A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors

There are few studies on the violation of truck drivers, especially the hazmat truck driver, although truck driver's violation may cause serious casualties. This paper aims to investigate hazmat truck drivers' violation behavior and identify associated risk factors. Different data sources...

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Main Authors: Jinzhong Wu, Wenji Fan, Wencheng Wang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9113476/
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spelling doaj-c7844ebab75d40f598db3a5abd8f45cd2021-03-30T01:50:58ZengIEEEIEEE Access2169-35362020-01-01811097411098510.1109/ACCESS.2020.30011659113476A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk FactorsJinzhong Wu0Wenji Fan1Wencheng Wang2https://orcid.org/0000-0003-3494-052XSchool of Information Engineering, Chang’an University, Xi’an, ChinaResearch Institute of Highway, Ministry of Transport, Beijing, ChinaBeijing Municipal Institute of City Planning and Design, Beijing, ChinaThere are few studies on the violation of truck drivers, especially the hazmat truck driver, although truck driver's violation may cause serious casualties. This paper aims to investigate hazmat truck drivers' violation behavior and identify associated risk factors. Different data sources in intelligent transportation system (ITS) including hazmat transportation management system and traffic safety management system are extracted and emerged together. Three years (2016-2018) of violation data that comprised 11612 trip record in China are employed in this research. Based on Bayesian theory, this study proposes zero-inflated ordered probit (ZIOP) model and three alternative models to exploring the relationship between hazmat truck drivers' violation frequency and the key risk factors. The results show that ZIOP model can handle excessive zero observation problem of violation data properly and differentiate between `always-zero group' drivers and drivers who did not violate the traffic rules during research period but would do so in different surroundings. The results also indicate that the violation probability and the violation frequency level of hazmat truck drivers are influenced by driver characteristics, freight order attributes, and drivers' violation records. This research provides guidance for driving training and safety education of hazmat truck drivers, and will be helpful in building better driving simulation models.https://ieeexplore.ieee.org/document/9113476/Traffic data analysisroad traffic safetyHazmat truck violationzero-inflated ordered probit
collection DOAJ
language English
format Article
sources DOAJ
author Jinzhong Wu
Wenji Fan
Wencheng Wang
spellingShingle Jinzhong Wu
Wenji Fan
Wencheng Wang
A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors
IEEE Access
Traffic data analysis
road traffic safety
Hazmat truck violation
zero-inflated ordered probit
author_facet Jinzhong Wu
Wenji Fan
Wencheng Wang
author_sort Jinzhong Wu
title A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors
title_short A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors
title_full A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors
title_fullStr A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors
title_full_unstemmed A Zero-Inflated Ordered Probit Model to Analyze Hazmat Truck Drivers’ Violation Behavior and Associated Risk Factors
title_sort zero-inflated ordered probit model to analyze hazmat truck drivers’ violation behavior and associated risk factors
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description There are few studies on the violation of truck drivers, especially the hazmat truck driver, although truck driver's violation may cause serious casualties. This paper aims to investigate hazmat truck drivers' violation behavior and identify associated risk factors. Different data sources in intelligent transportation system (ITS) including hazmat transportation management system and traffic safety management system are extracted and emerged together. Three years (2016-2018) of violation data that comprised 11612 trip record in China are employed in this research. Based on Bayesian theory, this study proposes zero-inflated ordered probit (ZIOP) model and three alternative models to exploring the relationship between hazmat truck drivers' violation frequency and the key risk factors. The results show that ZIOP model can handle excessive zero observation problem of violation data properly and differentiate between `always-zero group' drivers and drivers who did not violate the traffic rules during research period but would do so in different surroundings. The results also indicate that the violation probability and the violation frequency level of hazmat truck drivers are influenced by driver characteristics, freight order attributes, and drivers' violation records. This research provides guidance for driving training and safety education of hazmat truck drivers, and will be helpful in building better driving simulation models.
topic Traffic data analysis
road traffic safety
Hazmat truck violation
zero-inflated ordered probit
url https://ieeexplore.ieee.org/document/9113476/
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