基于动态图卷积网络的长短期交通流预测

Yan Wang, Q. Ren
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引用次数: 1

摘要

交通预测是智能交通系统的重要组成部分。然而,高度非线性和动态的时空相关性为交通预测,特别是长期预测提出了挑战。为了提高长期和短期交通流预测的准确性,我们提出了一种基于时空通道注意力的图卷积网络(STCAGCN)。首先,我们设计了一个注意机制来学习复杂的时空相关性。然后,我们开发了堆叠的时空卷积层来模拟复杂的时空相关性。每个时空卷积层由一个门控时间卷积网络和一个图卷积网络组成。我们开发了一个门控时间卷积网络来模拟非线性时间相关性,该网络通过堆叠扩展卷积处理长序列。此外,图卷积网络通过学习自适应邻接矩阵来挖掘隐藏的空间相关性。在真实数据集上的实验结果表明,所提出的STCAGCN模型比最先进的模型得到了改进,特别是在长期交通流预测方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Graph Convolutional Network for Long Short-term Traffic Flow Prediction
Traffic prediction is a critical component of intel-ligent transportation systems. However, highly non-linear and dynamical spatial-temporal correlations propose challenges for traffic prediction, especially long-term prediction. We propose a spatial-temporal channel-attention based graph convolutional network (STCAGCN) to improve the accuracy of both long-term and short-term traffic flow prediction. Firstly we design an attention mechanism to learn complex temporal and spatial correlations. Then we develop the stacked spatial-temporal convo-lution layer to model complex temporal and spatial correlations. Each spatial-temporal convolution layer is composed of a gated time convolution network and a graph convolution network. We develop a gated time convolution network to model non-linear temporal correlations, which process long sequences through stacked dilated convolution. Moreover, the graph convolution network exploits the hidden spatial correlations via learning self-adaptive adjacency matrix. Experiment results on real-world datasets demonstrate that the proposed STCAGCN model obtains improvements over the state-of-the-art, especially for long-term traffic flow prediction.
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