Framework to Estimate Operating Intention for a Leader–Follower Robot
Abstract
:1. Introduction
2. Leader-Follower Robot
2.1. Outline of the Control System
2.2. Leader System and Follower Robot
2.3. Controller Hardware
3. Intention Estimator
3.1. Behavior Map [30]
3.2. Calculation of Indices
4. Incorporating Historical Values of Operation Intention
5. Simulation Verification of Intention Estimator
5.1. Method
- (1)
- When the operator extends the robot arm to load an object, the operator takes a small step length to let the system determine that the robot arm is being operated, and apply force to the force sensor to perform the operation. If the operator’s foot slips suddenly during operation, this will increase the step length and cause the system to assess that the robot should be moving forward. After realizing that an unexpected operation has occurred, the operator will move their foot to the initial position and then input a command to operate the arm again. This scenario is consistent with issue (iv) mentioned in the Introduction. The operator’s foot may also slip owing to an external disturbance, such as being greeted by colleagues; therefore, this scenario is also consistent with issue (iii) mentioned in the Introduction.
- (2)
- When the operator moves the robot forward, the operator takes a larger step length to indicate to the system that the robot should be moving forward, and applies force to the force sensor to perform the operation. Additionally, the operator may become tired of maintaining the same posture during the operation and close their legs, which makes the step length smaller, indicating to the system that the robot arm should extend. After realizing that unexpected operation has occurred, the operator opens their legs; thus, the operation input returns to a movement command. This scenario is consistent with issue (ii) mentioned in the Introduction.
- (3)
- During the transport of an object, the operator commands the follower robot to move forward, even though an obstacle exists in front of it. This scenario is consistent with issue (i) mentioned in the Introduction.
5.2. Scenario 1
5.3. Scenario 2
5.4. Scenario 3
6. Conclusions
- The framework proposed in this study aims to estimate more complex and strategic higher-order intention such as behavior, and suppress the impact on the estimated intention when misoperation occurs due to fatigue or external interference to the operator, to allow the movement to continue as expected. This is not possible with the method that aims for high precision control by direct estimation of the motion.
- The framework proposed in this study excels in the estimation of more generalized behaviors, making it particularly well-suited for leader–follower robots navigating uncertain work processes and undertaking tasks characterized by a heightened degree of flexibility. In contrast, existing methods facilitating the estimation of higher-order intentions do not sufficiently cater to the operational capabilities unique to leader–follower robots.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Dimensions (mm) | 200 [W] × 250 [D] × 450 [H] |
---|---|
Weight (N) | 18.62 |
Degrees of freedom | 4 |
Quadrant | Behavior |
---|---|
① | Move |
② | Avoid during movement |
③ | Operate arm |
④ | Avoid during arm operation |
⑤ | Stop |
Relative Velocity | ||||||
---|---|---|---|---|---|---|
VSl | Sl | M | F | VF | ||
VF | −1.0 | −1.0 | −0.5 | −0.5 | 0.5 | |
F | −1.0 | −0.5 | −0.5 | 0.0 | 0.5 | |
Relative | M | −0.5 | −0.5 | 0.0 | 0.5 | 0.5 |
distance | N | −0.5 | 0.0 | 0.5 | 0.5 | 1.0 |
VN | 0.5 | 0.5 | 1.0 | 1.0 | 1.0 |
Magnitude of force | ||||||||||
Direction | x | NB | ZO | PB | ||||||
of force | y | NB | ZO | PB | NB | ZO | PB | NB | ZO | PB |
Step | B | 1.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | 1.0 | 1.0 |
length | S | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 |
Magnitude of force | ||||||||||
Direction | x | NB | ZO | PB | ||||||
of force | z | NB | ZO | PB | NB | ZO | PB | NB | ZO | PB |
Step | B | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 |
length | S | 1.0 | 1.0 | 1.0 | 1.0 | 0.0 | 1.0 | 1.0 | 1.0 | 1.0 |
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Lyu, Z.; Koyanagi, K.; Nagahara, K.; Masuta, H.; Li, F.; Almassri, A.; Tsukagoshi, T.; Noda, K.; Oshima, T. Framework to Estimate Operating Intention for a Leader–Follower Robot. Machines 2023, 11, 918. https://doi.org/10.3390/machines11090918
Lyu Z, Koyanagi K, Nagahara K, Masuta H, Li F, Almassri A, Tsukagoshi T, Noda K, Oshima T. Framework to Estimate Operating Intention for a Leader–Follower Robot. Machines. 2023; 11(9):918. https://doi.org/10.3390/machines11090918
Chicago/Turabian StyleLyu, Zihang, Ken’ichi Koyanagi, Katsuki Nagahara, Hiroyuki Masuta, Fengyu Li, Ahmed Almassri, Takuya Tsukagoshi, Kentaro Noda, and Toru Oshima. 2023. "Framework to Estimate Operating Intention for a Leader–Follower Robot" Machines 11, no. 9: 918. https://doi.org/10.3390/machines11090918
APA StyleLyu, Z., Koyanagi, K., Nagahara, K., Masuta, H., Li, F., Almassri, A., Tsukagoshi, T., Noda, K., & Oshima, T. (2023). Framework to Estimate Operating Intention for a Leader–Follower Robot. Machines, 11(9), 918. https://doi.org/10.3390/machines11090918