Sueyoshi Fumi, Hossain Md Anowar, Tanimoto Jun
Interdisciplinary Graduate School of Engineering Sciences, Kyushu University, Kasuga-koen, Kasuga-shi, Fukuoka, 816-8580, Japan.
Discrete Event Simulation Research Team, RIKEN Center for Computational Science, Kobe, 650-0047, Japan.
Sci Rep. 2025 Aug 9;15(1):29195. doi: 10.1038/s41598-025-14760-z.
In this study, an artificial traffic system, which is generated on a computer by utilizing the computational technique, has been developed by establishing brilliant lane-changing criteria for the Cellular Automata (CA) traffic model to figure out adequate strategies for cooperative driving that can be implemented in actual traffic systems for optimum use of existing road facilities. We investigate the flow efficiency and social dilemma, which embody the tension between the demanded road facility and the existing road facility, that emerged due to the defector drivers in a traffic flow system, who are highly aggressive in driving and impose threatening/pushing effects on their preceding while they are tailgating. The evolutionary game theory, which is one of the most efficient tools in the decision-making process, has been utilized to identify the Social Efficiency Deficit (SED), which means the dilemma strength of those games. We introduced a new lane-changing protocol for the preceding vehicle, considering the threatening effects given by the aggressive follower. This investigation explored several case studies defining various strategies for cofactors and defectors. We conducted a series of multi-agent simulations on this traffic flow system and experienced the Prisoner's Dilemma (PD) and the Quasi-Prisoner's Dilemma game with diverse dilemma strengths for four different strategies for cooperators and defectors.
在本研究中,通过利用计算技术在计算机上生成了一种人工交通系统,该系统通过为元胞自动机(CA)交通模型建立出色的变道标准来开发,以找出可在实际交通系统中实施的合作驾驶适当策略,从而最佳利用现有道路设施。我们研究了流量效率和社会困境,它们体现了需求道路设施与现有道路设施之间的紧张关系,这种紧张关系在交通流系统中因叛逃司机而出现,这些司机在驾驶时极具攻击性,在跟车时会对其前方车辆施加威胁/推挤影响。进化博弈论是决策过程中最有效的工具之一,已被用于识别社会效率赤字(SED),它表示这些博弈的困境强度。考虑到激进跟车者给出的威胁影响,我们为前车引入了一种新的变道协议。本研究探索了几个案例研究,定义了针对合作者和叛逃者的各种策略的辅助因素。我们对该交通流系统进行了一系列多智能体模拟,并体验了囚徒困境(PD)和准囚徒困境博弈,针对合作者和叛逃者的四种不同策略具有不同的困境强度。