Normal Plot of the Effects (response is Mean free height, Alpha = 0.05)
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1 Percent Normal Plot of the Effects (response is Mean free height, lpha = 5) Effect Type Not Significant Significant E F actor C D E Name C D E 0 5 E Effect Lenth's PSE = Factorial Fit: Mean free height versus ; ; C; D; E Estimated Effects and Coefficients for Mean free height (coded units) Term Effect Coef Constant C D E * *C *D *E *E C*E D*E **E *C*E *D*E S = * PRESS = * nalysis of Variance for Mean free height (coded units) Source DF Seq SS dj SS dj MS F P Main Effects * * * * * * C * *
2 D * * E * * 2-Way Interactions * * * * * *C * * *D * * *E * * *E * * C*E * * D*E * * 3-Way Interactions * * **E * * *C*E * * *D*E * * Error 0 * * * Total
3 Factorial Fit: Mean free height versus ; ; C; D; E Estimated Effects and Coefficients for Mean free height (coded units) Term Effect Coef SE Coef T P Constant C D E * *C *D *E *E C*E D*E S = PRESS = R-Sq = 97.9% R-Sq(pred) = 0% R-Sq(adj) = 89.56% nalysis of Variance for Mean free height (coded units) Source DF Seq SS dj SS dj MS F P Main Effects C D E Way Interactions * *C *D *E *E C*E D*E Error Total Mean free Obs StdOrder height Fit SE Fit St Resid
4 Frequency Percent Plots for Mean free height 99 Normal Probability Plot 50 Versus Fits Fitted Value Histogram 50 Versus Order Observation Order 4 5 6
5 Percent Normal Plot of the Effects (response is Range, lpha = 5) DE Effect Type Not Significant Significant F actor C D E Name C D E 5 CE Effect Lenth's PSE = Term Effect Coef Constant C D E * *C *D *E *E C*E D*E **E *C*E *D*E S = * PRESS = * nalysis of Variance for Range (coded units) Source DF Seq SS dj SS dj MS F P Main Effects * * * * * * C * * D * * E * *
6 2-Way Interactions * * * * * *C * * *D * * *E * * *E * * C*E * * D*E * * 3-Way Interactions * * **E * * *C*E * * *D*E * * Error 0 * * * Total
7 Factorial Fit: Range versus ; ; C; D; E Estimated Effects and Coefficients for Range (coded units) Term Effect Coef SE Coef T P Constant C D E *D *D*E **D*E *C*D*E S = PRESS = R-Sq = 9.39% R-Sq(pred) = 38.74% R-Sq(adj) = 78.46% nalysis of Variance for Range (coded units) Source DF Seq SS dj SS dj MS F P Main Effects C D E Way Interactions *D Way Interactions *D*E Way Interactions **D*E *C*D*E Error Total Obs StdOrder Range Fit SE Fit St Resid
8 Frequency Percent Plots for Range Normal Probability Plot Versus Fits Fitted Value Histogram Versus Order Observation Order 4 5 6
9 Factorial Fit: Range versus ; ; C; E Estimated Effects and Coefficients for Range (coded units) Term Effect Coef SE Coef T P Constant C E *C *E C*E *C*E S = PRESS = R-Sq = 86.68% R-Sq(pred) = 30.43% R-Sq(adj) = 7.46% nalysis of Variance for Range (coded units) Source DF Seq SS dj SS dj MS F P Main Effects C E Way Interactions *C *E C*E Way Interactions *C*E Error Total Obs StdOrder Range Fit SE Fit St Resid
10 Frequency Percent Plots for Range 99 Normal Probability Plot 0.0 Versus Fits Fitted Value Histogram 0.0 Versus Order Observation Order
11 Percent Normal Plot of the Effects (response is Standard deviation, lpha = 5) DE Effect Type Not Significant Significant F actor C D E Name C D E 0 5 CE Effect Lenth's PSE = Factorial Fit: Standard deviation versus ; ; C; D; E Estimated Effects and Coefficients for Standard deviation (coded units) Term Effect Coef Constant C D E * *C *D *E *E C*E D*E **E *C*E *D*E S = * PRESS = * nalysis of Variance for Standard deviation (coded units) Source DF Seq SS dj SS dj MS F P Main Effects * * * * * *
12 C * * D * * E * * 2-Way Interactions * * * * * *C * * *D * * *E * * *E * * C*E * * D*E * * 3-Way Interactions * * **E * * *C*E * * *D*E * * Error 0 * * * Total Standard SE St Obs StdOrder deviation Fit Fit Resid * * * * * * * * * * * * * * * * * * * * * * * * * * * * * * * *
13 Factorial Fit: Standard deviation versus ; ; C; E Estimated Effects and Coefficients for Standard deviation (coded units) Term Effect Coef SE Coef T P Constant C E *C *E C*E *C*E S = 3883 PRESS = R-Sq = 88.63% R-Sq(pred) = 40.62% R-Sq(adj) = 75.65% nalysis of Variance for Standard deviation (coded units) Source DF Seq SS dj SS dj MS F P Main Effects C E Way Interactions *C *E C*E Way Interactions *C*E Error Total Standard Obs StdOrder deviation Fit SE Fit St Resid
14 Frequency Percent Plots for Standard deviation 99 Normal Probability Plot 50 Versus Fits Fitted Value 5 8 Histogram 50 Versus Order Observation Order 4 5 6
15 Frequency Percent Plots for Free height Normal Probability Plot 0. Versus Fits Fitted Value 8.0 Histogram Versus Order Observation Order s Versus (response is Free height)
16 s Versus (response is Free height) s Versus C (response is Free height) C 0.5.0
17 s Versus D (response is Free height) D s Versus E (response is Free height) E 0.5.0
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