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Bae, Hyokwan
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dc.citation.endPage 1947 -
dc.citation.number 8 -
dc.citation.startPage 1937 -
dc.citation.title ACS ES and T Engineering -
dc.citation.volume 4 -
dc.contributor.author Yu, Sung Il -
dc.contributor.author Jeon, Junbeom -
dc.contributor.author Shin, Yong-Uk -
dc.contributor.author Bae, Hyokwan -
dc.date.accessioned 2024-09-09T17:05:05Z -
dc.date.available 2024-09-09T17:05:05Z -
dc.date.created 2024-09-09 -
dc.date.issued 2024-08 -
dc.description.abstract Flow-electrode capacitive deionization (FCDI) has created a breakthrough toward a more stable desalination performance by adopting a flow-electrode compared to existing capacitive deionization and membrane capacitive deionization as a promising electrochemical water treatment technology. However, the FCDI technology requires investigation of various mechanisms pertaining to flow-electrode materials to achieve system optimization. Further, studies on applying machine learning to the FCDI technology have been scarcely reported. Our study aims to explore optimal algorithms via machine learning for predicting the salt adsorption capacity of FCDI processes and evaluate the feasibility of optimization applications. Concurrently, a comparative analysis was conducted through the performance model indicators of mean absolute error (MAE), mean squared error, and R2 for support vector machine, random forest, and artificial neural network (ANN) algorithms. Herein, we demonstrated that the optimal ANN-based model exhibited the highest predictive performance, achieving R2 and MAE values of 0.996 and 0.21 mg/g, respectively. Additionally, the Shapley additive explanations (SHAP) confirmed a trend in the contribution of influent concentration, aligning closely with the results of statistical analysis. Specifically, the change in voltage of the FCDI process serves as a key factor in determining salt adsorption efficiency. Moreover, a parallel comparison of the Pearson correlation coefficient and SHAP analyses suggests that the impact of voltage entails a nonlinear contribution within the realm of machine learning. Finally, to deploy a machine learning-driven ANN model system, we present multiple factors (e.g., weight of flow-electrodes, influent concentration, and voltages) as a reinforcement learning model for decision-making. This offers valuable insights and guidance for future operations of the FCDI process. © 2024 American Chemical Society. -
dc.identifier.bibliographicCitation ACS ES and T Engineering, v.4, no.8, pp.1937 - 1947 -
dc.identifier.doi 10.1021/acsestengg.4c00142 -
dc.identifier.issn 2690-0645 -
dc.identifier.scopusid 2-s2.0-85198958905 -
dc.identifier.uri https://scholarworks.unist.ac.kr/handle/201301/83714 -
dc.language 영어 -
dc.publisher American Chemical Society -
dc.title Optimal Management Strategy for Salt Adsorption Capacity in Machine Learning-Based Flow-Electrode Capacitive Deionization Process -
dc.type Article -
dc.description.isOpenAccess FALSE -
dc.type.docType Article -
dc.description.journalRegisteredClass scopus -
dc.subject.keywordAuthor machine learning -
dc.subject.keywordAuthor reinforcement learning -
dc.subject.keywordAuthor salt adsorption capacity -
dc.subject.keywordAuthor Bayesian optimization -
dc.subject.keywordAuthor flow-electrode capacitive deionization -

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