Background
Box-Behnken design is a
response surface methodology design. It is used to further study the
quadratic effect of factors after identifying the signficant factors
using screening factorial experiments.
Box-Behnken designs do not
contain any points at the vertices of the experimental region.
This could be advantageous when the points on the corners of the
cube represent factor-level combinations that are prohibitively
expensive or impossible to test because of physical process
constraints.
Consider a UV-light system that
is used to inactivate fungal spores of Aspergillus niger in corn
meal.* Fungal contamination of grains
during the post-harvest period has been a recurring health
hazard.
The response is the log10
reduction of the fungal spores. Therefore, the goal is to
maximize the reduction (response).
Three process parameters in the
UV-light system will affect the inactivation results. They are:
A) treatment time (number of pulses), B) the distance from the
UV strobe and C) input voltage for the UV lamp.

A 15 run Box-Behnken design
with three center points is conducted. A full quadratic model
is fitted to the data. Using this model, the optimal setting
that gives the largest reduction of fungal spores was found.
Experiment
Design
The experimenters use DOE++ to
design a Box-Behnken design. The design-specific
settings and the factor properties used are shown next.


The design matrix and the response data are given
in the "UV-light Treatment" Folio. Analysis
Part I
Step 1: After
performing the experiment according to the design and recording
the results, the experimenters enter the data set into the Standard Folio, as shown next.

Step 2: All
effects (i.e. full quadradtics) are selected for inclusion in the analysis:

Step 3: The data set is
analyzed with the default risk (significance) level of 0.1,
using individual terms.
The ANOVA table from the Analysis tab is shown next.

This table shows that effects A,
C, AC and AA are significant. The p
value for factor B is 0.1481, which is close to the risk level
0.1. Therefore, the experimenters decide that it will also be
included in the final model.
Analysis
Part II
The results for the reduced model and the optimization
are given in the "Reduced Model" Folio.
Step 1: The design Folio is
duplicated and the copy is named "Reduced Model."
Step 2: In the Select
Effects window, only the significant effects are selected to
calculate the new model, as shown next.

Step 3: The reduced
model is calculated. The coefficients for the parameters in the
reduced model are:

This model can be used as the
final model to conduct optimization. Step 4: Optimization is
performed using the settings shown next.


The optimal solution is shown
next.

Conclusions
The optimal solution is found to be A = 100 s, B = 3 cm and C =
3800 v. Under these settings, the expected logarithmic
transformation of the reduction is 4.9. Keep in mind that it is
necessary to conduct an experiment using these settings to confirm
this conclusion.
* S.
Jun, J. Irudayaraj, A. Demirci and D. Geiser, "Pulsed UV-light
treatment of corn meal for inactivation of Aspergillus niger
spores," International Journal of Food
Science and Technology, 2003, 38, 883-888. |