题名: |
Constructing spatiotemporal driving volatility profiles for connected and automated vehicles in existing highway networks |
正文语种: |
eng |
作者: |
Xing Fu;Qifan Nie;Jun Liu;Asad Khattak;Alexander Hainen;Shashi Nambisan |
作者单位: |
Department of Civil Construction and Environmental Engineering The University of Alabama;Alabama Transportation Institute The University of Alabama;Department of Civil Construction and Environmental Engineering The University of Alabama;Department of Civil and Environmental Engineering The University of Tennessee;Department of Civil Construction and Environmental Engineering The University of Alabama;Department of Civil and Environmental Engineering and Construction The University of Nevada Las Vegas |
关键词: |
basic safety messages;connected and automated vehicles;on-road hazards;spatiotemporal driving volatility;transportation infrastructure |
摘要: |
Abstract Connected and automated vehicles (CAVs) are expected to change the way we travel. Before both the vehicles and infrastructures are fully automated, users of CAVs are required to respond appropriately to any adverse on-road conditions or malfunction that may prevent the autonomous driving system from reliably sustaining the dynamic driving task performance. The objective of this study is to construct spatiotemporal driving volatility profiles to help CAVs or drivers identify the potential hazards in the existing transportation network and make proactive driving decisions. The volatility profiles are constructed based on the historical traffic dynamics, varying spatially and temporally in the network. For demonstration, this study exploited the Basic Safety Messages datasets from Safety Pilot Model Development program in Ann Arbor, Michigan. The driving volatility is a measure to reflect the variability of driving performance, which is often used to show a vehicle or driver’s performance on road. This study extends the concept to capture the driving dynamics as a performance of the transportation network. This study also matched the driving volatility to the spatial and temporal occurrence of historical traffic crashes. Modeling results showed the volatility is significantly related to safety outcomes; therefore, the driving volatility profiles can be compiled into the high definition (HD) maps to inform CAVs and drivers of potential on-road hazards and assisting in making proactive driving decisions. Further, the results offer implications for potential upgrades of the transportation infrastructure for full automation in the future. |
出版年: |
2022 |
期刊名称: |
Journal of Intelligent Transportation Systems |
卷: |
26 |
期: |
1/6 |
页码: |
577-590 |