Lucas-Alba Antonio, Melchor Óscar M, Hernando Ana, Fernández-Martín Andrés, Blanch-Micó Mª Teresa, Lombas Andrés S
Departament of Psychology and Sociology, Universidad de Zaragoza, C/Ciudad Escolar s/n, 44003 Teruel, Spain.
Impactware, Madrid, Spain.
Transp Res Part F Traffic Psychol Behav. 2020 Oct;74:418-432. doi: 10.1016/j.trf.2020.09.011. Epub 2020 Sep 30.
Nature offers numerous examples of animal species exhibiting harmonious collective movement. Unfortunately, the motorized is not included and pays a price for it. Too often, drivers who simply follow other drivers are caught in the worst road threat after a crash: congestions. In the past, the solution to this problem has gone hand in hand with infrastructure investment. However, approaches such as the Nagoya Paradigm propose now to see congestion as the consequence of multiple interacting particles whose disturbances are transmitted in a waveform. This view clashes with a longlasting assumption ordering traffic flows, the postulate (i.e., drivers' alleged propensity to maintain a safe distance). Rather than a mere coincidence, the worldwide adoption of the safety-distance tenet and the worldwide presence of congestion emerge now as cause and effect. Nevertheless, nothing in the drivers' endowment impedes the adoption of other car-following (CF) strategies. The present study questions the of safety-distance, comparing two elementary CF strategies, Driving to keep Distance (DD), that still prevails worldwide, and Driving to keep Inertia (DI), a complementary CF technique that offsets traffic waves disturbances, ensuring uninterrupted traffic flows. By asking drivers to drive DD and DI, we aim to characterize both CF strategies, comparing their effects on the individual driver (how he drives, how he feels, what he pays attention to) and also on the road space occupied by a platoon of DD robot-followers.
Thirty drivers (50% women) were invited to adopt DD/DI in a driving simulator following a swinging leader. The design was a repeated measures model controlling for order. The CF technique, DD or DI, was the within-subject factor. Order (DD-DI / DI-DD) was the between-subjects factor. There were four blocks of dependent measures: individual driving performance (accelerations, decelerations, crashes, distance to lead vehicle, speed and fuel consumption), emotional dimensions (measures of skin conductance and self-reports of affective states concerning valence, arousal, and dominance), and visual behavior (fixations count and average duration, dwell times, and revisits) concerning three regions of the driving scene (the Top Rear Car -TRC- or the Bottom Rear Car -BRC- of the leading vehicle and the surrounding White Space Area -WSA). The final block concerned the road space occupied by a platoon of 8 virtual DD followers.
Drivers easily understood and applied DD/DI as required, switching back and forth between the two. Average speeds for DD/DI were similar, but DD drivers exhibited a greater number of accelerations, decelerations, speed variability, and crashes. Conversely, DI required greater CF distance, that was dynamically adjusted, and spent less fuel. Valence was similar, but DI drivers felt less aroused and more dominant. When driving DD visual scan was centered on the leader's BRC, whereas DI elicited more attention to WSA (i.e., adopting wider vision angles). In spite of DI requiring more CF distance, the resulting road space occupied between the leader and the 8th DD robot was greater when driving DD.
自然界中有许多动物物种展现出和谐的集体运动。遗憾的是,机动车并不包含在内,并且为此付出了代价。很多时候,仅仅跟在其他司机后面的驾驶员会在撞车后遭遇最严重的道路威胁:拥堵。过去,解决这个问题的方法一直与基础设施投资密切相关。然而,诸如名古屋范式等方法现在提出将拥堵视为多个相互作用粒子的结果,这些粒子的干扰以波形传播。这种观点与长期以来对交通流进行排序的假设,即安全距离假设(即驾驶员据称保持安全距离的倾向)相冲突。全球范围内安全距离原则的采用和拥堵的普遍存在,现在看来并非仅仅是巧合,而是因果关系。然而,驾驶员的天赋中没有任何因素会妨碍采用其他跟车(CF)策略。本研究对安全距离的假设提出质疑,比较了两种基本的CF策略,即全球仍普遍采用的保持车距驾驶(DD)和一种互补的CF技术保持惯性驾驶(DI),后者可抵消交通波干扰,确保交通流不间断。通过要求驾驶员进行DD和DI驾驶,我们旨在描述这两种CF策略的特征,比较它们对个体驾驶员的影响(他如何驾驶、感受如何、关注什么)以及对一队DD机器人跟随者所占据道路空间的影响。
邀请30名驾驶员(50%为女性)在驾驶模拟器中跟随摆动的前车采用DD/DI。设计采用重复测量模型以控制顺序。CF技术,即DD或DI,是受试者内因素。顺序(DD - DI / DI - DD)是受试者间因素。有四个依赖测量块:个体驾驶性能(加速、减速、撞车、与前车的距离、速度和油耗)、情感维度(皮肤电导率测量以及关于效价、唤醒和支配的情感状态的自我报告)以及关于驾驶场景三个区域(前车的顶部后车 - TRC - 或底部后车 - BRC - 以及周围的白色空间区域 - WSA)的视觉行为(注视次数和平均持续时间、停留时间和重访次数)。最后一个块涉及由8个虚拟DD跟随者组成的队列所占据的道路空间。
驾驶员能够轻松理解并按要求应用DD/DI,在两者之间来回切换。DD/DI的平均速度相似,但DD驾驶员表现出更多的加速、减速、速度变化和撞车情况。相反,DI需要更大的CF距离,该距离会动态调整,并且油耗更低。效价相似,但DI驾驶员感觉唤醒程度较低且更具支配感。驾驶DD时,视觉扫描集中在前车的BRC上,而DI则引起对WSA更多的关注(即采用更宽的视角)。尽管DI需要更大的CF距离,但驾驶DD时,前车与第8个DD机器人之间所占据的道路空间更大。