“Everything Somewhere” or “Something Everywhere”: Examining the Implications of Automated Vehicles’ Deployment Strategies
Abstract
:1. Introduction
- reviewing the different strategies regarding their deployment,
- applying them in a common type of intersection, and
- identifying the potential benefits, barriers, and implications of each strategy.
2. Materials and Methods
2.1. Road Infrastructure Requirements for Automated Vehicles
- road AND (infrastructure OR geometry OR design) AND (“automated vehicle*” OR “autonomous vehicle*” OR “automated car*” OR “autonomous car*” OR “driver-less vehicle*” OR “self-driving vehicle*” OR “driver-less car*” OR “self-driving car*” OR “driverless vehicle*” OR “driverless car*” OR “automated driving” OR “autonomous driving”)
2.2. Modelling of Automated Vehicles’ Driving Behavior
2.3. Traffic Model Development
2.4. Scenarios—Implementation Strategies
- The existing intersection to examine the “something everywhere” strategy by exploring the interactions of AVs and no-AVs in common traffic conditions in Belgium, i.e., a do-nothing scenario with no requirements or public investment where AVs and no-AVs co-exist;
- A modified intersection based on the literature review findings that could be considered appropriate for the “everything somewhere” strategy, i.e., a basic-adjustment scenario (short-term implementation scenario with no-AVs still available to the public), where minimum requirements are applied to ensure traffic safety, with minimum/no public investment.
3. Results
3.1. Road Infrastructure Requirements for AVs
3.2. Modeling AV’s Driving Behavior
3.3. Scenarios—Implementation Strategies
3.4. Traffic Micro-Simulation Results
- Total delay per vehicle;
- Stop delay per vehicle;
- Average queue length; and
- Level of service (LOS).
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Level | Name | Description | Driving Environment |
---|---|---|---|
0 | no automation | the human drivers are entirely responsible for the control of their vehicle | monitored by human driver |
1 | driver assistance | lateral or longitudinal vehicle control is automated | |
2 | partial automation | lateral and longitudinal vehicle control is automated | |
3 | conditional automation | driving tasks are automated, although human driver intervention is expected upon request | monitored by automated driving system |
4 | high automation | driving tasks are automated, and human driver intervention is not expected | |
5 | full automation | driving tasks are automated, and no human driver intervention is required |
Scenario | Fleet Composition | ||
---|---|---|---|
No-AVs | Low Levels of AVs | High Levels of AVs | |
Base | 100% | ||
“something everywhere” strategy | |||
Early deployment period | 75% | 25% | |
Late deployment period | 25% | 75% | |
“everything somewhere” strategy | |||
Early deployment period | 75% | 25% | |
Late deployment period | 25% | 75% |
Study | Road Element | Implication |
---|---|---|
Hayeri et al. (2015) [9] Johnson (2017) [8] Farah et al. (2018) [4] Saeed (2019) [28] | lane width | reduced lane width |
Farah et al. (2018) [4] McDonald and Rodier (2015) [10] Saeed (2019) [28] Wang and Yu (2019) [29] | speed limits | increased speed limits |
McDonald and Rodier (2015) [10] | central reservation | not required |
Hayeri et al. (2015) [9] | central reservation | reduced central reservation |
Nitsche et al. [30] Johnson (2017) [8] Gowling WLG (2018) [31] Somers (2019) [32] Saeed (2019) [28] Lu et al. (2019) [33] Liu et al. (2019) [34] | lane markings | required |
Nitsche et al. [30] Johnson (2017) [8] Gowling WLG (2018) [31] Somers (2019) [32] Saeed (2019) [28] Lu et al. (2019) [33] Liu et al. (2019) [34] | road signs | required |
Somers (2019) [31] Liu et al. (2019) [33] | curbs | required |
Duarte and Ratti (2018) [35] | traffic signals | required |
Hayeri et al. (2015) [9] Saeed (2019) [28] | traffic signals | not required |
Saeed (2019) [28] Wang and Yu (2019) [29] | stopping sight distance | reduced stopping sight distance |
Hayeri et al. (2015) [9] Gowling WLG (2018) [30] Saeed (2019) [28] Liu et al. (2019) [33] | shoulders | required |
Johnson (2017) [8] | corner radii | tighter corner radii |
Saeed (2019) [28] | corner radii | standard corner radii |
Type of Vehicles | Description | Impact on Vehicle Operation |
---|---|---|
No-AVs | the default behavior is assumed | |
AVs in “something everywhere” Strategy | automated longitudinal and lateral behavior is assumed | reduced space between vehicles and faster and smoother acceleration/deceleration |
AVs in “everything somewhere” Strategy | enhanced automated longitudinal and lateral behavior is assumed | more significant reduction in space between vehicles and gap acceptance for lane change and even faster and smoother acceleration/deceleration |
Parameter | Definition | Type of Vehicles | Source | ||
---|---|---|---|---|---|
AVs in “Something Everywhere” Strategy | AVs in “Everything Somewhere” Strategy | AVs in “Something Everywhere” Strategy | AVs in “Everything Somewhere” Strategy | ||
CC0 | the average desired standstill distance between two vehicles. | 1 m (3.28 ft) | 0.5 m (1.64 ft) | adopted from [36,37,38] | adopted from [26] |
CC1 | time distribution of speed-dependent part of desired safety distance. | 0.5 s | 0.5 s | adopted from [36,37] | adjusted based on [39] recommendations |
CC2 | restricts the distance difference (longitudinal oscillation). | 2 m (6.56 ft) | 0 m (0 ft) | adopted from [36] | adjusted based on [39] recommendations |
CC4 | defines negative speed difference during the following process. | −0.1 | 0 | adopted from [36,37] | adjusted based on [39] recommendations |
CC5 | defines positive speed difference during the following process. | 0.1 | 0 | adopted from [36,37] | adjusted based on [39] recommendations |
CC6 | influence of distance on speed oscillation while in the following process. | 0 km/h | 0 km/h | adopted from [36,37] | adjusted based on [39] recommendations |
CC7 | oscillation during acceleration. | 0.25 m/s2 (0.82 ft/s2) | 0.4 m/s2 (1.3 ft/s2) | adopted from [36] | adopted from [26,37] |
CC8 | desired acceleration when starting from a standstill. | 3.5 m/s2 (11.48 ft/s2) | 4 m/s2 (13.12 ft/s2) | adopted from [36] | adopted from [37] |
Min headway (front/rear) | the minimum distance between two vehicles that must be available after a lane change, so that the change can take place. | 0.5 m (1.64 ft) | 0.2 m (0.65 ft) | adjusted based on [39] recommendations | adjusted based on [39] recommendations |
Observed Vehicles | the number of observed vehicles or certain network objects affect how well vehicles in the link can predict other vehicles’ movements and react accordingly. | 10 | 10 | adopted from [37] | adopted from [37] |
Smooth closeup behavior | if this option is checked, vehicles slow down more evenly when approaching a stationary obstacle. | ✓ | ✓ | adopted from [37] | adopted from [37] |
Scenario | Total Delay per Vehicle (s) | Stop Delay per Vehicle (s) | Queue Length (m) | Number of Stops per Vehicle | LOS |
---|---|---|---|---|---|
Base | 27.07 | 18.79 | 6.67 | 0.74 | C |
“something everywhere” strategy | |||||
Early deployment period | 26.52 | 18.43 | 6.43 | 0.73 | C |
Late deployment period | 25.86 | 18.07 | 6.17 | 0.70 | C |
“everything somewhere” strategy | |||||
Early deployment period | 56.36 | 183.10 | 147.91 | 6.67 | F |
Late deployment period | 43.69 | 180.23 | 149.62 | 8.61 | F |
Scenario | Total Delay per Vehicle (s) | Stop Delay per Vehicle (s) | Queue Length (m) | Number of Stops per Vehicle | LOS |
---|---|---|---|---|---|
Base | 26.33 | 17.58 | 12.98 | 0.75 | C |
“something everywhere” strategy | |||||
Early deployment period | 25.93 | 17.44 | 12.57 | 0.74 | C |
Late deployment period | 25.35 | 17.27 | 12.06 | 0.72 | C |
Scenario | Total Delay per Vehicle (s) | Stop Delay per Vehicle (s) | Queue Length (m) | Number of Stops per Vehicle | LOS |
---|---|---|---|---|---|
Base | 25.74 | 17.76 | 10.26 | 0.72 | C |
“something everywhere” strategy | |||||
Early deployment period | 25.44 | 17.59 | 10.12 | 0.72 | C |
Late deployment period | 24.93 | 17.33 | 9.88 | 0.70 | C |
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Tafidis, P.; Farah, H.; Brijs, T.; Pirdavani, A. “Everything Somewhere” or “Something Everywhere”: Examining the Implications of Automated Vehicles’ Deployment Strategies. Sustainability 2021, 13, 9750. https://doi.org/10.3390/su13179750
Tafidis P, Farah H, Brijs T, Pirdavani A. “Everything Somewhere” or “Something Everywhere”: Examining the Implications of Automated Vehicles’ Deployment Strategies. Sustainability. 2021; 13(17):9750. https://doi.org/10.3390/su13179750
Chicago/Turabian StyleTafidis, Pavlos, Haneen Farah, Tom Brijs, and Ali Pirdavani. 2021. "“Everything Somewhere” or “Something Everywhere”: Examining the Implications of Automated Vehicles’ Deployment Strategies" Sustainability 13, no. 17: 9750. https://doi.org/10.3390/su13179750