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车载远程信息处理技术在驾驶行为监测中的应用的系统评价。

A systematic review of the use of in-vehicle telematics in monitoring driving behaviours.

机构信息

Department of Health Science and Biostatistics, Faculty of Health, Arts and Design, Swinburne University of Technology, Hawthorn, VIC 3122, Australia.

Centre for Mental Health and Brain Science, Swinburne University of Technology, Hawthorn, VIC 3122, Australia.

出版信息

Accid Anal Prev. 2024 May;199:107519. doi: 10.1016/j.aap.2024.107519. Epub 2024 Mar 7.

Abstract

BACKGROUND

Road traffic deaths are increasing globally, and preventable driving behaviours are a significant cause of these deaths. In-vehicle telematics has been seen as technology that can improve driving behaviour. The technology has been adopted by many insurance companies to track the behaviours of their consumers. This systematic review presents a summary of the ways that in-vehicle telematics has been modelled and analysed.

METHODOLOGY

Electronic searches were conducted on Scopus and Web of Science. Studies were only included if they had a sample size of 10 or more participants, collected their data over at least multiple days, and were published during or after 2010. 45 relevant papers were included in the review. 27 of these articles received a rating of "good" in the quality assessment.

RESULTS

We found a divide in the literature regarding the use of in-vehicle telematics. Some articles were interested in the utility of in-vehicle telematics for insurance purposes, while others were interested in determining the influence that in-vehicle telematics has on driving behaviour. Machine learning analyses were the most common forms of analysis seen throughout the review, being especially common in articles with insurance-based outcomes. Acceleration, braking, and speed were the most common variables identified in the review.

CONCLUSION

We recommend that future studies provide the demographical information of their sample so that the influence of in-vehicle telematics on the driving behaviours of different groups can be understood. It is also recommended that future studies use multi-level models to account for the hierarchical structure of the telematics data. This hierarchical structure refers to the individual trips for each driver.

摘要

背景

全球道路交通死亡人数不断增加,可避免的驾驶行为是造成这些死亡的一个重要原因。车载远程信息处理技术被认为是可以改善驾驶行为的技术。许多保险公司都采用了这项技术来跟踪其消费者的行为。本系统评价总结了车载远程信息处理技术建模和分析的方法。

方法

在 Scopus 和 Web of Science 上进行电子检索。只有样本量为 10 人或以上、至少连续多天收集数据且在 2010 年及以后发表的研究才被纳入本评价。共纳入 45 篇相关文献。其中 27 篇文章在质量评估中被评为“良好”。

结果

我们发现,文献中对车载远程信息处理技术的使用存在分歧。一些文章对车载远程信息处理技术在保险方面的实用性感兴趣,而另一些文章则对车载远程信息处理技术对驾驶行为的影响感兴趣。机器学习分析是本评价中最常见的分析形式,尤其是在基于保险结果的文章中更为常见。在本评价中,识别出的最常见变量是加速度、制动和速度。

结论

我们建议未来的研究提供样本的人口统计学信息,以便了解车载远程信息处理技术对不同群体驾驶行为的影响。还建议未来的研究使用多层次模型来解释远程信息处理数据的层次结构。这种层次结构是指每个驾驶员的个人行程。

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