Knowledge-assisted multi-graph structure learning for multivariate time-series anomaly detection in multi-stage industrial processes다단계 산업 공정에서의 다변량 시계열 이상탐지를 위한 지식 보조 다중 그래프 구조 학습

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dc.contributor.advisor김희영-
dc.contributor.authorLee, Jaeyeong-
dc.contributor.author이재영-
dc.date.accessioned2024-07-30T19:31:02Z-
dc.date.available2024-07-30T19:31:02Z-
dc.date.issued2024-
dc.identifier.urihttp://library.kaist.ac.kr/search/detail/view.do?bibCtrlNo=1096686&flag=dissertationen_US
dc.identifier.urihttp://hdl.handle.net/10203/321469-
dc.description학위논문(석사) - 한국과학기술원 : 산업및시스템공학과, 2024.2,[iv, 18 p. :]-
dc.description.abstractMultivariate time-series anomaly detection is important for ensuring the reliable operation of an industrial process. Most real-world industrial processes consist of multiple stages (or sub-processes). In such a multi-stage industrial process, sensors in the same sub-process are highly correlated, and sensors in distinct sub-processes can even exhibit notable correlations when the sub-processes are closely related. Recently, graph neural networks-based methods have achieved remarkable performance in multivariate time-series anomaly detection because they can effectively capture complex inter-sensor dependencies by learning a graph that explicitly represents relationships between sensors. However, there is still room for improvement in their performance by enhancing the ability to capture inter-sensor dependencies when dealing with multistage industrial processes as most of them overlooked pervasively existing two types of partial knowledge regarding the dependencies, \textit{which sub-process a sensor belongs to} and \textit{which sub-processes are closely related,} when learning the latent graph structure. In this paper, we propose a novel graph neural network-based multivariate time series anomaly detection method for multistage industrial processes, which can learn multiple graph structures with the assistance of both types of the partial knowledge about inter-sensor dependencies and has the enhanced ability to capture complex inter-sensor dependencies. We demonstrate the superiority of the proposed method with two sensor datasets from real-world multistage industrial processes.-
dc.languageeng-
dc.publisher한국과학기술원-
dc.subject이상탐지▼a그래프 구조 학습▼a지식 보조 학습▼a다중 그래프▼a다단계 산업 공정▼a다변량 시계열-
dc.subjectAnomaly detection▼aGraph structure learning▼aKnowledge-assisted learning▼aMulti-graph▼aMulti-stage industrial process▼aMultivariate time-series-
dc.titleKnowledge-assisted multi-graph structure learning for multivariate time-series anomaly detection in multi-stage industrial processes-
dc.title.alternative다단계 산업 공정에서의 다변량 시계열 이상탐지를 위한 지식 보조 다중 그래프 구조 학습-
dc.typeThesis(Master)-
dc.identifier.CNRN325007-
dc.description.department한국과학기술원 :산업및시스템공학과,-
dc.contributor.alternativeauthorKim, Heeyoung-
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