Anti-Disturbance Gimbal Control via Adaptive Proportional-Integral-Resonant Controller and ESO for Control Moment Gyroscope with Vibration Isolator
Abstract
1. Introduction
- (1)
- The models of multiple disturbances are established and their frequency characteristics are analyzed. Multiple disturbances are categorized into fixed-period disturbances and slowly varying disturbances.
- (2)
- To improve the transient performance and mitigate phase lag of PIR, an adaptive proportional-integral-resonant (APIR) with phase compensation is designed. The resonant gain is kept small during the transient stage and large during the steady stage, thereby reducing overshoot and shortening the settling time.
- (3)
- To improve the overall performance of ESO, an adaptive extended state observer (AESO) is developed. It employs a high bandwidth during transients for fast response and a low bandwidth in steady state for improved steady-state accuracy. Finally, by integrating APIR and AESO, a composite anti-disturbance control method is proposed.
2. Mathematical Model and Problem Statement
2.1. Mathematical Model of Gimbal Servo System
2.2. Analysis of Multiple Disturbances
- (1)
- Disturbance due to Isolator
- (2)
- Rotor Imbalance Disturbance
- (3)
- Cogging Torque
- (4)
- Torque Ripples due to Flux Distortion
- (5)
- Friction Torque
- (1)
- Fixed-period disturbances, including rotor imbalance disturbance and disturbance due to isolator, which can be effectively attenuated by resonant controller.
- (2)
- Slowly varying disturbances, including cogging torque, torque ripples due to flux distortion, and friction torque, which can be effectively suppressed by ESO.
2.3. Problem Statement
3. PIR-ESO Controller
3.1. PIR Design
3.2. ESO Design
3.3. Stability Analysis
4. APIR-AESO Controller
4.1. APIR Design
- (1)
- A large resonant gain can introduce significant phase lag, leading to insufficient phase margin. Meanwhile, the speed measurement loop of the CMG gimbal motor, including a resolver, resolver to digital converter (RDC), and backward difference module, introduces additional phase lag and may even lead to system instability.
- (2)
- During the transient process, a large resonant gain reduces the system damping ratio. The decrease in damping deteriorates the transient performance, which is manifested as large overshoot and prolonged settling time.
- (1)
- The gain should be as small as possible during the transient process and as large as possible in steady state.
- (2)
- An upper limit on the gain should be imposed.
- (3)
- The gain transitions should be as smooth as possible.
4.2. AESO Design
- (1)
- In the transient state, when the motor speed error is large, the AESO bandwidth is increased to rapidly track disturbances.
- (2)
- In the steady state, when the motor speed error is small, the AESO bandwidth is reduced to prevent amplification of high-frequency noise, thereby improving the steady-state accuracy of the servo system.
- (3)
- An upper limit on the gain should be imposed and the bandwidth transitions should be as smooth as possible.
4.3. Parameter Tuning
- (1)
- The resonant bandwidth should be much smaller than the gain crossover frequency to avoid affecting the stability of the main control loop. And excessive bandwidth may amplify measurement noise and introduce additional phase lag.
- (2)
- The bandwidth should be large enough to cover the expected frequency variation range of the disturbance.
5. Simulation Results
5.1. Simulation Verification of AESO Performance
5.2. Simulation Verification of AESO Performance
5.3. Simulation Verification of APIR-AESO Performance
6. Experimental Results
6.1. Experimental Verification of APIR Performance
6.2. Experimental Verfication of AESO Performance
6.3. Experimental Verfication of APIR-AESO Performance
7. Conclusions
- (1)
- A dynamic model of the isolated CMG gimbal servo system is established, and multiple disturbances distributed over a wide frequency range are analyzed.
- (2)
- An APIR controller with phase compensation is proposed to suppress fixed-period disturbances, leading to improved transient performance compared with the conventional PIR controller.
- (3)
- An AESO is developed to suppress slowly varying disturbances, leading to enhanced dynamic performance and steady-state accuracy compared with the conventional ESO.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Loops | Parameters | Values |
|---|---|---|
| Motor | J | 0.68 kg·m2 |
| B | 0.004 Nms/rad | |
| 3.6 Nm/A | ||
| p | 6 | |
| L | 36 mH | |
| R | 4.8 Ω | |
| 0.4 Wb | ||
| Speed Measurement Loop | m | 10 |
| Ts | 1 × 10−4 s |
| Parameters | Values | Parameters | Values |
|---|---|---|---|
| 10 | 0.01 | ||
| 10 | 0.07 | ||
| 4000 | 110 Hz | ||
| 500 | 15 Hz | ||
| 2 | 150° | ||
| 51° |
| Controller | Overshoot | Settling Time | Maximum Error | RMS |
|---|---|---|---|---|
| PIR | 45% | 3.0 s | 0.45°/s | 0.14°/s |
| APIR | 21% | 2.1 s | 0.21°/s | 0.08°/s |
| Parameters | Values | Parameters | Values |
|---|---|---|---|
| 20 rad/s | 5 | ||
| 10 rad/s | 50 |
| Observer | Settling Time | Steady-State Accuracy | Comprehensive Index |
|---|---|---|---|
| High-Bandwidth ESO | 0.36 s | 6.2 × 10−4°/s | 2.23 × 10−4° |
| Low-Bandwidth ESO | 0.88 s | 2.2 × 10−4°/s | 1.96 × 10−4° |
| Medium-Bandwidth ESO | 0.52 s | 3.9 × 10−4°/s | 2.03 × 10−4° |
| AESO | 0.37 s | 4.0 × 10−4°/s | 1.48 × 10−4° |
| Controller | Overshoot | Settling Time | Maximum Error | RMS |
|---|---|---|---|---|
| PIR | 49% | 3.1 s | 0.49°/s | 0.18°/s |
| APIR | 22% | 2.3 s | 0.22°/s | 0.12°/s |
| Observer | Settling Time | Steady-State Accuracy | Comprehensive Index |
|---|---|---|---|
| High-Bandwidth ESO | 0.39 s | 4.6 × 10−3°/s | 1.79 × 10−3° |
| Low-Bandwidth ESO | 0.55 s | 2.4 × 10−3°/s | 1.32 × 10−3° |
| Medium-Bandwidth ESO | 0.42 s | 3.5 × 10−3°/s | 1.47 × 10−3° |
| AESO | 0.35 s | 3.3 × 10−3°/s | 1.15 × 10−3° |
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Li, S.; Wu, Z.; Zhu, B. Anti-Disturbance Gimbal Control via Adaptive Proportional-Integral-Resonant Controller and ESO for Control Moment Gyroscope with Vibration Isolator. Actuators 2026, 15, 215. https://doi.org/10.3390/act15040215
Li S, Wu Z, Zhu B. Anti-Disturbance Gimbal Control via Adaptive Proportional-Integral-Resonant Controller and ESO for Control Moment Gyroscope with Vibration Isolator. Actuators. 2026; 15(4):215. https://doi.org/10.3390/act15040215
Chicago/Turabian StyleLi, Shaobo, Zhong Wu, and Boxu Zhu. 2026. "Anti-Disturbance Gimbal Control via Adaptive Proportional-Integral-Resonant Controller and ESO for Control Moment Gyroscope with Vibration Isolator" Actuators 15, no. 4: 215. https://doi.org/10.3390/act15040215
APA StyleLi, S., Wu, Z., & Zhu, B. (2026). Anti-Disturbance Gimbal Control via Adaptive Proportional-Integral-Resonant Controller and ESO for Control Moment Gyroscope with Vibration Isolator. Actuators, 15(4), 215. https://doi.org/10.3390/act15040215

