4.6 Article

A Crash Injury Model Involving Autonomous Vehicle: Investigating of Crash and Disengagement Reports

Journal

SUSTAINABILITY
Volume 13, Issue 14, Pages -

Publisher

MDPI
DOI: 10.3390/su13147938

Keywords

autonomous vehicles; crash severity; disengagements

Funding

  1. Australian Research Council [LP160101021]
  2. Australian Research Council [LP160101021] Funding Source: Australian Research Council

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The study conducted a comprehensive evaluation of California DMV data and found that a decrease in automated disengagements does not necessarily denote technological improvement; factors impacting crash severity in autonomous vehicles remain undefined. Utilizing machine learning techniques to analyze crash severity features and issues, various crash severity models were developed with the bagging classifier model displaying the highest performance.
Autonomous vehicles (AVs) are being extensively tested on public roads in several states in the USA, such as California, Florida, Nevada, and Texas. AV utilization is expected to increase into the future, given rapid advancement and development in sensing and navigation technologies. This will eventually lead to a decline in human driving. AVs are generally believed to mitigate crash frequency, although the repercussion of AVs on crash severity is ambiguous. For the data-driven and transparent deployment of AVs in California, the California Department of Motor Vehicles (CA DMV) commissioned AV manufacturers to draft and publish reports on disengagements and crashes. This study performed a comprehensive assessment of CA DMV data from 2014 to 2019 from a safety standpoint, and some trends were discerned. The results show that decrement in automated disengagements does not necessarily imply an improvement in AV technology. Contributing factors to the crash severity of an AV are not clearly defined. To further understand crash severity in AVs, the features and issues with data are identified and discussed using different machine learning techniques. The CA DMV accident report data were utilized to develop a variety of crash AV severity models focusing on the injury for all crash typologies. Performance metrics were discussed, and the bagging classifier model exhibited the best performance among different candidate models. Additionally, the study identified potential issues with the CA DMV data reporting protocol, which is imperative to share with the research community. Recommendations are provided to enhance the existing reports and append new domains.

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