Shortest Path Problems with a Crash Risk Objective

Author:

Hu Qiong1ORCID,Mehdizadeh Amir2ORCID,Vinel Alexander2ORCID,Cai Miao3ORCID,Rigdon Steven E.4ORCID,Zhang Wenbin5ORCID,Megahed Fadel M.6ORCID

Affiliation:

1. Business School, University of Colorado Denver, Denver, CO

2. Department of Industrial and Systems Engineering, Auburn University, Auburn, AL

3. Department of Epidemiology, Sun Yat-sen University, Guangzhou, Guangdong, China

4. Department of Epidemiology and Biostatistics, Saint Louis University, Saint Louis, MO

5. Department of Computer Science, Michigan Technological University, Houghton, MI

6. Farmer School of Business, Miami University, Oxford, OH

Abstract

With more and more data related to driving, traffic, and road conditions becoming available, there has been renewed interest in predictive modeling of traffic incident risk and corresponding risk factors. New machine learning approaches in particular have recently been proposed, with the goal of forecasting the occurrence of either actual incidents or their surrogates, or estimating driving risk over specific time intervals, road segments, or both. At the same time, as evidenced by our review, prescriptive modeling literature (e.g., routing or truck scheduling) has yet to capitalize on these advancements. Indeed, research into risk-aware modeling for driving is almost entirely focused on hazardous materials transportation (with a very distinct risk profile) and frequently assumes a fixed incident risk per mile driven. We propose a framework for developing data-driven prescriptive optimization models with risk criteria for traditional trucking applications. This approach is combined with a recently developed machine learning model to predict driving risk over a medium-term time horizon (the next 20 min to an hour of driving), resulting in a biobjective shortest path problem. We further propose a solution approach based on the k-shortest path algorithm and illustrate how this can be employed.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Civil and Structural Engineering

Reference34 articles.

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2. World Health Organization(WHO). Road Safety Facts. 2022. https://www.who.int/news-room/fact-sheets/detail/road-traffic-injuries.

3. NHTSA’s National Center for Statistics and Analysis. 2020 Data: Large Trucks. Report No. DOT HS 813 286. U.S. Department of Transportation, National Highway Traffic Safety Administration, Traffic Safety Facts, Washington, D.C., 2022. https://crashstats.nhtsa.dot.gov/#!/PublicationList/82.

4. A Review of Data Analytic Applications in Road Traffic Safety. Part 1: Descriptive and Predictive Modeling

5. A Review of Data Analytic Applications in Road Traffic Safety. Part 2: Prescriptive Modeling

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