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首页> 外文期刊>Journal of advanced transportation >Urban Traffic Flow Forecast Based on FastGCRNN
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Urban Traffic Flow Forecast Based on FastGCRNN

机译:基于FastGcrnn的城市交通流量预测

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摘要

Traffic forecasting is an important prerequisite for the application of intelligent transportation systems in urban traffic networks. The existing works adopted RNN and CNN/GCN, among which GCRN is the state-of-the-art work, to characterize the temporal and spatial correlation of traffic flows. However, it is hard to apply GCRN to the large-scale road networks due to high computational complexity. To address this problem, we propose abstracting the road network into a geometric graph and building a Fast Graph Convolution Recurrent Neural Network (FastGCRNN) to model the spatial-temporal dependencies of traffic flow. Specifically, we use FastGCN unit to efficiently capture the topological relationship between the roads and the surrounding roads in the graph with reducing the computational complexity through importance sampling, combine GRU unit to capture the temporal dependency of traffic flow, and embed the spatiotemporal features into Seq2Seq based on the Encoder-Decoder framework. Experiments on large-scale traffic data sets illustrate that the proposed method can greatly reduce computational complexity and memory consumption while maintaining relatively high accuracy.
机译:交通预测是在城市交通网络中应用智能运输系统的重要前提。现有的作品采用RNN和CNN / GCN,其中GCRN是最先进的工作,以表征交通流量的时间和空间相关性。但是,由于高计算复杂性,很难将GCRN应用于大型道路网络。为了解决这个问题,我们建议将道路网络抽象成几何图,并建立一个快速图卷积经常性神经网络(FastGcrnn),以模拟流量的空间依赖性。具体而言,我们使用FastGCN单元通过重要性采样降低了图表中的道路和周围道路之间的道路和周围道路之间的拓扑关系,组合GRU单元捕获流量流量的时间依赖性,并将时空特征嵌入到SEQ2Seq中。基于编码器解码器框架。大规模交通数据集的实验说明了所提出的方法可以大大降低计算复杂性和存储器消耗,同时保持相对高的精度。

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