A Novel Fixed-Time Super-Twisting Control with I&I Disturbance Observer for Uncertain Manipulators
Abstract
1. Introduction
- (1)
- The conventional super-twisting control algorithm ensures finite-time convergence; however, the maximum convergence time depends on the initial states and control parameters, making it uncontrollable and unpredictable. Although Tran et al. [25] proposed a fixed-time super-twisting algorithm whose upper bound of convergence time depends only on control parameters, this method is applicable only to single-input single-output (SISO) systems and cannot be directly extended to multi-input multi-output (MIMO) cases.
- (2)
- Fuzzy logic, neural network, and adaptive control approaches are commonly employed to estimate composite disturbances in complex control systems. However, these methods often suffer from non-vanishing estimation errors, that is, the estimation error of composite disturbances does not asymptotically converge to zero.
- (3)
- The majority of existing sliding mode surfaces exhibit asymptotic or finite-time convergence characteristics, lacking fixed-time convergence properties. Sliding mode controllers designed under the fixed-time convergence framework typically ensure that only the sliding surface reaches zero within a fixed time, without guaranteeing that the tracking error confined to the surface also converges to zero within the same fixed time. Consequently, the system tracking error cannot be guaranteed to vanish absolutely within a fixed time.
- (1)
- The fixed-time super-twisting algorithm for single-input single-output (SISO) systems described in [25] is extended to multi-input multi-output (MIMO) systems using a fixed-time convergence approach. A fixed-time adaptive super-twisting sliding mode controller is developed for the MIMO robotic arm dynamic system with parameter perturbations. The proposed controller enables the end-effector to achieve fast and accurate trajectory tracking under complex operating conditions while effectively suppressing high-frequency chattering.
- (2)
- An Immersion and Invariance (I&I) disturbance observer is designed to estimate external composite disturbances with minimal estimation error. The observer features a simple structure and guarantees exponential convergence of the estimation error to zero, thereby overcoming the non-convergence issues of conventional composite disturbance estimators and mitigating the impact of external disturbances on trajectory tracking accuracy.
- (3)
- A sliding mode surface with fixed-time convergence characteristics is constructed, ensuring that tracking errors on the surface converge to zero within a fixed time. Consequently, the trajectory tracking error of the overall system achieves global fixed-time convergence, further enhancing the precision and robustness of the control performance.
2. Problem Formulation and Model Description
- (1)
- Disturbances satisfy , where
- (2)
- Let , . There exists a positive definite matrix and any positive number , such that the symmetric positive definite matrix satisfies
3. Design of the Fixed-Time Super-Twisting Sliding Mode Controller
4. Stability Analysis
5. Numerical Simulation Analysis
5.1. Control and Simulation Parameters
5.2. Effectiveness Analysis
5.3. Comparative Analysis of Different Controllers
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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| Symbol | Description | Value | Unit |
|---|---|---|---|
| Mass of manipulator | 10 | kg | |
| Mass of manipulator | 5 | kg | |
| I1 | moment of inertia | 0.83 | kg·m2 |
| I2 | moment of inertia | 0.83 | kg·m2 |
| l1 | joint length | 1 | m |
| l2 | joint length | 0.5 | m |
| lc1 | joint length | 0.5 | m |
| lc2 | joint length | 0.25 | m |
| g | gravitational acceleration | 9.81 | kg·m2 |
| Mass perturbation | kg | ||
| Mass perturbation | kg | ||
| Inertia moment perturbation | kg·m2 | ||
| Inertia moment perturbation | kg·m2 | ||
| d1(t) | External disturbance | 3sin(0.1 t) | N·m |
| d2(t) | External disturbance | (1-exp(−0.1 t)) | N·m |
| Category | Symbol | Value |
|---|---|---|
| I&I disturbance observer | 10 | |
| Sliding mode surface | 5 | |
| 5 | ||
| 5 | ||
| 3 | ||
| 5 | ||
| 3 | ||
| Super-twisting sliding mode control | ||
| 0.5 | ||
| 1 | ||
| 1 | ||
| 0.7 | ||
| 1.6 |
| Angle Convergence Time | Angle Tracking Accuracy | Total Energy Consumption | ||||
|---|---|---|---|---|---|---|
| e1 | e2 | e1 | e2 | u1 | u2 | |
| FixTC | 0.42 s | 0.40 s | ||||
| PID | 0.44 s | 0.55 s | ||||
| Finite TC | 0.55 s | 0.43 s | ||||
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Share and Cite
Xu, L.; Zhang, J.; Yin, C.; Dai, R. A Novel Fixed-Time Super-Twisting Control with I&I Disturbance Observer for Uncertain Manipulators. Sensors 2025, 25, 6723. https://doi.org/10.3390/s25216723
Xu L, Zhang J, Yin C, Dai R. A Novel Fixed-Time Super-Twisting Control with I&I Disturbance Observer for Uncertain Manipulators. Sensors. 2025; 25(21):6723. https://doi.org/10.3390/s25216723
Chicago/Turabian StyleXu, Lin, Jiahao Zhang, Chunwu Yin, and Rui Dai. 2025. "A Novel Fixed-Time Super-Twisting Control with I&I Disturbance Observer for Uncertain Manipulators" Sensors 25, no. 21: 6723. https://doi.org/10.3390/s25216723
APA StyleXu, L., Zhang, J., Yin, C., & Dai, R. (2025). A Novel Fixed-Time Super-Twisting Control with I&I Disturbance Observer for Uncertain Manipulators. Sensors, 25(21), 6723. https://doi.org/10.3390/s25216723

