Here are my thoughts:
1. The purpose of DSD's is to screen a large number of factors taking into account potential curvature and 2nd order effects. So the answer to your 1st question is no.
2. There is no "right" answer to your additional questions. Much depends on where you are in the knowledge continuum (e.g., how specific are your hypotheses, how much do you understand noise), the response variables you are modeling (e.g., continuous, ordinal or nominal), the type of factors you are manipulating (e.g., continuous, categorical), your sense of urgency, your budget, etc.
3. I am a firm believer in sequential investigation. The purpose of the first experiment is to design a better experiment. Go big and bold to start (e.g., lots of factors at bold levels with bold blocks of noise), understand noise and how to handle it, reduce the number of factors, perhaps test for curvature with center points, develop a useable model.
"All models are wrong, some are useful" G.E.P. Box