TY - JOUR
T1 - Performance investigation of osmotically assisted reverse osmosis using explainable machine learning models
T2 - A comparative study
AU - Chae, Sung Ho
AU - Moon, Seokyoon
AU - Hong, Seok Won
AU - Lee, Chulmin
AU - Son, Moon
N1 - Publisher Copyright:
© 2024 The Authors
PY - 2024/8/19
Y1 - 2024/8/19
N2 - Osmotically assisted reverse osmosis (OARO) can treat highly concentrated water and achieve higher recovery rates than reverse osmosis (RO). However, existing mathematical models cannot satisfactorily explain OARO systems due to certain limitations. To explore OARO more dynamically, we aimed to analyze OARO performance based on the laboratory-scale data acquired under different operating conditions, by implementing six machine learning (ML) models with the OARO data, evaluating their predictive capabilities, and investigating the effects of input variables on output variables using Shapley Additive Explanation (SHAP) analysis. In predicting the OARO outputs, the ensemble ML models outperformed the conventional ML models. Incorporating FO/RO membrane datasets significantly enhanced the ML model accuracy and mitigated overfitting issues. Regarding the prediction of water flux, the adjusted determination coefficient values increased by 0.478 for Random Forest and 0.569 for Extreme Gradient Boost in the test step. The SHAP analysis consistently ranked the importance of the input variables for OARO outputs. It revealed the presence of potentially influential but previously unrecognized input variables, such as temperature, for the draw concentration. The results of this study are expected to provide a better understanding of OARO.
AB - Osmotically assisted reverse osmosis (OARO) can treat highly concentrated water and achieve higher recovery rates than reverse osmosis (RO). However, existing mathematical models cannot satisfactorily explain OARO systems due to certain limitations. To explore OARO more dynamically, we aimed to analyze OARO performance based on the laboratory-scale data acquired under different operating conditions, by implementing six machine learning (ML) models with the OARO data, evaluating their predictive capabilities, and investigating the effects of input variables on output variables using Shapley Additive Explanation (SHAP) analysis. In predicting the OARO outputs, the ensemble ML models outperformed the conventional ML models. Incorporating FO/RO membrane datasets significantly enhanced the ML model accuracy and mitigated overfitting issues. Regarding the prediction of water flux, the adjusted determination coefficient values increased by 0.478 for Random Forest and 0.569 for Extreme Gradient Boost in the test step. The SHAP analysis consistently ranked the importance of the input variables for OARO outputs. It revealed the presence of potentially influential but previously unrecognized input variables, such as temperature, for the draw concentration. The results of this study are expected to provide a better understanding of OARO.
KW - Artificial intelligence
KW - Desalination
KW - Machine learning
KW - Osmotically assisted reverse osmosis
KW - Shapley Additive Explanation (SHAP) analysis
UR - http://www.scopus.com/inward/record.url?scp=85191146408&partnerID=8YFLogxK
U2 - 10.1016/j.desal.2024.117647
DO - 10.1016/j.desal.2024.117647
M3 - Article
AN - SCOPUS:85191146408
SN - 0011-9164
VL - 583
JO - Desalination
JF - Desalination
M1 - 117647
ER -