As there is not enough information on the situation, I can only lend some general advice. For industrial experiments (vs agricultural), I would only recommend 2 blocks. The purpose of blocking is to:
1. Increase the inference space (this is done more aggressively if you purposely exaggerate the noise between blocks, like build level setting for factors).
2. Increase the precision of the design. This is because the noise confounded with the block is partitioned from design structure.
The only reason to run more than 2 levels in industrial experiments is to add non-linear terms to the polynomial. This is non-sensical for blocks as they are "sets" of noise, not a continuous variable (there is no such thing as a 1.5 block).
I will also add, I believe JMP "likes" to consider blocks as random effects (you can tell by the model created by JMP when using JMP to create the blocks). If you have identified the noise confounded with the block, blocks can be even more beneficial as they can be treated as fixed effects. This allows for estimation of block-by-factor effects (the absence of block-by-factor effects is a quantifiable definition of robust). To do this, I create the blocks myself (both Complete and incomplete).
see Sanders, D., Leitnaker, M. G., & McLean, R. A. (2002). Randomized Complete Block Designs in Industrial Studies. Quality Engineering, 14(1), 1–8. https://doi.org/10.1081/QEN-100106880
"All models are wrong, some are useful" G.E.P. Box