Hi @Rokusan91,
The situation you describe is quite common: the more responses you add in your modeling and Profiler, the more "trade-offs"/compromise you may need to have to get an "optimal" solution.In most of the cases, responses do not evolve with the same direction and pattern, so there might not be one single solution that may result in a good compromise.
What you can do to better visualize this situation is to use the Simulator to generate data points from your model, covering your factors ranges with enough points and random uniform distributions. The resulting datatable will contain the predicted responses, as well as an "Obj" column, containing the overall desirability score.
You can then plot the data points from this table, and see where are the optima located. You'll probably see that there are several combinations that can help you reach an optimum (here an example with two responses for three factors), a Pareto front :

The other option consists in doing the "Maximize and Remember" option under "Optimization and Desirability" several times with different starting points. But this is hard work, and may be not completely exhaustive and prompt to errors.
Hope this Pareto front solution may help you,
Victor GUILLER
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)