Figure 1.
Overall structure of the intellectual design framework, which had a hierarchical structure. The CFD manager calculated the operating characteristics of the rotors in multiple threads, determined the performance and managed the data.
Figure 1.
Overall structure of the intellectual design framework, which had a hierarchical structure. The CFD manager calculated the operating characteristics of the rotors in multiple threads, determined the performance and managed the data.
Figure 2.
Comparison of the original and generated rotor on the and surfaces. The directions of the sweep and lean are marked.
Figure 2.
Comparison of the original and generated rotor on the and surfaces. The directions of the sweep and lean are marked.
Figure 3.
Definition of the camber angles and incidence.
Figure 3.
Definition of the camber angles and incidence.
Figure 4.
Grid of the rotor with 1.2 M nodes and O–H topology.
Figure 4.
Grid of the rotor with 1.2 M nodes and O–H topology.
Figure 5.
Operating characteristic of NASA rotor 67, with 0.8 M, 1.2 M and 1.6 M grids. (a) The total pressure ratio curve. (b) The efficiency curve.
Figure 5.
Operating characteristic of NASA rotor 67, with 0.8 M, 1.2 M and 1.6 M grids. (a) The total pressure ratio curve. (b) The efficiency curve.
Figure 6.
Variable distributions in the span in the experiment [
19] and CFD simulations: (
a) pressure distribution in the span; (
b) temperature distribution in the span.
Figure 6.
Variable distributions in the span in the experiment [
19] and CFD simulations: (
a) pressure distribution in the span; (
b) temperature distribution in the span.
Figure 7.
Typical operating characteristic curve according to the CFD calculations, including the definitions of 7 selected performance variables.
Figure 7.
Typical operating characteristic curve according to the CFD calculations, including the definitions of 7 selected performance variables.
Figure 8.
Distortion at the end of the process with a random initial state. The processes in high-dimensional design space were projected onto a dimensionless – surface. (a) Agent with mild distortion. (b) Agent with severe distortion.
Figure 8.
Distortion at the end of the process with a random initial state. The processes in high-dimensional design space were projected onto a dimensionless – surface. (a) Agent with mild distortion. (b) Agent with severe distortion.
Figure 9.
High-order feedback does not directly affect the influencing interactions between the agent and the environment.
Figure 9.
High-order feedback does not directly affect the influencing interactions between the agent and the environment.
Figure 10.
Virtual area and penalty term; is zero when the state is in the real design space.
Figure 10.
Virtual area and penalty term; is zero when the state is in the real design space.
Figure 11.
Processes generated by normal and abnormal agents.
Figure 11.
Processes generated by normal and abnormal agents.
Figure 12.
Training agents in the demo case. The average point and minimum value of each version were compared.
Figure 12.
Training agents in the demo case. The average point and minimum value of each version were compared.
Figure 13.
Schematic of the error reduction process. The overall performance of the model improved after restricting the points with poor performance.
Figure 13.
Schematic of the error reduction process. The overall performance of the model improved after restricting the points with poor performance.
Figure 14.
of and with and without error reduction training for different numbers of sample points. (a) of . (b) of .
Figure 14.
of and with and without error reduction training for different numbers of sample points. (a) of . (b) of .
Figure 15.
Surrogate models with 7 (i = 1, 2, …, 7) selected performance variables trained in various configurations with different numbers of sample points N.
Figure 15.
Surrogate models with 7 (i = 1, 2, …, 7) selected performance variables trained in various configurations with different numbers of sample points N.
Figure 16.
Modification of the design variables at different step numbers.
Figure 16.
Modification of the design variables at different step numbers.
Figure 17.
Variation in the rotor operating characteristic curves after different steps for the series 1 agent. (a) Flow–pressure ratio. (b) Flow–efficiency.
Figure 17.
Variation in the rotor operating characteristic curves after different steps for the series 1 agent. (a) Flow–pressure ratio. (b) Flow–efficiency.
Figure 18.
Variations in the geometric parameter distributions in the spanwise direction after modification by series 1 agents: (a) meridional coordinate; (b) tangential direction; (c) inlet camber angle; (d) outlet camber angle; (e) incidence angle.
Figure 18.
Variations in the geometric parameter distributions in the spanwise direction after modification by series 1 agents: (a) meridional coordinate; (b) tangential direction; (c) inlet camber angle; (d) outlet camber angle; (e) incidence angle.
Figure 19.
Different geometries modified by the agents.
Figure 19.
Different geometries modified by the agents.
Figure 20.
The deviations of the local performance distributions in different spans: (a) pressure ratio; (b) efficiency; (c) absolute flow angle.
Figure 20.
The deviations of the local performance distributions in different spans: (a) pressure ratio; (b) efficiency; (c) absolute flow angle.
Figure 21.
Isentropic Mach number distribution through the chord line at 70% and 90% span. (a) 70% span. (b) 90% span.
Figure 21.
Isentropic Mach number distribution through the chord line at 70% and 90% span. (a) 70% span. (b) 90% span.
Figure 22.
Separation in the near-tip span region.
Figure 22.
Separation in the near-tip span region.
Figure 23.
The static pressure distributions in the near-tip region.
Figure 23.
The static pressure distributions in the near-tip region.
Figure 24.
Static pressure distributions through the chord line near and around the tip span. (a) 90% span. (b) 99.8% span.
Figure 24.
Static pressure distributions through the chord line near and around the tip span. (a) 90% span. (b) 99.8% span.
Figure 25.
Axial velocity distributions at the tip clearance span (99.8%).
Figure 25.
Axial velocity distributions at the tip clearance span (99.8%).
Figure 26.
Static pressure distributions in the tip clearance span region (99.8%).
Figure 26.
Static pressure distributions in the tip clearance span region (99.8%).
Figure 27.
Meridional velocity at 50% and 80% axial length.
Figure 27.
Meridional velocity at 50% and 80% axial length.
Figure 28.
The near-stall flow details; Vz and statistical pressure are plotted at the tip clearance span (99.8%).
Figure 28.
The near-stall flow details; Vz and statistical pressure are plotted at the tip clearance span (99.8%).
Figure 29.
Operation characteristic curves at 70% design speed. (a) Flow pressure ratio. (b) Flow efficiency.
Figure 29.
Operation characteristic curves at 70% design speed. (a) Flow pressure ratio. (b) Flow efficiency.
Figure 30.
Changes in R and when training series 2 agents. (a) Converge history of series 2. (b) Criteria history of series 2.
Figure 30.
Changes in R and when training series 2 agents. (a) Converge history of series 2. (b) Criteria history of series 2.
Figure 31.
The improvement with the modified algorithm.
Figure 31.
The improvement with the modified algorithm.
Figure 32.
Variations of the geometric parameter distributions in the spanwise direction after modification by series 2 agents: (a) meridional coordinate; (b) tangential direction; (c) inlet camber angle; (d) outlet camber angle; (e) incidence angle.
Figure 32.
Variations of the geometric parameter distributions in the spanwise direction after modification by series 2 agents: (a) meridional coordinate; (b) tangential direction; (c) inlet camber angle; (d) outlet camber angle; (e) incidence angle.
Figure 33.
Variation in the operating characteristic curves of rotors after different numbers of steps after modification by series 2 agents. (a) Flow pressure ratio. (b) Flow efficiency.
Figure 33.
Variation in the operating characteristic curves of rotors after different numbers of steps after modification by series 2 agents. (a) Flow pressure ratio. (b) Flow efficiency.
Figure 34.
Variation in the operating characteristic curves of the rotors after cooperation between series 1 and series 2 agents. (a) Flow pressure ratio. (b) Flow efficiency.
Figure 34.
Variation in the operating characteristic curves of the rotors after cooperation between series 1 and series 2 agents. (a) Flow pressure ratio. (b) Flow efficiency.
Table 1.
Definitions and ranges of the design variables.
Table 1.
Definitions and ranges of the design variables.
Variable | Definition | Ref | Min | Max | Variable | Definition | Ref | Min | Max |
---|
| at | 0 | −0.07 | 0.07 | | at | 0.050 | −0.05 | 0.15 |
| at | 0 | −0.14 | 0.14 | | at | −0.640 | −0.67 | −0.6 |
| at | 0 | −0.21 | 0.21 | | at | −0.052 | −0.08 | −0.02 |
| at | 0 | −0.03 | 0.03 | | at | −0.050 | −0.08 | −0.018 |
| at | 0 | −0.06 | 0.06 | | at | −0.149 | −0.18 | −0.12 |
| at | 0 | −0.09 | 0.09 | | at | 0.224 | 0.18 | 0.26 |
| at | 0.448 | 0.41 | 0.48 | | at | 0.656 | 0.6 | 0.7 |
| at | 0.123 | 0.1 | 0.15 | | at | 0.965 | 0.92 | 1 |
| at | 0.064 | −0.04 | 0.16 | | at | 1.099 | 1.05 | 1.15 |
Table 2.
Specification of rotor 67 [
19].
Table 2.
Specification of rotor 67 [
19].
Parameter | Value | Parameter | Value |
---|
Rotational speed (rpm) | 16,043 | Relative tip (Mach) | 1.3 |
Tip clearance (cm) | 0.101 | Mass flow rate (kg/s) | 33.25 |
Number of blades | 22 | Pressure ratio | 1.63 |
Table 3.
Performances of different models.
Table 3.
Performances of different models.
| | | | | | |
---|
| 0.886 | 0.011 | 377 | 5 | 30 | 1.7 |
| 0.968 | 0.005 | 377 | 5 | 10 | 1.7 |
| 0.938 | 0.001 | 377 | 5 | 30 | 1.7 |
| 0.942 | 0.004 | 377 | 5 | 10 | 1.5 |
| 0.987 | 0.003 | 377 | 0 | 10 | 1.5 |
| 0.965 | 0.001 | 377 | 5 | 10 | 1.5 |
| 0.920 | 0.005 | 377 | 5 | 30 | 1.5 |
Table 4.
Performances of modified rotors at different steps.
Table 4.
Performances of modified rotors at different steps.
Step Number | | | | |
---|
0 | 33.21 | 0.909 | 1.679 | 0 |
5 | 33.35 | 0.910 | 1.683 | 0.24% |
10 | 33.44 | 0.910 | 1.686 | 0.41% |
15 | 33.21 | 0.909 | 1.696 | 1.01% |
Table 5.
Parameter influence on agent convergence.
Table 5.
Parameter influence on agent convergence.
| Series | | | | | | | |
---|
| 1 | 9.57 | 0.72 | −0.31 | 0.82 | 1.13 | −0.068 | ~4000 |
| 2 | 27 | 0.90 | −0.18 | 1.01 | 1.19 | −0.050 | ~3500 |
| 3 | 38 | 0.90 | –0.23 | 0.94 | 1.17 | −0.050 | ~3000 |
4 | 150 | 0.24 | −2.91 | 0.95 | 3.86 | −0.050 | >14,000 |
| 5 | 500 | 1.00 | −0.56 | 1.04 | 1.60 | −0.050 | ~3000 |
| 6 | 1.00 | 0.10 | −0.14 | 1.12 | 1.26 | −0.050 | ~4000 |
Table 6.
Recommended values of parameters.
Table 6.
Recommended values of parameters.
Parameter | Description | Recommended Value |
---|
| Observed maximum | 1.0 |
| Observed minimum | −0.3 |
| Strength of constrains | −0.05 |
| Threshold of R | 70 |
| Threshold of | 0.25 |
Table 7.
Performance after modification by series 2 agents at different numbers of steps.
Table 7.
Performance after modification by series 2 agents at different numbers of steps.
Step Number | | | | |
---|
0 | 33.21 | 0.9088 | 1.679 | 0 |
5 | 33.74 | 0.9087 | 1.676 | –0.00% |
10 | 33.79 | 0.9106 | 1.675 | 0.20% |
15 | 33.78 | 0.9115 | 1.674 | 0.30% |
20 | 33.88 | 0.9125 | 1.666 | 0.41% |