Multi-Extremum Adaptive Fuzzy Network Method for Dynamic Reliability Estimation Method of Vectoring Exhaust Nozzle
Abstract
:1. Introduction
2. Theory and Methods
2.1. MEAFN Method
2.1.1. Fuzzy Neural Network
2.1.2. Adaptive Neuro-Fuzzy Inference System
2.1.3. The Mathematical Model of MEAFN Method
2.2. Reliability Analysis with MEAFN Method
- Step 1: Create a finite-element (FE) model of the objective structure and divide its mesh, and assign the boundary conditions, material properties, and loads within a time domain.
- Step 2: Extract the small batch random input variables by the MCM based on variable numerical characteristics, and perform the dynamic deterministic analysis of the objective structure based on the established FE model to compute the corresponding extreme outputs.
- Step 3: Take the random input variable x and the extreme output response of the flexible system as the input and the output of the ANFIS, respectively. Then, establish the multi-failure output response Y:
- Step 4: Divide the input and output samples from the FE analysis into two sets: training set and testing set, which are loaded in the ANFIS editor.
- Step 5: Initialize the parameters of the fuzzy inference system (FIS), including membership functions and generating rules.
- Step 6: Train the initialized FIS structure by the ANFIS function with the training samples, validate the derived model by the evalfis and plot function with testing samples, and optimize the membership function. Then, establish the MEAFN model.
- Step 7: Use the MEAFN model instead of the limit state function for reliability analysis. Extract a large number of random input variable samples and substitute them into the MEAFN model to compute the corresponding output responses, and then compare the output responses with the corresponding allowable values to calculate the reliability of the objective structure.
2.3. Thermal–Structural Coupling Analysis Theory
3. Dynamic Reliability Estimation of VEN
3.1. FE Modeling
3.2. Determination of Random Variables
3.3. Dynamic Deterministic Analysis
3.4. Validation of MEAFN
3.5. Comparison of Methods
4. Discussion
5. Conclusions
- (1)
- Through dynamic deterministic analysis of the VEN within the time domain based on thermal–structural coupling theory, the maximum deformation and maximum stress values of the expansion sheet and the triangular connecting rod were 18.802 mm, 413.9 Mpa, and 10.52 mm, 27.89 Mpa, respectively.
- (2)
- The multi-objective coupling failure mode probability of the deformation and stress of the expansion sheet and the triangular connecting rod is about 98.9% with the MEAFN under 103 simulations, which offers a reference for the reliability design of the VEN in engineering.
- (3)
- The MEAFN method is highly efficient and precise in the dynamic reliability analysis of the VEN. This is because the MEAFN combines the advantages of the MESM and the ANFIS. The extremum thought can handle the dynamic problem and reduce the workload of modeling, and the multi-surrogate model has strength in computing the reliability degree of the multi-failure modes in the MESM. As the basis function of the MESM model, the ANFIS is a combination of the adaptive neural network (ANN) and the fuzzy inference system (FIS), which inherits the interpretability of the FIS and the learning ability of the ANN to improve the efficiency and accuracy of the MEAFN.
- (4)
- The performance of the MEAFN is validated in a case study of the VEN. Compared with the other three methods, the results of dynamic reliability estimation with the MEAFN are almost consistent with those of the Monte Carlo method (MCM) under the same simulations, and are superior to other methods. With the increase in simulation times, the advantage of simulation efficiency of the MEAFN becomes more prominent. In particular, the MCM cannot perform 104 simulations due to the huge computational cost, while the MEAFN keeps the fast computation speed and is faster than the other methods.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Random Variables | Mean | Standard Deviation | Distribution |
---|---|---|---|
P/(Mpa) | 0.5 | 0.01 | Normal |
T/(K) | 873 | 26.29 | Normal |
ρ1/(kg·m−3) | 8570 | 292.7 | Normal |
ρ2/(kg·m−3) | 8240 | 287.1 | Normal |
E1/(Gpa) | 202 | 6.06 | Normal |
E2/(Gpa) | 205 | 6.15 | Normal |
Number of Samples | Reliability/% | ||
---|---|---|---|
MCM | ERSM | MEAFN | |
102 | 98 | 96 | 98 |
103 | 99.1 | 97.5 | 98.9 |
104 | — | 98.69 | 99.43 |
105 | — | — | 99.86 |
Number of Samples | Time/s | ||
---|---|---|---|
MCM | ERSM | MEAFN | |
102 | 8651 | 1.25 | 0.62 |
103 | 196,829 | 4.58 | 0.98 |
104 | — | 10.29 | 2.30 |
105 | — | — | 3.82 |
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Zhang, C.; Yuan, Z.; Li, H.; Wen, J.; Zheng, S.; Fei, C. Multi-Extremum Adaptive Fuzzy Network Method for Dynamic Reliability Estimation Method of Vectoring Exhaust Nozzle. Aerospace 2023, 10, 618. https://doi.org/10.3390/aerospace10070618
Zhang C, Yuan Z, Li H, Wen J, Zheng S, Fei C. Multi-Extremum Adaptive Fuzzy Network Method for Dynamic Reliability Estimation Method of Vectoring Exhaust Nozzle. Aerospace. 2023; 10(7):618. https://doi.org/10.3390/aerospace10070618
Chicago/Turabian StyleZhang, Chunyi, Zheshan Yuan, Huan Li, Jiongran Wen, Shengkai Zheng, and Chengwei Fei. 2023. "Multi-Extremum Adaptive Fuzzy Network Method for Dynamic Reliability Estimation Method of Vectoring Exhaust Nozzle" Aerospace 10, no. 7: 618. https://doi.org/10.3390/aerospace10070618
APA StyleZhang, C., Yuan, Z., Li, H., Wen, J., Zheng, S., & Fei, C. (2023). Multi-Extremum Adaptive Fuzzy Network Method for Dynamic Reliability Estimation Method of Vectoring Exhaust Nozzle. Aerospace, 10(7), 618. https://doi.org/10.3390/aerospace10070618