Exploring HDV Driver–CAV Interaction in Mixed Traffic: A Two-Step Method Integrating Latent Profile Analysis and Multinomial Logit Model
Abstract
:Featured Application
Abstract
1. Introduction
- (1)
- The way heterogenous HDV drivers cluster in accordance with their psychological characteristics when they faced CAVs were revealed, and the variables affecting individual classification were analyzed;
- (2)
- The behavior choice of each HDV driver cluster was identified in a wide variety of interactive driving scenarios;
- (3)
- This study contributed to the development of more accurate, realistic and robust microscopic traffic flow models to determine the characteristics of the mixed traffic flow of CAVs and HDVs and develop effective operation and control strategies for future transportation systems.
2. Literature Review
2.1. The Studies of Public Opinion towards CAVs
2.1.1. Trust
2.1.2. Attitude
2.1.3. Willingness to Use or Pay
2.2. The Studies of the Behavioral Adjustment of HDV Drivers Interacting with CAVS
2.2.1. Field Tests
2.2.2. Driving Simulator Experiments
2.2.3. Questionnaire Surveys
3. Methodology
3.1. Latent Profile Analysis
3.2. Multinomial Logit-Based Analysis
4. Data Collection
4.1. Sample Distribution
4.2. The Survey of Drivers’ Psychological Characteristics
4.3. The Survey of Behavioral Choice
5. Results and Discussion
5.1. Cluster Analysis
5.1.1. Latent Profile Cluster Identification
5.1.2. Latent Profile Descriptive Associations
5.2. Cluster-Based Choice Behavior Analysis
6. Conclusions
- (1)
- Education for HDV drivers
- (2)
- Lane management strategies
- (3)
- Control strategies for CAVs
7. Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Ref. | Scenario | Method | Sample Size | Considering Individual Heterogeneity | Main Findings |
---|---|---|---|---|---|
[56] | Car-following | Field test | 9 | No | Humans generally drive closer to their leader when following a CAV compared with the case when following another HDV. |
[57] | Car-following | Field test | 10 | Yes/Trust | Drivers’ response to the lead vehicle is dependent on their subjective trusts on AV technologies. |
[54] | Car-following | Field test | 9 | No | A driver following a CAV exhibits lower driving volatility in terms of speed and acceleration. |
[58] | Car-following Gap acceptance Overtaking | Field test | 18 | Yes/Trust | Car-following behavior: No significant difference in the median headway when following a CAV compared with when following an HDV. Gap acceptance behavior: human drivers adopt significantly smaller critical gaps when interacting with an approaching CAV when compared with an HDV. Overtaking behavior: drivers maintain a significantly shorter headway after overtaking a CAV in comparison to an HDV. Positive information of CAVs: lead to closer interaction in comparison to HDVs. |
[60] | Lane-changing | Driving simulator experiment | 30 | Yes/Gender, age | The increase in MPR lengthens the lane-changing preparation duration of HDVs. HDVs tend to exhibit more radical driving behavior when changing lanes into one with a CAV platoon. |
[59] | Car-following Lane-changing: On-ramp Off-ramp Basic segment | Driving simulator experiment | 51 | Yes/Sociodemographic variables | Human drivers are affected by CAV platoons in a dedicated lane and imitate the behavior of CAVs driving, car-following and lane-changing. Age, gender, and education serve as significant factors in car-following behavior. |
[63] | Gap acceptance at unsignalized intersection | Driving simulator experiment | 17 | No | Drivers merged more frequently in front of a CAV at the unsignalized intersection, thus taking advantage of the law-abiding and cautious driving strategy of CAV. |
[64] | Car-following | Driving simulator experiment | 72 | Yes/Sociodemographic variables | Drivers will display different sensitivities when interacting with CAVs in different control settings and under different traffic congestion levels. Drivers’ sensitivities to speed (spacing) variations decay (increase) with time. The string-stable CAV control setting can lead to driver distraction, though it is preferred by a plurality of participants. |
[65] | Bullying intention while encountering CAV | Questionnaire survey | 998 | Yes/Gender, age | Human drivers generate a greater intention to drive aggressively towards CAVs than towards HDVs. Male and younger-age participants report a higher intention to drive aggressively to CAVs and HDVs. |
[66] | Traffic scenarios from The Propensity for Angry Driving Scale | Questionnaire survey | 1169 | Yes/Aggression | Human drivers exhibit more aggressive behaviors toward CAVs than toward other fellow drivers. The respondents rating their emotions more negatively report more severe intended response when interacting with CAVs. |
[67] | Car-following Intersection | Questionnaire survey | 36 | Yes/driving style | Aggressive drivers feel significantly more anxious, uncomfortable, and unsafe and more likely to behave aggressively in HDV–CAV interaction. High possibility of taking advantage of CAVs. Moderate drivers feel more likely to behave aggressively in HDV–CAV interaction. Defensive drivers: Not significantly affected by the type of interacting vehicle. |
Items | Description | Frequency | Distribution |
---|---|---|---|
Gender | Female | 169 | 49.85% |
Male | 170 | 50.15% | |
Age | 18–23 | 54 | 15.93% |
24–30 | 153 | 45.13% | |
31–40 | 85 | 25.07% | |
41–50 | 32 | 9.44% | |
51 or older | 15 | 4.43% | |
Monthly income | Less than ¥5000 | 238 | 40.71% |
¥5000 to ¥9999 | 112 | 33.04% | |
¥10,000~¥29,999 | 85 | 25.07% | |
¥30,000 or more | 4 | 1.18% | |
Highest Level of education | High School Graduate or GED | 23 | 6.78% |
Junior college | 40 | 11.8% | |
College | 160 | 47.2% | |
Masters or Doctorates | 116 | 34.22% | |
Driving experience | Less than one year | 55 | 16.23% |
1–5 | 145 | 42.77% | |
6–10 | 107 | 31.56% | |
>10 | 32 | 9.44% | |
Annual driving mileage | Have driver’s license but never driving | 86 | 25.37% |
Less than 10,000 km | 96 | 28.32% | |
10,000–30,000 km | 84 | 24.78% | |
30,001–50,000 km | 29 | 8.55% | |
>50,000 km | 44 | 12.98% | |
CAV experience | Yes | 71 | 20.94% |
No | 268 | 79.06% |
Latent Variable | Operational Definition |
---|---|
Familiarity | The understanding of the performance and advantages/disadvantages of CAV. |
Trust | The trust in CAV technology, performance and driving behavior. |
Attitude | Personal positive or negative continued evaluation about sharing the road with CAVs. |
Risk perceptions | Negative beliefs and fears of potential dangers from sharing the road with CAVs. |
Perceived behavior control | Personal control over the vehicle when interacting with CAVs. |
Variables | Observed Variables | Measurement Items |
---|---|---|
Familiarity (FA) | FA1 | I am familiar with the performance and specific driving parameters of CAVs. |
FA2 | I understand the advantages of CAVs over a regular vehicle. | |
FA3 | I understand the current technical defects and development prospects of CAVs. | |
Trust (TR) | TR1 | The driving decision of CAVs is rational and conservative, which rarely aggravates the traffic fluctuation. |
TR2 | The stability and safety of the traffic flow would be improved if CAVs formed a platoon. | |
TR3 | I believe CAVs would perform well in various traffic scenarios. | |
TR4 | CAVs are able to cooperate with me to complete all driving tasks. | |
Attitude (ATT) | ATT1 | I think it is safe and comfortable to drive behind the CAVs. |
ATT2 | I think when the leading or rear vehicle on the target lane is a CAV, the lane-changing operation would be smooth and safe. | |
ATT3 | I think sharing the road with CAVs would make me happy and improve driving efficiency. | |
Risk perceptions (RP) | RP1 | Concerned of the rear-end collisions if I keep a short vehicle spacing when driving behind the CAVs. |
RP2 | Worried for an accident if I change lanes when the rear or lead vehicle on the target lane is a CAV and the vehicle space is small. | |
RP3 | When sharing the road with CAVs, any carelessness during the car-following or lane-changing process would cause a traffic accident. | |
Perceived behavior control (PBC) | PBC1 | When driving behind a CAV, I can deal with any emergencies, such as the sudden braking of the leading vehicle. |
PBC2 | It is easy for me to cooperate with CAVs to complete the lane-changing operation. | |
PBC3 | I am confident that I can complete all driving tasks on the road mixed with CAVs. |
Scenario | Diagram | Behavior Choice |
---|---|---|
1.Driving behind a CAV when the front vehicles on the adjacent roads are HDVs. | Keep following the CAV. Change lanes when meeting the appropriate lane-changing gap, and drive behind the HDV. Regardless of the type of front vehicle, if the driving demand cannot be met (the speed of the front vehicle is too low, falling below the expected speed, or the distance to the front vehicle does not meet the driver’s desired following distance), the intention of changing lanes will be generated; otherwise, I will continue to drive on the current lane. | |
2. Car-following distance when driving behind a CAV than driving behind an HDV. | Increase the car-following distance. No difference if the leading vehicle is HDV. Reduce the car-following distance. | |
3. The speed of the preceding vehicle is low, and you have generated the intention to changing lanes. At this moment, a platoon of CAVs is driving on the target lane. | Give up changing lanes, and continue driving on the current lane. Decelerate to change lanes and drive behind the CAV platoon. Changing lanes and cutting in the CAV platoon. | |
4. Suppose you are driving the white vehicle and have decided to change lanes. When the following vehicle on the target lane is CAV, comparing with the HDV, what are your requirements for the vehicle spacing? | Increase the requirements for the vehicle spacing compared with the preceding vehicle on the target lane is an HDV. No difference with the preceding vehicle on the target lane is an HDV. Reduce the requirements for the vehicle spacing compared with the preceding vehicle on the target lane is an HDV. | |
5. Suppose you are driving the white vehicle and have decided to change lanes. When the leading vehicle on the target lane is a CAV, compared with the HDV, what are your requirements for the vehicle spacing? | Increase the requirements for the vehicle spacing compared with the leading vehicle on the target lane is an HDV. No difference with the leading vehicle on the target lane is an HDV. Reduce the requirements for the vehicle spacing compared with the leading vehicle on the target lane is an HDV. |
Clusters | AIC | BIC | aBIC | Entropy | LMR | BLRT | Proportion of the Respective Cluster % | |
---|---|---|---|---|---|---|---|---|
1 | 15,911.666 | 16,034.098 | 15,932.589 | 100 | ||||
2 | 14,742.964 | 14,930.438 | 14,775.001 | 0.892 | 0.0003 | 2 > 1 | 0 | 54.6/45.4 |
3 | 14,166.234 | 14,418.75 | 14,209.387 | 0.925 | 0.0444 | 3 > 2 | 0 | 4.7/58.1/37.2 |
4 | 13,920.392 | 14,237.95 | 13,974.66 | 0.9 | 0.1806 | 4 < 3 | 0 | 4.4/36.3/43.7/15.6 |
5 | 13,752.607 | 14,135.207 | 13,817.99 | 0.915 | 0.1389 | 5 < 4 | 0 | 3.8/43.4/11.8/34.2/6.8 |
6 | 13,608.63 | 14,056.272 | 13,685.128 | 0.928 | 0.1758 | 6 < 5 | 0 | 2.6/2.4/42.8/33.9/11.5/6.8 |
Latent Variables | Cluster 1 n = 16 | Cluster 2 n = 197 | Cluster 3 n = 126 | Sig. |
---|---|---|---|---|
FA | 4.1 ± 2.2 | 6.5 ± 2.1 | 9.5 ± 2.0 | 0.000 |
TR | 4.4 ± 1.5 | 9.3 ± 1.4 | 12.5 ± 1.4 | 0.000 |
ATT | 3.5 ± 1.6 | 7.8 ± 1.4 | 10.4 ± 1.3 | 0.000 |
RP | 6.1 ± 4.0 | 8.1 ± 1.6 | 8.3 ± 2.4 | 0.000 |
PBC | 3.7 ± 1.8 | 7.6 ± 1.4 | 9.7 ± 1.4 | 0.000 |
Variable | Cluster 1 | Cluster 3 | |||||
---|---|---|---|---|---|---|---|
OR | CI (95%) | Sig. | OR | CI (95%) | Sig. | ||
Gender | Female | 0.556 | 1.744 (0.555~5.479) | 0.341 | 0.248 | 1.282 | 0.341 |
Male a | 0 b | 0 b | |||||
Age | 18~23 | 18.267 | 85,796,668.249 | 0.997 | 0.616 | 1.852 | 0.449 |
24~30 | 18.161 | 77,150,478.695 | 0.997 | 0.637 | 1.890 | 0.383 | |
31~40 | 16.750 | 18,815,132.623 | 0.997 | 1.056 | 2.875 | 0.133 | |
41~50 | 17.429 | 37,080,784.391 | 0.997 | 0.275 | 1.317 | 0.707 | |
51 or older a | 0 b | 0 b | |||||
Monthly income | Less than ¥5000 | 15.117 | 3,675,768.719 | 0.000 | 0.225 | 1.252 | 0.856 |
¥5000 to ¥9999 | 16.443 | 13,837,355.877 | 0.000 | 0.545 | 1.724 | 0.658 | |
¥10,000~¥29,999 | 16.319 | 12,229,100.069 | - | 0.707 | 2.028 | 0.565 | |
¥30,000 or more a | 0 b | 0 b | |||||
Highest level of education | High School Graduate or GED | 0.003 | 1.003 | 0.998 | 1.059 | 2.885 | 0.089 |
Junior college | 0.727 | 2.070 | 0.498 | 0.287 | 1.332 | 0.539 | |
College | 0.315 | 1.370 | 0.670 | 0.117 | 1.125 | 0.706 | |
Masters or Doctorate a | 0 b | 0 b | |||||
Driving experience | Less than one year | −20.400 | 1.382 × 10−9 | 0.993 | 0.072 | 1.075 | 0.917 |
1~5 years | −2.669 | 0.069 | 0.033 | 0.404 | 1.498 | 0.464 | |
6~10 years | −1.545 | 0.213 | 0.158 | 0.763 | 2.144 | 0.145 | |
>10 years a | 0 b | 0 b | |||||
Annual driving mileage | Have driver license but never driving | 1.810 | 6.113 | 0.102 | −0.044 | 0.956 | 0.935 |
Less than 10,000 km | −0.205 | 0.815 | 0.841 | −0.553 | 0.575 | 0.245 | |
10,000–30,000 km | −0.662 | 0.516 | 0.530 | −0.058 | 0.944 | 0.894 | |
30,001–50,000 km | 0.505 | 1.657 | 0.642 | −0.110 | 0.895 | 0.840 | |
>50,000 km a | 0 b | 0 b | |||||
CAV experience | Yes | −0.988 | 0.372 | 0.376 | 1.143 | 3.137 | 0.000 |
Noa | 0 b | 0 b |
Individual Cluster | Keep Following | Change Lanes | ||||
---|---|---|---|---|---|---|
OR | CI (95%) | Sig. | OR | CI (95%) | Sig. | |
Cluster 1 (Negative individuals) | 0.912 | 0.230~3.613 | 0.895 | 2.018 | 0.591~6.890 | 0.263 |
Cluster 2 (Neutral individuals) | 0.471 | 0.274~0.810 | 0.007 | 0.693 | 0.339~1.204 | 0.193 |
Cluster 3 (Positive individuals) | 0 b | - | - |
Individual Cluster | Increase the Car-Following Distance | Reduce the Car-Following Distance | ||||
---|---|---|---|---|---|---|
OR | CI (95%) | Sig. | OR | CI (95%) | Sig. | |
Cluster 1 (Negative individuals) | 1.434 | 0.488~4.219 | 0.512 | 0.831 | 0.093~7.432 | 0.869 |
Cluster 2 (Neutral individuals) | 1.129 | 0.709~1.798 | 0.608 | 0.407 | 0.150~1.105 | 0.078 |
Cluster 3 (Positive individuals) | 0 b |
Individual Cluster | Give Up Changing Lanes | Accelerate to Change Lanes and Drive in front of the CAV Platoon. | Changing Lanes and Cutting in the CAV Platoon. | ||||||
---|---|---|---|---|---|---|---|---|---|
OR | CI (95%) | Sig. | OR | CI (95%) | Sig. | OR | CI (95%) | Sig. | |
Cluster 1 (Negative individuals) | 6.476 | 1.330~31.538 | 0.021 | 7.763 | 1.391~43.327 | 0.019 | 3.4727 × 10−8 | 3.4727 × 10−8 | - |
Cluster 2 (Neutral individuals) | 1.305 | 0.779~2.186 | 0.313 | 1.946 | 1.034~3.663 | 0.039 | 0.787 | 0.261~2.367 | 0.699 |
Cluster 3 (Positive individuals) | 0 b | 0b | - | 0b |
Individual Cluster | Increase the Requirements for the Rear Critical Gap | Reduce the Requirements for the Rear Critical Gap | ||||
---|---|---|---|---|---|---|
OR | CI (95%) | Sig. | OR | CI (95%) | Sig. | |
Cluster 1 (Negative individuals) | 3.350 | 1.089~10.303 | 0.035 | 6.0211 × 10−9 | 6.0211 × 10−9 | - |
Cluster 2 (Neutral individuals) | 1.490 | 0.923~2.404 | 0.103 | 0.728 | 0.333~1.592 | 0.427 |
Cluster 3 (Positive individuals) | - | - | - |
Individual Cluster | Increase the Requirements for the Front Critical Gap | Reduce the Requirements for the Front Critical Gap | ||||
---|---|---|---|---|---|---|
OR | CI (95%) | Sig. | OR | CI(95%) | Sig. | |
Cluster 1 (Negative individuals) | 1.527 | 0.529~4.406 | 0.434 | 3.5082 × 10−9 | 3.5082 × 10−9 | - |
Cluster 2 (Neutral individuals) | 0.888 | 0.547~1.441 | 0.630 | 0.448 | 0.219~0.917 | 0.028 |
Cluster 3 (Positive individuals) | - | - | - |
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Kong, D.; Wang, M.; Zhang, K.; Sun, L.; Wang, Q.; Zhang, X. Exploring HDV Driver–CAV Interaction in Mixed Traffic: A Two-Step Method Integrating Latent Profile Analysis and Multinomial Logit Model. Appl. Sci. 2024, 14, 1768. https://doi.org/10.3390/app14051768
Kong D, Wang M, Zhang K, Sun L, Wang Q, Zhang X. Exploring HDV Driver–CAV Interaction in Mixed Traffic: A Two-Step Method Integrating Latent Profile Analysis and Multinomial Logit Model. Applied Sciences. 2024; 14(5):1768. https://doi.org/10.3390/app14051768
Chicago/Turabian StyleKong, Dewen, Miao Wang, Kanyu Zhang, Lishan Sun, Qingqing Wang, and Xi Zhang. 2024. "Exploring HDV Driver–CAV Interaction in Mixed Traffic: A Two-Step Method Integrating Latent Profile Analysis and Multinomial Logit Model" Applied Sciences 14, no. 5: 1768. https://doi.org/10.3390/app14051768
APA StyleKong, D., Wang, M., Zhang, K., Sun, L., Wang, Q., & Zhang, X. (2024). Exploring HDV Driver–CAV Interaction in Mixed Traffic: A Two-Step Method Integrating Latent Profile Analysis and Multinomial Logit Model. Applied Sciences, 14(5), 1768. https://doi.org/10.3390/app14051768