According to the process proposed in
Section 4, the multi-objective optimization NSGA-II algorithm is used to obtain the Pareto solutions. The figures are drawn using origin 2018 and AxGlyph
Figure 15 shows the Pareto solution trigram of the resistance coefficient, total mass, and area–volume ratio of the stratospheric airship hull contour. Each point represents a design solution, with red points indicating infeasible solutions, black points representing feasible solutions, and green points denoting Pareto solutions.
Figure 15 illustrates that feasible solutions are concentrated within a specific solution space.
The feasible solutions in
Figure 15, as well as the points represented by the Pareto solutions, are plotted as binary graphs, as shown in
Figure 16. Plot (a) of
Figure 16 shows a negative correlation between drag coefficient,
, and total mass,
; Plot (b) of
Figure 16 shows a positive correlation between the total mass,
, and the airship area–volume ratio,
; Plot (c) of
Figure 16 depicts a negative correlation between the area–volume ratio,
, and drag coefficient,
, of the airship. The figure demonstrates that the total mass, drag coefficient, and airship area–volume ratio of the three objectives are mutually restrictive. Therefore, it is necessary to make a trade-off between the total mass,
, drag coefficient,
, and the airship area–volume ratio,
, to ensure the best balance point among multiple objectives.
5.1.1. Correlation Analysis
Correlation analysis is a statistical method that determines whether or not there is a relationship between variables and the direction of the relationship (positive or negative correlation) [
39]. Through correlation analysis, we can identify variables that have a significant influence on the target variables and improve the explanatory power of the model [
40]. The Spearman correlation coefficient is a non-parametric method used to measure the correlation between two variables. It is calculated by converting the original values of a variable into ranks (i.e., their positions after ranking by size) to obtain the correlation between the two variables [
32]. According to statistical law [
33], the correlation coefficient ranges from −1 to 1, where 1 indicates a complete positive correlation, −1 indicates a complete negative correlation, and 0 indicates no correlation. Variables can be classified as highly correlated, strongly correlated, moderately correlated, weakly correlated, or not correlated. The rank correlation coefficient is shown in
Figure 16. According to correlation theory, the correlations between design parameters and objectives in feasible solutions and Pareto solutions are analyzed, as shown in
Figure 17.
Plot (a) of
Figure 17 describes the correlation coefficient of the airship area–volume ratio,
, in which the correlation coefficient of the airship slenderness ratio is 0.51, indicating a moderate positive correlation. The correlation coefficient of airship length is −0.34, showing a weak negative correlation. The correlation coefficient of other parameters is less than 0.2, indicating no significant correlation. Among all the parameters,
is the largest in absolute value. When considering the
of airships, the design of
should be given the highest priority. In this way,
and
should be designed subsequently because their correlation coefficient absolute values are secondary. Another parameter’s correlation coefficient is too small to influence the value of the airship
in a certain way.
Plot (b) of
Figure 17 describes the correlation coefficient of the total mass
, where the correlation coefficient of airship length is 0.74, showing a strong positive correlation. The correlation coefficient of other parameters is less than 0.2, indicating no significant correlation. When considering the
of airships,
should be designed firstly because of its largest absolute value among all the parameters. Furthermore, other parameters’ correlation coefficient absolute values are all under 0.2, which means they are too small to influence the value of
in a certain way, so these parameters should not be given too much attention.
Plot (c) of
Figure 17 describes the correlation coefficient of the drag coefficient,
, where the correlation coefficient of airship length is −0.99, indicating a high negative correlation. The correlation coefficient of the slenderness ratio is −0.5, showing a moderate negative correlation. The correlation coefficient of the prismatic coefficient is 0.29, indicating a weak positive correlation. The correlation coefficient of other parameters is less than 0.2, indicating no significant correlation. It is not hard to see that the correlation coefficient of
has the largest absolute value and
is secondary among all the parameters. Therefore, when considering
, the design of
should be given the highest priority and λ should be given the secondary priority. Furthermore, the correlation coefficient of
is 0.29, which means that the change of
’s value can influence the value of
in a low degree.
cannot be ignored, although the influence degree of
is low. Another parameter’s correlation coefficient is too small to influence the value of
in a certain way, so they could be ignored when considering the drag coefficient.
All in all, the correlation coefficients of the three parameters , , and are too small, and it is difficult for them to affect , , or of the airship in a certain way, so they should not be given too much attention when determining the , , and of the airship. We need to pay more attention to the design of , , and because their impact on , , and is obvious.
5.1.2. Comparison Analysis of Airship Envelope Curve
Solutions on the Pareto front often show trade-offs between different goals. A solution may excel in one goal but be slightly inferior in another, while another solution may be balanced across multiple goals. For comparison analysis, the solutions with the smallest drag coefficient, the smallest total mass, and the smallest airship area–volume ratio were selected from the Pareto front in
Figure 15.
The comparison of the smallest drag coefficient is shown in
Figure 18, and the data for the comparison is shown in
Table 6. When the drag coefficient is lowest, the
,
, and
of the airship become larger, while
,
, and
become smaller. At the same time, the total mass and area–volume ratio of the airship are reduced simultaneously.
- 2.
Total mass is at its lowest
The comparison of the boat type with the minimum total mass is shown in
Figure 19, and the data for the comparison is shown in
Table 7. When the total mass is minimized,
,
,
, and
of the airship decreases and
increases, while
has very little change. Simultaneously, the drag coefficient of the airship increases and the area–volume ratio decreases.
- 3.
The area–volume ratio is at its lowest.
The comparison of the airship type with the smallest area–volume ratio is shown in
Figure 20, and the data for the comparison is shown in
Table 8. When the area–volume ratio of the airship is minimized, the
,
,
, and
of the airship decrease and
and
increase. The total mass of the airship decreases, and the drag coefficient increases.
From the above data, it can be seen that no matter what goal is pursued,
will be larger than the original design parameter and
and
will be smaller, which is consistent with the results of the correlation analysis in
Section 5.1.1, that is, changes in
,
, and
do not affect the goal pursued more clearly. By contrast, the changes in
,
, and
are very predictable. When pursuing the minimum drag coefficient, the
and
of the airship become larger, while
becomes smaller. These results are consistent with the analysis in
Section 5.1.1. In addition, there are inherent constraints between the three goals being pursued, and it is necessary to ensure that all three meet the design requirements. The choice must be made according to the actual design situation. Above all, these results show a similarity to the results of Yang [
41], Yin [
42], and Alam [
29].