Impact of risk factors on work zone crashes using logistic models and Random Forest
Work zone safety is influenced by many risk factors. Consequently, a comprehensive knowledge of the risk factors identified from crash data analysis becomes critical in reducing risk levels and preventing severe crashes in work zones. This study focuses on the 2016 severe crashes that occurred in the State of Michigan (USA) in work zones along highway I-94. The study identified the risk factors from a wide range of crash variables characterizing environmental, driver, crash and road-related variables. The impact of these risk factors on crash severity was investigated using frequency analyses, logistic regression statistics, and a machine learning Random Forest (RF) algorithm. It is anticipated that the findings of this study will help traffic engineers and departments of transportation in developing work zone countermeasures to improve safety and reduce the crash risk. It was found that some of these factors could be overlooked when designing and devising work zone traffic control plans. Results indicate, for example, the need for appropriate traffic control mechanisms such as harmonizing the speed of vehicles before approaching work zones, the need to provide illumination at specific locations of the work zone, and the need to establish frequent public education programs, flyers, and ads targeting high-risk driver groups. Moreover, the Random Forest algorithm was found to be efficient, promising, and recommended in crash data analysis, specifically, when the data sample size is small.
- Record URL:
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Supplemental Notes:
- This paper was sponsored by TRB committee ACP55 Standing Committee on Traffic Control Devices.
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Corporate Authors:
Transportation Research Board
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Authors:
- Ashqar, Huthaifa I
- Shaheen, Qadri H
- Ashur, Suleiman A
- Rakha, Hesham A
- 0000-0002-5845-2929
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Conference:
- Transportation Research Board 100th Annual Meeting
- Location: Washington DC, United States
- Date: 2021-1-5 to 2021-1-29
- Date: 2021
Language
- English
Media Info
- Media Type: Digital/other
- Features: Figures; Maps; References; Tables;
- Pagination: 14p
Subject/Index Terms
- TRT Terms: Advanced traffic management systems; Crash severity; Logistic regression analysis; Machine learning; Risk assessment; Speed; Work zone safety
- Geographic Terms: Michigan
- Subject Areas: Construction; Highways; Maintenance and Preservation; Operations and Traffic Management; Planning and Forecasting; Safety and Human Factors;
Filing Info
- Accession Number: 01763497
- Record Type: Publication
- Report/Paper Numbers: TRBAM-21-00220
- Files: TRIS, TRB, ATRI
- Created Date: Feb 4 2021 10:54AM