Neural Network-Based Active Fault-Tolerant Control Design for Unmanned Helicopter with Additive Faults
Abstract
:1. Introduction
- (1)
- Introducing a novel design to detect and isolate possible faults and false data injected attacks in a nonlinear six DoF model of the helicopter’s navigation sensors.
- (2)
- Designing a new AFTC system based on a three-loop NDI to compensate for the occurred faults/false data in real time.
- (3)
- Using six DoF models to design the FDI and AFTC system, which makes the controller performance robust against nonlinearities and uncertainties in simplified and linear models.
2. Helicopter Nonlinear Dynamic Model
3. Neural Network, EKF Adaptive Approach
3.1. Neural Network Adaptive Structure
3.2. EKF and Neural Network Weight Update
3.3. Fault Detection and Diagnostic Design for Actuator
4. Active Fault Tolerant Control Strategy
4.1. First Feedback Controller: Nonlinear Dynamic Inversion
4.1.1. Inner Control Loop
4.1.2. Outer Control Loop
4.2. Adaptive Fault Compensator Design
5. Implementation of the Proposed Method on Helicopter
5.1. Faults Description
5.1.1. Abrupt Faults
5.1.2. Incipient Faults
5.1.3. Intermittent Faults
5.2. Numerical Simulation
- (1)
- The helicopter blade is twisted along the length of the blade due to the unbalanced lift compensation.
- (2)
- The helicopter rotors are assumed as teetering rotors. This means the blades flap without any curve.
- (3)
- Since the wind speed is presumed to be zero and the air density is constant, there is no external force on the helicopter body.
- (4)
- Table 2 shows the used parameters for the rotor aerodynamics in the helicopter model simulation.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Parameter | Description |
---|---|
Roll, pitch, and yaw rates [rad/s] | |
Roll, pitch, and yaw angles [rad] | |
Lateral, and longitudinal flapping angle [rad] | |
O, J, K | Rolling, pitching, and yawing moments [rad] |
n | Blade lock number |
m | Rotational speed of rotor |
v | Remote controller commands vector |
Lateral cyclic inputs [rad] | |
Longitudinal cyclic inputs [rad] | |
Pedal collective inputs of tail rotor [rad] | |
Collective inputs of tail rotor [rad] | |
, , | Lateral moment to |
, , | Longitudinal moment to |
, , | Pedal collective moment to |
, , | Initial momentum values |
Moments of inertia [kg.m] | |
moment of inertia around plane |
Parameter | Value | Parameter | Value | Parameter | Value |
---|---|---|---|---|---|
39.51 | −8.54 | 0.0013 | |||
8.54 | 39.51 | 0.0013 | |||
0.73 | −0.064 | −9.24 | |||
0.044 | −0.47 | 0.73 |
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Mokhtari, S.; Abbaspour, A.; Yen, K.K.; Sargolzaei, A. Neural Network-Based Active Fault-Tolerant Control Design for Unmanned Helicopter with Additive Faults. Remote Sens. 2021, 13, 2396. https://doi.org/10.3390/rs13122396
Mokhtari S, Abbaspour A, Yen KK, Sargolzaei A. Neural Network-Based Active Fault-Tolerant Control Design for Unmanned Helicopter with Additive Faults. Remote Sensing. 2021; 13(12):2396. https://doi.org/10.3390/rs13122396
Chicago/Turabian StyleMokhtari, Sohrab, Alireza Abbaspour, Kang K. Yen, and Arman Sargolzaei. 2021. "Neural Network-Based Active Fault-Tolerant Control Design for Unmanned Helicopter with Additive Faults" Remote Sensing 13, no. 12: 2396. https://doi.org/10.3390/rs13122396
APA StyleMokhtari, S., Abbaspour, A., Yen, K. K., & Sargolzaei, A. (2021). Neural Network-Based Active Fault-Tolerant Control Design for Unmanned Helicopter with Additive Faults. Remote Sensing, 13(12), 2396. https://doi.org/10.3390/rs13122396