Thank you, P_Bartell.
Perhaps a little bit more insight into the data would help, as you had mentioned. My dataset is quite wide: 236 variables, with n = 44 cases, with 3 repeated measures each, classified into 3 highly unbalanced groups (n = 6, 7 and 31) based on one specific criteria score. When I let PLSDA do its best by predicting my Y (3 unbalanced groups, measured 3 times) based on X's (all 236 variables), no model converges. But, when I reduce my X's by clustering variables, it does generate one model, with 2 factors, and I can then proceed to interpret what that means.
Does this help?