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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/HO 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 R 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 (HO 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.
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http://dx.doi.org/10.1016/j.chemosphere.2024.143996 | DOI Listing |
Mar Biotechnol (NY)
September 2025
Department of Marine Life Science, Jeju National University, Jeju, 63243, South Korea.
This study assessed the optimum dietary vitamin B requirement of Pacific white shrimp, Penaeus vannamei, for growth, feed efficiency, hemocyte counts, innate immunity, and ammonia stress resistance. Semi-purified experimental diets were prepared by adding vitamin B at 0.0, 0.
View Article and Find Full Text PDFFront Bioeng Biotechnol
August 2025
Graduate School of Medicine, Nagoya University, Nagoya, Japan.
Electroactive polymer (EAP) artificial muscles are gaining attention in robotic control technologies. Among them, the development of self-sensing actuators that integrate sensing mechanisms within artificial muscles is highly anticipated. This study aimed to evaluate the accuracy and precision of the sensing capabilities of the e-Rubber (eR), an artificial muscle developed by Toyoda Gosei Co.
View Article and Find Full Text PDFJ Youth Adolesc
September 2025
Faculty of Education, The University of Macau, Macao SAR, China.
Parents and adolescents can differ in their perceptions of parental involvement, yet most research relies on a single informant, potentially overlooking important discrepancies. Using data from 89,448 fifteen-year-olds (50.3% female) and their parents (78.
View Article and Find Full Text PDFRev Sci Instrum
September 2025
Department of Applied Mechanics and Biomedical Engineering, Indian Institute of Technology Madras, Chennai 600036, India.
Pesticides are often used in agriculture to reduce post-harvest losses due to contamination and to increase productivity. Long-term exposure to these pesticides in food leads to serious health issues in humans and animals. Advanced sensing techniques are crucial for detecting pesticide traces in agricultural products present in low amounts.
View Article and Find Full Text PDFDent Mater
September 2025
Faculty of Dentistry, National University of Singapore, Singapore; ORCHIDS: Oral Care Health Innovations and Designs Singapore, National University of Singapore, Singapore. Electronic address:
Objectives: To develop and validate predictive machine learning model capable of estimating long-term pH profiles (up to 672 h) of calcium silicate-based cements (CSCs) using early-stage pH measurements (3 and 24 h).
Materials And Methods: pH and calcium ion release data from in vitro studies (2014 - 2024) were extracted and analysed using descriptive statistics and correlation metrics. Feature selection was conducted using Random Forest regressors to identify key variables.