Improved Process Monitoring Based on Sparse Principal Component Analysis (SPCA)
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Date
2020-02-23
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university Of Eloued جامعة الوادي
Abstract
The principal components analysis was (PCA) intensively developed and widely applied in industrial processes for monitoring. The
purpose of using the PCA is to reduce the extractable dimension of the still valid feature space to the most information in the primary
dataset. Sparse Principal Component Analysis (SPCA) is a relatively new mechanism proposed for the creation of Principal
Components (PCs) with sparse loads via a variance tradeoff. Using the SPCA, some of the loads on the PCs can be limited to zero. In
this article, we applied this method for the diagnosis and monitoring of a biological process. The results obtained are discussed.
Description
Intervention
Keywords
Process Monitoring, Principal Component Analysis (PCA), Sparse Principal Component Analysis (SPCA), fault Detection and Isolation.
Citation
Riadh Toumi.Yahia Kourd.Improved Process Monitoring Based on Sparse Principal Component Analysis (SPCA).International PluridisciplinaryPhD Meeting (IPPM’20). 1st Edition, February23-26, 2020. University Of Eloued. [Visited in ../../….]. Available from [copy the link here].