会议论文详细信息
European Workshop on Advanced Control and Diagnosis | |
Diagnosis of nonlinear systems using kernel principal component analysis | |
Kallas, M.^1 ; Mourot, G.^1 ; Maquin, D.^1 ; Ragot, J.^1 | |
Centre de Recherche en Automatique de Nancy (CRAN), CNRS UMR 7039, Université de Lorraine, France^1 | |
关键词: Feature space; High-dimensional feature space; Kernel principal component analyses (KPCA); Pre images; Process industries; Recent researches; Related variables; Technological advances; | |
Others : https://iopscience.iop.org/article/10.1088/1742-6596/570/7/072004/pdf DOI : 10.1088/1742-6596/570/7/072004 |
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来源: IOP | |
【 摘 要 】
Technological advances in the process industries during the past decade have resulted in increasingly complicated processes, systems and products. Therefore, recent researches consider the challenges in their design and management for successful operation. While principal component analysis (PCA) technique is widely used for diagnosis, its structure cannot describe nonlinear related variables. Thus, an extension to the case of nonlinear systems is presented in a feature space for process monitoring. Working in a high-dimensional feature space, it is necessary to get back to the original space. Hence, an iterative pre-image technique is derived to provide a solution for fault diagnosis. The relevance of the proposed technique is illustrated on artificial and real dataset.【 预 览 】
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Diagnosis of nonlinear systems using kernel principal component analysis | 1306KB | download |