An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China

Discovering the behavior pattern of urban high-risk driving is of great significance for national economy development and social stability. With increasing traffic accidents and crimes on current urban roads, the government endeavors to reduce the traffic violation rate. Exploring the behavior patte...

Full description

Bibliographic Details
Main Authors: Nuerzhegeti Aiyitibieke, Wenjun Wang, Nannan Wu, Ying Sun, Xuewei Li, Yueheng Sun
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8672888/
id doaj-b5bc26c9b67749f0bcd90e16dff60888
record_format Article
spelling doaj-b5bc26c9b67749f0bcd90e16dff608882021-03-29T22:46:16ZengIEEEIEEE Access2169-35362019-01-017436544366510.1109/ACCESS.2019.29069308672888An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in ChinaNuerzhegeti Aiyitibieke0Wenjun Wang1Nannan Wu2Ying Sun3Xuewei Li4https://orcid.org/0000-0002-5330-7298Yueheng Sun5College of Intelligence and Computing, Tianjin University, Tianjin, ChinaCollege of Intelligence and Computing, Tianjin University, Tianjin, ChinaCollege of Intelligence and Computing, Tianjin University, Tianjin, ChinaCollege of Intelligence and Computing, Tianjin University, Tianjin, ChinaCollege of Intelligence and Computing, Tianjin University, Tianjin, ChinaCollege of Intelligence and Computing, Tianjin University, Tianjin, ChinaDiscovering the behavior pattern of urban high-risk driving is of great significance for national economy development and social stability. With increasing traffic accidents and crimes on current urban roads, the government endeavors to reduce the traffic violation rate. Exploring the behavior pattern of urban high-risk driving is an effective approach to prevent traffic accidents. In this paper, we explore the urban-scale high-risk driving behavior pattern in China. In order to achieve this goal, we analyze the death records of traffics among more than 300 cities throughout the country. In particular, we first build a city network, in which a node represents the properties of the traffic violation for the discovery of the urban-scale high-risk driving behavior pattern. Six urban-scale high-risk driving behavior patterns about overspeeding, nonlicense, drunk, and violation of the traffic rules are discovered from the traffic violation city network data. The research result leads to three key conclusions. First, urban networks based on death records information show strong spatial dependence and hierarchical characteristics and are largely coupled with the space distribution of major cities in China, reflecting the spatial relationship and core-periphery structure of high-risk driving behavior on the urban-scale. Second, to a large extent, there is a frequent occurrence of death record information around or in major domestic cities, economic belts, and important coastal ports, such as Beijing, Tianjin, Shanghai, the Yangtze River Delta Economic Belt, and the Pearl River Delta Economic Belt. This phenomenon demonstrates the attractiveness of large cities and regions as a domestic economic and political center. Third, the geographical location of the city has an impact on the pattern of high-risk driving behavior. For example, Tangshan city, the largest production base of mineral resources in China, possessing several transportation routes and heavy vehicle flows on the road, shows an increasing probability of violation of the traffic law.https://ieeexplore.ieee.org/document/8672888/High-risk driving behaviortrafficcity networkurban-scale pattern
collection DOAJ
language English
format Article
sources DOAJ
author Nuerzhegeti Aiyitibieke
Wenjun Wang
Nannan Wu
Ying Sun
Xuewei Li
Yueheng Sun
spellingShingle Nuerzhegeti Aiyitibieke
Wenjun Wang
Nannan Wu
Ying Sun
Xuewei Li
Yueheng Sun
An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China
IEEE Access
High-risk driving behavior
traffic
city network
urban-scale pattern
author_facet Nuerzhegeti Aiyitibieke
Wenjun Wang
Nannan Wu
Ying Sun
Xuewei Li
Yueheng Sun
author_sort Nuerzhegeti Aiyitibieke
title An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China
title_short An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China
title_full An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China
title_fullStr An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China
title_full_unstemmed An Empirical Study on High-Risk Driving Behavior to Urban-Scale Pattern in China
title_sort empirical study on high-risk driving behavior to urban-scale pattern in china
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Discovering the behavior pattern of urban high-risk driving is of great significance for national economy development and social stability. With increasing traffic accidents and crimes on current urban roads, the government endeavors to reduce the traffic violation rate. Exploring the behavior pattern of urban high-risk driving is an effective approach to prevent traffic accidents. In this paper, we explore the urban-scale high-risk driving behavior pattern in China. In order to achieve this goal, we analyze the death records of traffics among more than 300 cities throughout the country. In particular, we first build a city network, in which a node represents the properties of the traffic violation for the discovery of the urban-scale high-risk driving behavior pattern. Six urban-scale high-risk driving behavior patterns about overspeeding, nonlicense, drunk, and violation of the traffic rules are discovered from the traffic violation city network data. The research result leads to three key conclusions. First, urban networks based on death records information show strong spatial dependence and hierarchical characteristics and are largely coupled with the space distribution of major cities in China, reflecting the spatial relationship and core-periphery structure of high-risk driving behavior on the urban-scale. Second, to a large extent, there is a frequent occurrence of death record information around or in major domestic cities, economic belts, and important coastal ports, such as Beijing, Tianjin, Shanghai, the Yangtze River Delta Economic Belt, and the Pearl River Delta Economic Belt. This phenomenon demonstrates the attractiveness of large cities and regions as a domestic economic and political center. Third, the geographical location of the city has an impact on the pattern of high-risk driving behavior. For example, Tangshan city, the largest production base of mineral resources in China, possessing several transportation routes and heavy vehicle flows on the road, shows an increasing probability of violation of the traffic law.
topic High-risk driving behavior
traffic
city network
urban-scale pattern
url https://ieeexplore.ieee.org/document/8672888/
work_keys_str_mv AT nuerzhegetiaiyitibieke anempiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT wenjunwang anempiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT nannanwu anempiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT yingsun anempiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT xueweili anempiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT yuehengsun anempiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT nuerzhegetiaiyitibieke empiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT wenjunwang empiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT nannanwu empiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT yingsun empiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT xueweili empiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
AT yuehengsun empiricalstudyonhighriskdrivingbehaviortourbanscalepatterninchina
_version_ 1724190947596566528