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dc.citation.startPage 100207 -
dc.citation.title WATER RESEARCH X -
dc.citation.volume 21 -
dc.contributor.author Pyo, JongCheol -
dc.contributor.author Pachepsky, Yakov -
dc.contributor.author Kim, Soobin -
dc.contributor.author Abbas, Ather -
dc.contributor.author Kim, Minjeong -
dc.contributor.author Kwon, Yong Sung -
dc.contributor.author Ligaray, Mayzonee -
dc.contributor.author Cho, Kyung Hwa -
dc.date.accessioned 2024-01-19T12:05:16Z -
dc.date.available 2024-01-19T12:05:16Z -
dc.date.created 2024-01-16 -
dc.date.issued 2023-12 -
dc.description.abstract Water quality is substantially influenced by a multitude of dynamic and interrelated variables, including climate conditions, landuse and seasonal changes. Deep learning models have demonstrated predictive power of water quality due to the superior ability to automatically learn complex patterns and relationships from variables. Long short-term memory (LSTM), one of deep learning models for water quality prediction, is a type of recurrent neural network that can account for longer-term traits of time-dependent data. It is the most widely applied network used to predict the time series of water quality variables. First, we reviewed applications of a standalone LSTM and discussed its calculation time, prediction accuracy, and good robustness with process-driven numerical models and the other machine learning. This review was expanded into the LSTM model with data pre-processing techniques, including the Complete Ensemble Empirical Mode Decomposition with Adaptive Noise method and Synchrosqueezed Wavelet Transform. The review then focused on the coupling of LSTM with a convolutional neural network, attention network, and transfer learning. The coupled networks demonstrated their performance over the standalone LSTM model. We also emphasized the influence of the static variables in the model and used the transformation method on the dataset. Outlook and further challenges were addressed. The outlook for research and application of LSTM in hydrology concludes the review. -
dc.identifier.bibliographicCitation WATER RESEARCH X, v.21, pp.100207 -
dc.identifier.doi 10.1016/j.wroa.2023.100207 -
dc.identifier.issn 2589-9147 -
dc.identifier.scopusid 2-s2.0-85178205916 -
dc.identifier.uri https://scholarworks.unist.ac.kr/handle/201301/68042 -
dc.identifier.wosid 001125366400001 -
dc.language 영어 -
dc.publisher ELSEVIER -
dc.title Long short-term memory models of water quality in inland water environments -
dc.type Article -
dc.description.isOpenAccess TRUE -
dc.relation.journalWebOfScienceCategory Engineering, Environmental; Environmental Sciences; Water Resources -
dc.relation.journalResearchArea Engineering; Environmental Sciences & Ecology; Water Resources -
dc.type.docType Article -
dc.description.journalRegisteredClass scie -
dc.description.journalRegisteredClass scopus -
dc.subject.keywordAuthor Long short-term memory -
dc.subject.keywordAuthor Inland water -
dc.subject.keywordAuthor Water quality -
dc.subject.keywordAuthor Ensemble LSTM -
dc.subject.keywordAuthor Deep learning models -
dc.subject.keywordPlus NEURAL-NETWORKS -
dc.subject.keywordPlus LSTM -
dc.subject.keywordPlus UNCERTAINTY -
dc.subject.keywordPlus SENSITIVITY -
dc.subject.keywordPlus PERFORMANCE -

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