Some of my thoughts though Pete and Mark have provided good suggestions.
Not nuance factors, but NOISE factors (variables you have decided not to control into the future for whatever reason (cost/convenience/technological inability)). It is impossible not to have noise! For example: batch-to-batch variation of the chemicals, ambient conditions, measurement errors, operator technique, etc. It is not recommended (by me) to run optimization designs when you don't understand the noise. It is an inference space issue. If you optimize under one set of conditions (e.g., material lot) and those conditions change in the future, then your model is no longer useful. Ever wonder why we are constantly optimizing and never get there?
“It is only by knowledge of the subject matter, possibly aided by further experiments, to cover a wider range of conditions, that one may decide, with a risk of being wrong, whether the environmental conditions of the future will be near enough the same as those of today to permit use of results in hand.” -- W. Edwards Deming
"Block what you can, randomize what you cannot" G.E.P. Box
I'm not going to debate the appropriateness of using DSD or any optimality design here, but I will suggest you recognize you will be iterating. Keep It Simple and Sequential (KISS). My advice is to design multiple experiments, consider: what will be separated, what will be confounded and what will be restricted. Contrast this with what you think you know and what knowledge do you need to acquire to move on efficiently (potential for knowledge gained vs. resources expended). Predict all possible outcomes and then pick the one that matches your knowledge/resource comparison.
I prefer Box's RSM which isn't doing one central composite design, but sequential experiments added together to map the surface.
If you are going to impose restrictions, you are in the world of split-plots.
No one knows the right experiment ("The best design you'll design is the design you design after you run it" Ross). Design selection is situation dependent and quite honestly you have not provided enough information to give that advice. Also realize that whether the experiment you pick gets you what you want or not, you will learn something (Perhaps, postmortem, we can tell you what it died of).
"All models are wrong, some are useful" G.E.P. Box