Linear filter model representations for integrated process control with repeated adjustments and monitoring

被引:0
|
作者
Changsoon Park
机构
[1] Chung-Ang University,Department of Statistics
来源
Journal of the Korean Statistical Society | 2010年 / 39卷
关键词
primary 93E20; secondary 62N05; Integrated process control; Repeated adjustment; Engineering process control; Statistical process control; Expected cost per unit time; Controller; Readjustment;
D O I
暂无
中图分类号
学科分类号
摘要
An integrated process control (IPC) procedure is a scheme which combines the engineering process control (EPC) and the statistical process control (SPC) procedures for the process where the noise and a special cause are present. The most efficient way of reducing the effect of the noise is to adjust the process by its forecast, which is done by the EPC procedure. The special cause, which produces significant deviations of the process level from the target, can be detected by the monitoring scheme, which is done by the SPC procedure. The effects of special causes can be eliminated by a rectifying action. The performance of the IPC procedure is evaluated in terms of the average run length (ARL) or the expected cost per unit time (ECU). In designing the IPC procedure for practical use, it is essential to derive its properties constituting the ARL or ECU based on the proposed process model. The process is usually assumed as it starts only with noise, and special causes occur at random times afterwards. The special cause is assumed to change the mean as well as all the parameters of the in-control model. The linear filter models for the process level as well as the controller and the observed deviations for the IPC procedure are developed here.
引用
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页码:177 / 187
页数:10
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