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用于城市交通状态预测的全局-局部时空残差相关网络。

Global-Local Spatial-Temporal Residual Correlation Network for Urban Traffic Status Prediction.

机构信息

School of Information Science and Technology, Nantong University, Nantong 226019, China.

School of Transportation and Civil Engineering, Nantong University, Nantong 226019, China.

出版信息

Comput Intell Neurosci. 2022 Feb 2;2022:7344522. doi: 10.1155/2022/7344522. eCollection 2022.

DOI:10.1155/2022/7344522
PMID:35154304
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8828331/
Abstract

The recent proposed Spatial-Temporal Residual Network (ST-ResNet) model is an effective tool to extract both spatial and temporal characteristics and has been successfully applied to urban traffic status prediction. However, the ST-ResNet model only extracts the local spatial characteristics and ignores the very important global spatial characteristics. In this paper, a novel Global-Local Spatial-Temporal Residual Correlation Network (GL-STRCN) model is proposed for urban traffic status prediction to further improve the prediction accuracy of the existing ST-ResNet model. The GL-STRCN model firstly applies Pearson's correlation coefficient method to extract high correlation series. Then, considering both global and local spatial properties, two components consisting of 2D convolution and residual operation are used to capture spatial features. After that, based on Long Short-Term Memory (LSTM) or Gated Recurrent Unit (GRU), a novel long-term temporal feature extraction component is proposed to capture temporal features. Finally, the spatial and temporal features are aggregated together in a weighted way for final prediction. Experiments have also been performed using two datasets from TaxiCD and PEMS-BAY. The results indicated that the proposed model produces a better prediction performance compared with the results based on other baseline solutions, e.g., CNN, ST-ResNet, GL-TCN, and DGLSTNet.

摘要

最近提出的时空残差网络(ST-ResNet)模型是一种提取空间和时间特征的有效工具,并已成功应用于城市交通状态预测。然而,ST-ResNet 模型仅提取局部空间特征,忽略了非常重要的全局空间特征。本文提出了一种新颖的全局-局部时空残差相关网络(GL-STRCN)模型,用于城市交通状态预测,以进一步提高现有 ST-ResNet 模型的预测精度。GL-STRCN 模型首先应用皮尔逊相关系数法提取高相关序列。然后,考虑全局和局部空间特性,使用由 2D 卷积和残差操作组成的两个组件来捕获空间特征。之后,基于长短期记忆(LSTM)或门控循环单元(GRU),提出了一种新的长期时间特征提取组件来捕获时间特征。最后,以加权的方式将空间和时间特征聚合在一起进行最终预测。实验还使用了来自 TaxiCD 和 PEMS-BAY 的两个数据集进行了实验。结果表明,与基于其他基线解决方案(例如,CNN、ST-ResNet、GL-TCN 和 DGLSTNet)的结果相比,所提出的模型具有更好的预测性能。

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