Box–Behnken design

In statistics, Box–Behnken designs are experimental designs for response surface methodology, devised by George E. P. Box and Donald Behnken in 1960, to achieve the following goals:

The design with 7 factors was found first while looking for a design having the desired property concerning estimation variance, and then similar designs were found for other numbers of factors.

Each design can be thought of as a combination of a two-level (full or fractional) factorial design with an incomplete block design. In each block, a certain number of factors are put through all combinations for the factorial design, while the other factors are kept at the central values. For instance, the Box–Behnken design for 3 factors involves three blocks, in each of which 2 factors are varied through the 4 possible combinations of high and low. It is necessary to include centre points as well (in which all factors are at their central values).

In this table, m represents the number of factors which are varied in each of the blocks.

factorsmno. of blocksfactorial pts. per blocktotal with 1 centre pointtypical total with extra centre pointsno. of coefficients in quadratic model
32 3 4 1315, 1710
42 6 4 2527, 2915
5210 4 414621
63 6 8 495428
73 7 8 576236
8414 811312045
9312 8 9710555
104101616117066
115111617718878
124121619320491
1642416385396153

The design for 8 factors was not in the original paper. Taking the 9 factor design, deleting one column and any resulting duplicate rows produces an 81 run design for 8 factors, while giving up some "rotatability" (see above). Designs for other numbers of factors have also been invented (at least up to 21). A design for 16 factors exists having only 256 factorial points. Using Plackett–Burmans to construct a 16 factor design (see below) requires only 221 points.

Most of these designs can be split into groups (blocks), for each of which the model will have a different constant term, in such a way that the block constants will be uncorrelated with the other coefficients.

Extended uses

These designs can be augmented with positive and negative "axial points", as in Central composite designs, but, in this case, to estimate univariate cubic and quartic effects, with length α = min(2, (int(1.5 + K/4))1/2), for K factors, roughly to approximate original design points' distances from the centre.

Plackett–Burman designs can be used to construct smaller or larger Box–Behnkens, in which case, axial points of length α = ((K+1)/2)1/2 better approximate original design points' distances from the centre. Since each column of the basic design has 50% 0s and 25% each +1s and -1s, multiplying each column, j, by σ(Xj)*21/2 and adding μ(Xj) prior to experimentation, under a general linear model hypothesis, produces a "sample" of output Y with correct first and second moments of Y.

References

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