@Mark_Bailey and @Jed_Campbell, thanks for responding!
So rereading my question, I don't think I explained the question well. I apologize about that. As a more concrete example, say I have a bunch of materials, and for each one I have molar weight, density across temperature, and optical absorption at different wavelengths. The former is a single data point and is the kind of data one would perform regular PCA on, while the latter two are functional data. However, you have two functional data series that use different x axes. My question is how would one perform PCA on all three of these together, or is it even possible?
Is there a reason you're using that rather than fitting a model to your data? In my experience, fitting a model (Red Triangle...Models) is usually the first step. Direct FPCA is certainly an option, though.
@Jed_Campbell The reason I am using PCA is really just because I understand it more. I am not sure how I would perform another analysis on such disparate types of data when the goal of what I'm doing is more to find associations. The example I gave above is more of a trimmed down version of what I am doing (151 properties of different materials), so if you have any suggestions, I'd love to hear them.
Thanks!
Edward Hamer Chandler, Jr.