A New Single-Leg Lower-Limb Rehabilitation Robot: Design, Analysis and Experimental Evaluation
Abstract
:1. Introduction
2. Materials and Methods
2.1. Mechanical Design
2.1.1. Lifting Mechanism and Hip Joint Assembly Design
2.1.2. Exoskeleton Mechanical Leg Structural Design
2.1.3. Limit Block and Limit Chute Design
2.2. Sensor and Control System Design
3. Trajectory Planning and Control Strategy
3.1. Kinematic Analysis
3.2. Rehabilitation Robot Training Trajectory Planning
3.3. Active Training Control System Design
3.4. Evaluation of Active Participation Based on Physiological Signals
4. System Verification and Performance Analysis
5. Conclusions and Future Work
- (1)
- For the S-LLRR, the end position of the mechanical leg was calculated first, then the trajectory planning based on CPM training mode was carried out and the curves of the rotation angle, angular velocity, and angular acceleration of the hip joint and knee joint were simulated. Through the above analysis, the rationality of mechanism design and trajectory planning was proven.
- (2)
- The workspace of S-LLRR was simulated and analyzed, proving that it could meet the training needs of patients. The prototype system was built, and the end-track tracking of the experiment showed that the fluctuation along the Y-axis is all within the range of 137.5–141 mm and error was less than 2 mm compared with the preset value, proving that S-LLRR achieved relatively high motion accuracy.
- (3)
- The patient fatigue test was carried out using the evaluation model of active participation based on physiological signals, and the accuracy rate of fatigue prediction reached 85%, which proved that the evaluation model of active participation has a high accuracy rate. It can be used as an evaluation standard for the rehabilitation performance of S-LLRR active training, and as a basis for medical students to formulate training plans for patients.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Features | S-LLRR | Lokomat | Physiotherabot | LR2 | HE-LRR |
---|---|---|---|---|---|
Type | Exoskeleton | Exoskeleton | Exoskeleton | Terminal traction | Terminal traction |
Size | Moderate | Large | Large | Moderate | Moderate |
Single leg/Double legs | Single | Double | Double | Single | Double |
Leg length adjustment method | By motor | By hand | By hand | × | × |
Posture | Sitting and lying | Standing | Sitting | Lying | Sitting and lying |
Usage patterns | Combined with vehicle | Fixed position | Fixed seat | Combined with vehicle | Combined with vehicle |
Manufacturing cost | Lower | Higher | Higher | Lower | Lower |
Mobility | Easy | Harder | Harder | Easy | Easy |
Features | Equations |
---|---|
SDNN | |
RMSSD | |
iEMG | |
RMS |
Unit | Length/mm | The Range of Joint Variables in Sitting Posture/° | The Range of Joint Variables in Lying Posture/° |
---|---|---|---|
thigh | 360~460 | 0~60 | 0~125 |
calf | 320~420 | −140~0 | −140~0 |
ankle-foot | 100 | −30~45 | −30~45 |
No. | Sexuality | Height/cm | Thigh Length/mm | Calf Length/mm | Weight/kg |
---|---|---|---|---|---|
1 | male | 170 | 460 | 425 | 68 |
2 | male | 189 | 530 | 500 | 65 |
3 | female | 156 | 410 | 350 | 48 |
Object | Position | RF Channel | Sampling Rate | Magnification |
---|---|---|---|---|
sEMG | quadriceps | 2.44 GHz | 2048 Hz | 2000 |
ECG | ear lobe | 2.44 GHz | 512 Hz | 2000 |
EDA | toe | 2.44 GHz | 64 Hz | 2000 |
RESP | abdomen | 2.44 GHz | 64 Hz | 2000 |
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Yu, H.; Zheng, S.; Wu, J.; Sun, L.; Chen, Y.; Zhang, S.; Qin, Z. A New Single-Leg Lower-Limb Rehabilitation Robot: Design, Analysis and Experimental Evaluation. Machines 2023, 11, 447. https://doi.org/10.3390/machines11040447
Yu H, Zheng S, Wu J, Sun L, Chen Y, Zhang S, Qin Z. A New Single-Leg Lower-Limb Rehabilitation Robot: Design, Analysis and Experimental Evaluation. Machines. 2023; 11(4):447. https://doi.org/10.3390/machines11040447
Chicago/Turabian StyleYu, Hongfei, Siyuan Zheng, Jiantao Wu, Li Sun, Yongliang Chen, Shuo Zhang, and Zhongzhi Qin. 2023. "A New Single-Leg Lower-Limb Rehabilitation Robot: Design, Analysis and Experimental Evaluation" Machines 11, no. 4: 447. https://doi.org/10.3390/machines11040447
APA StyleYu, H., Zheng, S., Wu, J., Sun, L., Chen, Y., Zhang, S., & Qin, Z. (2023). A New Single-Leg Lower-Limb Rehabilitation Robot: Design, Analysis and Experimental Evaluation. Machines, 11(4), 447. https://doi.org/10.3390/machines11040447