A platform for research: civil engineering, architecture and urbanism
A spatio‐temporal ensemble method for large‐scale traffic state prediction
How to effectively ensemble multiple models while leveraging the spatio‐temporal information is a challenging but practical problem. However, there is no existing ensemble method explicitly designed for spatio‐temporal data. In this paper, a fully convolutional model based on semantic segmentation technology is proposed, termed as spatio‐temporal ensemble net. The proposed method is suitable for grid‐based spatio‐temporal prediction in dense urban areas. Experiments demonstrate that through spatio‐temporal ensemble net, multiple traffic state prediction base models can be combined to improve the prediction accuracy.
A spatio‐temporal ensemble method for large‐scale traffic state prediction
How to effectively ensemble multiple models while leveraging the spatio‐temporal information is a challenging but practical problem. However, there is no existing ensemble method explicitly designed for spatio‐temporal data. In this paper, a fully convolutional model based on semantic segmentation technology is proposed, termed as spatio‐temporal ensemble net. The proposed method is suitable for grid‐based spatio‐temporal prediction in dense urban areas. Experiments demonstrate that through spatio‐temporal ensemble net, multiple traffic state prediction base models can be combined to improve the prediction accuracy.
A spatio‐temporal ensemble method for large‐scale traffic state prediction
Liu, Yang (author) / Liu, Zhiyuan (author) / Vu, Hai L. (author) / Lyu, Cheng (author)
Computer‐Aided Civil and Infrastructure Engineering ; 35 ; 26-44
2020-01-01
19 pages
Article (Journal)
Electronic Resource
English
Temporal aggregation and spatio-temporal traffic modeling
Elsevier | 2015
|Temporal aggregation and spatio-temporal traffic modeling
Elsevier | 2015
|Weather Interaction-Aware Spatio-Temporal Attention Networks for Urban Traffic Flow Prediction
DOAJ | 2024
|