Analysis of the influence of non-driving-related activities on seat parameters and sitting posters

Manuel Kipp
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Abstract

Changing mobility scenarios are leading to innovative vehicle concepts. The absence of the driver has opened up a wide range of modified interiors and seating configurations for highly automated vehicles, which are the focus of research. With the ongoing automatization in the car industry, new questions arise about human factors. From SAE level 3, conditional driving automation allows the driver to disengage from the driving task without the need for supervision. With an increasing degree of automation, the active vehicle driver is transformed into a passive vehicle passenger. This gives the driver the possibility to deal with non-driving related activities and tasks (NDRA, NDRT) whenever the automation is active. The question of what people are likely to do during an automated ride has mostly been addressed via online surveys or by analyzing other means of transportation like train and bus. Various studies examining train or bus journeys using different methods such as (online) surveys or observation of passengers in different means of transport show a wide variety of activities such as listening to music, looking at the surroundings, relaxing, talking on the phone, reading or working, and the use of electronic devices such as laptops, tablets and smartphones [1-2]. Other studies additionally examined seating parameters such as seat and recline angle [3-8]. However, knowing about desired activities allows researchers and developers to design future car interior including seat and seating position, internal HMI, air-conditioning and the automated driving functions according to user needs. Highly automated and autonomous vehicles enable different seating postures. Space in front of the seat allows the passenger more range for movement and postures [4]. Moreover, several studies contribute to the space managements of interior design in the future and show significant effects of NDRTs on driving postures concerning the seat positions and backrest angles [3,8].
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非驾驶相关活动对座椅参数和座标的影响分析
不断变化的出行场景正在催生创新的汽车概念。驾驶员的缺席为高度自动化车辆的内饰和座椅配置提供了广泛的改进空间,这些都是研究的重点。随着汽车工业自动化的不断发展,关于人为因素的新问题也出现了。从SAE 3级开始,有条件自动驾驶允许驾驶员在不需要监督的情况下脱离驾驶任务。随着自动化程度的提高,主动的车辆驾驶员逐渐转变为被动的车辆乘客。这使驾驶员能够在自动化处于活动状态时处理与驾驶无关的活动和任务(NDRA、NDRT)。人们在自动驾驶过程中可能会做什么,这个问题主要是通过在线调查或分析火车和公共汽车等其他交通工具来解决的。各种研究使用不同的方法,如(在线)调查或观察乘坐不同交通工具的乘客,对火车或公共汽车旅行进行了各种各样的研究,显示了各种各样的活动,如听音乐、看周围环境、放松、打电话、阅读或工作,以及使用笔记本电脑、平板电脑和智能手机等电子设备[1-2]。其他研究还考察了座椅参数,如座椅和倾斜角度[3-8]。然而,了解期望的活动可以让研究人员和开发人员根据用户需求设计未来的汽车内饰,包括座椅和座位位置,内部HMI,空调和自动驾驶功能。高度自动化和自动驾驶的车辆可以实现不同的座位姿势。座位前面的空间给乘客提供了更多的活动和姿势范围。此外,一些研究为未来室内设计的空间管理做出了贡献,并表明NDRTs对座椅位置和靠背角度等驾驶姿势有显著影响[3,8]。
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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