Nonlinear Intelligent Control of Two Link Robot Arm by Considering Human Voluntary Components
Abstract
:1. Introduction
2. Mathematical Preparation
2.1. Lagrange’s Equation of Motion
2.1.1. Generalized Coordinates and Nonholonomic Constraints
2.1.2. Hamilton’s Principle
2.1.3. Lagrange’s Equation of Motion
- Select a complete and independent generalized coordinate system.
- Identify non-conservative generalization forces.
- Find the kinetic energy and potential energy to construct the Lagrangian.
- Substitute Lagrangian into Lagrange’s equation of motion and write down the equation of motion concretely.
2.2. Support Vector Regression
2.2.1. Derivation of Regression Function
2.2.2. Kernel Function
3. Problem Setup
3.1. Human Arm Multi-Joint Viscoelasticity
3.2. Robot Arm
3.2.1. Experimental Device
3.2.2. Mechanics Modeling
3.2.3. Hardware Configuration
3.2.4. Problem Setup
- Elucidation of the motor control principle of the brain that controls complex multi-joint movements,
- Quantitative understanding of motor deterioration caused by nerve and muscle disorders,
- It is considered to be an important factor in the development of human-friendly mechanical interfaces, and many studies have been conducted up to now.
4. Control System Design
4.1. Controller Design Based on Multi-Joint Viscoelasticity
4.2. Feedforward Controller Design Based on SVR
4.3. Control System Design Based on Operator Theory
4.3.1. Elimination of Uncertainty and Interference
4.3.2. Guarantee of Stability
5. Experiment
5.1. Experimental Conditions
5.2. Selection of Hyperparameters of SVR
5.3. Experimental Results
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Link1 density | [kg/m] | |
Link2 density | [kg/m] | |
Link1 length | [m] | |
Link2 length | [m] | |
Link1 cross-sectional area | [m] | |
Link2 cross-sectional area | [m] | |
Moment of inertia of rotor | [kg/m] | |
Moment of inertia of set collar | [kg/m] | |
Moment of inertia of rotor | [kg/m] | |
Torque applied to Link1 | [N·m] | |
Torque applied to Link1 | [N·m] |
Link1 density | 8030 kg/m | |
Link2 density | 8030 kg/m | |
Link1 length | 0.2 m | |
Link2 length | 0.2 m | |
Link1 cross-sectional area | 127.5 mm | |
Link2 cross-sectional area | 25 mm | |
Moment of inertia of rotor | 7.33 × 10 kg·m | |
Moment of inertia of set collar | 8.71 × 10 kg·m | |
Moment of inertia of rotor | 1.08 × 10 kg·m | |
Flexural rigidity of the arm | 359 N·m | |
Attenuation coefficient | 1.88 × 10 | |
B | Viscous friction coefficient | 2.1 × 10 N·s/m |
Torque constant of motor 1 | 0.38 N·m/A | |
Torque constant of motor 2 | 0.0234 N·m/A |
The Value of c | RMSE (Link 1) | RMSE (Link 2) |
---|---|---|
100 | ||
10 | ||
7 | ||
1 | ||
FF Controller | RMSE (Link 1) | RMSE (Link 2) |
---|---|---|
None | ||
Mechanical model | ||
SVR |
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Deng, M.; Kubota, S.; Xu, Y. Nonlinear Intelligent Control of Two Link Robot Arm by Considering Human Voluntary Components. Sensors 2022, 22, 1424. https://doi.org/10.3390/s22041424
Deng M, Kubota S, Xu Y. Nonlinear Intelligent Control of Two Link Robot Arm by Considering Human Voluntary Components. Sensors. 2022; 22(4):1424. https://doi.org/10.3390/s22041424
Chicago/Turabian StyleDeng, Mingcong, Shotaro Kubota, and Yuanhong Xu. 2022. "Nonlinear Intelligent Control of Two Link Robot Arm by Considering Human Voluntary Components" Sensors 22, no. 4: 1424. https://doi.org/10.3390/s22041424
APA StyleDeng, M., Kubota, S., & Xu, Y. (2022). Nonlinear Intelligent Control of Two Link Robot Arm by Considering Human Voluntary Components. Sensors, 22(4), 1424. https://doi.org/10.3390/s22041424