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Alternative assessment of machine learning to polynomial regression in response surface methodology for predicting decolorization efficiency in textile wastewater treatment
  • Kang, Jin Kyu ;
  • Lee, Youn Jun ;
  • Son, Chae Young ;
  • Park, Seong Jik ;
  • Lee, Chang Gu
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Publication Year
2025-02-01
Publisher
Elsevier Ltd
Citation
Chemosphere, Vol.370
Keyword
DecolorizationMachine learningResponse surface methodologyUV/H2O2Wastewater
Mesh Keyword
DecolourizationH 2O 2Machine learning modelsMachine-learningMultilayers perceptronsOverfittingPolynomial regressionRandom forestsResponse-surface methodologyUV/H2O2Hydrogen PeroxideMachine LearningRegression AnalysisTextile IndustryTextilesUltraviolet RaysWaste Disposal, FluidWastewaterWater Pollutants, Chemical
All Science Classification Codes (ASJC)
Environmental EngineeringEnvironmental ChemistryChemistry (all)PollutionPublic Health, Environmental and Occupational HealthHealth, Toxicology and Mutagenesis
Abstract
This study investigated the potential of machine learning (ML) as a substitute for polynomial regression in conventional response surface methodology (RSM) for decolorizing textile wastewater via a UV/H2O2 process. While polynomial regression offers limited adaptability, ML models provide superior flexibility in capturing nonlinear responses but are prone to overfitting, particularly with constrained RSM datasets. In this study, we evaluated decision tree (DT), random forest (RF), multilayer perceptron (MLP), and extreme gradient boosting (XGBoost) models with respect to a quadratic regression model. Our observations indicated that the ML models achieved higher R2 values, demonstrating better adaptability. However, when provided with additional data, the polynomial regression displayed a moderate predictability, whereas MLP and XGBoost exhibited indications of overfitting, while DT and RF remained robust. Both ANalysis Of VAriance (ANOVA) and SHapley Additive exPlanations (SHAP) analyses consistently emphasized the significance of operational factors (H2O2 concentration, reaction time, UV light intensity) in decolorization. The findings underscore the need for cautious validation when substituting ML models in RSM and highlight the complementary value of ML (particularly SHAP analysis) alongside conventional ANOVA for analyzing factor significance. This study offered significant insights into replacing polynomial regression with ML models in RSM.
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/34672
DOI
https://doi.org/10.1016/j.chemosphere.2024.143996
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Type
Article
Funding
This research was supported by Global - Learning & Academic research institution for Master's\u00B7PhD students, and Postdocs (G-LAMP) Program of the National Research Foundation of Korea (NRF) grant funded by the Ministry of Education (No. RS-2023-00285390).This research was supported by Global - Learning & Academic research institution for Master\u2019s\u00B7PhD students, and Postdocs (G-LAMP) Program of the National Research Foundation of Korea (NRF) grant funded by the Ministry of Education (No. RS-2023-00285390).
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Lee, Chang-Gu 이창구
Department of Environmental and Safety Engineering
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