Development of a Stability Index for Evaluating Drivers’ Psychological Stability During Truck Platooning
Abstract
:1. Introduction
2. Review of Related Works and Technological Trends
2.1. Review of Related Technologies
2.2. Trends in Truck Platooning Technology
2.3. Review of Literature
2.3.1. Driver Behavior Analysis Using a Driving Simulator
2.3.2. Studies on Platooning Using a Driving Simulator
2.4. Contributions and Distinctions of This Study
3. Development of a Quantitative Evaluation Index—‘Stability Index’ for Assessing Drivers’ Psychological Stability
4. Experimental Environment for Truck Platooning
4.1. Selection of Truck-Platooning Experimental Methodology
4.2. Selection of Driving Simulator and Construction of Experimental Environment
4.3. Collection of Physiological Signals
5. Driver Psychological Stability Evaluation Experiment Using Driving Simulator
5.1. Experimental Procedure and Scenario Design
5.2. Participant Recruitment
5.3. Evaluation of Drivers’ Psychological Stability by Scenario
5.4. Evaluation of Drivers’ Psychological Stability According to Presence of See-Through Functionality
5.5. Post-Experiment Survey for Validation of Stability Index
6. Conclusions and Future Work
6.1. Conclusions
6.2. Limitations and Future Works
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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No. | Stage | Details |
---|---|---|
1 | General Driving | The following vehicle accelerates to reduce the distance to the leading vehicle, thereby initiating the platooning process. |
2 | Platoon Formation | When the distance between following and leading vehicles decreases to approximately 50 m, enabling V2V communication, the following vehicle requests to join the platoon. Upon approval from the leading vehicle, longitudinal control (pedal release) and lateral control (steering release) are automated sequentially. |
3 | Platoon Maintenance | The platoon maintains a constant speed and intervehicle distance for 120 s, as specified in the experimental scenario. |
4 | Platoon Dissolution | After the scenario is terminated, the following vehicle sequentially switches to manual lateral (steering operation) and longitudinal (pedal operation) control upon its own request and the leading vehicle’s approval. |
5 | General Driving | The following vehicle increases its distance from the leading vehicle, dissolves the platoon, and returns to general driving. |
Stage | Category | Details | Duration |
---|---|---|---|
1 | Start Driving | Begin driving on the third lane Driving time for adaptation to the driving simulator Accelerate to and maintain a speed of 90 km/h Approach the truck platoon traveling at 80 km/h ahead | 1 min |
2 | Preparation for Platoon Formation | Platoon formation procedure is initiated when the distance between the following vehicle in the platoon and the experimental vehicle reaches 25 m | 1 min |
3 | (Scenario 1) Automatic Gap Adjustment Scenario | Driving system automatically adjusts the time gap Five time gaps: 0.2, 0.4, 0.6, 0.8, 1.0 s Order of displayed time gaps is randomized to minimize bias | 12 min |
4 | (Scenario 2) Manual Gap Adjustment Scenario | Experiment starts with a time gap of 0.6 s Conduct experiments both with and without see-through functionality Participants manually adjust the time gap within 0.2–1.0 s in ±0.1 s increments to select an acceptable time gap | 4 min |
5 | End of Driving | End of the experiment | 1–3 min |
Category | Number of Participants (%) |
---|---|
Age | |
20 s | 1 (5%) |
30 s | 1 (5%) |
40 s | 6 (30%) |
50 s | 8 (40%) |
60 s | 4 (20%) |
Occupation in transportation industry | |
Yes | 11 (55%) |
No | 9 (45%) |
Driving experience | |
<10 yr | 2 (10%) |
11–20 yr | 3 (15%) |
21–30 yr | 9 (45%) |
≥31 yr | 6 (30%) |
Annual average driving distance | |
<10,000 km | 1 (5%) |
10,000–20,000 km | 8 (40%) |
≥20,000 km | 11 (55%) |
Weekly highway usage frequency | |
1 time | 3 (15%) |
2 times | 5 (20%) |
3 times | 4 (20%) |
4 times | 1 (5%) |
5 times | 2 (10%) |
6 times | 0 (-) |
7 times | 5 (35%) |
Average daily driving time | |
<1 h | 3 (15%) |
1–3 h | 14 (70%) |
≥3 h | 3 (15%) |
Category | Intervehicle Time Gap | ||||
---|---|---|---|---|---|
0.2 s (5 m) | 0.4 s (10 m) | 0.6 s (15 m) | 0.8 s (20 m) | 1.0 s (25 m) | |
Stability Index | –0.0464 | –0.0215 | 0.0178 | 0.0153 | 0.0186 |
Change compared to 0.6 s | –0.0642 | –0.0393 | - | −0.0024 | +0.0008 |
Category | Intervehicle Time Gap | ||||
---|---|---|---|---|---|
0.2 s (5 m) | 0.4 s (10 m) | 0.6 s (15 m) | 0.8 s (20 m) | 1.0 s (25 m) | |
Number of drivers selecting time gap Without see-through | 3 (15%) | 0 (-) | 1 (5%) | 3 (15%) | 13 (65%) |
Average time gap = 0.915 s (22.9 m) | |||||
Number of drivers selecting time gap With see-through | 3 (15%) | 4 (20%) | 1 (5%) | 1 (5%) | 11 (55%) |
Average time gap = 0.865 s (21.6 m) |
Category | Mean | Standard Deviation | Negative Ranks | Positive Ranks | Ties | Z | p-Value | ||||
---|---|---|---|---|---|---|---|---|---|---|---|
N | Mean Rank | Sum of Ranks | N | Mean Rank | Sum of Ranks | N | |||||
Without See-Through | 0.915 | 0.146 | 6 | 3.50 | 21.00 | 0 | 0.00 | 0.00 | 14 | −2.27 | 0.023 |
With See-Through | 0.865 | 0.166 |
Category | Intervehicle Time Gap | ||||
---|---|---|---|---|---|
0.2 s (5 m) | 0.4 s (10 m) | 0.6 s (15 m) | 0.8 s (20 m) | 1.0 s (25 m) | |
Driver Stability Points | 7.10 | 6.57 | 4.50 | 4.57 | 4.30 |
Change Compared to 0.6 s | +2.60 | +2.07 | - | +0.07 | −0.20 |
Standard Deviation | 1.1805 |
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Cho, H.; Kim, Y.; Oh, S.; Yun, I. Development of a Stability Index for Evaluating Drivers’ Psychological Stability During Truck Platooning. Appl. Sci. 2025, 15, 5429. https://doi.org/10.3390/app15105429
Cho H, Kim Y, Oh S, Yun I. Development of a Stability Index for Evaluating Drivers’ Psychological Stability During Truck Platooning. Applied Sciences. 2025; 15(10):5429. https://doi.org/10.3390/app15105429
Chicago/Turabian StyleCho, Hyonbae, Yejin Kim, SeokJin Oh, and Ilsoo Yun. 2025. "Development of a Stability Index for Evaluating Drivers’ Psychological Stability During Truck Platooning" Applied Sciences 15, no. 10: 5429. https://doi.org/10.3390/app15105429
APA StyleCho, H., Kim, Y., Oh, S., & Yun, I. (2025). Development of a Stability Index for Evaluating Drivers’ Psychological Stability During Truck Platooning. Applied Sciences, 15(10), 5429. https://doi.org/10.3390/app15105429