Behavioral adaptation of drivers when driving among automated vehicles

Maytheewat Aramrattana;Jiali Fu;Selpi
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引用次数: 3

Abstract

Purpose - This paper aims to explore whether drivers would adapt their behavior when they drive among automated vehicles (AVs) compared to driving among manually driven vehicles (MVs). Understanding behavioral adaptation of drivers when they encounter AVs is crucial for assessing impacts of AVs in mixed-traffic situations. Here, mixed-traffic situations refer to situations where AVs share the roads with existing nonautomated vehicles such as conventional MVs. Design/methodology/approach - A driving simulator study is designed to explore whether such behavioral adaptations exist. Two different driving scenarios were explored on a three-lane highway: driving on the main highway and merging from an on-ramp. For this study, 18 research participants were recruited. Findings - Behavioral adaptation can be observed in terms of car-following speed, car-following time gap, number of lane change and overall driving speed. The adaptations are dependent on the driving scenario and whether the surrounding traffic was AVs or MVs. Although significant differences in behavior were found in more than 90% of the research participants, they adapted their behavior differently, and thus, magnitude of the behavioral adaptation remains unclear. Originality/value - The observed behavioral adaptations in this paper were dependent on the driving scenario rather than the time gap between surrounding vehicles. This finding differs from previous studies, which have shown that drivers tend to adapt their behaviors with respect to the surrounding vehicles. Furthermore, the surrounding vehicles in this study are more "free flow'" compared to previous studies with a fixed formation such as platoons. Nevertheless, long-term observations are required to further support this claim.
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驾驶员在自动驾驶车辆中驾驶时的行为适应
目的——本文旨在探讨与在手动车辆中驾驶相比,驾驶员在自动车辆中驾驶时是否会调整自己的行为。了解驾驶员遇到AVs时的行为适应对于评估混合交通情况下AVs的影响至关重要。这里,混合交通情况是指AV与现有的非自动车辆(如传统MV)共享道路的情况。设计/方法/方法-驾驶模拟器研究旨在探索是否存在这种行为适应。在三车道高速公路上探索了两种不同的驾驶场景:在主高速公路上行驶和从入口匝道合流。本研究招募了18名研究参与者。研究结果-行为适应可以从跟车速度、跟车时间间隔、变道次数和整体驾驶速度等方面进行观察。自适应取决于驾驶场景以及周围的交通是AV还是MV。尽管超过90%的研究参与者在行为上存在显著差异,但他们对自己的行为的适应不同,因此,行为适应的程度尚不清楚。原创性/价值-本文中观察到的行为适应取决于驾驶场景,而不是周围车辆之间的时间间隔。这一发现与之前的研究不同,之前的研究表明,驾驶员倾向于根据周围的车辆调整自己的行为。此外,与之前的固定编队(如排)研究相比,本研究中的周围车辆更“自由流动”。然而,需要长期观察才能进一步支持这一说法。
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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Front Cover Contents Advancements and Prospects in Multisensor Fusion for Autonomous Driving Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation Decision Making and Control of Autonomous Vehicles Under the Condition of Front Vehicle Sideslip
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