2014 European Control Conference (ECC) 2014
DOI: 10.1109/ecc.2014.6862571
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Parameter Set-mapping using kernel-based PCA for linear parameter-varying systems

Abstract: This paper proposes a method for reduction of scheduling dependency in linear parameter-varying (LPV) systems. In particular, both the dimension of the scheduling variable and the corresponding scheduling region are shrunk using kernel-based principal component analysis (PCA). Kernel PCA corresponds to linear PCA that is performed in a highdimensional feature space, allowing the extension of linear PCA to nonlinear dimensionality reduction. Hence, it enables the reduction of complicated coefficient dependencie… Show more

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Cited by 8 publications
(1 citation statement)
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References 14 publications
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“…The inverse mapping µ −1 for KPCA cannot be analytically constructed in general and hence a further optimization step is required. We refer the reader to [14] for the details. Due to the difficulty constructing the inverse mapping and due to this mapping being nonlinear, the affine scheduling-variable dependent matrices Â, .…”
Section: Kernel Pcamentioning
confidence: 99%
“…The inverse mapping µ −1 for KPCA cannot be analytically constructed in general and hence a further optimization step is required. We refer the reader to [14] for the details. Due to the difficulty constructing the inverse mapping and due to this mapping being nonlinear, the affine scheduling-variable dependent matrices Â, .…”
Section: Kernel Pcamentioning
confidence: 99%