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Comparison of Machine Learning Models Performance on Simulating Reservoir Outflow: A Case Study of Two Reservoirs in Illinois,U.S.A.
Authors:Guangping Qie  Zhenxing Zhang  Elias Getahun  Emily Allen Mamer
Institution:1. Department of Tourism Management, Moutai Institute, Renhuai, CHN

Contribution: Conceptualization, Data curation, Formal analysis, Methodology, Resources, Visualization, Writing - original draft, Writing - review & editing;2. Illinois State Water Survey, Prairie Research Institute, University of Illinois Urbana-Champaign, Champaign, Illinois, USA;3. Department of Geography and GIS, University of Illinois Urbana-Champaign, Champaign, Illinois, USA

Contribution: Writing - review & editing

Abstract:Reservoir outflow is an important variable for understanding hydrological processes and water resource management. Natural streamflow variation, in addition to the streamflow regulation provided by dams and reservoirs, can make streamflow difficult to understand and predict. This makes them a challenge to accurately simulate hydrologic processes at a daily scale. In this study, three Machine Learning (ML) algorithms, Random Forest (RF), Support Vector Machine (SVM), and Artificial Neural Network (ANN), were examined and compared to model reservoir outflow. Past, current, and future hydrologic and meteorological data were used as model inputs, and the outflow of next day was used as prediction. Simulation results demonstrated that all three models can reasonably simulate reservoir outflow. For Carlyle Lake, the coefficient of determination and Nash–Sutcliffe efficiency were each close to one for the three models. The coefficient of determination, relative mean bias, and root mean square error indicated that the SVM performed better than the RF and ANN, but the SVM output displayed a larger relative mean bias than that from RF and ANN. For Lake Shelbyville, the ANN model performed better than RF and SVM when considering the coefficient of determination, Nash–Sutcliffe efficiency, relative mean bias, and root mean square error. The study results demonstrate that the three ML algorithms (RF, SVM, and ANN) are all promising tools for simulating reservoir outflow. Both the accuracy and efficacy of the three ML algorithms are considered to support practitioners in planning reservoir management.
Keywords:reservoir outflow  RF  SVM  ANN  Boruta algorithm  water resources  reservoir simulation
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