基于人群的交通控制模型与模拟

Q2 Decision Sciences
Dingding Wu;Hongbo Sun;Zhihui Li
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引用次数: 0

摘要

随着现代科学和经济的发展,不断增加的交通流量带来了拥堵和事故。而为了提高效率,基于交通信号的控制通常被作为缓解拥堵、减少事故的有效模式。然而,现有相位和周期时间的固定模式限制了满足日益复杂的环境的能力,导致效率低下。为了进一步提高交通效率,本文提出了一种基于人群的控制模型,以适应复杂的交通环境。在这一模型中,主体被视为可以在复杂交通环境(如车辆和交通信号灯)中执行操作的数字自我。这些数字自我有自己的控制处理机制、属性和行为。每个数字自我都会根据自身的学习能力、道路状况以及与其他数字自我之间的信息交互,不断优化自己的行为。在没有固定结构的情况下,这些连接是多样的、随机的,从而形成一个更加复杂的交通环境,随着不断的运动,这些连接随时可能被连接或消失。最后,通过与固定交通信号控制模型的对比,证明了基于人群的交通控制模型的可行性和有效性,表明该模型可以有效缓解交通拥堵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowd-Based Traffic Control Model and Simulation
With the development of modern science and economy, congestions and accidents are brought by increasing traffics. And to improve efficiency, traffic signal based control is usually used as an effective model to alleviate congestions and to reduce accidents. However, the fixed mode of existing phase and cycle time restrains the ability to satisfy ever complex environments, which lead to a low level of efficiency. To further improve traffic efficiency, this paper proposes a crowd-based control model to adapt complex traffic environments. In this model, subjects are deemed as digital selves who can perform actions in complex traffic environments, such as vehicles and traffic lights. These digital selves have their own control processing mechanisms, properties, and behaviors. And each digital self is continuously optimizing its behaviors according to its learning ability, road conditions, and information interactions from connections with the others. Without a fixed structure, the connections are diverse and random to form a more complex traffic environment, which may be connected or disappeared at any time with continues movements. Finally, feasibility and effectiveness of the crowd-based traffic control model is demonstrated by comparison with fixed traffic signal control model, indicating that the model can alleviate traffic congestion effectively.
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来源期刊
International Journal of Crowd Science
International Journal of Crowd Science Decision Sciences-Decision Sciences (miscellaneous)
CiteScore
2.70
自引率
0.00%
发文量
20
审稿时长
24 weeks
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