Ensemble and optimized hybrid algorithms through Runge Kutta optimizer for sewer sediment transport modeling using a data pre-processing approach

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Date

2023

Authors

Enes Gul
Mir Jafar Sadegh Safari
Omerul Faruk Dursun
Gökmen Tayfur

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Volume Title

Publisher

Elsevier B.V.

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Green Open Access

No

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Abstract

Uncontrolled sediment deposition in drainage and sewer systems raises unexpected maintenance expenditures. To this end implementation of an accurate model relying on effective parameters involved is a reliable benchmark. In this study three machine learning techniques namely extreme learning machine (ELM) multilayer perceptron neural network (MLPNN) and M5P model tree (M5PMT), and three optimization approaches of Runge Kutta (RUN) genetic algorithm (GA) and particle swarm optimization (PSO) are applied for modeling. The optimization and ensemble hybridization approaches are applied in the modeling procedure. For the case of hybrid optimized models the ELM and MLPNN models are hybridized with RUN GA and PSO algorithms to develop six hybrid models of ELM-RUN ELM-GA ELM-PSO MLPNN-RUN MLPNN-GA and MLPNN-PSO. Ensemble hybrid models are developed through coupling the ELM and MLPNN models with the M5PMT algorithm. The data pre-processing approach is applied to find the best randomness characteristic of the utilized data. Results illustrate that the RUN-based hybrid models outperform the GA- and PSO-based counterparts. Although the MLPNN-RUN and MLPNN-M5PMT hybrid models generate better results than their alternatives MLPNN-M5PMT slightly outperforms MLPNN-RUN model with a coefficient of determination of 0.84 and a root mean square error of 0.88. The current study shows the superiority of the ensemble-based approach to the optimization techniques. Further investigation is needed by considering alternative optimization techniques to enhance sediment transport modeling. © 2023 Elsevier B.V. All rights reserved.

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Keywords

Ensemble Learning, Hybrid Model, Machine Learning, Open Channels, Sediment Transport, Sewer Pipes, Artificial Neural Network, Data Processing, Genetic Algorithm, Machine Learning, Modeling, Optimization, Sediment Transport, Sewer Network, artificial neural network, data processing, genetic algorithm, machine learning, modeling, optimization, sediment transport, sewer network, Ensemble Learning, Hybrid Model, Sediment Transport, Machine Learning, Open Channels, Sewer Pipes

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OpenCitations Citation Count
2

Source

International Journal of Sediment Research

Volume

38

Issue

6

Start Page

847

End Page

858
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Scopus : 3

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Mendeley Readers : 12

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