We review the rapidly growing literature on auxiliary information-based (AIB) process monitoring methods. Under this approach, there is an assumption that the auxiliary variable, which is correlated with the quality variable of interest, has a known mean, or some other parameter, which cannot change over time. We demonstrate that violations of this assumption can have serious adverse effects both when the process is stable and when there has been a process shift. Some process shifts can become undetectable. We also show that the basic AIB approach is a special case of simple linear regression profile monitoring. The AIB charting techniques require strong assumptions. Based on our results, we warn against the use of AIB approach in quality control applications.
翻译:我们审查了关于基于信息的辅助程序监测方法的迅速增长的文献资料。根据这种办法,可以假定辅助变量与利益的质量变量有关,具有已知的平均值或其他参数,这些参数不会随时间而改变。我们证明,如果过程稳定,而且过程发生变化,违反这一假设可能会造成严重的不利影响。一些过程转变可能无法检测。我们还表明,基本ABI方法是简单的线性回归图监测的一个特殊案例。ABI图表绘制技术需要强有力的假设。根据我们的结果,我们警告不要在质量控制应用中使用ABIB方法。