2021
DOI: 10.1155/2021/3721661
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On the Investigation of Monthly River Flow Generation Complexity Using the Applicability of Machine Learning Models

Abstract: Streamflow is associated with several sources on nonstationaries and hence developing machine learning (ML) models is always the motive to provide a reliable methodology to understand the actual mechanism of streamflow. The current research was devoted to generating monthly streamflows from annual streamflow. In this study, three different ML models were applied for this purpose, including Multiple Additive Regression Trees (MART), Group Methods of Data Handling (GMDH), and Gene Expression Programming (GEP). T… Show more

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