ABSTRACT
This research aims at developing a modified robust
bootstrapped exploratory technique that are suitable for predictive monitoring
of multivariate process datasets. Construction of robust traditional limits,
robust principal component analysis (PCA), the bootstrap procedure, and biplot
visualization, are the four core methodologies that are combined to develop
novel techniques. Since the singular value decomposition (SVD) approach is
known for handling rectangular datasets, and in addition, monitoring datasets
are susceptible to outliers, correlations, and both short and long runs, the
robust alternatives to the bootstrapped SVD becomes a contemporary scaffolding
focus and thus, this births the robust bootstrapped SVD (RobBootSVD), with the
robust properties beckoned on the sample Myriad estimate. The RobBootSVD in
turn lead to a new robust bootstrapped PCA (RBPCA) algorithm and a
corresponding RBPCA biplot model. In the application, a new suitable
preliminary robust algorithm that utilizes the RobBootSVD and the Hoteling was first developed to
construct the needed robust contemporary limits that will serve as constraints
during the monitoring stage. Hence, the new preliminary limits become a
cornerstone for a user defined predictive monitoring regions, with total regions upon
which predictions could be made on total variables, in an
algorithm termed the RBPCA biplot monitoring (RBPCABM) configuration. Finally,
the new RobBootSVD method outperforms the existing robust procedures that uses
the mean and median estimates when appraised by the PCA biplot quality and
Hoteling monitoring. In the
climax, the proposed RBPCABM approach revealed promising schemes that fostered
multivariate quality decision making when evaluated with simulated and
empirical datasets from a multinational tobacco manufacturing plant.
CHISIMKWUO, C (2022). A Modified Robust Multivariate Monitoring Design Using The Principal Component Analysis Biplot. Mouau.afribary.org: Retrieved Nov 17, 2024, from https://repository.mouau.edu.ng/work/view/a-modified-robust-multivariate-monitoring-design-using-the-principal-component-analysis-biplot-7-2
CHISIMKWUO, CHISIMKWUO. "A Modified Robust Multivariate Monitoring Design Using The Principal Component Analysis Biplot" Mouau.afribary.org. Mouau.afribary.org, 26 Oct. 2022, https://repository.mouau.edu.ng/work/view/a-modified-robust-multivariate-monitoring-design-using-the-principal-component-analysis-biplot-7-2. Accessed 17 Nov. 2024.
CHISIMKWUO, CHISIMKWUO. "A Modified Robust Multivariate Monitoring Design Using The Principal Component Analysis Biplot". Mouau.afribary.org, Mouau.afribary.org, 26 Oct. 2022. Web. 17 Nov. 2024. < https://repository.mouau.edu.ng/work/view/a-modified-robust-multivariate-monitoring-design-using-the-principal-component-analysis-biplot-7-2 >.
CHISIMKWUO, CHISIMKWUO. "A Modified Robust Multivariate Monitoring Design Using The Principal Component Analysis Biplot" Mouau.afribary.org (2022). Accessed 17 Nov. 2024. https://repository.mouau.edu.ng/work/view/a-modified-robust-multivariate-monitoring-design-using-the-principal-component-analysis-biplot-7-2