Hi @SaraA,
Ok I understand better your question and the design mentioned.
The 24-runs option "Plackett-Burman Folded" you see corresponds to a foldover of the first design PB (resolution III) shown in your screenshot (with 12 runs).
You can reproduce the 24-runs Plackett-Burman Folded design highlighted by using the 12-runs Plackett-Burman design, and then augment the design using a foldover (without specifying a factor for the foldover). You'll then see that the new 12 runs added to the original PB design are just mirror experiments (levels are inversed between original experiments and new ones, -1 instead of 1, and 1 instead of -1), in order to uncover aliasing and enable identification and estimation of some 2-factors interactions.
About centre points, 3 to 5 is usually a good range, as it enables to detect quite precisely curvature, without biasing the lack-of-fit test with too much centre points experiments. Please remember that adding centre points may help in detecting curvature, but you won't be able to link this curvature to specific quadratic effects of your factors. You will only be able with centre points to fit one quadratic effect among all that may possible.
Some discussions that may interest you about centre points :
effect of centre points
How many center points to add in a design?
And JMP Help about centre points : Center Points, Replicate Runs, and Testing
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)