A Crash Prediction Method Based on Artificial Intelligence Techniques and Driving Behavior Event Data
- Title
- A Crash Prediction Method Based on Artificial Intelligence Techniques and Driving Behavior Event Data
- Author
- 오철
- Keywords
- crash risk; driving behavior event data; ensemble; gradient boosting; safety indicators
- Issue Date
- 2021-06
- Publisher
- MDPI
- Citation
- SUSTAINABILITY, v. 13, NO 11, Page. 6102-6102
- Abstract
- Various studies on how to prevent and deal with traffic accidents are ongoing. In the past,
the key research emphasis was on passive accident response measures that analyzed roadway-based
historical data to identify road sections with high crash risk. Through assessing crash risks by
analyzing simulation data and actual vehicle driving trajectory data, this study suggests a method
of effectively preventing accidents before they happen. In this analysis, using digital tachograph
(DTG) data, which is the vehicle trajectory data for commercial vehicles running on Korean highways,
hazardous and normal traffic flows were identified and extracted. Driving behavior event data for
both types of traffic flow was processed by measuring safety indicators through the extracted data.
Safety indicators with a high impact on traffic flow classification were then extracted using gradient
boosting, a representative ensemble technique. A neural network analysis was performed using the
extracted safety indicators as independent variables to create a traffic flow classifier, which had a high
accuracy of 94.59%. The DTG data set was also classified based on the severity of each accident that
occurred in the studied roadway, the time of the accident, and the weather; the results were compiled
to enable comprehensive accident prediction. It is expected that proactive crash prevention will be
possible in the future by evaluating real-time accident risks using the findings and ensemble-based
methodologies of this paper.
- URI
- https://www.proquest.com/docview/2539994520?accountid=11283https://repository.hanyang.ac.kr/handle/20.500.11754/171661
- ISSN
- 20711050
- DOI
- 10.3390/su13116102
- Appears in Collections:
- COLLEGE OF ENGINEERING SCIENCES[E](공학대학) > TRANSPORTATION AND LOGISTICS ENGINEERING(교통·물류공학과) > Articles
- Files in This Item:
There are no files associated with this item.
- Export
- RIS (EndNote)
- XLS (Excel)
- XML