Traditional multivariate quality control charts are based on independent observations. In this paper, we explain how to extend univariate residual charts to multivariate cases and how to combine the traditional statistical process control (SPC) approaches to monitor changes in process variability in a dynamic environment. We propose using Alt\u27s (1984) W chart on vector autoregressive (VAR) residuals to monitor the variability for multivariate processes in the presence of autocorrelation. We study examples jointly using the Hotelling T2 chart on VAR residuals, the W chart, and the Portmanteau test to diagnose the types of shift in process parameters
Statistical process control (SPC) is an important ingredient of quality management. SPC has evolved ...
Autocorrelated data are common in today's process control applications. Many of these applications i...
Excessive variation in a manufacturing process is one of the major causes of a high defect rate and ...
Traditional multivariate quality control charts are based on independent observations. In this paper...
Traditional literature on statistical quality control discusses separately multivariate control char...
Previously, quality control and improvement researchers discussed multivariate control charts for in...
The coefficient of variation is a very important process parameter in many processes. A few control ...
This is a proposal of a new quality control chart. The literature on statistical quality control up ...
While quality control on multivariate and serially correlated processes has attracted research atten...
Inspired by the recently developed projection chart such as the U2 chart for monitoring multivariate...
The majority of classic SPC methodologies assume a steady-state (i.e., static) process behavior (i.e...
[[abstract]]Most of the existing control charts for monitoring multivariate process variability are ...
Abstract: In modern manufacturing environments, both multivariate and dynamic natures have become in...
An efficient process monitoring system is important for achieving sustainable manufacturing. The con...
In this paper we investigate the autoregressive T-2 control chart for statistical process control of...
Statistical process control (SPC) is an important ingredient of quality management. SPC has evolved ...
Autocorrelated data are common in today's process control applications. Many of these applications i...
Excessive variation in a manufacturing process is one of the major causes of a high defect rate and ...
Traditional multivariate quality control charts are based on independent observations. In this paper...
Traditional literature on statistical quality control discusses separately multivariate control char...
Previously, quality control and improvement researchers discussed multivariate control charts for in...
The coefficient of variation is a very important process parameter in many processes. A few control ...
This is a proposal of a new quality control chart. The literature on statistical quality control up ...
While quality control on multivariate and serially correlated processes has attracted research atten...
Inspired by the recently developed projection chart such as the U2 chart for monitoring multivariate...
The majority of classic SPC methodologies assume a steady-state (i.e., static) process behavior (i.e...
[[abstract]]Most of the existing control charts for monitoring multivariate process variability are ...
Abstract: In modern manufacturing environments, both multivariate and dynamic natures have become in...
An efficient process monitoring system is important for achieving sustainable manufacturing. The con...
In this paper we investigate the autoregressive T-2 control chart for statistical process control of...
Statistical process control (SPC) is an important ingredient of quality management. SPC has evolved ...
Autocorrelated data are common in today's process control applications. Many of these applications i...
Excessive variation in a manufacturing process is one of the major causes of a high defect rate and ...