Click on the DOI link below to access the article (may not be free).Cumulative conformance count (CCC) control chart is a powerful alternative to the traditional p-control chart, particularly in monitoring high yield processes with extremely low proportions of nonconformance. However, a prevalent limitation of the CCC control chart is its inability to detect small process deterioration. A sequential Bayesian CCC approach capable of detecting small process deterioration is proposed in this paper. The new approach outperforms the traditional CCC chart in that it does not require a large sample of initial observations of the process, which may be difficult, if not impossible to obtain in practice. Moreover, the approach is self-starting, and t...
Traditional attribute control charts are based on the monitoring of the number of nonconforming item...
In high-yields process monitoring, the Geometric distribution is particularly useful to control the ...
The online quality monitoring of a process with low volume data is a very challenging task and the a...
Thesis (Ph.D.)--Wichita State University, College of Engineering, Dept. of Industrial and Manufactur...
AbstractIn a high quality process, the fraction of nonconforming is very low. In this area, standard...
[[abstract]]Due to the development of high-quality manufacturing processes, a cumulative count of co...
In this paper, a two stage control chart for monitoring the defective rate of high-yield processes i...
We present a case study in monitoring a high-volume production process with a high yield. Testing th...
Abstract: Control charts for high quality processes based on counting cumulative conforming items ha...
Decision procedures for monitoring industrial processes can be based on application of control chart...
Two commonly used statistical quality control charts, the c-chart and u-chart, are unsatisfactory fo...
The cumulative count of conforming (CCC) chart is effective in detecting very low fraction of noncon...
The general objective of the research study underlying this thesis was to develop innovative charts ...
Abstract. Borror et al. discussed the EWMA(Exponentially Weighted Moving Average) chart to monitor t...
[This abstract is based on the authors' abstract.] The cumulative quantity control chart (CQC) is a...
Traditional attribute control charts are based on the monitoring of the number of nonconforming item...
In high-yields process monitoring, the Geometric distribution is particularly useful to control the ...
The online quality monitoring of a process with low volume data is a very challenging task and the a...
Thesis (Ph.D.)--Wichita State University, College of Engineering, Dept. of Industrial and Manufactur...
AbstractIn a high quality process, the fraction of nonconforming is very low. In this area, standard...
[[abstract]]Due to the development of high-quality manufacturing processes, a cumulative count of co...
In this paper, a two stage control chart for monitoring the defective rate of high-yield processes i...
We present a case study in monitoring a high-volume production process with a high yield. Testing th...
Abstract: Control charts for high quality processes based on counting cumulative conforming items ha...
Decision procedures for monitoring industrial processes can be based on application of control chart...
Two commonly used statistical quality control charts, the c-chart and u-chart, are unsatisfactory fo...
The cumulative count of conforming (CCC) chart is effective in detecting very low fraction of noncon...
The general objective of the research study underlying this thesis was to develop innovative charts ...
Abstract. Borror et al. discussed the EWMA(Exponentially Weighted Moving Average) chart to monitor t...
[This abstract is based on the authors' abstract.] The cumulative quantity control chart (CQC) is a...
Traditional attribute control charts are based on the monitoring of the number of nonconforming item...
In high-yields process monitoring, the Geometric distribution is particularly useful to control the ...
The online quality monitoring of a process with low volume data is a very challenging task and the a...