Hi all,
I’m looking to understand the variability associated with a multi-step manufacturing process. I think the way to do this is to plot the plot using the variability /attribute gauge chart, then use the variability components analysis. But, I’m unsure of what variability model (crossed, nested, etc) to use. With that said, let me give some more detail.
Our raw material input (let’s call them cards) goes through two main processes (let’s call them process 1 and process 2). Process 1 involves placing cards into a machine that chemically treats them. The machine is not large enough to accommodate an entire lot, so we will treat subsets of the lot sequentially until the entire lot is complete. These subsets are called sublots and consist of 24 cards. There are two shelves inside the process 1 machine, and each shelf accommodates 12 cards. We’ve previously found that our results can vary based on which shelf a card ends up on, so we track this as well as the specific position on the shelf.
Once cards come out of process 1, then move to process 2. Process 2 chemically treats the cards in a different way and does so in runs of 20. We typically run cards on process 2 sequentially as they come out of process 1. So, run 1 of process 2 includes 20 of the 24 cards from process 1 sublot 1. Run 2 of process 2 includes 4 cards from sublot 1 and 16 cards from sublot 2, etc.
So, if that all makes sense, my question is how to run the variability components analysis for this data set. For process one, I’m thinking that shelf and position on shelf are nested in sublot. Then, this is crossed with process 2 run. But, I’m not sure about this at a conceptual level and really not sure how to make JMP do this analysis.
Any help is appreciated. Thanks,
-Matt