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驾驶员行为与车载技术交互的人类绩效模型预测综述

A Review of Human Performance Models for Prediction of Driver Behavior and Interactions With In-Vehicle Technology.

机构信息

Industrial and Systems Engineering, Texas A&M University, College Station, TX, USA.

出版信息

Hum Factors. 2024 Apr;66(4):1249-1275. doi: 10.1177/00187208221132740. Epub 2022 Oct 19.

DOI:10.1177/00187208221132740
PMID:36259529
Abstract

OBJECTIVE

This study investigated the use of human performance modeling (HPM) approach for prediction of driver behavior and interactions with in-vehicle technology.

BACKGROUND

HPM has been applied in numerous human factors domains such as surface transportation as it can quantify and predict human performance; however, there has been no integrated literature review for predicting driver behavior and interactions with in-vehicle technology in terms of the characteristics of methods used and variables explored.

METHOD

A systematic literature review was conducted using Compendex, Web of Science, and Google Scholar. As a result, 100 studies met the inclusion criteria and were reviewed by the authors. Model characteristics and variables were summarized to identify the research gaps and to provide a lookup table to select an appropriate method.

RESULTS

The findings provided information on how to select an appropriate HPM based on a combination of independent and dependent variables. The review also summarized the characteristics, limitations, applications, modeling tools, and theoretical bases of the major HPMs.

CONCLUSION

The study provided a summary of state-of-the-art on the use of HPM to model driver behavior and use of in-vehicle technology. We provided a table that can assist researchers to find an appropriate modeling approach based on the study independent and dependent variables.

APPLICATION

The findings of this study can facilitate the use of HPM in surface transportation and reduce the learning time for researchers especially those with limited modeling background.

摘要

目的

本研究旨在探讨人类绩效建模(HPM)方法在预测驾驶员行为和与车载技术交互方面的应用。

背景

HPM 已在众多人类因素领域中得到应用,例如地面交通,因为它可以量化和预测人类绩效;然而,目前还没有针对驾驶员行为和与车载技术交互的综合文献综述,无法全面了解所使用方法的特点和所探索变量。

方法

使用 Compendex、Web of Science 和 Google Scholar 进行了系统的文献综述。结果,有 100 项研究符合纳入标准,并由作者进行了审查。总结了模型的特点和变量,以确定研究差距,并提供一个查找表以选择合适的方法。

结果

研究结果提供了有关如何根据独立和依赖变量的组合选择合适的 HPM 的信息。综述还总结了主要 HPM 的特点、局限性、应用、建模工具和理论基础。

结论

本研究总结了使用 HPM 对驾驶员行为和车载技术使用进行建模的最新技术。我们提供了一个表格,可帮助研究人员根据研究的独立和依赖变量找到合适的建模方法。

应用

本研究的结果可以促进 HPM 在地面交通中的应用,并减少研究人员,尤其是那些建模背景有限的研究人员的学习时间。

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