Fine-tuning inflow prediction models: integrating optimization algorithms and TRMM data for enhanced accuracy

Author:

Ali Enas1ORCID,Zerouali Bilel2ORCID,Tariq Aqil3,Katipoğlu Okan Mert4ORCID,Bailek Nadjem56ORCID,Santos Celso Augusto Guimarães7ORCID,M. Ghoneim Sherif S.8ORCID,Towfiqul Islam Abu Reza Md.9ORCID

Affiliation:

1. a University Centre for Research and Development, Chandigarh University, Mohali, Punjab, India

2. b Laboratory of Architecture, Cities and Environment, Department of Hydraulic, Faculty of Civil Engineering and Architecture, Hassiba Benbouali University of Chlef, Chlef, Algeria

3. c Department of Wildlife, Fisheries and Aquaculture, College of Forest Resources, Mississippi State University, 775 Stone Boulevard, Mississippi State, MS, USA

4. d Faculty of Engineering and Architecture, Department of Civil Engineering, Erzincan Binali Yıldırım University, Erzincan, Turkey

5. e Laboratory of Mathematics Modeling and Applications, Department of Mathematics and Computer Science, Faculty of Sciences and Technology, Ahmed Draia University of Adrar, Adrar, Algeria

6. f MEU Research Unit, Middle East University, Amman, Jordan

7. g Department of Civil and Environmental Engineering, Federal University of Paraíba, João Pessoa, Paraíba, Brazil

8. h Department of Electrical Engineering, College of Engineering, Taif University, Taif, Saudi Arabia

9. i Department of Disaster Management, Begum Bekeya University, Rangpur, Bangladesh

Abstract

ABSTRACT This research explores machine learning algorithms for reservoir inflow prediction, including long short-term memory (LSTM), random forest (RF), and metaheuristic-optimized models. The impact of feature engineering techniques such as discrete wavelet transform (DWT) and XGBoost feature selection is investigated. LSTM shows promise, with LSTM-XGBoost exhibiting strong generalization from 179.81 m3/s RMSE (root mean square error) in training to 49.42 m3/s in testing. The RF-XGBoost and models incorporating DWT, like LSTM-DWT and RF-DWT, also perform well, underscoring the significance of feature engineering. Comparisons illustrate enhancements with DWT: LSTM and RF reduce training and testing RMSE substantially when using DWT. Metaheuristic models like MLP-ABC and LSSVR-PSO benefit from DWT as well, with the LSSVR-PSO-DWT model demonstrating excellent predictive accuracy, showing 133.97 m3/s RMSE in training and 47.08 m3/s RMSE in testing. This model synergistically combines LSSVR, PSO, and DWT, emerging as the top performers by effectively capturing intricate reservoir inflow patterns.

Funder

Taif University

Publisher

IWA Publishing

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