论文标题
通过道路传感器数据符号回归的交通建模和预测
Traffic Modelling and Prediction via Symbolic Regression on Road Sensor Data
论文作者
论文摘要
城市交通传感基础设施的持续扩展导致广泛可用的道路相关数据的数量激增。因此,越来越多的努力致力于建立智能运输系统,在这种问题上,从全市范围的道路维护计划到改善通勤经验的问题都由城市交通的计算模型所告知,而不是完全留给人类。交通管理的自动化已受到研究社区的极大关注,但是,大多数方法针对高速公路,对有限的时间窗口有效,或者需要对可用型号进行昂贵的重新培训,以便准确预测新位置的流量。在本文中,我们提出了一种基于lag操作员增强的符号回归的新颖而准确的交通流量预测方法。我们的方法产生了适合城市道路复杂性的强大模型,比高速公路更难预测。此外,无需重新训练该模型长达9周。此外,所提出的方法生成的模型可转移到路网的其他段,类似于与最初训练的模型不同,但在地理上与众不同。我们通过对从达姆施塔特城市基础设施收集的数据进行广泛的实验来证明这些主张的实现。
The continuous expansion of the urban traffic sensing infrastructure has led to a surge in the volume of widely available road related data. Consequently, increasing effort is being dedicated to the creation of intelligent transportation systems, where decisions on issues ranging from city-wide road maintenance planning to improving the commuting experience are informed by computational models of urban traffic instead of being left entirely to humans. The automation of traffic management has received substantial attention from the research community, however, most approaches target highways, produce predictions valid for a limited time window or require expensive retraining of available models in order to accurately forecast traffic at a new location. In this article, we propose a novel and accurate traffic flow prediction method based on symbolic regression enhanced with a lag operator. Our approach produces robust models suitable for the intricacies of urban roads, much more difficult to predict than highways. Additionally, there is no need to retrain the model for a period of up to 9 weeks. Furthermore, the proposed method generates models that are transferable to other segments of the road network, similar to, yet geographically distinct from the ones they were initially trained on. We demonstrate the achievement of these claims by conducting extensive experiments on data collected from the Darmstadt urban infrastructure.