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This week We learnt about the Design of Experiments which focuses on determining the most influential factor affecting the output, the following is the data analysis for Case2.
1. Use full and factorial data analysis
2. Compare and evaluate the results
A = concentration of coagulant added, 1% and 2% by weight
B = treatment temperature, 72o F and 100o F
C = Stirring speed, 200 rpm and 400 rpm
From the graph, it shows that stirring speed has the highest impact on the pollutant discharged because it has the highest gradient of -14.5. followed by concentration with a gradient of 12.5 and lastly the temperature. So the rank shall be C>A>B.
› Determine the interaction effects.
Plot a graph using the values calculated to check for the interactions between different factors.
For FULL factorial design: (A x B)
At LOW B, (runs 1 and 5) Average of low A=(5+4)/2=4.5
At LOW B, (runs 2 and 6) Average of high A=(30+3)/2=16.5
At LOW B, total effect of A=(16.5-4.5)= 12(increase)
At HIGH B, (runs 3 and 7) Average of low A=(6+5)/2=5.5
At HIGH B, runs 4 and 8) Average of high A=(33+4)/2=18.5
At HIGH B, total effect of A=(18.5-5.5)=13(increase)
This indicates that there’s an interaction between A and B, but the interaction is small.
For FULL factorial design: (A x C)
At LOW A, (runs 1 and 3) Average of low C=(5+6)/2=5.5
At LOW A, (runs 5 and 7) Average of high C=(4+5)/2=4.5
At LOW A, total effect of C=(4.5-5.5)= -1 (decrease)
At HIGH A, (runs 2 and 4) Average of low C=(30+33)/2=31.5
At HIGH A, (runs 6 and 8) Average of high C=(3+4)/2=3.5
At HIGH A, total effect of C=(3.5-31.5)=-28 (decrease)
For FULL factorial design: (B x C)
At LOW B, (runs 1 and 2) Average of low C=(5+30.5)/2=17.5
At LOW B, (runs 5 and 6) Average of high C=(4+3)/2=3.5
At LOW B, total effect of C=(3.5-17.75)= -14.25 (decrease)
At HIGH B, (runs 3 and 4) Average of low C=(6+33)/2=19.5
At HIGH B, (runs 7 and 8) Average of high C=(5+4)/2=4.5
At HIGH B, total effect of C=(4.5-19.5)=-15 (decrease)
The gradients of both lines are both negative and are slightly different with a very small
margin. This indicates that there’s an interaction between A and B, but the interaction is small.
From the tables, it shows that the interaction effect between A and C is the biggest because the gradients are very different and the two lines insect. Factors AxB and BxC also contribute to the pollutant discharged but with a minimal impact, both have an interaction impact as the lines will insect soon.
Fractional factorial analysis:
I chose runs# 1, 4, 6 and 7 as the four runs are orthogonal on the cubic design, the number of high and low levels of different factors is the same.
Repeat the same technique used in the full factorial analysis.
For Fractional factorial design: (A x B)
At LOW B, (run 1) Average of low A=5
At LOW B, (run 6) Average of high A=3
At LOW B, total effect of A=(3-5)= -2 (decrease)
At HIGH B, (run 7) Average of low A=5
At HIGH B, (run 4) Average of high A=33
At HIGH B, total effect of A=(33-5)=28 (increase)
For Fractional factorial design: (A x C)
At LOW A, (run 1) Average of low C=5
At LOW A, (run 7) Average of high C=5
At LOW A, total effect of C=(5-5)= 0 (no change)
At HIGH A, (run 4) Average of low C=33
At HIGH A, (run 6) Average of high C=3
At HIGH A, total effect of C=(3-33)=-30 (decrease)
For Fractional factorial design: (B x C)
At LOW B, (run 1) Average of low C=5
At LOW B, (run 6 Average of high C=3
At LOW B, total effect of C=(3-5)= -2 (decrease)
At HIGH B, (run 4) Average of low C=33
At HIGH B, (run 7) Average of high C=5
At HIGH B, total effect of C=(5-33)=-28 (decrease)
From the tables, it shows that the interaction effect between A and C is the biggest because the gradients are very different and the two lines insect. Factors AxB and BxC also contribute to the pollutant discharged significantly, both have an interaction impact as the lines will insect soon.
