2017
DOI: 10.21595/vp.2017.19032
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Kernel PCA in nonlinear visualization of a healthy and a faulty planetary gearbox data

Abstract: Abstract. PCA (Principal Component Analysis) is a powerful method for investigating the dimensionality and extracting structure from multi-dimensional data, however it extracts only linear projections. More general projections -accounting for possible non-linearities among the observed variables -can be obtained using kPCA (Kernel PCA), that performs the same task, however working with an extended feature set. We consider planetary gearbox data given as two 15-dimensional data sets, one coming from a healthy a… Show more

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