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Search for: [Abstract = "Principal component analysis \(PCA\) is a powerful fault detection and isolation method. However, the classical PCA, which is based on the estimation of the sample mean and covariance matrix of the data, is very sensitive to outliers in the training data set. Usually robust principal component analysis is applied to remove the effect of outliers on the PCA model. In this paper, a fast two\-step algorithm is proposed."]

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AMCS, volume 18 (2008)

Tharrault, Yvon Mourot, Gilles Ragot, José Maquin, Didier Korbicz, Józef - ed. Sauter, Dominique - ed.

2008
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