Abstract

In this research, we analyze the real data in the NAND Flash memory industry using a control chart. There are thousands of electrical measures for each NAND Flash memory chip. We monitor these data through a control chart to ensure that the manufacturing process is in control. For better interpretability, we apply a univariate control chart technique to each variable. However, most existing control charts, such as the EWMA chart, do not include between-subgroup variations but only within-subgroup variations. They often obtain too narrow control limits for some variables, which leads too many subgroups to fall outside the control limits. To overcome this issue, we apply a control chart under a mixed-effects modeling framework to include both within-subgroup and between-subgroup variations. Additionally, the EWMA chart assumes that all the items are normally distributed; however, we frequently encounter that a normal assumption is violated. To overcome this limitation, we apply a robust approach based on a nonparametric sign chart. Furthermore, we introduce a p-value combination method to increase the statistical power for the gradual change detection of a statistical process. Our study show that the proposed control chart can efficiently monitor the real data in the NAND Flash memory industry.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call