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<dublin_core schema="dc">
<dcvalue element="contributor" qualifier="author">Moon,&#x20;Jeongwoo</dcvalue>
<dcvalue element="contributor" qualifier="author">Jeong,&#x20;Kwanho</dcvalue>
<dcvalue element="contributor" qualifier="author">Chae,&#x20;Sung&#x20;Ho</dcvalue>
<dcvalue element="contributor" qualifier="author">Shim,&#x20;Jaegyu</dcvalue>
<dcvalue element="contributor" qualifier="author">Kim,&#x20;Jihye</dcvalue>
<dcvalue element="contributor" qualifier="author">Cho,&#x20;Kyung&#x20;Hwa</dcvalue>
<dcvalue element="contributor" qualifier="author">Park,&#x20;Kiho</dcvalue>
<dcvalue element="date" qualifier="accessioned">2025-03-23T11:00:08Z</dcvalue>
<dcvalue element="date" qualifier="available">2025-03-23T11:00:08Z</dcvalue>
<dcvalue element="date" qualifier="created">2025-03-19</dcvalue>
<dcvalue element="date" qualifier="issued">2025-05</dcvalue>
<dcvalue element="identifier" qualifier="issn">0011-9164</dcvalue>
<dcvalue element="identifier" qualifier="uri">https:&#x2F;&#x2F;pubs.kist.re.kr&#x2F;handle&#x2F;201004&#x2F;152057</dcvalue>
<dcvalue element="description" qualifier="abstract">Predictive&#x20;models&#x20;depend&#x20;heavily&#x20;on&#x20;high-quality&#x20;input&#x20;data;&#x20;however,&#x20;frequent&#x20;data&#x20;gaps&#x20;caused&#x20;by&#x20;temporary&#x20;process&#x20;shutdowns&#x20;or&#x20;sensor&#x20;failures&#x20;during&#x20;the&#x20;initial&#x20;implementation&#x20;of&#x20;desalination&#x20;plants&#x20;present&#x20;significant&#x20;challenges.&#x20;To&#x20;address&#x20;these&#x20;issues,&#x20;the&#x20;non-autoregressive&#x20;multiresolution&#x20;imputation&#x20;(NAOMI)&#x20;technique&#x20;was&#x20;applied&#x20;to&#x20;fill&#x20;in&#x20;missing&#x20;operational&#x20;data&#x20;from&#x20;high-salinity&#x20;seawater&#x20;reverse&#x20;osmosis&#x20;(SWRO)&#x20;systems.&#x20;Following&#x20;effective&#x20;data&#x20;interpolation&#x20;using&#x20;NAOMI,&#x20;five&#x20;neural&#x20;network-based&#x20;deep&#x20;learning&#x20;models&#x20;were&#x20;tested&#x20;to&#x20;predict&#x20;three&#x20;key&#x20;operational&#x20;parameters:&#x20;transmembrane&#x20;pressure&#x20;(TMP),&#x20;energy&#x20;consumption,&#x20;and&#x20;permeate&#x20;flow&#x20;rate.&#x20;Input&#x20;variables&#x20;for&#x20;predicting&#x20;these&#x20;parameters&#x20;included&#x20;flow&#x20;rate,&#x20;temperature,&#x20;conductivity,&#x20;pressure,&#x20;oxidation-reduction&#x20;potential&#x20;(ORP),&#x20;pH,&#x20;and&#x20;energy&#x20;consumption.&#x20;Applying&#x20;NAOMI&#x20;demonstrated&#x20;significant&#x20;accuracy&#x20;improvements&#x20;across&#x20;all&#x20;models,&#x20;with&#x20;the&#x20;long&#x20;short-term&#x20;memory&#x20;(LSTM)&#x20;model&#x20;performing&#x20;best&#x20;for&#x20;TMP&#x20;and&#x20;energy&#x20;consumption&#x20;predictions,&#x20;achieving&#x20;root&#x20;mean&#x20;square&#x20;error&#x20;(RMSE)&#x20;values&#x20;of&#x20;0.375&#x20;and&#x20;0.218,&#x20;respectively.&#x20;For&#x20;permeate&#x20;flow&#x20;rate&#x20;prediction,&#x20;the&#x20;convolutional&#x20;neural&#x20;network-LSTM&#x20;(CNN-LSTM)&#x20;model&#x20;performed&#x20;optimally,&#x20;achieving&#x20;an&#x20;RMSE&#x20;of&#x20;0.173.&#x20;Furthermore,&#x20;Shapley&#x20;Additive&#x20;Explanations&#x20;(SHAP)&#x20;analysis&#x20;enhanced&#x20;model&#x20;explainability&#x20;by&#x20;clarifying&#x20;the&#x20;influence&#x20;of&#x20;input&#x20;variables&#x20;on&#x20;predictions.&#x20;Notably,&#x20;feed&#x20;conductivity&#x20;was&#x20;found&#x20;to&#x20;be&#x20;the&#x20;most&#x20;critical&#x20;factor&#x20;for&#x20;TMP&#x20;prediction,&#x20;whereas&#x20;permeate&#x20;conductivity&#x20;was&#x20;the&#x20;most&#x20;influential&#x20;for&#x20;both&#x20;energy&#x20;consumption&#x20;and&#x20;permeate&#x20;flow&#x20;rate&#x20;predictions.&#x20;The&#x20;study&#x20;results&#x20;indicate&#x20;that&#x20;integrating&#x20;advanced&#x20;data&#x20;imputation&#x20;techniques&#x20;with&#x20;optimized&#x20;deep&#x20;learning&#x20;models&#x20;supports&#x20;effective&#x20;decision-making&#x20;and&#x20;enhances&#x20;the&#x20;operational&#x20;stability&#x20;of&#x20;SWRO&#x20;plants&#x20;during&#x20;early&#x20;development&#x20;stages.</dcvalue>
<dcvalue element="language" qualifier="none">English</dcvalue>
<dcvalue element="publisher" qualifier="none">Elsevier&#x20;BV</dcvalue>
<dcvalue element="title" qualifier="none">Robust&#x20;deep&#x20;learning&#x20;model&#x20;combined&#x20;with&#x20;missing&#x20;input&#x20;data&#x20;estimation:&#x20;Application&#x20;in&#x20;a&#x20;1000&#x20;m3&#x2F;day&#x20;high-salinity&#x20;SWRO&#x20;plant</dcvalue>
<dcvalue element="type" qualifier="none">Article</dcvalue>
<dcvalue element="identifier" qualifier="doi">10.1016&#x2F;j.desal.2025.118678</dcvalue>
<dcvalue element="description" qualifier="journalClass">1</dcvalue>
<dcvalue element="identifier" qualifier="bibliographicCitation">Desalination,&#x20;v.603</dcvalue>
<dcvalue element="citation" qualifier="title">Desalination</dcvalue>
<dcvalue element="citation" qualifier="volume">603</dcvalue>
<dcvalue element="description" qualifier="isOpenAccess">N</dcvalue>
<dcvalue element="description" qualifier="journalRegisteredClass">scie</dcvalue>
<dcvalue element="description" qualifier="journalRegisteredClass">scopus</dcvalue>
<dcvalue element="identifier" qualifier="wosid">001427697100001</dcvalue>
<dcvalue element="identifier" qualifier="scopusid">2-s2.0-85217687446</dcvalue>
<dcvalue element="relation" qualifier="journalWebOfScienceCategory">Engineering,&#x20;Chemical</dcvalue>
<dcvalue element="relation" qualifier="journalWebOfScienceCategory">Water&#x20;Resources</dcvalue>
<dcvalue element="relation" qualifier="journalResearchArea">Engineering</dcvalue>
<dcvalue element="relation" qualifier="journalResearchArea">Water&#x20;Resources</dcvalue>
<dcvalue element="type" qualifier="docType">Article</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">DESALINATION</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">IMPUTATION</dcvalue>
<dcvalue element="subject" qualifier="keywordPlus">PREDICTION</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Reverse&#x20;osmosis</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Deep&#x20;learning</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Non-autoregressive&#x20;multiresolution&#x20;imputation</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Explainable&#x20;AI</dcvalue>
<dcvalue element="subject" qualifier="keywordAuthor">Shapley&#x20;additive&#x20;explanations</dcvalue>
</dublin_core>
