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dc.contributor.authorShim, Jaegyu-
dc.contributor.authorLee, Suin-
dc.contributor.authorYun, Nakyeong-
dc.contributor.authorSon, Moon-
dc.contributor.authorChae, Sung Ho-
dc.contributor.authorCho, Kyung Hwa-
dc.date.accessioned2024-08-08T02:00:11Z-
dc.date.available2024-08-08T02:00:11Z-
dc.date.created2024-08-08-
dc.date.issued2024-09-
dc.identifier.issn0043-1354-
dc.identifier.urihttps://pubs.kist.re.kr/handle/201004/150380-
dc.description.abstractArtificial intelligence has been employed to simulate and optimize the performance of membrane capacitive deionization (MCDI), an emerging ion separation process. However, a real-time control for optimal MCDI operation has not been investigated yet. In this study, we aimed to develop a reinforcement learning (RL)-based control model and investigate the model to find an energy-efficient MCDI operation strategy. To fulfill the objectives, we established three long-short term memory models to predict applied voltage, outflow pH, and outflow electrical conductivity. Also, four RL agents were trained to minimize outflow concentration and energy consumption simultaneously. Consequently, actor-critic (A2C) and proximal policy optimization (PPO2) achieved the ion separation goal (<0.8 mS/cm) as they determined the electrical current and pump speed to be low. Particularly, A2C kept the parameters consistent in charging MCDI, which caused lower energy consumption (0.0128 kWh/m(3)) than PPO2 (0.0363 kWh/m(3)). To understand the decision-making process of A2C, the Shapley additive explanation based on the decision tree model estimated the influence of input parameters on the control parameters. The results of this study demonstrate the feasibility of RL-based controls in MCDI operations. Thus, we expect that the RL-based control model can improve further and enhance the efficiency of water treatment technologies.-
dc.languageEnglish-
dc.publisherElsevier BV-
dc.titleAutonomous real-time control for membrane capacitive deionization-
dc.typeArticle-
dc.identifier.doi10.1016/j.watres.2024.122086-
dc.description.journalClass1-
dc.identifier.bibliographicCitationWater Research, v.262-
dc.citation.titleWater Research-
dc.citation.volume262-
dc.description.isOpenAccessN-
dc.description.journalRegisteredClassscie-
dc.description.journalRegisteredClassscopus-
dc.identifier.wosid001275849900001-
dc.identifier.scopusid2-s2.0-85198739788-
dc.relation.journalWebOfScienceCategoryEngineering, Environmental-
dc.relation.journalWebOfScienceCategoryEnvironmental Sciences-
dc.relation.journalWebOfScienceCategoryWater Resources-
dc.relation.journalResearchAreaEngineering-
dc.relation.journalResearchAreaEnvironmental Sciences & Ecology-
dc.relation.journalResearchAreaWater Resources-
dc.type.docTypeArticle-
dc.subject.keywordPlusBRACKISH-WATER-
dc.subject.keywordPlusDESALINATION-
dc.subject.keywordAuthorMembrane capacitive deionization-
dc.subject.keywordAuthorReal-time-
dc.subject.keywordAuthorProcess control-
dc.subject.keywordAuthorOptimization-
dc.subject.keywordAuthorReinforcement learning-
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