Table 1 Steepest ascent design and results
in the response y。
Then, Eq。 (4) can be expressed by matrix:
According to the method of central composite
design, thirty experiments must be carried out for the
central composite design with four factors and five levels。
The central composite test table and the experimental
results are listed in Table 2。
4Results and discussion
In statistics, response surface methodology (RSM) [17] is used to explore the relationship between explanatory variables and response variables。 The relationship can be constructed by polynomial functions and further displayed in the graphics。
Usually, a two-order polynomial is used to formulate the relationship between the explanatory variables and the response variables。 The response variable y can be defined as follows:
Matrix B with unknown coefficients can be obtained from the formulation:
B=(XTX)−1XTY (6)
When polynomial coefficients are substituted into Eq。 (4), the value of y can be predicted at any x。
4。1Mathematical modeling
Before establishing the regression model, the singular points should be deleted。 The regression response surface models of the fracture function Df, the wrinkling function Dw and thickness varying Dt are expressed as
Df=26042。18746+31。46078x1−86。05939x2−43。04582x3−
224。31387x4+0。065050x1x2−0。12953x1x3−
where xi represents independent variables; b0, bi, bii and
0。57679x1x4+0。094554x2x3−0。081526x2x4+
bij represent the unknown coefficients needed to be defined; ε represent the variables noise or error observed
0。54418x3x4+0。11137 x1 +0。057776 x2 +7。50434×
Table 2 Central composite test table and experimental results
Experiment No。 x1 x2 x3 x4/105 Df Dw Dt
1 3 385 435 0。8 0。037031 27。5719 33。2243
2 3 385 445 0。8 0。00364 16。2145 65。7158
3 2 380 430 1。1 8。10194 16。4318 53。1864
4 2 390 430 1。1 0。011397 10。824 7202。7
5 3