화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2007년 가을 (10/26 ~ 10/27, 한국과학기술원)
권호 13권 2호, p.1463
발표분야 공정시스템
제목 Application of Fault Diagnosis Based on Signed Digraphs and PCA with Linear Fault Boundary
초록 In this paper, we developed a fault diagnosis model based on signed digraph(SDG), support vector machine(SVM) and improved principal component analysis(PCA) method. In PCA, we set linear fault boundaries. By means of the system decomposition based on SDG, the local models of each measured variable are constructed and more accurate and fast models are using an SVM, which has no loss of information and shows good performance, in order to obtain the estimated value of the variable, which is then compared with the measured value in order to diagnose the fault. And then, in order to make fault boundaries linearized, we select particular variables in the local model and express the data through the PC space. In the last analysis for various fault intensities, we diagnose a number of faulty data effectively. To verify the performance of the proposed model, the Tennessee Eastman(TE) Process was studied and the proposed method was found to demonstrate a good diagnosis capability compared with previous statistical methods.
저자 신봉수1, 이창준1, 이기백2, 윤인섭1
소속 1서울대, 2충주대
키워드 fault diagnosis; linear fault boundary; signed digraph; support vector machine; PCA; fault intensity
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