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Design of Experiments Guide > Screening Designs > Additional Examples of Screening Designs > Modify Generating Rules in a Fractional Factorial Design
Publication date: 04/28/2021

Modify Generating Rules in a Fractional Factorial Design

The following example, adapted from Meyer, et al. (1996), shows how to use the Screening Design platform when you have many factors. In this example, a chemical engineer investigates the effects of five factors on the percent reaction of a chemical process. The factors are:

Feed Rate - the amount of raw material added to the reaction chamber in liters per minute

Catalyst (as a percent)

Stir Rate - the RPMs of a propeller in the chamber

Temperature (in degrees Celsius)

Concentration of reactant

Production constraints limit the size of the experiment to no more than twelve runs. You decide to consider the 8-run fractional factorial design and the 12-run Plackett-Burman design. Also, you suspect the following statements to be true:

The Temperature*Concentration interaction is active, so you want a design that does not alias this interaction with a main effect.

The Catalyst*Temperature* interaction is not likely to be active.

The Stir Rate*Concentration interaction is not likely to be active.

Use this information in constructing your design.

Create the Standard Fractional Factorial Design

To create the standard fractional factorial design, do the following:

Specify the Response

Specify the Factors or Specify Factors Manually

Choose a Design

Specify the Response

1. Select DOE > Classical > Two Level Screening > Screening Design.

2. Double-click Y under Response Name and type Percent Reacted.

Note that the default Goal is Maximize. The Goal is to maximize the response, but the minimum acceptable reaction percentage is 90 (Lower Limit) and the upper limit is 100 (Upper Limit).

3. Click under Lower Limit and type 90.

4. Click under Upper Limit and type 100.

5. Leave the area under Importance blank.

Because there is only one response, that response is given Importance 1 by default.

See Figure 9.19 for the completed Responses outline. Now, specify the factors.

Specify the Factors

You can enter the factors manually or automatically:

To enter the factors automatically, use the Reactor Factors.jmp data table:

1. Select Help > Sample Data Library and open Design Experiment/Reactor Factors.jmp.

2. Click the Screening Design red triangle and select Load Factors. Proceed to Choose a Design.

To enter the factors manually, follow the steps below.

Specify Factors Manually

1. Add five continuous factors by entering 5 in the Add N Factors box and clicking Continuous.

2. Change the default factor names (X1-X5) to Feed Rate, Catalyst, Stir Rate, Temperature, and Concentration.

3. Enter the low and high values, as follows:

Feed Rate: 10, 15

Catalyst: 1, 2

Stir Rate: 100, 120

Temperature: 140, 180

Concentration: 3, 6

Figure 9.19 Responses and Factors Outlines 

Choose a Design

1. Click Continue.

2. From the Choose Screening Type panel, accept the default selection to Choose from a list of fractional factorial designs and click Continue.

Designs for the factors and levels that you specified are listed in the Design List (Figure 9.20).

Figure 9.20 Fractional Factorial Designs for Five Continuous Factors 

3. The design that you want is the first in the list and happens to be selected by default (Figure 9.20). Accept that selection and click Continue.

Because you are limited to eight runs and have no blocking factor, your best design option is the 8-run fractional factorial design with no blocks. This design is a 25-2 fractional factorial design. It is one quarter of the full factorial design for five factors.

Change the Generating Rules to Obtain a Different Fraction

In this example, you want to know whether the Temperature*Concentration interaction is confounded with a main effect. Use the Display and Modify Design outline to view the aliasing structure for the design that you selected and to change it, if appropriate.

1. Open the Aliasing of Effects outline.

Figure 9.21 Aliasing of Effects Outline 

The Temperature*Concentration interaction, which you suspect is active, is confounded with Feed Rate, a main effect. You want to change the generating rules to construct a design where Feed Rate is aliased with effects that you suspect are inactive, and where the Temperature*Concentration interaction is not aliased with a main effect.

2. Open the Change Generating Rules outline.

The default-generating rules give you the standard (or principal) one-quarter fraction of the full factorial design. Recall that you suspect that the Catalyst*Temperature and Stir Rate*Concentration interactions are not likely to be active. Redefine the generating rules so that these two interactions are confounded with Feed Rate. The redefined generating rules give you a different one-quarter fraction of the full factorial design.

3. Do the following:

Deselect Stir Rate in the Temperature column.

Deselect Catalyst in the Concentration column.

Select Feed Rate in the Concentration column.

Figure 9.22 New Generating Rules 

4. Click Apply.

Figure 9.23 Aliasing of Effects Outline for Modified Generating Rules 

In the design that you have defined, Feed Rate is confounded with Catalyst*Temperature and Stir Rate*Concentration. Also, the Temperature*Concentration interaction is now confounded with the two-way interaction Catalyst*Stir Rate.

5. In the Output Options outline, accept the default Run Order setting of Randomize and click Make Table.

Figure 9.24 Eight-Run Fractional Factorial Design Table 

The design table shows the design that you constructed. Notice that the table contains a column for the response that you defined in the Screening window, Percent Reacted, where you can record your experimental results.

The Screening, Model, and DOE Dialog scripts are also included. For more information about these scripts, see Make Table.

Analyze the Results

Next you conduct the experiment, record your data, and proceed to analyze the results.

1. Select Help > Sample Data Library and open Design Experiment/Reactor 8 Runs.jmp.

You can estimate seven effects with your eight runs. Of these, you expect only a few to be active. Because you want to estimate seven effects, there are no degrees of freedom for error. For these reasons, you use the Screening platform to analyze the results.

2. Run the Screening script in the data table.

The Screening script launches the Screening platform (DOE > Classical > Two Level Screening > Fit Two Level Screening) for your response and factors.

Figure 9.25 Report for Screening Example 

Note: Since the p-values are obtained using a simulation-based technique, your p-values might not precisely match those shown here.

The report shows both Individual and Simultaneous p-values based on Lenth t-ratios. None of the effects are significant, even with respect to the Individual p-values. The Half Normal Plot suggests that the effects reflect only random noise.

For more information about the Screening report, see The Screening Report in the The Fit Two Level Screening Platform section.

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