Binary Coati Optimization Algorithm- Multi- Kernel Least Square Support Vector Machine-Extreme Learning Machine Model (BCOA-MKLSSVM-ELM): A New Hybrid Machine Learning Model for Predicting Reservoir Water Level
Author:
Sammen Saad Sh.1ORCID, Ehteram Mohammad2, Sheikh Khozani Zohreh3, Sidek Lariyah Mohd4
Affiliation:
1. Department of Civil Engineering, College of Engineering, University of Diyala, Baqubah 32001, Iraq 2. Department of Water Engineering, Semnan University, Semnan 35131-19111, Iran 3. Faculty of Civil Engineering, Institute of Structural Mechanics, Bauhaus Universität Weimar, 99423 Weimar, Germany 4. Institute of Energy Infrastructure (IEI), Department of Civil Engineering, College of Engineering, University Tenaga Nasional (UNITEN), Kajang 43000, Malaysia
Abstract
Predicting reservoir water levels helps manage droughts and floods. Predicting reservoir water level is complex because it depends on factors such as climate parameters and human intervention. Therefore, predicting water level needs robust models. Our study introduces a new model for predicting reservoir water levels. An extreme learning machine, the multi-kernel least square support vector machine model (MKLSSVM), is developed to predict the water level of a reservoir in Malaysia. The study also introduces a novel optimization algorithm for selecting inputs. While the LSSVM model may not capture nonlinear components of the time series data, the extreme learning machine (ELM) model—MKLSSVM model can capture nonlinear and linear components of the time series data. A coati optimization algorithm is introduced to select input scenarios. The MKLSSVM model takes advantage of multiple kernel functions. The extreme learning machine model—multi-kernel least square support vector machine model also takes the benefit of both the ELM model and MKLSSVM model models to predict water levels. This paper’s novelty includes introducing a new method for selecting inputs and developing a new model for predicting water levels. For water level prediction, lagged rainfall and water level are used. In this study, we used extreme learning machine (ELM)-multi-kernel least square support vector machine (ELM-MKLSSVM), extreme learning machine (ELM)-LSSVM-polynomial kernel function (PKF) (ELM-LSSVM-PKF), ELM-LSSVM-radial basis kernel function (RBF) (ELM-LSSVM-RBF), ELM-LSSVM-Linear Kernel function (LKF), ELM, and MKLSSVM models to predict water level. The testing means absolute of the same models was 0.710, 0.742, 0.832, 0.871, 0.912, and 0.919, respectively. The Nash–Sutcliff efficiency (NSE) testing of the same models was 0.97, 0.94, 0.90, 0.87, 0.83, and 0.18, respectively. The ELM-MKLSSVM model is a robust tool for predicting reservoir water levels.
Funder
Transdisciplinary Research Grant Scheme
Subject
Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry
Reference33 articles.
1. Kusudo, T., Yamamoto, A., Kimura, M., and Matsuno, Y. (2022). Development and Assessment of Water-Level Prediction Models for Small Reservoirs Using a Deep Learning Algorithm. Water, 14. 2. Real-time water level prediction of cascaded channels based on multilayer perception and recurrent neural network;Ren;J. Hydrol.,2020 3. Azad, A.S., Sokkalingam, R., Daud, H., Adhikary, S.K., Khurshid, H., Mazlan, S.N.A., and Rabbani, M.B.A. (2022). Water Level Prediction through Hybrid SARIMA and ANN Models Based on Time Series Analysis: Red Hills Reservoir Case Study. Sustainability, 14. 4. Park, K., Jung, Y., Seong, Y., and Lee, S. (2022). Development of Deep Learning Models to Improve the Accuracy of Water Levels Time Series Prediction through Multivariate Hydrological Data. Water, 14. 5. Guo, T., He, W., Jiang, Z., Chu, X., Malekian, R., and Li, Z. (2019). An Improved LSSVM Model for Intelligent Prediction of the Daily Water Level. Energies, 12.
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