Abstract

The dimension reduction methods have been proved powerful and practical to extract latent features hidden in the signal for process monitoring. A novel nonlinear dimension reduction method called kernel orthogonal global-local preserving projections (KOGLPP) is proposed and applied for condition monitoring and fault detection. To overcome the shortcomings of kernel locality preserving projections (KLPP) and kernel principal component analysis (KPCA), the KOGLPP model aims at preserving the global and local data structures simultaneously by constructing a dual-objective optimization function, and a tuning parameter is introduced to adjust the trade-off between the global and local data structures. For the purpose of condition monitoring and fault detection, monitoring statistics are constructed in low dimensional feature space. As KOGLPP combines the advantages of both KPCA and KLPP, KOGLPP is also more powerful in extracting potential useful data characteristics. Finally, the effectiveness of the proposed nonlinear dimension reduction method is evaluated experimentally on a numerical example and a bearing test-rig. The results indicate its potential applications as an effective and reliable tool for condition monitoring and fault detection.

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