Hi @lazzybug,
For details about power, you can re-read the responses @Phil_Kay and I have given to you on a previous topic : Solved: Should I consider power analysis in DOE? - JMP User Community
In your specific case, it's normal to have a lower power for quadratic effects than for main effects in a DSD, but hard to tell if it's "high enough".
My practical advise would be :
- Run your original design and do the modeling,
- Prepare and run some validation points (with settings not fully tested in the DoE, in an area of interest for example). These validation points can be part of the augmented design, (= some of the new points recommended by JMP when you augment your original design), in order not to lose any experimental budget/time.
- Compare actual values vs. predicted values on your validation points. Does the model seem to be adequate for your system ? Is the model adequate for your target/purpose ?
If your initial budget is 24 runs, maybe a good compromise would be to run the full 21-runs DSD proposed by JMP, and 3 points from the augmented DSD as validation points, to check if the first model is sufficient enough for your needs.
Hope it will help you,
Victor GUILLER
L'Oréal Data & Analytics
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)