화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2017년 가을 (10/25 ~ 10/27, 대전컨벤션센터)
권호 23권 2호, p.1552
발표분야 공정시스템
제목 Process Fault Prediction System with Multivariate Analysis and Machin Learning Method
초록 Fault diagnosis has been an important issue in chemical industry. If accurate and immediate detection is available, it can help reduce maintenance cost and optimal operation of process. However, because most of chemical plants are continuous process, the plant should be closed to adjust fault. Moreover, within the faulty state, operation performance and product quality of plant can be worse.  Therefore, fault occurrence is a critical issue itself and fault prediction method is necessary to prevent occurrence of process fault. With multivariate analysis, such as PCA or PLS, data dimension can be reduced. In lower dimension space, a characteristic of fault data can be identified and the characteristic of fault data can be trained with machine learning method. In this work, multivariate data was collected from target process and classified the class and characteristic of data by multivariate analysis. The fault prediction system was also proposed by trained characteristic of fault data under lower dimension space with machine learning method.
저자 박세진, 김대식, 이종민
소속 서울대
키워드 공정모델링; 이상진단
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