Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network

Accurate traffic flow data is crucial for traffic control and management in an intelligent transportation system (ITS), and thus traffic flow prediction research attracts significant attention in the transportation community. Previous studies have suggested that raw traffic flow data may be contamin...

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Main Authors: Xinqiang Chen, Jinquan Lu, Jiansen Zhao, Zhijian Qu, Yongsheng Yang, Jiangfeng Xian
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/9/3678
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spelling doaj-695f4fd387d745ea808a1585faad624c2020-11-25T02:20:49ZengMDPI AGSustainability2071-10502020-05-01123678367810.3390/su12093678Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural NetworkXinqiang Chen0Jinquan Lu1Jiansen Zhao2Zhijian Qu3Yongsheng Yang4Jiangfeng Xian5Institute of Logistics Science and Engineering, Shanghai Maritime University, Shanghai 201306, ChinaMerchant Marine College, Shanghai Maritime University, Shanghai 201306, ChinaMerchant Marine College, Shanghai Maritime University, Shanghai 201306, ChinaElectrical and Automation Engineering College, East China Jiaotong University, Nanchang 330013, ChinaInstitute of Logistics Science and Engineering, Shanghai Maritime University, Shanghai 201306, ChinaMerchant Marine College, Shanghai Maritime University, Shanghai 201306, ChinaAccurate traffic flow data is crucial for traffic control and management in an intelligent transportation system (ITS), and thus traffic flow prediction research attracts significant attention in the transportation community. Previous studies have suggested that raw traffic flow data may be contaminated by noises caused by unexpected reasons (e.g., loop detector damage, roadway maintenance, etc.), which may degrade traffic flow prediction accuracy. To address this issue, we proposed an ensemble framework via ensemble empirical mode decomposition (EEMD) and artificial neural network (ANN) to predict traffic flow under different time intervals ahead. More specifically, the proposed framework firstly employed the EEMD model to suppress the noises in the raw traffic data, which were then processed to predict traffic flow at time steps under different time scales (i.e., 1, 2, and 10 min). We verified our model performance on three loop detectors’ data, which were supported by the Department of Transportation, Minnesota. The research findings can help traffic participants collect more accurate traffic flow data and thus benefits transportation practitioners by helping them to make more reasonable traffic decisions.https://www.mdpi.com/2071-1050/12/9/3678traffic flow datapredictiondenoisingvaried time scales
collection DOAJ
language English
format Article
sources DOAJ
author Xinqiang Chen
Jinquan Lu
Jiansen Zhao
Zhijian Qu
Yongsheng Yang
Jiangfeng Xian
spellingShingle Xinqiang Chen
Jinquan Lu
Jiansen Zhao
Zhijian Qu
Yongsheng Yang
Jiangfeng Xian
Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network
Sustainability
traffic flow data
prediction
denoising
varied time scales
author_facet Xinqiang Chen
Jinquan Lu
Jiansen Zhao
Zhijian Qu
Yongsheng Yang
Jiangfeng Xian
author_sort Xinqiang Chen
title Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network
title_short Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network
title_full Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network
title_fullStr Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network
title_full_unstemmed Traffic Flow Prediction at Varied Time Scales via Ensemble Empirical Mode Decomposition and Artificial Neural Network
title_sort traffic flow prediction at varied time scales via ensemble empirical mode decomposition and artificial neural network
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-05-01
description Accurate traffic flow data is crucial for traffic control and management in an intelligent transportation system (ITS), and thus traffic flow prediction research attracts significant attention in the transportation community. Previous studies have suggested that raw traffic flow data may be contaminated by noises caused by unexpected reasons (e.g., loop detector damage, roadway maintenance, etc.), which may degrade traffic flow prediction accuracy. To address this issue, we proposed an ensemble framework via ensemble empirical mode decomposition (EEMD) and artificial neural network (ANN) to predict traffic flow under different time intervals ahead. More specifically, the proposed framework firstly employed the EEMD model to suppress the noises in the raw traffic data, which were then processed to predict traffic flow at time steps under different time scales (i.e., 1, 2, and 10 min). We verified our model performance on three loop detectors’ data, which were supported by the Department of Transportation, Minnesota. The research findings can help traffic participants collect more accurate traffic flow data and thus benefits transportation practitioners by helping them to make more reasonable traffic decisions.
topic traffic flow data
prediction
denoising
varied time scales
url https://www.mdpi.com/2071-1050/12/9/3678
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AT jiansenzhao trafficflowpredictionatvariedtimescalesviaensembleempiricalmodedecompositionandartificialneuralnetwork
AT zhijianqu trafficflowpredictionatvariedtimescalesviaensembleempiricalmodedecompositionandartificialneuralnetwork
AT yongshengyang trafficflowpredictionatvariedtimescalesviaensembleempiricalmodedecompositionandartificialneuralnetwork
AT jiangfengxian trafficflowpredictionatvariedtimescalesviaensembleempiricalmodedecompositionandartificialneuralnetwork
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