AI‐based runoff simulation based on remote sensing observations: A case study of two river basins in the United States and Canada

Abstract Data‐driven techniques are used extensively for hydrologic time‐series prediction. We created various data‐driven models (DDMs) based on machine learning: long short‐term memory (LSTM), support vector regression (SVR), extreme learning machines, and an artificial neural network with backpro...

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Bibliographic Details
Published in:JAWRA Journal of the American Water Resources Association
Main Authors: Parisouj, Peiman, Mohammadzadeh Khani, Hadi, Islam, Md Feroz, Jun, Changhyun, Bateni, Sayed M., Kim, Dongkyun
Other Authors: Korea Environmental Industry and Technology Institute, National Research Foundation of Korea, Ministry of Science and ICT, South Korea
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2022
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Online Access:http://dx.doi.org/10.1111/1752-1688.13098
https://onlinelibrary.wiley.com/doi/pdf/10.1111/1752-1688.13098
https://onlinelibrary.wiley.com/doi/full-xml/10.1111/1752-1688.13098
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Summary:Abstract Data‐driven techniques are used extensively for hydrologic time‐series prediction. We created various data‐driven models (DDMs) based on machine learning: long short‐term memory (LSTM), support vector regression (SVR), extreme learning machines, and an artificial neural network with backpropagation, to define the optimal approach to predicting streamflow time series in the Carson River (California, USA) and Montmorency (Canada) catchments. The moderate resolution imaging spectroradiometer (MODIS) snow‐coverage dataset was applied to improve the streamflow estimate. In addition to the DDMs, the conceptual snowmelt runoff model was applied to simulate and forecast daily streamflow. The four main predictor variables, namely snow‐coverage (S‐C), precipitation ( P ), maximum temperature ( T max ), and minimum temperature ( T min ), and their corresponding values for each river basin, were obtained from National Climatic Data Center and National Snow and Ice Data Center to develop the model. The most relevant predictor variable was chosen using the support vector machine‐recursive feature elimination feature selection approach. The results show that incorporating the MODIS snow‐coverage dataset improves the models' prediction accuracies in the snowmelt‐dominated basin. SVR and LSTM exhibited the best performances (root mean square error = 8.63 and 9.80) using monthly and daily snowmelt time series, respectively. In summary, machine learning is a reliable method to forecast runoff as it can be employed in global climate forecasts that require high‐volume data processing.