Graph neural network driven traffic prediction technology:review and challenge

With the rapid development of Internet of things and artificial intelligence technology, accurate analysis and prediction of traffic data have become the primary target of intelligent transportations.In recent years, the method of traffic forecasting has gradually changed from the classical model-dr...

Full description

Saved in:
Bibliographic Details
Main Authors: Yi ZHOU, Shuting HU, Wei LI, Nan CHENG, Ning LU, Xuemin(Sherman) SHEN
Format: Article
Language:zho
Published: China InfoCom Media Group 2021-12-01
Series:物联网学报
Subjects:
Online Access:http://www.wlwxb.com.cn/zh/article/doi/10.11959/j.issn.2096-3750.2021.00235/
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841531206080921600
author Yi ZHOU
Shuting HU
Wei LI
Nan CHENG
Ning LU
Xuemin(Sherman) SHEN
author_facet Yi ZHOU
Shuting HU
Wei LI
Nan CHENG
Ning LU
Xuemin(Sherman) SHEN
author_sort Yi ZHOU
collection DOAJ
description With the rapid development of Internet of things and artificial intelligence technology, accurate analysis and prediction of traffic data have become the primary target of intelligent transportations.In recent years, the method of traffic forecasting has gradually changed from the classical model-driven type to the data-driven type.However, how to effectively analyze the spatial-temporal characteristics of road networks through big data is one of the key issues in the traffic prediction process.Spatiotemporal big data analysis is a powerful tool for the traffic prediction.The traffic network can be modeled as a graph network, while the deep learning method can be extended on the graph network.Utilizing graph neural networks, we can build the spatiotemporal prediction model, and obtain the spatial-temporal correlation between the sensor nodes in road networks effectively by using graph convolution, which can significantly improve the accuracy of traffic prediction models.The traffic forecasting technology driven by graph neural networks was explored, and two kinds of traffic prediction models based on the analysis of deep spatial-temporal characteristics were extracted.The actual cases were analyzed and evaluated to discuss the technical advantages and key challenges of graph neural networks in the traffic prediction.The potential issues of graph neural network driven prediction mechanisms were also excavated.
format Article
id doaj-art-db10076fee6a404eaed6d206b46347bc
institution Kabale University
issn 2096-3750
language zho
publishDate 2021-12-01
publisher China InfoCom Media Group
record_format Article
series 物联网学报
spelling doaj-art-db10076fee6a404eaed6d206b46347bc2025-01-15T02:53:07ZzhoChina InfoCom Media Group物联网学报2096-37502021-12-01511659647550Graph neural network driven traffic prediction technology:review and challengeYi ZHOUShuting HUWei LINan CHENGNing LUXuemin(Sherman) SHENWith the rapid development of Internet of things and artificial intelligence technology, accurate analysis and prediction of traffic data have become the primary target of intelligent transportations.In recent years, the method of traffic forecasting has gradually changed from the classical model-driven type to the data-driven type.However, how to effectively analyze the spatial-temporal characteristics of road networks through big data is one of the key issues in the traffic prediction process.Spatiotemporal big data analysis is a powerful tool for the traffic prediction.The traffic network can be modeled as a graph network, while the deep learning method can be extended on the graph network.Utilizing graph neural networks, we can build the spatiotemporal prediction model, and obtain the spatial-temporal correlation between the sensor nodes in road networks effectively by using graph convolution, which can significantly improve the accuracy of traffic prediction models.The traffic forecasting technology driven by graph neural networks was explored, and two kinds of traffic prediction models based on the analysis of deep spatial-temporal characteristics were extracted.The actual cases were analyzed and evaluated to discuss the technical advantages and key challenges of graph neural networks in the traffic prediction.The potential issues of graph neural network driven prediction mechanisms were also excavated.http://www.wlwxb.com.cn/zh/article/doi/10.11959/j.issn.2096-3750.2021.00235/traffic predictiongraph neural networksspatial-temporal correlationsynchronous convolutiongraph at-tention networks
spellingShingle Yi ZHOU
Shuting HU
Wei LI
Nan CHENG
Ning LU
Xuemin(Sherman) SHEN
Graph neural network driven traffic prediction technology:review and challenge
物联网学报
traffic prediction
graph neural networks
spatial-temporal correlation
synchronous convolution
graph at-tention networks
title Graph neural network driven traffic prediction technology:review and challenge
title_full Graph neural network driven traffic prediction technology:review and challenge
title_fullStr Graph neural network driven traffic prediction technology:review and challenge
title_full_unstemmed Graph neural network driven traffic prediction technology:review and challenge
title_short Graph neural network driven traffic prediction technology:review and challenge
title_sort graph neural network driven traffic prediction technology review and challenge
topic traffic prediction
graph neural networks
spatial-temporal correlation
synchronous convolution
graph at-tention networks
url http://www.wlwxb.com.cn/zh/article/doi/10.11959/j.issn.2096-3750.2021.00235/
work_keys_str_mv AT yizhou graphneuralnetworkdriventrafficpredictiontechnologyreviewandchallenge
AT shutinghu graphneuralnetworkdriventrafficpredictiontechnologyreviewandchallenge
AT weili graphneuralnetworkdriventrafficpredictiontechnologyreviewandchallenge
AT nancheng graphneuralnetworkdriventrafficpredictiontechnologyreviewandchallenge
AT ninglu graphneuralnetworkdriventrafficpredictiontechnologyreviewandchallenge
AT xueminshermanshen graphneuralnetworkdriventrafficpredictiontechnologyreviewandchallenge