Yes, the link that you have is an example of a combined mixture-process design. Following that approach should work for you.
If the study is NOT designed in JMP, there will be some difficulties. I will assume that you only have one process (meaning continuous) factor. First, the mixture response surface macro will not include the process variable. Second, the process variable should not appear in the model, but should appear as interactions with all of the mixture terms. But then other difficulties come into play. There are column properties for mixture terms that a design from JMP automatically adds. You will need to add those by hand for each of the mixture factors. You will also need to add a Design Role of Mixture to each of the mixture factor columns. These things tell JMP that it is a mixture and allow the Mixture Profiler and Prediction Profiler to work properly as well as fitting the Scheffe model properly instead of a "no-intercept" model.
You might want to create the design in JMP (ALWAYS the best option!). But if you MUST use a non-JMP designed table, create a similar design in JMP and see what the "metadata" is in the data table, and mimic it in the non-JMP designed table.
Dan Obermiller