与自动队列的交互:人类驾驶员在计划变道中的自适应行为

Xiang Guo, Yichen Jiang, Inki Kim
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引用次数: 2

摘要

随着对自动驾驶技术的日益依赖,混合交通预计将成为未来交通生态系统的主导模式,这将极大地改变手动车辆驾驶员对自动驾驶车辆的感知和互动方式。从人机交互的角度来看,一个问题出现了,究竟是人类还是车辆算法应该适应无数的交通状况。为了解决这一问题,本论文招募了11名参与者进行中等保真度的驾驶模拟研究,并收集了他们在计划变道时的驾驶表现和凝视行为,当他们被期望从不同时间车头的车辆队列中超车时。结果表明,在变道过程中,受试者对不同的车道变化有不同程度的适应行为和风险态度。由于混合交通交互中存在较大的个体差异,因此需要高度自适应的自主排算法。在此基础上,提出了规划变道的行为标志。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interacting with Autonomous Platoons: Human Driver’s Adaptive Behaviors in Planned Lane Changes
With an increasing reliance on autonomous driving technologies, mixed traffic is expected to emerge as a dominant mode in the traffic ecosystem of the coming future, which will drastically change how the human drivers of manual vehicles perceive and interact with autonomous vehicles. From the standpoint of human-automation interaction, a question arises whether it is humans or vehicles algorithms that should adapt themselves to the myriads of traffic situations. To address this question, the current paper recruited eleven participants to a medium-fidelity driving simulation study, and collected driving performance and gaze behaviors during the planned lane changes when they were expected to cut their ways through vehicle platoons of different time headways. The results showed a varying degree of adaptive behaviors and risk attitudes from participants in response to the different headways during the lane change. Due to this large individual variation in mixed traffic interaction, highly adaptive algorithm for autonomous platoon is much desired. In this regard, some behavioral markers for planned lane change was recommended in this paper.
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