Hi @Fox_782199,
Thanks for your response.
Now it seems that you're indeed not in a Mixture design scenario, but more a factorial design, where you have a lot of options to choose from. If you need more guidance on the Custom design (or other relevant designs for your study), don't hesitate to ask specific and follow-up questions.
As a general response, if you were in a Mixture design scenario (so all ingredients are added to reach a fixed quantity/value/percentage, meaning you're more interested in ratios than in absolute quantity value), I would try to include all factors in one DoE and specify a relevant model (with the help of Custom design platform to be handle mixture and categorical factors).
This may represent a big number of experiments to run, but may be more "accurate", as you're directly taking into account the possible interactions between the choice of a raw material and its concentration, and seeing its impact on the rest of the formulation. Creating two separate designs on set A and B won't give you the information about the interactions between choice of the raw mterial, its concentration, and the other factors : you'll have two separate mixture designs, with two optimima, but they may not be related to each other. You won't be able to assess if the right combination of ingredients is a mixture from sets A and B, only see optimized ratio for set A and for set B independently.
I hope this answer 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)