I am designing a custom DOE with 8 factors (5 are continuous, 3 are categorical - 2 level). I would like to include all 2nd order interactions along with 4 center points. I am trying to decide between two options for DOE design:
1.) Including the 2nd order interactions in the model (48 runs total)
Using this method, JMP suggests a default of 48 runs. The color map on correlations looks great, with my 1st and 2nd order terms at 1 and everything else close to 0. However, the efficiencies are low (D = 82.5, G = 44.1, and A = 72.5). Also, average variance of prediction is 0.41. The prediction variance profiles give me a maximum variance of 1.85, and my fraction of design space plot ranges from 0.3 to 1.75.
2.) Including the 2nd order interactions as alias terms (48 runs total)
Using this method, JMP suggests a default of 20 runs, but I manually increase the number to 48 for direct comparison against option 1. The color map on correlations looks notably worse, with a significant number of terms close to 0.5. Everything else about the design looks better, though. Efficiencies are much higher (D = 95.3, G = 95.2, and A = 95.2). The average variance of prediction is 0.12. The prediction variance profiles give me a maximum variance of 0.20, and my fraction of design space plot ranges from 0.08 to 0.20.
Please help me to pick between the two options and let me know which of these design evaluation metrics are most important. Thanks!