This article proposes two Shewhart charts, denoted np(xy) and np(w) charts, which use attribute inspection to control the mean vector ((x); (y)) of bivariate processes. The units of the sample are classified as first-class, second-class, or third-class units, according to discriminate limits and the values of their two quality characteristics, X and Y. When the np(xy) chart is in use, the monitoring statistic is M=N-1+N-2, where N-1 and N-2 are the number of sample units with a second-class and third-class classification, respectively. When the np(w) chart is in use, the monitoring statistic is W=N-1+2N(2). We assume that the quality characteristics X and Y follow a bivariate normal distribution and that the assignable cause shifts the mean...
In this article, we consider the synthetic control chart with two-stage sampling (SyTS chart) to con...
In this article, we propose a control chart for detecting shifts in the covariance matrix of a multi...
Many multivariate quality control techniques are used for multivariate variable processes, but few w...
In this article, we propose new control charts for monitoring the mean vector and the covariance mat...
This paper proposes the joint use of two charts based on the non-central chi-square statistic (NCS s...
The T² chart and the generalized variance |S| chart are the usual tools for monitoring the mean vect...
In this article, we present a new control chart for monitoring the covariance matrix in a bivariate ...
The T2 chart and the generalized variance |S| chart are the usual tools for monitoring the mean vect...
In this article, we present a new control chart for monitoring the covariance matrix in a bivariate ...
In this article we consider a control chart based on the sample variances of two quality characteris...
In this article, we propose a new statistic to control the covariance matrix of bivariate processes....
For attribute data with (very) low rates of defectives, attractive control charts can be based on th...
In this article, we consider the T(2) chart with double sampling to control bivariate processes (BDS...
In this article, we consider the synthetic control chart with two-stage sampling (SyTS chart) to con...
In multivariate quality control, the artificial neural networks (ANN)-based pattern recognition sche...
In this article, we consider the synthetic control chart with two-stage sampling (SyTS chart) to con...
In this article, we propose a control chart for detecting shifts in the covariance matrix of a multi...
Many multivariate quality control techniques are used for multivariate variable processes, but few w...
In this article, we propose new control charts for monitoring the mean vector and the covariance mat...
This paper proposes the joint use of two charts based on the non-central chi-square statistic (NCS s...
The T² chart and the generalized variance |S| chart are the usual tools for monitoring the mean vect...
In this article, we present a new control chart for monitoring the covariance matrix in a bivariate ...
The T2 chart and the generalized variance |S| chart are the usual tools for monitoring the mean vect...
In this article, we present a new control chart for monitoring the covariance matrix in a bivariate ...
In this article we consider a control chart based on the sample variances of two quality characteris...
In this article, we propose a new statistic to control the covariance matrix of bivariate processes....
For attribute data with (very) low rates of defectives, attractive control charts can be based on th...
In this article, we consider the T(2) chart with double sampling to control bivariate processes (BDS...
In this article, we consider the synthetic control chart with two-stage sampling (SyTS chart) to con...
In multivariate quality control, the artificial neural networks (ANN)-based pattern recognition sche...
In this article, we consider the synthetic control chart with two-stage sampling (SyTS chart) to con...
In this article, we propose a control chart for detecting shifts in the covariance matrix of a multi...
Many multivariate quality control techniques are used for multivariate variable processes, but few w...