Eigenvector Perturbation Approaches to Profile Monitoring

A. Felipe Barrientos Co-Author
Florida State University
 
Eric Chicken Co-Author
Florida State University
 
Debajyoti Sinha Co-Author
Florida State University
 
Takayuki Iguchi Speaker
 
Monday, Aug 4: 10:35 AM - 10:55 AM
Invited Paper Session 
Music City Center 
In Statistical Process Control, control charts are often used to detect undesirable behavior of sequentially observed quality characteristics. Designing a control chart with desirably low False Alarm Rate (FAR) and detection delay (ARL1) is an important challenge especially when the sampling rate is high and the control chart has an In-Control Average Run Length, called ARL0, of 200 or more, as commonly found in practice. Unfortunately, arbitrary reduction of the FAR typically increases the ARL1. Motivated by eigenvector perturbation theory, we propose the Eigenvector Perturbation Control Chart for computationally fast nonparametric profile monitoring. Our simulation studies show that it outperforms the competition and achieves both ARL1 ≈ 1 and ARL0 > 10^6.

Keywords

Statistical Process Control

Nonparametric Profile Monitoring

Change-point Detection

Alarm Fatigue