Understanding the Cognitive and Psychological Impacts of Emerging Technologies on Driver Decision-Making Using Physiological Data

Pub Date : 2020-12-14 DOI:10.25394/PGS.13362923.V1
Shubham Agrawal
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Abstract

Emerging technologies such as real-time travel information systems and automated vehicles (AVs) have profound impacts on driver decision-making behavior. While they generally have positive impacts by enabling drivers to make more informed decisions or by reducing their driving effort, there are several concerns related to inadequate consideration of cognitive and psychological aspects in their design. In this context, this dissertation analyzes different aspects of driver cognition and psychology that arise from drivers’ interactions with these technologies using physiological data collected in two sets of driving simulator experiments. This research analyzes the latent cognitive and psychological effects of real-time travel information using electroencephalogram (EEG) data measured in the first set of driving simulator experiments. Using insights from the previous analysis, a hybrid route choice modeling framework is proposed that incorporates the impacts of the latent information-induced cognitive and psychological effects along with other explanatory variables that can be measured directly (i.e., route characteristics, information characteristics, driver attributes, and situational factors) on drivers’ route choice decisions. EEG data is analyzed to extract two latent cognitive variables that capture the driver’s cognitive effort during and immediately after the information provision, and cognitive inattention before implementing the route choice decision. Several safety concerns emerge for the transition of control from the automated driving system to a human driver after the vehicle issues a takeover warning under conditional vehicle automation (SAE Level 3). In this context, this study investigates the impacts of driver’s pre-warning cognitive state on takeover performance (i.e., driving performance while resuming manual control) using EEG data measured in the second set of driving simulator experiments. However, there is no comprehensive metric available in the literature that could be used to benchmark the role of driver’s pre-warning cognitive state on takeover performance, as most existing studies ignore the interdependencies between the associated driving performance indicators by analyzing them independently. This study proposes a novel comprehensive takeover performance metric, Takeover Performance Index (TOPI), that combines multiple driving performance indicators representing different aspects of takeover performance. Acknowledging the practical limitations of EEG data to have real-world applications, this dissertation evaluates the driver’s situational awareness (SA) and mental stress using eye-tracking and heart rate measures, respectively, that can be obtained from in-vehicle driver monitoring systems in real-time. The differences in SA and mental stress over time, their correlations, and their impacts on the TOPI are analyzed to evaluate the efficacy of using eye-tracking and heart rate measures for estimating the overall takeover performance in conditionally AVs. The study findings can assist information service providers and auto manufacturers to incorporate driver cognition and psychology in designing safer real-time information and their delivery systems. They can also aid traffic operators to incorporate cognitive aspects while devising strategies for designing and disseminating real-time travel information to influence drivers’ route choices. Further, the study findings provide valuable insights to design operating and licensing strategies, and regulations for conditionally automated vehicles. They can also assist auto manufacturers in designing integrated in-vehicle driver monitoring and warning systems that enhance road safety and user experience.
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利用生理数据理解新兴技术对驾驶员决策的认知和心理影响
实时出行信息系统和自动驾驶汽车等新兴技术对驾驶员的决策行为产生了深远的影响。虽然它们通常有积极的影响,使驾驶员能够做出更明智的决定或减少他们的驾驶努力,但在设计中存在一些与认知和心理方面考虑不足有关的问题。在此背景下,本文利用在两组驾驶模拟器实验中收集的生理数据,分析了驾驶员与这些技术互动所产生的驾驶员认知和心理的不同方面。本研究利用第一组驾驶模拟器实验的脑电图(EEG)数据,分析实时出行信息对认知和心理的潜在影响。在此基础上,本文提出了一种混合路径选择建模框架,该框架结合了潜在信息诱导的认知和心理效应以及其他可直接测量的解释变量(即路线特征、信息特征、驾驶员属性和情境因素)对驾驶员路线选择决策的影响。分析脑电数据,提取两个潜在的认知变量,捕捉驾驶员在信息提供期间和之后的认知努力,以及在实施路线选择决策之前的认知不注意。在条件车辆自动化(SAE Level 3)下,车辆发出接管警告后,从自动驾驶系统到人类驾驶员的控制权转移过程中出现了一些安全问题。在此背景下,本研究利用第二组驾驶模拟器实验中测量的脑电图数据,调查了驾驶员的预警认知状态对接管性能(即恢复手动控制时的驾驶性能)的影响。然而,文献中没有综合的指标可以用来衡量驾驶员预警认知状态对接管绩效的作用,因为大多数现有研究通过独立分析而忽略了相关驾驶绩效指标之间的相互依赖性。本研究提出了一种新的综合性收购绩效指标,即收购绩效指数(TOPI),它结合了代表收购绩效不同方面的多个驱动绩效指标。考虑到脑电图数据在多世界应用中的实际局限性,本文分别使用眼动追踪和心率测量来评估驾驶员的情境意识(SA)和精神压力,这些数据可以从车载驾驶员监控系统实时获得。分析了SA和精神压力随时间的差异、相关性及其对TOPI的影响,以评估使用眼动追踪和心率测量来估计条件自动驾驶的整体接管表现的有效性。研究结果可以帮助信息服务提供商和汽车制造商在设计更安全的实时信息及其传递系统时考虑驾驶员的认知和心理。它们还可以帮助交通运营商在制定设计和传播实时出行信息的策略时纳入认知方面,以影响驾驶员的路线选择。此外,研究结果为有条件自动驾驶汽车的设计和许可策略以及法规提供了有价值的见解。它们还可以帮助汽车制造商设计集成的车载驾驶员监控和预警系统,以增强道路安全和用户体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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