Coagulant dosage determination using deep learning-based graph attention multivariate time series forecasting model

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dc.contributor.authorLin, Subinko
dc.contributor.authorKim, Jiwoongko
dc.contributor.authorHua, Chuanboko
dc.contributor.authorPark, Mi-Hyunko
dc.contributor.authorKang, Seoktaeko
dc.date.accessioned2023-02-17T08:00:15Z-
dc.date.available2023-02-17T08:00:15Z-
dc.date.created2023-02-17-
dc.date.created2023-02-17-
dc.date.created2023-02-17-
dc.date.issued2023-04-
dc.identifier.citationWATER RESEARCH, v.232-
dc.identifier.issn0043-1354-
dc.identifier.urihttp://hdl.handle.net/10203/305200-
dc.description.abstractDetermination of coagulant dosage in water treatment is a time-consuming process involving nonlinear data relationships and numerous factors. This study provides a deep learning approach to determine coagulant dosage and/or the settled water turbidity using long-term data between 2011 and 2021 to include the effect of various weather conditions. A graph attention multivariate time series forecasting (GAMTF) model was developed to determine coagulant dosage and was compared with conventional machine learning and deep learning models. The GAMTF model (R2 = 0.94, RMSE = 3.55) outperformed the other models (R2 = 0.63 - 0.89, RMSE = 4.80 - 38.98), and successfully predicted both coagulant dosage and settled water turbidity simultaneously. The GAMTF model improved the prediction accuracy by considering the hidden interrelationships between features and the past states of features. The results demonstrate the first successful application of multivariate time series deep learning model, especially, a state-of-the-art graph attention-based model, using long-term data for decision-support systems in water treatment processes. © 2023-
dc.languageEnglish-
dc.publisherPERGAMON-ELSEVIER SCIENCE LTD-
dc.titleCoagulant dosage determination using deep learning-based graph attention multivariate time series forecasting model-
dc.typeArticle-
dc.identifier.wosid000963319600001-
dc.identifier.scopusid2-s2.0-85147596230-
dc.type.rimsART-
dc.citation.volume232-
dc.citation.publicationnameWATER RESEARCH-
dc.identifier.doi10.1016/j.watres.2023.119665-
dc.contributor.localauthorKang, Seoktae-
dc.contributor.nonIdAuthorLin, Subin-
dc.description.isOpenAccessN-
dc.type.journalArticleArticle-
dc.subject.keywordAuthorCoagulant-
dc.subject.keywordAuthorPrediction model-
dc.subject.keywordAuthorDeep learning-
dc.subject.keywordAuthorAttention -based mechanism-
dc.subject.keywordAuthorTime series-
dc.subject.keywordAuthorBig data-
dc.subject.keywordPlusARTIFICIAL NEURAL-NETWORKS-
dc.subject.keywordPlusRANDOM FOREST-
dc.subject.keywordPlusPREDICTION-
dc.subject.keywordPlusTURBIDITY-
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