: A Case Study for Flooding Events Across Germany by Schmidt, Lennart, Heße, Falk, Attinger, Sabine, Kumar, Rohini

    ISSN: 0043-1397, 1944-7973
    Published: Washington John Wiley & Sons, Inc 01.05.2020
    Published in Water resources research (01.05.2020)
    “…Machine learning (ML) algorithms are being increasingly used in Earth and Environmental modeling studies owing to the ever…”
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    Journal Article
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    Learning Regionalization Using Accurate Spatial Cost Gradients Within a Differentiable High‐Resolution Hydrological Model: Application to the French Mediterranean Region by Huynh, Ngo Nghi Truyen, Garambois, Pierre‐André, Colleoni, François, Renard, Benjamin, Roux, Hélène, Demargne, Julie, Jay‐Allemand, Maxime, Javelle, Pierre

    ISSN: 0043-1397, 1944-7973
    Published: Washington John Wiley & Sons, Inc 01.11.2024
    Published in Water resources research (01.11.2024)
    “…Estimating spatially distributed hydrological parameters in ungauged catchments poses a challenging regionalization problem and requires imposing spatial constraints given the sparsity of discharge data…”
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    Journal Article
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    Towards Interpretable Physical‐Conceptual Catchment‐Scale Hydrological Modeling Using the Mass‐Conserving‐Perceptron by Wang, Yuan‐Heng, Gupta, Hoshin V.

    ISSN: 0043-1397, 1944-7973
    Published: Washington John Wiley & Sons, Inc 01.10.2024
    Published in Water resources research (01.10.2024)
    “…We investigate the applicability of machine learning technologies to the development of parsimonious, interpretable, catchment…”
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    Journal Article
  10. 10

    AI4Water v1.0: an open-source python package for modeling hydrological time series using data-driven methods by Abbas, Ather, Boithias, Laurie, Pachepsky, Yakov, Kim, Kyunghyun, Chun, Jong Ahn, Cho, Kyung Hwa

    ISSN: 1991-9603, 1991-959X, 1991-962X, 1991-9603, 1991-962X, 1991-959X
    Published: Katlenburg-Lindau Copernicus GmbH 08.04.2022
    Published in Geoscientific Model Development (08.04.2022)
    “… advanced skills from diverse fields, such as programming and hydrological modeling. Additionally, data pre-processing and post-processing when training and testing machine learning models are a time-intensive process…”
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    Journal Article
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    Assessing climate change and human impacts on runoff and hydrological droughts in the Yellow River Basin using a machine learning-enhanced hydrological modeling approach by Wang, Lei, Li, Yi, Biswas, Asim, Zhao, Yong, Niu, Ben, Siddique, Kadambot.H.M.

    ISSN: 0301-4797, 1095-8630, 1095-8630
    Published: England Elsevier Ltd 01.04.2025
    Published in Journal of environmental management (01.04.2025)
    “…Analyzing the impacts of climate change (CC) and human activities (HA) on hydrological events is important for water resource management…”
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    Journal Article
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    Flash Flood Susceptibility Modeling Using New Approaches of Hybrid and Ensemble Tree-Based Machine Learning Algorithms by Band, Shahab S., Janizadeh, Saeid, Chandra Pal, Subodh, Saha, Asish, Chakrabortty, Rabin, Melesse, Assefa M., Mosavi, Amirhosein

    ISSN: 2072-4292, 2072-4292
    Published: Basel MDPI AG 31.10.2020
    Published in Remote sensing (Basel, Switzerland) (31.10.2020)
    “… Thus, to detect flash flood-prone zones in this study area, five machine learning (ML) algorithms were tested…”
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    Journal Article
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    Effect of environmental covariable selection in the hydrological modeling using machine learning models to predict daily streamflow by Reis, Guilherme Barbosa, da Silva, Demetrius David, Fernandes Filho, Elpídio Inácio, Moreira, Michel Castro, Veloso, Gustavo Vieira, Fraga, Micael de Souza, Pinheiro, Sávio Augusto Rocha

    ISSN: 0301-4797, 1095-8630, 1095-8630
    Published: England Elsevier Ltd 15.07.2021
    Published in Journal of environmental management (15.07.2021)
    “…There are different methods for predicting streamflow, and, recently machine learning has been widely used for this purpose…”
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    Journal Article
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    Assessing future hydrological and sediment transport response of an urban watershed using a machine learning–based land cover change model by Peker, İsmail Bilal, Cuceloglu, Gokhan, Sökmen, Eren Dağra, Gülbaz, Sezar

    ISSN: 1573-2959, 0167-6369, 1573-2959
    Published: Cham Springer International Publishing 13.10.2025
    Published in Environmental monitoring and assessment (13.10.2025)
    “… Modeling LCC using machine learning techniques enhances the ability to generate realistic future scenarios, providing a robust basis for informed watershed management decisions…”
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    Modeling Hydrological Responses of Watershed Under Climate Change Scenarios Using Machine Learning Techniques by Karimizadeh, Keivan, Yi, Jaeeung

    ISSN: 0920-4741, 1573-1650
    Published: Dordrecht Springer Netherlands 01.10.2023
    Published in Water resources management (01.10.2023)
    “… The main methods were using the Coupled Model Intercomparison Project phase 6 (CMIP6), the Soil and Water Assessment Tool (SWAT…”
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    Improving the spatial resolution of GRACE-based groundwater storage estimates using a machine learning algorithm and hydrological model by Yin, Wenjie, Zhang, Gangqiang, Liu, Futian, Zhang, Dasheng, Zhang, Xiuping, Chen, Sheming

    ISSN: 1431-2174, 1435-0157
    Published: Berlin/Heidelberg Springer Berlin Heidelberg 01.05.2022
    Published in Hydrogeology journal (01.05.2022)
    “…The low-resolution characteristic of Gravity Recovery and Climate Experiment (GRACE) satellite data greatly limits their application in many fields at regional…”
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    Journal Article
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    Regionalization of hydrological model parameters using gradient boosting machine by Song, Zhihong, Xia, Jun, Wang, Gangsheng, She, Dunxian, Hu, Chen, Hong, Si

    ISSN: 1607-7938, 1027-5606, 1607-7938
    Published: Katlenburg-Lindau Copernicus GmbH 31.01.2022
    Published in Hydrology and earth system sciences (31.01.2022)
    “…The regionalization of hydrological model parameters is key to hydrological predictions in ungauged basins…”
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    Journal Article
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    Evaluation of Machine Learning Techniques for Hydrological Drought Modeling: A Case Study of the Wadi Ouahrane Basin in Algeria by Achite, Mohammed, Jehanzaib, Muhammad, Elshaboury, Nehal, Kim, Tae-Woong

    ISSN: 2073-4441, 2073-4441
    Published: Basel MDPI AG 01.02.2022
    Published in Water (Basel) (01.02.2022)
    “… In this study, various machine learning (ML) techniques including four methods (i.e., ANN, ANFIS, SVM, and DT…”
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    Journal Article
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    Exploring the Controlling Factors of Watershed Streamflow Variability Using Hydrological and Machine Learning Models by Ding, Bingbing, Yu, Xinxiao, Jia, Guodong

    ISSN: 0043-1397, 1944-7973
    Published: Washington John Wiley & Sons, Inc 01.05.2025
    Published in Water resources research (01.05.2025)
    “… This study demonstrated the potential of integrating hydrological models with machine learning by constructing two machine learning methods, Extreme Gradient Boosting (XGBoost) and Random Forest (RF…”
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    Hybridization of stochastic hydrological models and machine learning methods for improving rainfall-runoff modeling by Houénafa, Sianou Ezéckiel, Johnson, Olatunji, Ronoh, Erick K., Moore, Stephen E.

    ISSN: 2590-1230, 2590-1230
    Published: Elsevier B.V 01.03.2025
    Published in Results in engineering (01.03.2025)
    “…Accurately simulating river discharge remains a challenge. Hybrid models combining hydrological models with machine learning improve discharge simulation and offer better interpretability than standalone machine learning models…”
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    Journal Article