Improved Performance of Fault Detection Based on Selection of the Optimal Number of Principal Components

2009 ◽  
Vol 35 (12) ◽  
pp. 1550-1557 ◽  
Author(s):  
Yuan LI ◽  
Xiao-Chu TANG
Author(s):  
Jeffrey A. Hudson ◽  
Gregory F. Zehner ◽  
Richard S. Meindl

The USAF has been using a multivariate method for specifying pilot body size for nearly ten years. The Multivariate Accommodation software was originally written for a VMS environment using the statistical package SAS. It is now available for PC computers. The program is based on the CADRE statistical method developed by Bittner (1987), and the Anthropometric Database at the Computerized Anthropometric Research and Design Laboratory (Robinson et al., 1992), and has been very effective in increasing body size accommodation in USAF cockpit designs. The technique relies on principal component analysis which describes the variation of the original multivariate distribution with a set of orthogonal axes (principal components). Selection of the anthropometric measurements, the number of principal components used to represent the variation in their distribution, and a full understanding of the assumptions implicit in the model are all critical in generating useful representative accommodation cases. The authors will discuss previous applications of the method as well as demonstrate its limitations when used outside of cockpit/workstation designs.


PLoS ONE ◽  
2021 ◽  
Vol 16 (3) ◽  
pp. e0248896
Author(s):  
Nico Migenda ◽  
Ralf Möller ◽  
Wolfram Schenck

“Principal Component Analysis” (PCA) is an established linear technique for dimensionality reduction. It performs an orthonormal transformation to replace possibly correlated variables with a smaller set of linearly independent variables, the so-called principal components, which capture a large portion of the data variance. The problem of finding the optimal number of principal components has been widely studied for offline PCA. However, when working with streaming data, the optimal number changes continuously. This requires to update both the principal components and the dimensionality in every timestep. While the continuous update of the principal components is widely studied, the available algorithms for dimensionality adjustment are limited to an increment of one in neural network-based and incremental PCA. Therefore, existing approaches cannot account for abrupt changes in the presented data. The contribution of this work is to enable in neural network-based PCA the continuous dimensionality adjustment by an arbitrary number without the necessity to learn all principal components. A novel algorithm is presented that utilizes several PCA characteristics to adaptivly update the optimal number of principal components for neural network-based PCA. A precise estimation of the required dimensionality reduces the computational effort while ensuring that the desired amount of variance is kept. The computational complexity of the proposed algorithm is investigated and it is benchmarked in an experimental study against other neural network-based and incremental PCA approaches where it produces highly competitive results.


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