Investigating the effects of sleepiness in truck drivers on their headway: an instrumental variable model with grouped random parameters and heterogeneity in their means

Afghari, AP, Papadimitriou, E, Pilkington-Cheney, F ORCID logoORCID: https://orcid.org/0000-0001-8043-3137, Filtness, A, Brijs, T, Brijs, K, Cuenen, A, De Vos, B, Dirix, H, Ross, V, Wets, G, Lourenço, A and Rodrigues, L, 2022. Investigating the effects of sleepiness in truck drivers on their headway: an instrumental variable model with grouped random parameters and heterogeneity in their means. Analytic Methods in Accident Research, 36: 100241. ISSN 2213-6657

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Abstract

Sleepiness is a common human factor among truck drivers resulting from sleep loss or time of day and causing impairment in vigilance, attention, and driving performance. While driver sleepiness may be associated with increased risk on the road, sleepy drivers may drive more cautiously as a result of risk-compensating behaviour. This endogeneity has been overlooked in the previous driver behaviour studies and may provide new insight into the effects of sleepiness on driving performance. In addition, the Karolinska Sleepiness Scale (KSS) has been widely used to quantify sleepiness. However, the KSS is a subjective self-reported measure and is reliant on honest reporting and understanding of the scale. An alternative way of quantifying sleepiness is using drivers’ heart rate and correlating it with their sleepiness. While recent advances in data collection technologies have made it possible to collect heart rate data in real-time and in an unobtrusive way, their application in measuring sleepiness particularly among truck drivers has been unexplored.

This study aims to address these gaps and contribute to analytic methods in road safety research by collecting truck drivers’ heart rate data in real-time, measuring sleepiness from those data, and using it in an instrumental variable modelling framework to investigate its effect on driving performance. To this end, a driving simulator experiment was conducted in Belgium and heart rate data were collected for 35 truck drivers via sensors installed on the steering wheel of the simulator. Additional demographic data were collected using a questionnaire before the experiment. An instrumental variable model consisting of a discrete binary logit and a continuous generalized linear model with grouped random parameters and heterogeneity in their means was then developed to study the effects of driver sleepiness on headway. Results indicate that age, years of holding driver licence, road type, type of truck transport, and weekly distance travelled are significantly associated with sleepiness among the participants of this study. Sleepy driving is associated with reduced headway for 30.5% of the drivers and increased headway for the other 69.5%, and night-time shift is associated with such varied effects. These findings indicate that there may be group- or context-specific risk patterns which cannot be explicitly addressed by hours of service regulations and therefore, transport operators, driver trainers and fleet managers should identify and handle such context-specific high risk patterns in order to ensure safe operations.

Item Type: Journal article
Publication Title: Analytic Methods in Accident Research
Creators: Afghari, A.P., Papadimitriou, E., Pilkington-Cheney, F., Filtness, A., Brijs, T., Brijs, K., Cuenen, A., De Vos, B., Dirix, H., Ross, V., Wets, G., Lourenço, A. and Rodrigues, L.
Publisher: Elsevier
Date: December 2022
Volume: 36
ISSN: 2213-6657
Identifiers:
Number
Type
10.1016/j.amar.2022.100241
DOI
1595021
Other
Divisions: Schools > School of Social Sciences
Record created by: Laura Ward
Date Added: 08 Sep 2022 15:05
Last Modified: 13 Feb 2024 03:00
URI: https://irep.ntu.ac.uk/id/eprint/46995

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