Comparison of improved relevance vector machines for streamflow predictions

Author:

Adnan Rana Muhammad1ORCID,Mostafa Reham R.2,Dai Hong‐Liang1,Mansouri Ehsan3,Kisi Ozgur45ORCID,Zounemat‐Kermani Mohammad6

Affiliation:

1. School of Economics and Statistics Guangzhou University Guangzhou China

2. Department of Information Systems, Faculty of Computers and Information Sciences Mansoura University Mansoura Egypt

3. Department of Computer and Technology Birjand University of Medical Sciences Birjand Iran

4. Department of Civil Engineering Lübeck University of Applied Science Lübeck Germany

5. Department of Civil Engineering, School of Technology Ilia State University Tbilisi Georgia

6. Department of Water Engineering Shahid Bahonar University of Kerman Kerman Iran

Abstract

AbstractThis study investigates the feasibility of relevance vector machine tuned with dwarf mongoose optimization algorithm in modeling monthly streamflow. The proposed method is compared with relevance vector machines tuned by particle swarm optimization, whale optimization, marine predators algorithms, and single relevance vector machine methods. Various lagged values of hydroclimatic data (e.g., precipitation, temperature, and streamflow) are used as inputs to the models. The relevance vector machine tuned with dwarf mongoose optimization algorithm improved the efficiency of single method in monthly streamflow prediction. It is found that the integrating metaheuristic algorithms into single relevance vector machine improves the prediction efficiency, and among the input combinations, the lagged streamflow data are found to be the most effective variable on current streamflow whereas precipitation has the least effect.

Funder

National Social Science Fund of China

Bureau of Education of Guangzhou Municipality

Publisher

Wiley

Subject

Management Science and Operations Research,Statistics, Probability and Uncertainty,Strategy and Management,Computer Science Applications,Modeling and Simulation,Economics and Econometrics

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