This is what I found in the DOE guide:
• If your factors are all two-level and orthogonal, all of the statistics in the Fit Two Level Screening platform are appropriate.
When can I assume that my factors are orthogonal?
• If you have data from a highly supersaturated main effect design, the Fit Two Level Screening platform is effective in
selecting active factors, but it is not effective at estimating the error or the significance. The Monte Carlo simulation to produce p-values uses assumptions that are not valid for this case.
I do not think this is a problem for a PB design.
• If you have a categorical or a discrete numeric factor with more than two levels, the Fit Two Level Screening platform is not appropriate.JMP treats the associated model terms as continuous. For such factor, the variation is scattered across main effects and polynomial effects. In this situation, it is recommended that you use the Fit Model platform.
I only have continuous factors.
So based on these assumptions, can I proceed then proceed with the Screening platform?