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Latent factor model for traffic signal control

机译:交通信号控制的潜在因素模型

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摘要

The increased ownership of motor vehicles has brought many urban problems, such as traffic congestion, environmental pollution. Traffic signal control is recognized as one of effective ways to alleviate these problems. However, it is still hard to automatically choose appropriate traffic signal timing plans for different traffic conditions due to the dynamics and uncertainty of transportation systems. In this paper, we propose a latent factor model based traffic signal timing plan recommendation method to address this problem. In the proposed method, we model the abstract traffic states as the “users” in recommendation systems, and timing plans as the “items”. And there are many explicit or implicit factors in the interactions between “users” and “items”. The latent factor model is successfully used to deal with uncertain factors which cannot be modeled accurately in math. The novel method adopted the model-free adaptive idea to solve the problem of modeling from the perspective of data mining and machine learning framework. And, the proposed method is tested by using simulation data generated by a microscopic traffic simulator called Paramics. The results are compared to the baseline Webster method. The results indicate that the proposed latent factor model based recommendation method outperforms the Webster method on reducing the delay.
机译:机动车保有量的增加带来了许多城市问题,例如交通拥堵,环境污染。交通信号控制被认为是减轻这些问题的有效方法之一。然而,由于运输系统的动态性和不确定性,仍然难以为不同的交通状况自动选择合适的交通信号定时计划。在本文中,我们提出了一种基于潜在因子模型的交通信号定时计划推荐方法来解决这一问题。在提出的方法中,我们将抽象交通状态建模为推荐系统中的“用户”,并将计时计划建模为“项目”。在“用户”和“项目”之间的交互中有许多显式或隐式因素。潜在因子模型已成功用于处理无法在数学中准确建模的不确定因素。该新方法采用了无模型自适应思想,从数据挖掘和机器学习框架的角度解决了建模问题。并且,通过使用称为Paramics的微观交通模拟器生成的模拟数据对提出的方法进行了测试。将结果与基线Webster方法进行比较。结果表明,所提出的基于潜在因子模型的推荐方法在减少延迟方面优于Webster方法。

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