6533b827fe1ef96bd1287648
RESEARCH PRODUCT
Metric learning method aided data-driven design of fault detection systems
Guoyang YanJiangyuan MeiShen YinHamid Reza Karimisubject
Engineering (all)Article Subjectlcsh:TA1-2040lcsh:MathematicsMathematics (all)VDP::Technology: 500::Materials science and engineering: 520lcsh:Engineering (General). Civil engineering (General)lcsh:QA1-939Mathematics (all); Engineering (all)description
Published version of an article in the journal: Mathematical Problems in Engineering. Also available from the publisher at: http://dx.doi.org/10.1155/2014/974758 Fault detection is fundamental to many industrial applications. With the development of system complexity, the number of sensors is increasing, which makes traditional fault detection methods lose efficiency. Metric learning is an efficient way to build the relationship between feature vectors with the categories of instances. In this paper, we firstly propose a metric learning-based fault detection framework in fault detection. Meanwhile, a novel feature extraction method based on wavelet transform is used to obtain the feature vector from detection signals. Experiments on Tennessee Eastman (TE) chemical process datasets demonstrate that the proposed method has a better performance when comparing with existing methods, for example, principal component analysis (PCA) and fisher discriminate analysis (FDA). © 2014 Guoyang Yan et al.
year | journal | country | edition | language |
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2014-01-01 |