Hi @MetaLizard62080,
I'm clearly not surprised by the situation and comparison you're showing. Let's start explaining why:
First, it's important to distinguish between Replicates and Replicate Runs. In JMP there are two options:
- In a "Classical design", JMP displays "Number of Replicates", meaning here the number of times to perform each run (so number of times to perform the whole design, in addition to the original runs/design). You also have this option in the "Augment" platform: Replicate a Design
- In a "Custom design" JMP displays "Number of Replicate Runs", meaning here the number of run(s) to repeat. You're using this option in your post.
Then, regarding your settings, you have designs with 3 factors, and an assumed Response Surface model (with all main effects, interactions and quadratic effects). For 3 factors, that means you have to estimate 10 terms: 1 intercept, 3 main effects, 3 two factor interactions and 3 quadratic effects. So the minimum runs design should include at least 10 runs.
With the 3 extra runs you have, there are indeed 2 options:
- Use these runs as replicate runs, to improve estimation of some effects and having the possibility to do a Lack of Fit Test.
- Let the Custom design choose which other uns to add in the design, among the 27 unique combinations possible; since you assume a full RSM model, each factor can be seen at 3 levels, giving a number of unique factor combinations of 3^3 = 27.
The option 1 will enable to estimate some effects slightly better than without replicates. In your design, runs 2 and 5, and runs 6 and 11 are replicate runs. If you check the design comparison report, you can see that this design option 1 enable to have slightly lower relative std error of estimates for interaction effects (so a slightly higher than 1 relative estimation efficiency for these effects). Moreover, you'll have access to Lack of Fit test since you have replicate runs, which can help evaluate the adequacy of your model (among other visualizations like Actual by Predicted and residual analysis/visualization).
The option 2 enable to test other factor combinations than the 10 absolutely required for the estimation of your model's effects. This enable to reduce correlations between terms, and enable to have a better coverage of your design space, thus reducing correlation between terms (Color Map on Correlations), and reducing globally the average variance prediction.
Concerning your questions, there is no definitive answer, as it depends on your needs (and habits):
- You might feel more confident to include replicate runs to be able to run the Lack of Fit test to evaluate the adequacy of your model, or include replicate runs to estimate more precisely specific effect terms. Note for this last point that A-Optimal designs may be a more suitable option, by defining through A- Optimality Parameter Weights the effects you want to estimate more precisely than others. See Why is the power of quadratic factors in DoE that low for more infos.
- You might want to reduce as much as possible correlations between effects to ensure a relatively unbiased estimation of these effects, so letting the Custom design choose the most relevant ones among all the combinations possible make sense.
For your second question, I think it depends on your activity domain, some domains always use replicate runs, or even replicates, as the variability of the systems is very high (biological systems for example). So it depends on your expected signal/noise ratio of your responses. In some industry, replicate/replicate runs are heavily recommended or enforced for the studies.
But on a general point of view, the Custom design will provide the optimal design related to your parameters, so if you don't have strong incentives to use replicate runs, I would let the algorithm choose the most informative runs.
Hope this answer will help you,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)