利用VR仿真平台分析复杂驾驶场景下手动和自动驾驶模式的不一致性

Zheng Xu;Yihai Fang;Nan Zheng;Hai L. Vu
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引用次数: 10

摘要

目的-借助自然模拟,本文旨在研究复杂场景中手动和自动驾驶模式下的人类行为。设计/方法/方法-通过将虚拟现实界面与微观模拟模型相结合来建立模拟环境。在仿真中,车辆自主性是通过集成人工神经网络和遗传算法的框架来开发的。进行了人类受试者实验,参与者被要求虚拟地坐在开发的自动驾驶汽车(AV)中,该汽车在混合交通环境中既能实现人类驾驶功能,又能实现自动驾驶功能。研究结果——毫不奇怪,在两种驾驶模式之间发现了不一致,AV的驾驶策略会导致认知偏差,并使参与者感到不安全。尽管只有一小部分AV在测试阶段发生事故,但参与者仍然经常在AV操作期间进行干预。同样,尽管统计结果反映AV在感知到的高风险条件下行驶,但很少会发生实际的撞车事故。这表明,经典的安全替代测量,例如碰撞时间,可能需要对混合交通流进行调整。研究局限性/影响-了解AV的行为以及AV和人类驾驶员之间的行为差异很重要,因为开发的平台只是识别AV可能无法做出反应的关键场景的第一步。实际意义——本文试图填补现有的研究空白,为AV体验准备接近现实的工具,并进一步了解高级自动驾驶过程中的人类行为。社会影响——这项工作旨在系统分析各种驾驶场景(即多个场景和各种交通条件)下手动和自动驾驶模式之间的驾驶模式不一致,以便于用户接受AV技术。独创性/价值-一个接近现实的AV体验和AV相关行为研究工具。关于手动驾驶和自动驾驶之间驾驶模式不一致的系统分析。确定AV可能无法做出反应的关键场景的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing the inconsistency in driving patterns between manual and autonomous modes under complex driving scenarios with a VR-enabled simulation platform
Purpose - With the aid of naturalistic simulations, this paper aims to investigate human behavior during manual and autonomous driving modes in complex scenarios. Design/methodology/approach - The simulation environment is established by integrating virtual reality interface with a micro-simulation model. In the simulation, the vehicle autonomy is developed by a framework that integrates artificial neural networks and genetic algorithms. Human-subject experiments are carried, and participants are asked to virtually sit in the developed autonomous vehicle (AV) that allows for both human driving and autopilot functions within a mixed traffic environment. Findings - Not surprisingly, the inconsistency is identified between two driving modes, in which the AV's driving maneuver causes the cognitive bias and makes participants feel unsafe. Even though only a shallow portion of the cases that the AV ended up with an accident during the testing stage, participants still frequently intervened during the AV operation. On a similar note, even though the statistical results reflect that the AV drives under perceived high-risk conditions, rarely an actual crash can happen. This suggests that the classic safety surrogate measurement, e.g. time-to-collision, may require adjustment for the mixed traffic flow. Research limitations/implications - Understanding the behavior of AVs and the behavioral difference between AVs and human drivers are important, where the developed platform is only the first effort to identify the critical scenarios where the AVs might fail to react. Practical implications - This paper attempts to fill the existing research gap in preparing close-to-reality tools for AV experience and further understanding human behavior during high-level autonomous driving. Social implications - This work aims to systematically analyze the inconsistency in driving patterns between manual and autopilot modes in various driving scenarios (i.e. multiple scenes and various traffic conditions) to facilitate user acceptance of AV technology. Originality/value - A close-to-reality tool for AV experience and AV-related behavioral study. A systematic analysis in relation to the inconsistency in driving patterns between manual and autonomous driving. A foundation for identifying the critical scenarios where the AVs might fail to react.
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