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打车司机驾驶风格的分类与时空分布特征分析:以中国为例。

The Analysis of Classification and Spatiotemporal Distribution Characteristics of Ride-Hailing Driver's Driving Style: A Case Study in China.

机构信息

School of Transportation Science and Engineering, Beijing Key Laboratory for Cooperative Vehicle Infrastructure Systems and Safety Control, Beihang University, Beijing 100191, China.

Beijing Advanced Innovation Center for Big Data and Brain Computing, Beihang University, Beijing 100191, China.

出版信息

Int J Environ Res Public Health. 2022 Aug 7;19(15):9734. doi: 10.3390/ijerph19159734.

Abstract

Monitoring the driving styles of ride-hailing drivers is helpful for providing targeted training for drivers and improving the safety of the service. However, previous studies have lacked analyses of the temporal variation as well as spatial variation characteristics of driving styles. Understanding the variations can also help authorities formulate driver management policies. In this study, trajectory data are used to analyze driving styles in various temporal and spatial scenarios involving 34,167 drivers. The k-means method is used to cluster sample drivers. In terms of driving style time-varying, we found that only 31.79% of drivers could maintain a stable driving style throughout the day. Spatially, we divided the research area into two parts, namely, road segments and intersections, to analyze the spatial driving characteristics of drivers with different styles. The speed distribution, the acceleration and deceleration distributions are analyzed, results indicated that aggressive drivers display more aggressive driving styles in road segments, and conservative drivers exhibit more conservative driving styles at intersections. The findings of this study provide an understanding of temporal and spatial driving behavior factors for ride-hailing drivers and offer valuable contributions to ride-hailing driver training and road safety management.

摘要

监测网约车司机的驾驶风格有助于为司机提供有针对性的培训,提高服务安全性。然而,以前的研究缺乏对驾驶风格的时间变化和空间变化特征的分析。了解这些变化也有助于当局制定驾驶员管理政策。在这项研究中,我们使用轨迹数据来分析涉及 34167 名司机的各种时间和空间场景下的驾驶风格。使用 k-means 方法对样本司机进行聚类。就驾驶风格的时变而言,我们发现只有 31.79%的司机能够在一整天保持稳定的驾驶风格。在空间上,我们将研究区域分为道路路段和交叉口两部分,分析具有不同风格的司机的空间驾驶特征。分析了速度分布、加速度和减速度分布,结果表明,激进的司机在道路路段表现出更激进的驾驶风格,而保守的司机在交叉口表现出更保守的驾驶风格。本研究的结果为网约车司机的时间和空间驾驶行为因素提供了了解,并为网约车司机培训和道路安全管理提供了有价值的贡献。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/76c0/9368344/c83082291c89/ijerph-19-09734-g001.jpg

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