Determining water and solute permeability of reverse osmosis membrane using a data-driven machine learning pipeline

被引:2
作者
Chae, Sung Ho [1 ]
Hong, Seok Won [1 ,2 ]
Son, Moon [1 ,2 ]
Cho, Kyung Hwa [3 ]
机构
[1] Korea Inst Sci & Technol KIST, Ctr Water Cycle Res, Seoul 02792, South Korea
[2] Univ Sci & Technol, KIST Sch, Div Energy & Environm Technol, Seoul 02792, South Korea
[3] Korea Univ, Sch Civil Environm & Architectural Engn, Seoul 02841, South Korea
基金
新加坡国家研究基金会;
关键词
Machine learning; Parameters; Reverse osmosis membrane; Solute permeability; Water permeability; DESALINATION; MODEL; PERFORMANCE; REJECTION;
D O I
10.1016/j.jwpe.2024.105634
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Water (A) and solute permeability (B) are the key parameters characterizing the performance of reverse osmosis (RO) membranes. However, determining A and B requires multiple times of experiments that are timeconsuming. Thus, developing a method to estimate A and B quickly has been encouraged. This study introduces a data-driven machine learning (ML) pipeline designed to predict A and B for RO membranes. The ML pipeline addresses all stages for estimating A and B, from data preprocessing to practical guidance on developed models. In particular, the membrane composition data, an overlooked essential component detailing A and B, was employed as features for the ML models. Sixteen ML models were tested, and categorical boost (CatBoost) and extremely randomized trees (ET) were selected as the best models for A and B, respectively. The selected ML models were retrained using the minimum yet effective features identified through feature importance analysis. Consequently, the retrained ML models exhibited high accuracy in predicting A and B (R2adj,test = 0.925/MAEtest = 0.246 for A; R2adj,test = 0.986/MAEtest = 0.069 for B), demonstrating the viability of a data-driven approach for parameter estimation. Moreover, this study highlights that RO membrane performance can be gauged effectively using membrane composition data and a limited set of operating conditions.
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页数:10
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