Shared Control of an Electric Wheelchair Considering Physical Functions and Driving Motivation
Abstract
:1. Introduction
2. Related Works
3. System Requirements Based on Target User
3.1. Operating Characteristics of Individuals with Severe Physical Impairments
- Limited input range. Individuals with extremely weak physical functions usually lack appropriate input devices. Although some devices have been developed with their physical functions in mind, during the development of their input devices, the user’s physical functions continue diminishing; thus, they cannot properly operate the designed devices after development.
- Delayed or advanced input signals. For individuals with the problems discussed above, their input only intuitively represents the intention of the subjects, although driving an EW in real environments corresponds to complicated behavior. More accurate and frequent input is necessary, especially for situations where fine steering skills are required, which is almost impossible for them.
3.2. Driving Environment Settings
3.3. System Requirements
- The system should assist users in reaching their destination.
- The complete driving process should be safe.
- The complete driving process should be comfortable.
- The system should gradually adapt to different users.
- The system should gradually adapt to different environments.
- The system should completely utilize the residual physical functions of individuals with disabilities.
- The system should consider the driving motivation of users.
4. Construction of the Shared Control System
4.1. Modeling an EW
- The slip between the wheels and the road can be neglected.
- The EW will not move in the pitch direction, which means that the casters will not leave the road.
4.2. Concept of the Shared Control System
4.3. Framework of the Shared Control System
5. Online Learning System Design for the Shared Control System
5.1. Definition of Reinforcement Learning
5.2. Reinforcement Learning for the Shared Control System to Determine the Control Weights
5.3. Reward Design for the Shared Control System
5.3.1. Driving Characteristics Investigation
5.3.2. Reward Design for the Shared Control System
5.4. States and Action Sets Design for the Shared Control System
5.5. Sarsa Learning Based Shared Control Algorithm
- Q (s,a) for each state only changes to a certain value.
- The rank Q (s,a) for each state only changes to a certain value.
- The latest trajectory does not include new states.
- Consecutive successes of the above condition.
- The number of training trials exceeds a certain number.
6. Experiments: System Effectiveness and User-Machine Interactions
6.1. Experimental Setup
6.2. Experimental Method
- The control is easy.
- The control requires concentration.
- The control causes physical fatigue.
- The training duration is long.
- The EW is controlled by the user.
- The control is mostly satisfactory.
6.3. Experimental Results
6.3.1. Objective Results
6.3.2. Subjective Results
6.4. Discussion
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Parameters | Meaning of the Parameters |
---|---|
Angular velocity of the right (left) wheel | |
Radius of the rear wheels | |
Width of the EW | |
Velocity of the straight (yaw) motion | |
Position in world coordinate system | |
COG | Center of gravity |
COR | Center of rotation |
Cost Items | Calculating Method |
---|---|
Approaching the goal | |
Safety | |
Magnitude of the input | |
Input change | |
Forward/backward change | |
Backward |
Algorithm: Sarsa Learning-Based Shared Control Algorithm |
---|
1. calculated by reward function |
2. Recursively compute until the stop condition is met |
3. Recursively compute until reaching the goal |
4. Obtain current state |
5. Decide action by Sarsa learning |
6. Send to the system, calculate output |
7. Send output to the EW |
8. Calculate the next state |
9. Update the Q-table, Load |
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Xi, L.; Shino, M. Shared Control of an Electric Wheelchair Considering Physical Functions and Driving Motivation. Int. J. Environ. Res. Public Health 2020, 17, 5502. https://doi.org/10.3390/ijerph17155502
Xi L, Shino M. Shared Control of an Electric Wheelchair Considering Physical Functions and Driving Motivation. International Journal of Environmental Research and Public Health. 2020; 17(15):5502. https://doi.org/10.3390/ijerph17155502
Chicago/Turabian StyleXi, Lele, and Motoki Shino. 2020. "Shared Control of an Electric Wheelchair Considering Physical Functions and Driving Motivation" International Journal of Environmental Research and Public Health 17, no. 15: 5502. https://doi.org/10.3390/ijerph17155502
APA StyleXi, L., & Shino, M. (2020). Shared Control of an Electric Wheelchair Considering Physical Functions and Driving Motivation. International Journal of Environmental Research and Public Health, 17(15), 5502. https://doi.org/10.3390/ijerph17155502