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DST: A Deep Urban Traffic Flow Prediction Framework Based on Spatial-Temp oral Features

机译:DST:基于空间临时口腔特征的深度城市交通预测框架

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摘要

Traffic How prediction is an interesting and challenging problem in transportation modeling and management. The complex topological structure of urban road network makes it more complicated. The performance of traditional traffic flow prediction models like time series models is not satisfactory, for those methods cannot describe the complicated nonlinearity and uncertainty of the traffic flow precisely. With the rapid development of deep learning, many researchers try to apply deep learning methods to traffic flow prediction. However, those deep learning models neither consider both spatial relation and temporal relation, nor do they combine spatial relation and temporal relation in an effective way. In this paper, we propose a deep urban traffic flow prediction framework (DST) based on spatial-temporal features. In our framework, we use a local convolutional neural network (CNN) method which only considers spatially nearby regions to extract the spatial features and a long short-term memory (LSTM) model to extract the temporal features, fn addtion to the traffic flow data, we also use external context data when predicting traffic flow. The experiments on a large-scale taxi trajectory dataset TaxiCQ show that our proposed model significantly outperforms other comparison models.
机译:交通如何预测是运输建模和管理中的一个有趣和挑战性问题。城市道路网络的复杂拓扑结构使其变得更加复杂。传统交通流量预测模型的性能如时间序列模型不令人满意,对于这些方法无法描述交通流量的复杂非线性和正常的不确定性。随着深度学习的快速发展,许多研究人员试图将深入学习方法应用于交通流量预测。然而,这些深度学习模型既不考虑空间关系和时间关系,也不是以有效的方式结合空间关系和时间关系。在本文中,我们提出了一种基于空间时间特征的深度城市交通预测框架(DST)。在我们的框架中,我们使用本地卷积神经网络(CNN)方法,该方法仅考虑空间附近区域以提取空间特征和长短短期内存(LSTM)模型,以提取时间特征,FN添加到流量流数据,我们在预测流量时也使用外部上下文数据。在大型出租车轨迹数据集出租车的实验表明,我们所提出的模型显着优于其他比较模型。

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