From Human to Autonomous Driving: A Method to Identify and Draw Up the Driving Behaviour of Connected Autonomous Vehicles

G. Caruso, M. Yousefi, L. Mussone
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引用次数: 1

Abstract

The driving behaviour of Connected and Automated Vehicles (CAVs) may influence the final acceptance of this technology. Developing a driving style suitable for most people implies the evaluation of alternatives that must be validated. Intelligent Virtual Drivers (IVDs), whose behaviour is controlled by a program, can test different driving styles along a specific route. However, multiple combinations of IVD settings may lead to similar outcomes due to their high variability. The paper proposes a method to identify the IVD settings that can be used as a reference for a given route. The method is based on the cluster analysis of vehicular data produced by a group of IVDs with different settings driving along a virtual road scenario. Vehicular data are clustered to find IVDs representing a driving style to classify human drivers who previously drove on the same route with a driving simulator. The classification is based on the distances between the different vehicular signals calculated for the IVD and recorded for human drivers. The paper includes a case study showing the practical use of the method applied on an actual road circuit. The case study demonstrated that the proposed method allowed identifying three IVDs, among 29 simulated, which have been subsequently used as a reference to cluster 26 human driving styles. These representative IVDs, which ideally replicate the driving style of human drivers, can be used to support the development of CAVs control logic that better fits human expectations. A closing discussion about the flexibility of the method in terms of the different natures of data collection, allowed for depicting future applications and perspectives.
从人到自动驾驶:一种联网自动驾驶汽车驾驶行为识别与制定方法
联网和自动驾驶汽车(cav)的驾驶行为可能会影响这项技术的最终接受程度。开发适合大多数人的驱动风格意味着对必须验证的备选方案进行评估。智能虚拟司机(ivd)的行为由程序控制,可以沿着特定路线测试不同的驾驶风格。然而,IVD设置的多种组合可能由于其高度可变性而导致类似的结果。本文提出了一种识别IVD设置的方法,可以作为给定路线的参考。该方法是基于一组不同设置的ivd在虚拟道路场景中行驶所产生的车辆数据的聚类分析。对车辆数据进行聚类,找到代表一种驾驶风格的ivd,对以前在驾驶模拟器上行驶过同一路线的人类驾驶员进行分类。分类是基于不同车辆信号之间的距离,为IVD计算,并为人类驾驶员记录。本文包括一个案例研究,展示了该方法在实际道路电路中的实际应用。案例研究表明,所提出的方法可以从29个模拟的ivd中识别出3个ivd,并随后将其用作对26个人类驾驶风格进行聚类的参考。这些具有代表性的ivd理想地复制了人类驾驶员的驾驶风格,可用于支持开发更符合人类期望的cav控制逻辑。最后讨论了该方法在数据收集的不同性质方面的灵活性,以便描述未来的应用程序和前景。
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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