Exploration into the Needs and Requirements of the Remote Driver When Teleoperating the 5G-Enabled Level 4 Automated Vehicle in the Real World—A Case Study of 5G Connected and Automated Logistics
Abstract
:1. Introduction
1.1. State of the Art and Research Gaps
- There is limited research regarding the deployment and evaluation of full-scale authentic automated vehicles incorporating a teleoperation solution in the real world.
- Existing research regarding the teleoperation or remote operation of vehicle automaton has neglected one of the most essential elements of the teleoperation system—the remote drivers (operators).
- Understanding the acceptance, perception and requirements of support from the remote driver’s perspective is important to design and develop safe, effective and user-friendly teleoperation systems for automated vehicles. However, knowledge regarding the needs and requirements of remote drivers when interacting with automated vehicles is limited.
1.2. Purpose of the Research
2. Materials and Methods
2.1. The 5G-Enabled Level 4 Automated Vehicle
2.2. Participants
2.3. Study Design
2.4. Qualitative Data Collection
- What is your general opinion of the Level 4 automated vehicle?
- If you are sitting on the remote-control workstation and the vehicle is performing automated driving, what would you do?
- How would you prefer to be informed about a remote-control request of the automated vehicle?
- What are the differences and similarities between operating the vehicle on-board and remotely?
- When performing the remote control of the automated vehicle, what difficulties have you encountered?
- When you are performing the remote control of the automated vehicle, what support do you need?
- Do you have any recommendations to the original equipment manufacturers (in terms of vehicle design and remote-control workstation design)?
2.5. Research Process
3. Results and Discussion
3.1. Summary of the Thematic Analysis
3.2. Theme 1: Attitudes towards the 5G L4 AV
3.3. Theme 2: Things to Do When the 5G L4 AV Is in Automated Driving Mode
3.4. Theme 3: Teleoperation Human–Machine Interfaces in the 5G L4 AV
3.5. Theme 4: Teleoperation vs. Operating a Vehicle On-Board
3.6. Theme 5: Support Needed for the Remote Driver
3.7. Theme 6: Remote Driver vs. On-Board Safety Driver
4. Conclusions and Future Work
- Remote drivers have positive attitudes towards the 5G L4 AV.
- Remote drivers would be monitoring the road when the 5G L4 LV is performing automated driving. They expect to be informed if something happens.
- In terms of the human–machine interface, remote drivers would like to have verbal communication if there is a safety driver on-board. If there were no safety drivers on board (ultimately the desired scenario), a visual, audible and vibrational HMI would be beneficial.
- The main difference and difficulties remote drivers experienced when controlling the vehicle remotely (compared to conventional manual driving) was lack of depth vision, as well as not being able to feel the feedback from the vehicle when executing a manoeuvre.
- Remote drivers would like more support regarding their visual field driving when teleoperating the 5G L4 AV.
- Remote drivers would like more support in terms of enhancing the perception of physical feedback when teleoperating the 5G L4 AV.
- Possible support includes introducing Virtual Reality, wide angle mirrors, as well as full motion feedback systems into the teleoperation workstation of the 5G L4 AV.
- Remote drivers collaborated smoothly with the on-board safety driver, and their strategic decision making in urgent situations was consistent with the on-board safety drivers’.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Theme 1: Attitudes towards the 5G L4 AV | |
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Sub Themes | Example Quotes |
1.1 Positive towards the 5G L4 AV |
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1.2 Better than expected |
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1.3 Good use cases for business |
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Theme 2: Things to Do When the 5G L4 AV Is Automated Driving | |
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Sub Themes | Example Quotes |
2.1 Monitoring driving |
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Theme 3: Teleoperation Human–Machine Interfaces in the 5G L4 AV | |
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Sub Themes | Example Quotes |
3.1 Visual HMI |
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3.2 Visual + Audible HMI |
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3.3 Visual + Audible + Vibration HMI |
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Theme 4: Teleoperation vs. Operating a Vehicle On-Board | |
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Sub Themes | Example Quotes |
4.1 Feeling and Feedback |
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4.2 Vision for driving |
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Theme 5: Support Needed for the Remote Driver | |
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Sub Themes | Example Quotes |
5.1 System feedback |
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5.2 Virtual reality |
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5.3 Visual cues |
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5.4 Wide angle mirror |
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5.5 Quieter environment |
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Theme 6: Remote Driver vs. On-Board Safety Driver | |
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Sub Themes | Example Quotes |
6.1 Smooth collaboration |
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6.2 Consistent decision making |
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Li, S.; Zhang, Y.; Edwards, S.; Blythe, P.T. Exploration into the Needs and Requirements of the Remote Driver When Teleoperating the 5G-Enabled Level 4 Automated Vehicle in the Real World—A Case Study of 5G Connected and Automated Logistics. Sensors 2023, 23, 820. https://doi.org/10.3390/s23020820
Li S, Zhang Y, Edwards S, Blythe PT. Exploration into the Needs and Requirements of the Remote Driver When Teleoperating the 5G-Enabled Level 4 Automated Vehicle in the Real World—A Case Study of 5G Connected and Automated Logistics. Sensors. 2023; 23(2):820. https://doi.org/10.3390/s23020820
Chicago/Turabian StyleLi, Shuo, Yanghanzi Zhang, Simon Edwards, and Philip T. Blythe. 2023. "Exploration into the Needs and Requirements of the Remote Driver When Teleoperating the 5G-Enabled Level 4 Automated Vehicle in the Real World—A Case Study of 5G Connected and Automated Logistics" Sensors 23, no. 2: 820. https://doi.org/10.3390/s23020820
APA StyleLi, S., Zhang, Y., Edwards, S., & Blythe, P. T. (2023). Exploration into the Needs and Requirements of the Remote Driver When Teleoperating the 5G-Enabled Level 4 Automated Vehicle in the Real World—A Case Study of 5G Connected and Automated Logistics. Sensors, 23(2), 820. https://doi.org/10.3390/s23020820