For the latest version of JMP Help, visit JMP.com/help.


Design of Experiments Guide > Response Surface Designs > Overview of Response Surface Designs
Publication date: 04/21/2023

Overview of Response Surface Designs

The Response Surface Design platform provides the classical central composite and Box-Behnken designs, including blocked versions of these designs. For central composite designs, you can control the placement of axial points and other aspects of the design. Response surface designs are available for continuous factors only and are provided for up to eight factors.

Tip: You can use DOE > Custom Design to construct optimal response surface designs that accommodate your specific experimental situation. Custom Design constructs response surface designs that are much more flexible than classical response surface designs. In particular, you can use the Custom Design platform to create response surface designs that involve categorical factors or more than eight continuous factors. You can also specify the number of runs and restrictions on the design space. For examples, see Examples of Response Surface Experiments.

A central composite design (Figure 12.2) combines a two-level fractional factorial design and two other types of points:

Center points, where all the factor values are set to the midrange value.

Axial points, where one factor is set to a high or low value (an axial value) and all other factors are set to the midrange value.

Depending on your selections relative to axial points, a central composite design can have as many as five distinct settings for each factor and the axial points can extend beyond the specified range of the factors.

Figure 12.2 Central Composite Design for Three Factors 

Central Composite Design for Three Factors

A Box-Behnken design (Figure 12.3) has only three levels per factor and has no design points at the vertices of the cube defined by the ranges of the factors. This type of design can be useful when you must avoid these points due to engineering considerations. But, the lack of design points at the vertices of the cube means that a Box-Behnken design has higher prediction variance, and so less precision, near the vertices compared to a central composite design.

Figure 12.3 Box-Behnken Design for Three Factors 

Box-Behnken Design for Three Factors

In JMP, you can construct a response surface design in two ways:

Using the Response Surface Design platform (for up to eight continuous factors)

Using the Custom Design platform (and clicking the RSM button in the Model section)

In both cases, the design table contains a Model script that you can run to fit a model. The Model script applies the Response Surface Effect attribute to each main effect, so that the main effects appear with a &RS suffix in the Fit Model window. This attribute ensures that the Fit Least Squares report contains a Response Surface report. For more information about this report, see “Fit Least Squares Report” in Fitting Linear Models.

Note: The Response Surface section in the Standard Least Squares report is not shown for response surface designs that contain more than 20 continuous factors.

Want more information? Have questions? Get answers in the JMP User Community (community.jmp.com).