Modeling the effects of auditory display takeover requests on drivers' behavior in autonomous vehicles

Sangjin Ko, Yiqi Zhang, M. Jeon
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引用次数: 12

Abstract

In semi-autonomous vehicles (SAE level 3) that require driver's engagement in critical situations, it is important to secure reliable control transitions. There have been many studies on investigating appropriate auditory displays for takeover request (TOR) but most of them were empirical experiments. In the present study, we established two computational models using a Queuing Network Model Human Processor (QN-MHP) framework to predict a driver's reaction time to auditory displays for TOR. The reaction time for different sound types were modeled based on the results of subjective questionnaire in empirical studies. Separately, the reaction times for various non-speech sounds were modeled by using acoustical characteristics of sounds and previous empirical studies. It is one of a few attempts modeling the effects of auditory displays for TOR on the reaction time in autonomous driving. The current study will contribute to driving research by allowing us to simulate and predict drivers' behavior.
模拟自动驾驶汽车中听觉显示接管请求对驾驶员行为的影响
在半自动驾驶汽车(SAE 3级)中,在紧急情况下需要驾驶员参与,确保可靠的控制转换非常重要。关于接管请求(TOR)的适当听觉表现的研究很多,但大多是实证实验。在本研究中,我们使用排队网络模型人类处理器(QN-MHP)框架建立了两个计算模型来预测驾驶员对听觉显示的反应时间。在实证研究中,以主观问卷调查的结果为基础,对不同声音类型的反应时间进行建模。另外,利用声音的声学特性和以往的实证研究,对各种非语音的反应时间进行建模。这是为数不多的模拟听觉显示对自动驾驶反应时间影响的尝试之一。目前的研究将有助于驾驶研究,使我们能够模拟和预测司机的行为。
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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