Abstract:
In recent years, graph neural networks (GNNs) combined with variants of recurrent neural networks (RNNs) have reached state-of-the-art performance in spatiotemporal forec...Show MoreMetadata
Abstract:
In recent years, graph neural networks (GNNs) combined with variants of recurrent neural networks (RNNs) have reached state-of-the-art performance in spatiotemporal forecasting tasks. This is particularly the case for traffic forecasting, where GNN models use the graph structure of road networks to account for spatial correlation between links and nodes. Recent solutions are either based on complex graph operations or avoiding predefined graphs. This paper proposes a new sequence-to-sequence architecture to extract the spatiotemporal correlation at multiple levels of abstraction using GNN-RNN cells with sparse architecture to decrease training time compared to more complex designs. Encoding the same input sequence through multiple encoders, with an incremental increase in encoder layers, enables the network to learn general and detailed information through multilevel abstraction. We further present a new benchmark dataset of street-level segment traffic data from Montreal, Canada. Unlike highways, urban road segments are cyclic and characterized by complicated spatial dependencies. Experimental results on the METR-LA benchmark highway and our MSLTD street-level segment datasets demonstrate that our model improves performance by more than 7% for one-hour prediction compared to the baseline methods while reducing computing resource requirements by more than half compared to other competing methods.
Date of Conference: 04-07 December 2022
Date Added to IEEE Xplore: 30 January 2023
ISBN Information:
Citations are not available for this document.
Cites in Papers - |
Cites in Papers - IEEE (1)
Select All
1.
Jiarui Li, Ran Ji, Cheng'ao Li, Xiaoying Yang, Jiayi Li, Yiran Li, Xihan Xiong, Yutong Fang, Shusheng Ding, Tianxiang Cui, "Prediction of Flight Arrival Delay Time Using U.S. Bureau of Transportation Statistics", 2023 IEEE Symposium Series on Computational Intelligence (SSCI), pp.603-608, 2023.
Cites in Papers - Other Publishers (1)
1.
Amir Reza R. Niknam, Maryam Sabaghzadeh, Ali Barzkar, Davood Shishebori, "Comparing ARIMA and various deep learning models for long-term water quality index forecasting in Dez River, Iran", Environmental Science and Pollution Research, 2024.