A Comprehensive Traffic Accident Investigation System for Identifying Causes of the Accident Involving Events with Autonomous Vehicle

Author:

Kim HeesooORCID,Han HyorimORCID,You YongsikORCID,Cho Min-JeORCID,Hong JunhoORCID,Song Tai-JinORCID

Abstract

As the number of autonomous vehicles increases, the number of accidents also increases every year. These incidents include general car/traffic accidents and may introduce new potential issues such as cybersecurity and sensor errors of autonomous vehicles. The existing traffic accident investigation method has limitations in identifying the cause of the autonomous vehicle accident. Some states in the US (e.g., California and Texas) introduced limited items of Lv. 2 autonomous vehicle accidents. For instance, “vehicle level” and “autonomous mode/conventional mode” are being investigated to identify the cause of autonomous vehicle accidents. Therefore, it is crucial to propose accident investigation items and procedures in preparation for various autonomous vehicles that may occur in the future. In order to address these issues, this study collected reports used in existing traffic accident investigations, autonomous driving‐related reports and literature, and accident videos involving autonomous driving to build investigation items. First, we reviewed the items required for investigation in the event of a conventional vehicle accident and added additional investigation items deemed necessary to be reviewed in addition to the existing reports. Second, based on the conventional vehicle accident investigation items, this study derived the autonomous driving traffic accident investigation items. Finally, an accident involving autonomous vehicle(s) investigation process was established that can be used by the police and various investigation jurisdictions. The results of this paper can improve the understanding of the cause of future traffic accidents involving autonomous vehicles.

Funder

Korean National Police Agency

Publisher

Wiley

Reference33 articles.

1. QuinteroA. Analysis of automated vehicle accidents across the U.S. Electronic theses projects and dissertations 2022 https://scholarworks.lib.csusb.edu/etd/1587.

2. upstream Upstream security’s 2021 global automotive cybersecurity report upstream security 2021 https://upstream.auto/2021report/.

3. dmv California DMV California DMV https://www.dmv.ca.gov/portal/.

4. txdot Crash records forms for law enforcement 2023 http://txdot.gov/en/home/data-maps/crash-reports-records/forms-law-enforcement.html.

5. Analysis of historical road accident data supporting autonomous vehicle control strategies

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