Just to clarify how the points are generated when using a mixture optimal design (with the case of 3 mixture factors) :
- Points at the vertices help estimate main effects parameters,
- Points at the middle of edges help estimate 2-factors interactions.
- Point in the centre is used for 3rd degree interaction.
Space-filling design create randomly and homogeneously distributed points in the experimental space, in the absence of any a-priori model.
If you already have an idea about the type of model you will use (like a two-way interaction model), an optimal design may be more useful and effective, as the generation of points will be optimized for the parameters estimation of the effect terms you have specified in your assumed model (unlike the "randomness" of space-filling design points generation).
Space-filling designs are useful in the absence of any a-priori knowledge about a possible model, with a probability of non-linear response surface, and have more flexibility regarding the modelling possibilities in case of points that are non-measurable (stability problems, very high or low values, ...).
Hope this clarify the difference between the use of these two types of methodologies.
Victor GUILLER
L'Oréal Data & Analytics
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)