Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU

In order to accurately analyse the impact of the rainy environment on the characteristics of highway traffic flow, a short-term traffic flow speed prediction model based on gate recurrent unit (GRU) and adaptive nonlinear inertia weight particle swarm optimization (APSO) was proposed. Firstly, the r...

Full description

Bibliographic Details
Main Authors: Dongqing Han, Xin Yang, Guang Li, Shuangyin Wang, Zhen Wang, Jiandong Zhao
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2021/4060740
id doaj-ae25c1fa771248a082862a0c2c606d59
record_format Article
spelling doaj-ae25c1fa771248a082862a0c2c606d592021-08-30T00:00:51ZengHindawi-WileyJournal of Advanced Transportation2042-31952021-01-01202110.1155/2021/4060740Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRUDongqing Han0Xin Yang1Guang Li2Shuangyin Wang3Zhen Wang4Jiandong Zhao5Zhong Dian Jian Ji Jiao Highway Investment Development Company LimitedZhong Dian Jian Ji Jiao Highway Investment Development Company LimitedHebei Intelligent Transportation Technology Co., Ltd of HEBTIGZhong Dian Jian Ji Jiao Highway Investment Development Company LimitedSchool of Traffic and TransportationSchool of Traffic and TransportationIn order to accurately analyse the impact of the rainy environment on the characteristics of highway traffic flow, a short-term traffic flow speed prediction model based on gate recurrent unit (GRU) and adaptive nonlinear inertia weight particle swarm optimization (APSO) was proposed. Firstly, the rainfall and highway traffic flow data were cleaned, and then they are matched according to the spatiotemporal relationship. Secondly, through the method of multivariate analysis of variance, the significance of the impact of potential factors on traffic flow speed was explored. Then, a GRU-based traffic flow speed prediction model in rainy environment is proposed, and the actual road sections under different rainfall scenarios were verified. After that, in view of the problem that the prediction accuracy of the GRU model was low in the continuous rainfall scenario, the APSO algorithm was used to optimize the parameters of the GRU network, and the APSO-GRU prediction model was constructed and verifications under the same road section and rain scene were carried out. The results show that the APSO-GRU model has significantly improved prediction stability than the GRU model and can better extract rainfall features during continuous rainfall, with an average prediction accuracy rate of 96.74%.http://dx.doi.org/10.1155/2021/4060740
collection DOAJ
language English
format Article
sources DOAJ
author Dongqing Han
Xin Yang
Guang Li
Shuangyin Wang
Zhen Wang
Jiandong Zhao
spellingShingle Dongqing Han
Xin Yang
Guang Li
Shuangyin Wang
Zhen Wang
Jiandong Zhao
Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU
Journal of Advanced Transportation
author_facet Dongqing Han
Xin Yang
Guang Li
Shuangyin Wang
Zhen Wang
Jiandong Zhao
author_sort Dongqing Han
title Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU
title_short Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU
title_full Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU
title_fullStr Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU
title_full_unstemmed Highway Traffic Speed Prediction in Rainy Environment Based on APSO-GRU
title_sort highway traffic speed prediction in rainy environment based on apso-gru
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 2042-3195
publishDate 2021-01-01
description In order to accurately analyse the impact of the rainy environment on the characteristics of highway traffic flow, a short-term traffic flow speed prediction model based on gate recurrent unit (GRU) and adaptive nonlinear inertia weight particle swarm optimization (APSO) was proposed. Firstly, the rainfall and highway traffic flow data were cleaned, and then they are matched according to the spatiotemporal relationship. Secondly, through the method of multivariate analysis of variance, the significance of the impact of potential factors on traffic flow speed was explored. Then, a GRU-based traffic flow speed prediction model in rainy environment is proposed, and the actual road sections under different rainfall scenarios were verified. After that, in view of the problem that the prediction accuracy of the GRU model was low in the continuous rainfall scenario, the APSO algorithm was used to optimize the parameters of the GRU network, and the APSO-GRU prediction model was constructed and verifications under the same road section and rain scene were carried out. The results show that the APSO-GRU model has significantly improved prediction stability than the GRU model and can better extract rainfall features during continuous rainfall, with an average prediction accuracy rate of 96.74%.
url http://dx.doi.org/10.1155/2021/4060740
work_keys_str_mv AT dongqinghan highwaytrafficspeedpredictioninrainyenvironmentbasedonapsogru
AT xinyang highwaytrafficspeedpredictioninrainyenvironmentbasedonapsogru
AT guangli highwaytrafficspeedpredictioninrainyenvironmentbasedonapsogru
AT shuangyinwang highwaytrafficspeedpredictioninrainyenvironmentbasedonapsogru
AT zhenwang highwaytrafficspeedpredictioninrainyenvironmentbasedonapsogru
AT jiandongzhao highwaytrafficspeedpredictioninrainyenvironmentbasedonapsogru
_version_ 1721186132797947904