TY - JOUR
T1 - Understanding and Designing a High-Performance Ultrafiltration Membrane Using Machine Learning
AU - Gao, Haiping
AU - Zhong, Shifa
AU - Dangayach, Raghav
AU - Chen, Yongsheng
N1 - Publisher Copyright:
© 2023 The Authors. Published by American Chemical Society.
PY - 2023/11/21
Y1 - 2023/11/21
N2 - Ultrafiltration (UF) as one of the mainstream membrane-based technologies has been widely used in water and wastewater treatment. Increasing demand for clean and safe water requires the rational design of UF membranes with antifouling potential, while maintaining high water permeability and removal efficiency. This work employed a machine learning (ML) method to establish and understand the correlation of five membrane performance indices as well as three major performance-determining membrane properties with membrane fabrication conditions. The loading of additives, specifically nanomaterials (A_wt %), at loading amounts of >1.0 wt % was found to be the most significant feature affecting all of the membrane performance indices. The polymer content (P_wt %), molecular weight of the pore maker (M_Da), and pore maker content (M_wt %) also made considerable contributions to predicting membrane performance. Notably, M_Da was more important than M_wt % for predicting membrane performance. The feature analysis of ML models in terms of membrane properties (i.e., mean pore size, overall porosity, and contact angle) provided an unequivocal explanation of the effects of fabrication conditions on membrane performance. Our approach can provide practical aid in guiding the design of fit-for-purpose separation membranes through data-driven virtual experiments.
AB - Ultrafiltration (UF) as one of the mainstream membrane-based technologies has been widely used in water and wastewater treatment. Increasing demand for clean and safe water requires the rational design of UF membranes with antifouling potential, while maintaining high water permeability and removal efficiency. This work employed a machine learning (ML) method to establish and understand the correlation of five membrane performance indices as well as three major performance-determining membrane properties with membrane fabrication conditions. The loading of additives, specifically nanomaterials (A_wt %), at loading amounts of >1.0 wt % was found to be the most significant feature affecting all of the membrane performance indices. The polymer content (P_wt %), molecular weight of the pore maker (M_Da), and pore maker content (M_wt %) also made considerable contributions to predicting membrane performance. Notably, M_Da was more important than M_wt % for predicting membrane performance. The feature analysis of ML models in terms of membrane properties (i.e., mean pore size, overall porosity, and contact angle) provided an unequivocal explanation of the effects of fabrication conditions on membrane performance. Our approach can provide practical aid in guiding the design of fit-for-purpose separation membranes through data-driven virtual experiments.
KW - antifouling potential
KW - machine learning
KW - membrane properties
KW - ultrafiltration membrane
KW - water permeability
UR - https://www.scopus.com/pages/publications/85148348856
U2 - 10.1021/acs.est.2c05404
DO - 10.1021/acs.est.2c05404
M3 - 文章
C2 - 36790106
AN - SCOPUS:85148348856
SN - 0013-936X
VL - 57
SP - 17831
EP - 17840
JO - Environmental Science and Technology
JF - Environmental Science and Technology
IS - 46
ER -