Long-Term Traffic Speed Prediction Based on Geometric Algebra ConvLSTM and Graph Attention
- Resource Type
- Conference
- Authors
- Miao, Chenglin; Su, Wen; Fu, Yanqing; Chen, Xihao; Zang, Di
- Source
- 2022 IEEE International Conference on Smart Internet of Things (SmartIoT) SMARTIOT Smart Internet of Things (SmartIoT), 2022 IEEE International Conference on. :108-115 Aug, 2022
- Subject
- Communication, Networking and Broadcast Technologies
Computing and Processing
Signal Processing and Analysis
Algebra
Convolution
Neural networks
Transportation
Detectors
Predictive models
Feature extraction
Traffic speed prediction
geometric algebra convolution
GAConvLSTM-GAT
Intelligent transportation system
- Language
- ISSN
- 2770-2677
Traffic speed prediction is an incredibly important subject of Intelligent transportation system (ITS). Efficient speed prediction methods greatly contribute to reducing traffic congestion. Most existing models focus on short term while the long-term speed prediction for a whole day is not completely developed. In this paper, a Geometric Algebra Convolutional LSTM and Graph Attention (GAConvLSTM-GAT) model is proposed to raise a potential for achieving long-term speed prediction. The proposed model is composed of a Geometric Algebra ConvLSTM (GAConvLSTM) module to extract the spatial-temporal feature, and a Graph Attention (GAT) module to make speed predictions based on the features. The experiments are evaluated by two elevated highway traffic datasets. The presented results illustrate that our GAConvLSTM model outperforms multiple baseline neural network methods.