Lately, the multivariate setup of control charts, especially the memory-less chart has received less attention of researchers as compared to the univariate setup. However, the multivariate setup is of paramount importance in this big-data era. In this research work, we study the multivariate Shewhart chart for monitoring location parameter by examining the robustness of this scheme with the mean estimator. We also explored the scheme with some other robust parametric estimators in different process environments. The multivariate estimators such as median, midrange, tri-mean (TM), and Hodges–Lehmann (HL) estimators were examined under uncontaminated, location contaminated, variance contaminated, and both location–variance contaminated normal...
Monitoring multivariate and high-dimensional data streams is often an essential requirement for qual...
Nonparametric or distribution-free charts can be useful in statistical process control when there is...
Nonparametric or distribution-free charts can be useful in statistical process control problems when...
The ability to monitor processes using control charts for contaminated environments is vital. Typica...
Multivariate control charts are generally used in industries for monitoring and diagnosing processes...
While researchers and practitioners may seamlessly develop methods of detecting outliers in control ...
• The Shewhart control charts, used for monitoring industrial processes, are the most popular tools ...
Autocorrelated data are common in today's process control applications. Many of these applications i...
The presence of outliers and contaminations in the output of the process highly affects the performa...
Cumulative sum (CUSUM) and exponentially weighted moving average (EWMA) control charts are commonly ...
Abstract: Control charts are one of the most powerful tools used to detect aberrant behavior in indu...
Multivariate Shewhart control charts are considered for the simultaneous moni-toring the variance-co...
Shewhart control chart is the most popular and widely used Statistical process Control tool to moni...
A Hotelling T 2 control chart has been widely used for monitoring first phase of multivariate statis...
Parametric and nonparametric multivariate control charts that are proven very useful in monitoring t...
Monitoring multivariate and high-dimensional data streams is often an essential requirement for qual...
Nonparametric or distribution-free charts can be useful in statistical process control when there is...
Nonparametric or distribution-free charts can be useful in statistical process control problems when...
The ability to monitor processes using control charts for contaminated environments is vital. Typica...
Multivariate control charts are generally used in industries for monitoring and diagnosing processes...
While researchers and practitioners may seamlessly develop methods of detecting outliers in control ...
• The Shewhart control charts, used for monitoring industrial processes, are the most popular tools ...
Autocorrelated data are common in today's process control applications. Many of these applications i...
The presence of outliers and contaminations in the output of the process highly affects the performa...
Cumulative sum (CUSUM) and exponentially weighted moving average (EWMA) control charts are commonly ...
Abstract: Control charts are one of the most powerful tools used to detect aberrant behavior in indu...
Multivariate Shewhart control charts are considered for the simultaneous moni-toring the variance-co...
Shewhart control chart is the most popular and widely used Statistical process Control tool to moni...
A Hotelling T 2 control chart has been widely used for monitoring first phase of multivariate statis...
Parametric and nonparametric multivariate control charts that are proven very useful in monitoring t...
Monitoring multivariate and high-dimensional data streams is often an essential requirement for qual...
Nonparametric or distribution-free charts can be useful in statistical process control when there is...
Nonparametric or distribution-free charts can be useful in statistical process control problems when...