自雇卡车司机发生车祸的风险:利用疲劳数据和机器学习预测模型评估普遍程度

IF 3.9 2区 工程技术 Q1 ERGONOMICS
Rodrigo Duarte Soliani , Alisson Vinicius Brito Lopes , Fábio Santiago , Luiz Bueno da Silva , Nwabueze Emekwuru , Ana Carolina Lorena
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引用次数: 0

摘要

导言:运输公司越来越多地将其劳动力从永久性岗位转为外包岗位,这一趋势对自雇卡车司机造成了影响。这种转变导致工作时间延长,从而导致疲劳和撞车风险增加。本研究调查了导致疲劳和卡车驾驶性能受损的因素,同时开发了一个基于机器学习的模型,用于预测交通事故风险。研究方法为此,我们设计了一份综合问卷,涵盖了参与者的社会人口特征、健康、睡眠和工作条件等各个方面。问卷调查对象为巴西圣保罗州的 363 名自营卡车司机。约 63% 的受访者吸烟,17.56% 的受访者称每周饮酒超过四次,并承认在过去三年中至少发生过一次车祸。50%的受访者表示曾吸食毒品(如苯丙胺、大麻或可卡因)。结果:受访者宣称驾驶约 14.62 小时(SD = 1.97)后才感到疲劳,过去 24 小时内平均睡眠时间约为 5.92 小时(SD = 0.96)。卡车司机一致认为,卡车装货/卸货的等待时间对其工作日的持续时间和休息时间有很大影响。研究采用了八种机器学习算法来估算卡车司机发生车祸的可能性,准确率在 78% 到 85% 之间。研究结论这些结果验证了准确的机器学习衍生模型的构建。实际应用:这些发现可以为旨在提高自雇卡车司机和广大公众的安全和福祉的政策和实践提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk of crashes among self-employed truck drivers: Prevalence evaluation using fatigue data and machine learning prediction models
Introduction: Transportation companies have increasingly shifted their workforce from permanent to outsourced roles, a trend that has consequences for self-employed truck drivers. This transition leads to extended working hours, resulting in fatigue and an increased risk of crashes. The present study investigates the factors contributing to fatigue and impairment in truck driving performance while developing a machine learning-based model for predicting the risk of traffic crashes. Method: To achieve this, a comprehensive questionnaire was designed, covering various aspects of the participants’ sociodemographic characteristics, health, sleep, and working conditions. The questionnaire was administered to 363 self-employed truck drivers operating in the State of São Paulo, Brazil. Approximately 63% of the participants were smokers, while 17.56% reported drinking alcohol more than four times a week, and also admitted to being involved in at least one crash in the last three years. Fifty percent of the respondents reported consuming drugs (such as amphetamines, marijuana, or cocaine). Results: The surveyed individuals declared driving for approximately 14.62 h (SD = 1.97) before they felt fatigued, with an average of approximately 5.92 h of sleep in the last 24 h (SD = 0.96). Truck drivers unanimously agreed that waiting times for truck loading/unloading significantly impact the duration of their working day and rest time. The study employed eight machine learning algorithms to estimate the likelihood of truck drivers being involved in crashes, achieving accuracy rates ranging between 78% and 85%. Conclusions: These results validated the construction of accurate machine learning-derived models. Practical Applications: These findings can inform policies and practices aimed at enhancing the safety and well-being of self-employed truck drivers and the broader public.
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来源期刊
CiteScore
6.40
自引率
4.90%
发文量
174
审稿时长
61 days
期刊介绍: Journal of Safety Research is an interdisciplinary publication that provides for the exchange of ideas and scientific evidence capturing studies through research in all areas of safety and health, including traffic, workplace, home, and community. This forum invites research using rigorous methodologies, encourages translational research, and engages the global scientific community through various partnerships (e.g., this outreach includes highlighting some of the latest findings from the U.S. Centers for Disease Control and Prevention).
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