首页> 外文会议>Human Factors and Ergonomics Society Annual Meeting >THE EFFECTS OF VEHICLE LEVEL OF AUTOMATION AND WARNING TYPE ON RESPONSES TO VEHICLE HACKING
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THE EFFECTS OF VEHICLE LEVEL OF AUTOMATION AND WARNING TYPE ON RESPONSES TO VEHICLE HACKING

机译:汽车水平自动化和警告类型对车辆黑客响应的影响

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Modern surface transportation vehicles often include different levels of automation. Higher automation levels have the potential to impact surface transportation in unforeseen ways. For example, connected vehicles with higher levels of automation are at a higher risk for hacking attempts, because automated driving assistance systems often rely on onboard sensors and internet connectivity (Amoozadeh et al., 2015). As the automation level of vehicle control rises, it is necessary to examine the effect different levels of automation have on the driver-vehicle interactions. While research into the effect of automation level on driver-vehicle interactions is growing, research into how automation level affects driver's responses to vehicle hacking attempts is very limited. In addition, auditory warnings have been shown to effectively attract a driver's attention while performing a driving task, which is often visually demanding (Baldwin, 2011; Petermeijer, Doubek, & de Winter, 2017). An auditory warning can be either speech-based containing sematic information (e.g., "car in blind spot") or non-sematic (e.g., a tone, or an earcon), which can influence driver behaviors differently (Sabic, Mishler, Chen, & Hu, 2017). The purpose of the current study was to examine the effect of level of automation and warning type on driver responses to novel critical events, using vehicle hacking attempts as a concrete example, in a driving simulator. The current study compared how level of automation (manual vs. automated) and warning type (non-semantic vs. semantic) affected drivers' responses to a vehicle hacking attempt using time to collision (TTC) values, maximum steering wheel angle, number of successful responses, and other measures of response. A full factorial between-subjects design with the two factors made four conditions (Manual Semantic, Manual Non-Semantic, Automated Semantic, and Automated Non-Semantic). Seventy-two participants recruited using SONA (odupsychology.sona-systems.com) completed two simulated drives to school in a driving simulator. The first drive ended with the participant safely arriving at school. A two-second warning was presented to the participants three quarters of the way through the second drive and was immediately followed by a simulated vehicle hacking attempt. The warning either stated "Danger, hacking attempt incoming" in the semantic conditions or was a 500 Hz sine tone in the non-semantic conditions. The hacking attempt lasted five seconds before simulating a crash into a vehicle and ending the simulation if no intervention by the driver occurred. Our results revealed no significant effect of level of automation or warning type on TTC or successful response rate. However, there was a significant effect of level of automation on maximum steering wheel angle. This is a measure of response quality (Shen & Neyens, 2017), such that manual drivers had safer responses to the hacking attempt with smaller maximum steering wheel angles. In addition, an effect of warning type that approached significance was also found for maximum steering wheel angle such that participants who received a semantic warning had more severe and dangerous responses to the hacking attempt. The TTC and successful response results from the current experiment do not match those in the previous literature. The null results were potentially due to the warning implementation time and the complexity of the vehicle hacking attempt. In contrast, the maximum steering wheel angle results indicated that level of automation and warning type affected the safety and severity of the participants' responses to the vehicle hacking attempt. This suggests that both factors may influence responses to hacking attempts in some capacity. Further research will be required to determine if level of automation and warning type affect participants ability to safely respond to vehicle hacking attempts.
机译:现代表面运输车辆通常包括不同的自动化水平。更高的自动化水平有不可预见的方式影响地面交通的潜力。例如,具有较高的自动化水平连接车辆是在对黑客攻击的风险较高,因为自动化的驾驶辅助系统往往依赖于车载传感器和互联网连接(Amoozadeh等,2015)。随着车辆控制提高自动化水平,有必要检查的效果不同的自动化水平对驾驶车辆的相互作用。虽然研究自动化水平对驾驶员 - 车辆相互作用的影响越来越大,研究自动化水平如何影响到车辆的黑客攻击,驾驶员的反应是非常有限的。此外,听觉警告已被证明有效地吸引司机的注意力,同时执行驾驶任务,这往往是在视觉上要求苛刻(鲍德温,2011; Petermeijer,Doubek,和德温特,2017年)。听觉警告可以是包含基于语音的思迈特信息(例如,“汽车在盲点”)或非思迈特(例如,铃声或耳标),这会影响司机的行为有所不同(SABIC,米什勒,陈, &胡,2017)。目前研究的目的是检查自动化和警告类型驾驶员响应新颖关键事件的电平的效果,使用车辆黑客攻击作为具体的例子,在一个驾驶模拟器。目前的研究相比如何自动化(手动与自动的)以及警告类型(非语义与语义)的电平受影响司机的响应于车辆黑客使用碰撞时间(TTC)值,最大方向盘角度,数尝试成功的反应和响应的其他措施。全因子学科之间设计有两个因素使得四个条件(手动语义,手动非语义,自动语义,并自动非语义)。七十二个参与者使用SONA招募(odupsychology.sona-systems.com)完成了两个模拟驱动器到学校驾驶模拟器。第一个驱动器与参与者在学校安全到达结束。两秒警告是通过第二个驱动器呈现给与会者的四分之三,并紧跟着一个模拟车辆黑客行为。警告要么表示“危险,因为黑客行为来袭”在语义条件或在非语义条件500Hz的正弦波音。该黑客行为持续5秒模拟碰撞到车辆和结束仿真如果没有发生任何干预,驱动程序之前。我们的研究结果表明对TTC自动化或警告类型或成功的响应率的水平没有显著影响。然而,有上最大的方向盘角度自动化水平的显著效果。这是响应质量(申&Neyens,2017),使得手动驱动程序必须与较小的最大方向盘角度黑客企图更安全响应的量度。另外,预警式的效果接近显着,还发现了最大的方向盘角度,这样谁收到了语义警告与会者的黑客行为更严重和危险的反应。从目前的实验的TTC和成功的响应结果不匹配那些在以往的文献。空结果可能是由于该警告的实施时间和车辆黑客行为的复杂性。相比之下,最大方向盘转角结果表明自动化的该级别和警告类型的影响参与者的响应对于车辆黑客攻击的安全性和严重性。这表明,这两个因素可能会影响到某些能力黑客攻击的响应。进一步的研究将需要确定是否自动化和预警类型的水平影响参与者的能力安全地响应车辆黑客攻击。

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