Sorry I did not explain that in detail.
There are two materials that can be used. And both of the materials can be improved by an Agent. This Agent is varied with 1% or 2 % (Certainly all these numbers are anonymized). Hence I have 0% --> no Agent, or 1% or 2 % Agent.
I use "Discrete Numeric" Factors because the processes of our supplier who is driving this DoE in his facilities, are not able to adjust the Factors to continuous values that are chosen by optimally criterias.
Sorry my impression is we deviating from my question. Let me raise my originally question again. What is the difference between.
Blocking Factor with 16 Blocks or Categorical Factor with 16 Levels. See underneath. Sure, making Amout of levels equally and adding just a main effect for the categorical value.
You answered above: "It is a common misconception that a blocking factor (blocks have fixed effects on the response) is just another categorical factor but they are much more than that. They represent a constraint on the experimental unit (part of the experimental run but generally not explicitly part of the design except for blocking)".
What does it mean? What causes the difference? What is the failure I have to expect if I choose an optimal design with a categorical Value instead of Blocking?
Many thanks
Peter