@cedrick07, Taguchi designs typically target only a single response, and JMP's Taguchi Array allows only one response. You could try creating a composite response, using some function (a weighted average, for example) to meaningfully combine all your responses into one. You also could use a multi-objective optimization approach, where you collect all responses, then analyze each separately in Fit Model, then use the general Profiler under the Graph menu to perform a tradeoff analysis.
Taguchi designs have fallen out of favor with many statisticians. If you are considering Taguchi designs because you need to optimize the within-specification rate in the presence of noise factors, you could consider running another type of design that supports multiple responses (perhaps a Custom Design), manipulating both the noise and control factors as in a Taguchi desing, and then using a simulation experiment to identify optimal settings given inherent variation in the noise factors. See this video for more information on this approach: https://community.jmp.com/t5/JMP-On-Air/Simulation-Experiment/ta-p/261021.
Ross Metusalem
JMP Academic Ambassador