TY - JOUR
T1 - Data-Driven Chemometric Modeling for Predicting the Performance of Sulfonated MXene Thin-Film Nanocomposite Membranes in Desalination
AU - Yogarathinam, Lukka Thuyavan
AU - Abba, Sani I.
AU - Usman, Jamilu
AU - Jibrin, Abdulhayat M.
AU - Aljundi, Isam H.
AU - Baig, Nadeem
N1 - Publisher Copyright:
© 2025 Wiley-VCH GmbH.
PY - 2025/10
Y1 - 2025/10
N2 - Machine learning (ML) has emerged as a valuable tool in advancing thin-film nanocomposite (TFN) membranes for sustainable water treatment. In this study, a novel data-driven chemometric framework integrated with ML was developed to predict the performance of sulfonated MXene-incorporated TFN polyamide membranes for desalination applications. Six ML algorithms namely kernel support vector machine (k-SVM), decision tree (DT), long short-term memory (LSTM), recurrent neural network (RNN), random forest (RF), and a hybrid k-SVM model optimized using particle swarm optimization (k-SVM-PSO) were systematically evaluated. Feature engineering of sulfonated MXene concentration, membrane characteristics such as contact angle, surface roughness, surface charge, and physiochemical properties of electrolytes showed prominent control in electrolyte flux and rejection. The metaheuristic-driven k-SVM-PSO model showed outstanding predicted accuracy for electrolyte flux with R2 = 0.983, based on physicochemical properties parameters of TFN membrane and sulfonated MXene and electrolytes. Predictive ML algorithms also strongly agreed with the experimental dataset in determining non-linear flux dynamics related to organic foulants fouling patterns. Furthermore, the spectral intensity of chlorinated TFN membranes was successfully predicted, with DT and RF models achieving the highest performance (R2 = 0.999 and minimal error metrics). This chemometric approach enables advanced prediction of membrane performance for desalination.
AB - Machine learning (ML) has emerged as a valuable tool in advancing thin-film nanocomposite (TFN) membranes for sustainable water treatment. In this study, a novel data-driven chemometric framework integrated with ML was developed to predict the performance of sulfonated MXene-incorporated TFN polyamide membranes for desalination applications. Six ML algorithms namely kernel support vector machine (k-SVM), decision tree (DT), long short-term memory (LSTM), recurrent neural network (RNN), random forest (RF), and a hybrid k-SVM model optimized using particle swarm optimization (k-SVM-PSO) were systematically evaluated. Feature engineering of sulfonated MXene concentration, membrane characteristics such as contact angle, surface roughness, surface charge, and physiochemical properties of electrolytes showed prominent control in electrolyte flux and rejection. The metaheuristic-driven k-SVM-PSO model showed outstanding predicted accuracy for electrolyte flux with R2 = 0.983, based on physicochemical properties parameters of TFN membrane and sulfonated MXene and electrolytes. Predictive ML algorithms also strongly agreed with the experimental dataset in determining non-linear flux dynamics related to organic foulants fouling patterns. Furthermore, the spectral intensity of chlorinated TFN membranes was successfully predicted, with DT and RF models achieving the highest performance (R2 = 0.999 and minimal error metrics). This chemometric approach enables advanced prediction of membrane performance for desalination.
KW - 2D Materials
KW - Desalination
KW - Machine learning
KW - Polymeric membranes
KW - Sulfonated MXene
UR - https://www.scopus.com/pages/publications/105012738228
U2 - 10.1002/ajoc.202500465
DO - 10.1002/ajoc.202500465
M3 - Article
AN - SCOPUS:105012738228
SN - 2193-5807
VL - 14
JO - Asian Journal of Organic Chemistry
JF - Asian Journal of Organic Chemistry
IS - 10
M1 - e00465
ER -