Efficient Driving Plan and Validation of Aircraft NLG Emergency Extension System via Mixture of Reliability Models and Test Bench
Abstract
:1. Introduction
2. Reliability Modeling of NLG EmergencyExtension
2.1. Working Principle of Emergency Extension
2.2. Fault Tree Analysis of Emergency Extension
- 1
- Excessive resistance torque on strut rotation axis (denoted by X1). The aerodynamic force of the landing gear door is too large for the driving mechanism to overcome the passive torque by the active torque of shock absorber strut, so that the landing gear cannot be lowered and locked.
- 2
- Imprecise extension of landing gear (denoted by X2). The landing gear cannot be lowered to a predetermined position owing to the motion accuracy of the mechanism.
- 3
- Unlocked upper-lock. The upper-lock is unlocked (denoted by X3).
- 4
- The lower-lock is not locked (denoted by X4).
- 5
- Static strength failure of landing gear emergency extension (denoted by X5).
2.3. Reliability Method and Mixture of Models
3. Reliability Sensitivity Analysis of Emergence Extension
3.1. Reliability Analysis
3.1.1. Starting Reliability Analysis of Emergency Extension
3.1.2. Reliability Analysisof Emergency Extension Based on Fault Tree
3.2. Sensitivity Analysis
3.2.1. Sensitivity Analysis of Torques
3.2.2. Effect of Main Torque on Failure Probability of Emergency Extension
4. Proposal and Validation of New Driving Mechanism Plan
- (1)
- The point of intersection between the main structure and mechanism of NLG keeps invariability.
- (2)
- The main force-transferring path of the forward door structure is unchanged.
- (3)
- The mechanism has strong capacity forresisting forward door load.
5. Conclusions
- 1
- Through the reliability analysis of emergence extension, it is illustrated that the start reliability has the most failure probability in five reliability modes (starting reliability, continuous movement reliability, movement precision reliability, and static strength reliability), indicating that the event X1 (excessive resistance torque on strut rotation axis) seriously influences the reliability of NLG emergence extension.
- 2
- From the sensitivity analysis of NLG emergence extension, the effect levels of nine torques (M1, M2, …, M9, explained in Table 2) on the failure probability of NLG emergence extension are determined, and the sensitivity degrees of the torques M5, M8 and M7 are the top three by the order by sensitivity degree for nine torques. The conclusion is promising guidance for the driving plan design of NLG emergence extension.
- 3
- Two driving plans of NLG emergence extension are designed in this paper. One is to adjust the damping coefficients of the actuating cylinder, and the other is to the aerodynamics of forward door. Through the comparison and validation of the two plans, the second driving plan is acceptable, because this plan can reduce the adverse torque of emergence extension by about 24.8%, increase the transmission ratio of the driving mechanism, and address the emergence extension fault problem and reliably realize the emergence extension of aircraft NLG besides the normal extension system. The proposed new driving mechanism is illustrated to be a promising feasible driving plan with high reliability. The developed driving mechanism is promising in the application of civil and military aircrafts, which supports the safety and airworthiness in flight.
Author Contributions
Funding
Conflicts of Interest
References
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Symbol | Meaning |
---|---|
M1 | Torque on strut rotation axis produced by the gravity of NLG |
M2 | Torque on strut rotation axis produced by the gravity of door |
M3 | Torque on strut rotation axis produced by the aerodynamic force of strut and wheel |
M4 | Torque on strut rotation axis produced by the spring force of locking mechanism |
M5 | Torque on strut rotation axis produced by damping force |
M6 | Torque on strut rotation axis produced by friction |
M7 | Torque on strut rotation axis produced by after-door aerodynamic force |
M8 | Torque on strut rotation axis produced by forward-door aerodynamic force |
M9 | Torque on strut rotation axis produced by the unlocking force of upper-lock |
MT | Total torque |
No. | Bottom Events | Reliability Models | Safe Boundary Equation | Reliability Index | Distribution |
---|---|---|---|---|---|
1 | Excess passive torque X1 | Starting reliability M | Normal | ||
Continuous movement reliability Mω | Normal | ||||
2 | Imprecise lowing X2 | Movement precisionReliability θ0 | Normal | ||
3 | Unlocked upper-lock X3 | ||||
4 | Failed locked lower-lock X4 | ||||
5 | Static strength failure X5 | Static strengthreliability | Normal |
Torques | M1 | M2 | M3 | M4 | M5 | M6 | M7 | M8 | M9 |
---|---|---|---|---|---|---|---|---|---|
Variable coefficient Ci | 0.03 | 0.03 | 0.08 | 0.03 | 0.03 | 0.03 | 0.08 | 0.08 | 0.03 |
Failure Probability | Flight Speed | |||
---|---|---|---|---|
270 Kts | 250 Kts | 220 Kts | 180 Kts | |
PX1 | 1.2728 × 10−5 | 2.2401 × 10−5 | 4.0683 × 10−5 | 6.1819 × 10−5 |
PX2 | 5.7905 × 10−8 | |||
PX3 | 5.7026 × 10−8 | |||
PX4 | 5.7026 × 10−8 | |||
PX5 | 4.2655 × 10−6 | |||
PT1 | 1.7165 × 10−5 | 2.6838 × 10−5 | 4.5120 × 10−5 | 6.6256 × 10−5 |
Driving Mechanisms | Flight Speed /Kts | Lowering Time of NLG/s | |
---|---|---|---|
Emergency Extension | Normal Extension | ||
Initial driving mechanism | 270 | Failed lowering and lock | 10.69 |
250 | Failed lowering and lock | 10.81 | |
220 | Failed lowering and lock | 11.02 | |
180 | Failed lowering and lock | 11.38 | |
New driving mechanism | 270 | 14.66 | 11.09 |
250 | 15.24 | 11.25 | |
220 | 15.95 | 11.28 | |
180 | 17.17 | 11.61 |
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Zhu, Z.; Feng, Y.; Lu, C.; Fei, C. Efficient Driving Plan and Validation of Aircraft NLG Emergency Extension System via Mixture of Reliability Models and Test Bench. Appl. Sci. 2019, 9, 3578. https://doi.org/10.3390/app9173578
Zhu Z, Feng Y, Lu C, Fei C. Efficient Driving Plan and Validation of Aircraft NLG Emergency Extension System via Mixture of Reliability Models and Test Bench. Applied Sciences. 2019; 9(17):3578. https://doi.org/10.3390/app9173578
Chicago/Turabian StyleZhu, Zhengzheng, Yunwen Feng, Cheng Lu, and Chengwei Fei. 2019. "Efficient Driving Plan and Validation of Aircraft NLG Emergency Extension System via Mixture of Reliability Models and Test Bench" Applied Sciences 9, no. 17: 3578. https://doi.org/10.3390/app9173578
APA StyleZhu, Z., Feng, Y., Lu, C., & Fei, C. (2019). Efficient Driving Plan and Validation of Aircraft NLG Emergency Extension System via Mixture of Reliability Models and Test Bench. Applied Sciences, 9(17), 3578. https://doi.org/10.3390/app9173578