On the Investigation of Monthly River Flow Generation Complexity Using the Applicability of Machine Learning Models

Author:

Shaofu Ma1ORCID,Al-Juboori Anas Mahmood2ORCID,Alwan Asmaa Hussein3ORCID,Abdel-Salam Abdel-Salam G.4ORCID

Affiliation:

1. College of Physical Education, Lanzhou City University, Lanzhou 730070, China

2. Dams and Water Resources Research Center, University of Mosul, Mosul, Iraq

3. College of Education for Human Science-Ibn Rushd, University of Baghdad, Baghdad, Iraq

4. Department of Mathematics, Statistics and Physics, College of Arts and Sciences, Qatar University, Doha, Qatar

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). The models were developed based on annual streamflow and monthly time index of three rivers (i.e., Upper Zab, Lower Zab, and Diyala) located in the north region of Iraq. The modeling results indicated an optimistic simulation for generating the monthly streamflow time series from annual streamflow time series. The potential of the MART model was superior to the GMDH and GEP models for Upper Zab River (R2 0.84, 0.64, and 0.47), Lower Zab River (R2 0.75, 0.46, and 0.40), and Diyala River (R2 0.78, 0.42, and 0.5). The results of RMSE were 113, 169, and 208 for Upper Zab River, 95, 149, and 0.5 for Lower Zab River, and 73, 118, and 109 for Diyala River. The results have proved the possibility of changing the timescale in generating streamflow data.

Funder

Qatar University

Publisher

Hindawi Limited

Subject

Multidisciplinary,General Computer Science

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