Hello @Alainmd02,
First of all, let's remind that definitive screening design is a screening design, so its aim is to detect significant main effects from a list of factors (although it is also capable of fitting some interactions and quadratic effects if remaining degrees of freedom allow it).
So in this sense, it's normal to have lower power for interactions and quadratic effects than for main effects, since the main effects in this design are not aliased with any 2-factors or quadratic effects. On the opposite, some aliases are still present between 2-factors interactions and quadratics effects (see correlation plot done on your example with 4 factors), so detecting precisely the significance for QE and 2FI will be more difficult with the presence of aliases (hence a lower power).
DSD is more recommended for 5+ factors; for less than 5 factors it may be easier and more efficient in terms of experiments number to use Custom Design.
Since it's a screenign design, its aim is not to fit a full RSM model (and JMP should have warned you when clicking on RSM that "This design cannot fit the specified model. Inestimable model terms have been removed"), so that's why you don't see quadratic effect for your 4th factor (lack of degree of freedom to precisely calculate this effect estimate).
In order to create an RSM design, you'll have to :
- go through augmentation of your DSD (go to "DoE", "Augment Design", and when augmenting, click on RSM in the model part, and JMP will recommend you to realize at least 4 more experiments, so total 22 experiments),
- or change your strategy :
- create a Custom Design that fit RSM model (21 experiments recommended by JMP), or
- use classical approach (Box-Behnken/Central Composite Design, from 27 to 36 experiments depending on the model chosen).
At the end, always compare the different models created (with different number of runs), to be able to choose the most interesting design, based on the best compromise between design performances (power for each effects, variance prediction, aliases...) and number of experiments.
Some ressources on DSD :
Using Definitive Screening Designs to Get More Information from Fewer Trials - JMP User Community
Definitive Screening Design - JMP User Community
I hope it will help you,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)