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Published in: Water Resources Management 10/2022

02-07-2022

Introducing a Novel Hybrid Machine Learning Model and Developing its Performance in Estimating Water Quality Parameters

Authors: Mojtaba Kadkhodazadeh, Saeed Farzin

Published in: Water Resources Management | Issue 10/2022

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Abstract

For the first time, a novel hybrid machine learning model named the least-squares support vector machine-arithmetic optimization algorithm (LSSVM-AOA) was proposed. The performance of LSSVM-AOA was checked on six benchmark data sets (BDSs) to showcase its applicability. After testing the performance of the novel hybrid machine learning model, its performance in electrical conductivity (EC) and total soluble solids (TDS) estimating was developed at six stations in the Karun river basin. For this purpose, effective parameters were selected by the principal component analysis (PCA) method. The results of the technique for order of preference by similarity to ideal solution (TOPSIS) method showed that the LSSVM-AOA has promising results in modeling BDSs and estimating water quality parameters (WQPs) in comparison with classical and hybrid algorithms (artificial neural network (ANN), adaptive neural fuzzy inference system (ANFIS), LSSVM, LSSVM-particle swarm optimization (LSSVM-PSO) and LSSVM-whale optimization algorithm (LSSVM-WOA)). The average values of correlation coefficient (R) in EC and TDS estimates were 0.969 and 0.950, respectively. Eventually, the Monte Carlo method (MCM) showed that the LSSVM-AOA has the lowest uncertainty among other algorithms.

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Appendix
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Literature
go back to reference Kadkhodazadeh M, Valikhan Anaraki M, Morshed-Bozorgdel A, Farzin S (2022) A new methodology for reference evapotranspiration prediction and uncertainty analysis under climate change conditions based on machine learning, multi criteria decision making and Monte Carlo methods. Sustainability 14(5):2601. https://doi.org/10.3390/su14052601CrossRef Kadkhodazadeh M, Valikhan Anaraki M, Morshed-Bozorgdel A, Farzin S (2022) A new methodology for reference evapotranspiration prediction and uncertainty analysis under climate change conditions based on machine learning, multi criteria decision making and Monte Carlo methods. Sustainability 14(5):2601. https://​doi.​org/​10.​3390/​su14052601CrossRef
go back to reference Karabašević D, Stanujkić D, Zavadskas EK, Stanimirović P, Popović G, Predić B, Ulutaş A (2020) A novel extension of the TOPSIS method adapted for the use of single-valued neutrosophic sets and hamming distance for e-commerce development strategies selection. Symmetry 12(8):1263. https://doi.org/10.3390/sym12081263CrossRef Karabašević D, Stanujkić D, Zavadskas EK, Stanimirović P, Popović G, Predić B, Ulutaş A (2020) A novel extension of the TOPSIS method adapted for the use of single-valued neutrosophic sets and hamming distance for e-commerce development strategies selection. Symmetry 12(8):1263. https://​doi.​org/​10.​3390/​sym12081263CrossRef
Metadata
Title
Introducing a Novel Hybrid Machine Learning Model and Developing its Performance in Estimating Water Quality Parameters
Authors
Mojtaba Kadkhodazadeh
Saeed Farzin
Publication date
02-07-2022
Publisher
Springer Netherlands
Published in
Water Resources Management / Issue 10/2022
Print ISSN: 0920-4741
Electronic ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-022-03238-6

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