Hanshin Expressway Co., Ltd., 7-15-26, Osaka 553-0003, Japan.
College of Engineering, Princess Nourah Bint Abdulrahman University, Riyadh 84428, Saudi Arabia.
Sensors (Basel). 2021 Oct 27;21(21):7131. doi: 10.3390/s21217131.
The dramatic progress of Intelligent Transportation Systems (ITS) has made autodriving technology extensively emphasised. Various models have been developed for the aim of modelling the behaviour of autonomous vehicles and their impacts on traffic, although there is still a lot to be researched about the technology. There are three main features that need to be represented in any car-following model to enable it to model autonomous vehicles: desired time gap, collision avoidance system and sensor detection range. Most available car-following models satisfy the first feature, most of the available car-following models do not satisfy the second feature and only few models satisfy the third feature. Therefore, conclusions from such models must be taken cautiously. Any of these models could be considered for updating to include a collision avoidance-system module, in order to be able to model autonomous vehicles. The Helly model is car-following model that has a simple structure and is sometimes used as the controller for Autonomous Vehicles (AV), but it does not have a collision avoidance concept. In this paper, the Helly model, which is a very commonly used classic car-following model is assessed and examined for possible update for the purpose of using it to model autonomous vehicles more efficiently. This involves assessing the parameters of the model and investigating the possible update of the model to include a collision avoidance-system module. There are two procedures that have been investigated in this paper to assess the Helly model to allow for a more realistic modelling of autonomous vehicles. The first technique is to investigate and assess the values of the parameters of the model. The second procedure is to modify the formula of that model to include a collision avoidance system. The results show that the performance of the modified full-range Auto Cruising Control (FACC) Helly model is superior to the other models in almost all situations and for almost all time-gap settings. Only the Alexandros E. Papacharalampous's Model (A.E.P.) controller seems to perform slightly better than the (FACC) Helly model. Therefore, it is reasonable to suggest that the (FACC) Helly model be recommended as the most accurate model to use to represent autonomous vehicles in microsimulations, and that it should be further investigated.
智能交通系统(ITS)的飞速发展使得自动驾驶技术受到广泛关注。已经开发了各种模型来模拟自动驾驶汽车的行为及其对交通的影响,尽管对于这项技术还有很多需要研究的地方。任何汽车跟随模型都需要具备三个主要特征,才能对自动驾驶汽车进行建模:期望时间间隔、避撞系统和传感器检测范围。大多数现有的汽车跟随模型都满足了第一个特征,大多数现有的汽车跟随模型都不满足第二个特征,只有少数模型满足第三个特征。因此,必须谨慎对待这些模型的结论。为了能够对自动驾驶汽车进行建模,可以考虑对这些模型中的任何一个进行更新,包括避撞系统模块。Helly 模型是一种结构简单的汽车跟随模型,有时被用作自动驾驶汽车的控制器,但它没有避撞概念。在本文中,评估并研究了 Helly 模型,该模型是一种非常常用的经典汽车跟随模型,为了更有效地对自动驾驶汽车进行建模,对其进行了更新。这包括评估模型的参数以及研究模型的更新,以包括避撞系统模块。本文研究了两种方法来评估 Helly 模型,以实现更真实的自动驾驶汽车建模。第一种技术是研究和评估模型的参数值。第二种方法是修改模型的公式以包括避撞系统。结果表明,在几乎所有情况下和几乎所有时间间隔设置下,修改后的全范围自动驾驶巡航控制(FACC)Helly 模型的性能都优于其他模型。只有 Alexandros E. Papacharalampous 的模型(A.E.P.)控制器的性能似乎略优于(FACC)Helly 模型。因此,建议将(FACC)Helly 模型推荐为在微观模拟中代表自动驾驶汽车的最准确模型,并对其进行进一步研究。