@JMP38401 sorry for the delay...It is difficult to look only at the output you shared and draw conclusions. It looks like you have an un-replicated design and your model is saturated. If this is the case, you might want to try getting Normal Plots for statistical significance (sometimes you have to ignore Length's PSE line), Pareto Plots for practical significance and Bayes Plots if you're into Bayesian philosophy (Fit Model>Red Option Triangle next to response>Effect Screening). The first thing I always do is check for practical significance. Did you create variation of any practical value? What is the smallest increment of change in the response that you think is of scientific or engineering value? After you establish this value, plot the line on the Pareto plot and identify which factors had a practically significant effect. Then look for these effects on the Normal plot (Daniels Plot).
As far as optimization goes, it is extremely difficult to provide advise with the amount of context you've given. Please realize optimization is far from just a statistical design. It requires interpretation from someone who understands the science/engineering. A couple of thoughts though:
1. You are not trying to create some incredibly complex non-linear model that describes everything. Models are meant to be efficient approximations that are useful for prediction.
2. You should NOT be doing optimization of design factors unless you thoroughly understand noise.
3. What did you mean by RSM? G.E.P. Box implies this is sequential experimentation. It is not one central composite design.
4. You also should be thinking multivariate. Doesn't do any good to optimize one Y at the sacrifice of others.
"All models are wrong, some are useful" G.E.P. Box