基于通道注意力的时空图神经网络交通预测

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Technologies and Applications Pub Date : 2023-04-29 DOI:10.1108/dta-09-2022-0378
Bin Wang, Fan Gao, Le Tong, Qian Zhang, Sulei Zhu
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引用次数: 0

摘要

目的交通流量预测一直是智能交通系统的首要任务。短期交通流量预测有许多成熟的方法。然而,现有的方法往往不足以捕捉长期的时空依赖关系。为了更准确地预测长期相关性,本文提出了一种新的、更有效的交通流预测模型。设计/方法论/方法本文提出了一种新的、更有效的交通流预测模型,称为基于通道注意力的时空图神经网络。图卷积网络用于提取局部时空相关性,通道注意力机制用于增强附近时空相关性对决策的影响,变换器机制用于捕获长期相关性。发现所提出的模型应用于两个常见的公路数据集:洛杉矶收集的METR-LA和加利福尼亚湾区收集的PEMS-BAY。该模型在三个性能指标上的性能优于其他五个,这是一个流行的模型。独创性/价值(1)基于时空同步图卷积模块,设计了一个时空通道注意力模块,通过增强或抑制不同通道来增加邻近度依赖对决策的影响。(2) 为了更好地捕捉长期依赖关系,引入了transformer模块。
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Channel attention-based spatial-temporal graph neural networks for traffic prediction
PurposeTraffic flow prediction has always been a top priority of intelligent transportation systems. There are many mature methods for short-term traffic flow prediction. However, the existing methods are often insufficient in capturing long-term spatial-temporal dependencies. To predict long-term dependencies more accurately, in this paper, a new and more effective traffic flow prediction model is proposed.Design/methodology/approachThis paper proposes a new and more effective traffic flow prediction model, named channel attention-based spatial-temporal graph neural networks. A graph convolutional network is used to extract local spatial-temporal correlations, a channel attention mechanism is used to enhance the influence of nearby spatial-temporal dependencies on decision-making and a transformer mechanism is used to capture long-term dependencies.FindingsThe proposed model is applied to two common highway datasets: METR-LA collected in Los Angeles and PEMS-BAY collected in the California Bay Area. This model outperforms the other five in terms of performance on three performance metrics a popular model.Originality/value(1) Based on the spatial-temporal synchronization graph convolution module, a spatial-temporal channel attention module is designed to increase the influence of proximity dependence on decision-making by enhancing or suppressing different channels. (2) To better capture long-term dependencies, the transformer module is introduced.
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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