3.3.1. One-Dimensional Linear Regression Analysis
The analysis in
Section 3.1 showed that there was a possible linear correlation between grammage, underfill factor, and TPP value. The relationship between grammage, underfill factor, and the dependent variable TPP value was therefore analyzed separately, using linear regression. The two one-dimensional linear regression equations established were:
where y
1, y
2 are predicted TPP values (kW∙s/m
2), x
1 is the grammage (g/m
2), and x
4 is the underfill factor.
The coefficients in Equations (6) and (7) were obtained by fitting the data in
Table 1 and
Table 2. The resulting fitting equations were also tested by regression equation significance test (F-test), regression coefficient significance (
t-test), and residual analysis. In the F-test, the result Significance F was obtained for the test. In the
t-test, the result
p-value was obtained and the decision was made by the
p-value. In the F-test here, the significance F values for both Equations (6) and (7) were 0.000, and the significance F values for both equations were less than 0.01, indicating a significant linear relationship between the TPP value and both variables. The
t-test yielded
p-values of less than 0.01 for both the grammage and underfill factor, indicating that the effects of grammage and underfill factor on TPP value were significant.
Figure 6a,b show normal P-P plots for the standardized residuals, where the scatter points of the standardized residuals were all distributed on or close to a straight line, so the residuals showed a normal distribution. The above significance test and residual analysis results indicated that it was reasonable to express the linear relationship between grammage, underfill factor, and TPP value using Equation (6) and Equation (7) respectively.
3.3.2. Multiple Log-Linear Regression Analysis
There were linear relationships between grammage, underfill factor, and TPP value based on the results of
Section 3.3.1. According to previous studies, there was a linear relationship between thickness and TPP value [
5,
11], and an approximate exponential relationship between air gap and TPP value [
23]. For non-linear regression problems, it is difficult to calculate multivariate non-linear regression models directly. Therefore, when non-linear models (e.g., exponential models, etc.,) are encountered, they are usually converted to linear models for calculation. It was assumed here that the TPP value and the individual influencing factors were modelled as:
Taking logarithms on both sides of Equation (8) gave the following multiple linear regression model:
where y
3 is the predicted TPP value (kW∙s/m
2), x
1 is the grammage (g/m
2), x
2 is the air gap (mm), x
3 is the thickness (mm), x
4 is the underfill factor and β
0, β
1, β
2, β
3, and β
4 are constants. The results of the measured values of each factor after taking the logarithm and the measured values of TPP are shown in
Table 5.
The F-test and
t-test were performed on Equation (9) using the data in
Table 5 and the air gap (x
2) data in
Table 2. The coefficients in Equation (9) were also solved and the results were obtained as shown in
Table 6. From
Table 6, it can be seen that after the F-test, the model had a
p-value of 0.000 (less than 0.01), indicating that there were independent variables in the model that would have an effect on the dependent variable. Lnx
1, x
2, and lnx
4 had
p-values less than 0.01, indicating that lnx
1, x
2, and lnx
4 would have a significant effect on lny
3. The
p-value for lnx
3 was 0.757 (>0.05), therefore the effect of lnx
3 on lny
3 was not significant and the variable could not be included in the regression model. The above analysis indicated that the model, Equation (9), was not valid and needed to be re-modelled. After re-modelling, the following equation were obtained:
From
Figure 2, the correlation coefficient between the grammage and the underfill factor was −1, indicating that there might be covariance between the two parameters.
Table 7 was obtained after diagnosing the collinearity of Equation (10), and it was found that the variance inflation factor VIF value between the grammage and underfill factor was 1285.263 (>10) and the tolerance Tol was 0.001 (<0.1), so there was serious collinearity between the two parameters. Therefore, stepwise regression was used to remove the grammage or underfill factor to resolve the covariance of the model. After performing a stepwise regression, the grammage was removed, leaving the independent variables as the air gap and underfill factor. More specifically, the model can be expressed as:
where x
2 is the air gap (mm), x
4 is the underfill factor, and y
3 is the predicted TPP value (kW·s/m
2).
The significance test of regression equation (
Table 8,
p = 0.000) showed a significant linear relationship between the TPP value and the air gap and the underfill factor. In the regression coefficient significance test, the
p-value for the air gap was 0.001 and the
p-value for the underfill factor was 0.000, both of which were less than 0.01, indicating that both the air gap and underfill factor had a significant effect on the TPP value. The goodness of fit test was also applied to the model, using the determination coefficient R
2 and the adjusted R
2 to determine the fit effect. The adjusted R
2 for Equation (10) was found to be 0.880, indicating that the model fitted well. A residual independence test on the model yielded a result of 1.840 for the Debin–Watson test (D-W test), where the autocorrelation of the independent variables was not significant at D-W values close to 2, indicating that there was no interference between the sample data.
Figure 7a shows a histogram of the standardized residuals, from which it can be seen that the standardized residuals of the regression and experimental values were approximately normally distributed.
Figure 7b shows a normal probability plot (P-P plot) of the standardized residuals, where most of the scatter points of the standardized residuals were distributed on or close to the diagonal line, so the residuals were normally distributed.
Figure 7c shows a scatter plot of the standardized residuals, in which the points were evenly distributed with no obvious regular variation, so the variance of the residuals was homogeneous. This result suggested that the relationship between the air gap, underfill factor, and TPP value was reasonably represented by the linear regression model of Equation (11).