Submitted:
28 August 2025
Posted:
29 August 2025
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Abstract
Keywords:
1. Introduction
2. Prior Research Synthesis
- Treadmill-Based Stationary Systems
- Mobile Gait Training Devices
- Treadmill-Based Stationary Exoskeletons

- ALEX I offers seven DOFs, with linear actuators for hip and knee and force-field control [26].
- ALEX II improves bilateral actuation and introduces gravity compensation using feedforward-feedback control.
- Mobile Gait Rehabilitation Exoskeletons

- Intelligent and Hybrid Systems
- Systems for Spinal Cord Injury and Severe Impairments
- Control Strategies for Lower Limb Exoskeletons
| Method | Strengths | Limitations | Ref. |
|---|---|---|---|
| PD / PID | Simple, fast to implement | Poor robustness; sensitive tuning | [63] |
| Impedance / Admittance | Safe, compliant human–robot interaction | Requires accurate force sensing | [64,65] |
| Conventional SMC | Robust to uncertainties | Severe chattering | [66] |
| Adaptive Control | Robust to uncertainties and parameter variation | Require extensive computation | [67] |
| Adaptive SMC | Smooth torque; robust trajectory tracking | Algorithmic complexity | [68] |
| Fuzzy / Neural Hybrid SMC | Handles nonlinearities and uncertainties | Higher computational load | [69] |
| Reinforcement Learning (RL) | Learns personalized control policies | Data-intensive; training stability | [70] |
| Prescribed Performance Control | Guarantees bounded error | Limited flexibility | [71] |
| SEA + Continuous SMC | Reduces chattering; improves compliance | Complex actuator design | [72] |
| Data-Driven Predictive Control | Payload-robust; adaptive to variability | High computation demand | [73] |
| EMG-driven Adaptive Control | Intention-driven; promotes active therapy | Signal noise; electrode issues | [74] |
- Adaptive Sliding Mode Control (ASMC)
3. Biomechanical Modeling
3.1. Overall System Architecture

Base Platform and Support Structure

Hip Flexion/Extension Mechanism


Hip Internal/External Rotation Mechanism
- A fixed base link (mounted to the hip segment),
- An input link (connected to the motor shaft),
- A pair of parallel coupler links,
- And an output plate (which transmits the rotation to the knee-ankle section).

Knee Flexion/Extension Mechanism


Ankle Flexion/Extension Mechanism

3.2. Actuation System
3.3. Sensor Integration
3.4. Safety and Comfort Considerations
4. Dynamic Modeling of a Lower Extremity Exoskeleton Robot for Rehabilitation
4.1. Anatomically Informed Design Considerations
Joint Range of Motion
| Joint | Motion | Range of Motion (°) | Description |
|---|---|---|---|
| Hip |
Flexion | 0° to 20° | Forward movement of the thigh (sagittal). |
| Extension | 0° to 45° | Backward movement of the thigh (sagittal). | |
| Internal Rotation | Up to 20° | Axial rotation of the thigh toward the midline. | |
| External Rotation | Up to 30° | Axial rotation of the thigh away from the midline. | |
| Knee |
Flexion | Up to 90° | Bending of the knee. |
| Extension | 0° (full extension) | Straightening of the knee to neutral. | |
| Ankle |
Dorsiflexion (Flexion) | Up to 30° | Foot moves toward the tibia. |
| Plantarflexion (Extension) | Up to 45° | Foot moves away from the tibia. |
Anthropometric Parameters
| Segment | Length (% of Body Height) |
Mass (% of Body Weight) |
Location of Center of Mass |
|---|---|---|---|
| Thigh | 24% | 10-12% | 43% from proximal end |
| Shank | 26% | 4-5% | 43% from proximal end |
| Foot | 15% | 1.5-2% | 50% from proximal end |
Anthropometric Parameters Estimation:
- Minimum mass and minimum length
- Minimum mass and maximum length
- Maximum mass and minimum length
- Maximum mass and maximum length
The Inertia Tensor
4.2. Kinematic Modeling

4.3. Dynamic Modeling
4.4. Friction Modeling
- Coulomb friction: Based on the Coulomb friction model, the friction torque is a constant quantity at any time.
- Viscous friction: Produces resistive torque proportional to the relative velocity between the contact surfaces.
- Stribeck friction (: The Stribeck effect models negatively sloped characteristics at low velocities.
5. Advanced Sliding Mode Controller for Exoskeleton Robotics
Sliding Surface
Design a Discontinuous Control Law
Change in Sliding Surface Magnitude
Adaptive Gain Update
Boundary Layer Saturation Function
Control Law
Summary (for all Joints)
Control Law
Adaptive Gain Effect
Stability Conclusion
6. Simulation Results and Analysis
- Conventional Sliding Mode Control (SMC) with sequential joint actuation
- Conventional SMC with simultaneous joint actuation
- Adaptive SMC with chattering suppressor during simultaneous actuation, and
- Adaptive SMC with chattering suppressor during sequential actuation.
6.1. Conventional SMC – Sequential Joint Movements



| Joint Number | Peak force/torque | Average force/torque |
|---|---|---|
| Joint 1 | N | |
| Joint 2 | ||
| Joint 3 | ||
| Joint 4 | ||
| Joint 5 |
6.2. Conventional SMC – Simultaneous Joint Movements



6.3. Adaptive SMC with Chattering Suppressor – Simultaneous Joint Movements





6.4. Adaptive SMC with Chattering Suppressor – Sequential Joint Movements





7. Discussion and Future Recommendations
8. Conclusion
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| System Type | Key Features | Control Strategy | Actuation | Use Case |
|---|---|---|---|---|
| Lokomat | Treadmill, harness | Force-position | Motorized (hip, knee) | Stroke, SCI [18,50,51] |
| LOPES | Pelvic DOF, impedance | Impedance w/ SEA | Bowden cable | Post-stroke gait [24,25,52] |
| ALEX Series | Multigen upgrades | Force-field + Feedback | Linear actuators | Gait research [26,27,28,53] |
| HAL | Active/passive, sEMG | Intention-based | Harmonic drives | Rehabilitation [35,36,54,55,56] |
| Vanderbilt | Multimodal, voice cmd | Trajectory replay | Brushless motors | SCI, stroke [39,57] |
| MINA | Modular, SEA | Prescribed gait | SEA | SCI, training [58] |
| XoR | Hybrid (pneumatic + electric) | Biomechanical estimation | Mixed | Elderly posture [59] |
| WPAL | Compliance control | Dynamic model | Motorized | Paralysis [41] |
| MindWalker | XCoM stability | Recorded gait + commands | SEA | SCI [42] |
| Ortholeg | Eye-controlled | Predefined motion | Motorized | SCI [60,61] |
| WWH | Gravity assist | Torque estimation | Motorized | Elderly, impaired [48,49,62] |
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