Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model

Accurate prediction and reliable significant factor analysis of incident clearance time are two main objects of traffic incident management (TIM) system, as it could help to relieve traffic congestion caused by traffic incidents. This study applies the extreme gradient boosting machine algorithm (XG...

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Main Authors: Jinjun Tang, Lanlan Zheng, Chunyang Han, Fang Liu, Jianming Cai
Format: Article
Language:English
Published: Hindawi-Wiley 2020-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2020/6401082
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spelling doaj-78215206c3c149eabe8ec13d174539fc2020-11-25T03:47:18ZengHindawi-WileyJournal of Advanced Transportation0197-67292042-31952020-01-01202010.1155/2020/64010826401082Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting ModelJinjun Tang0Lanlan Zheng1Chunyang Han2Fang Liu3Jianming Cai4Smart Transport Key Laboratory of Hunan Province, School of Traffic and Transportation Engineering, Central South University, Changsha 410075, ChinaSmart Transport Key Laboratory of Hunan Province, School of Traffic and Transportation Engineering, Central South University, Changsha 410075, ChinaSmart Transport Key Laboratory of Hunan Province, School of Traffic and Transportation Engineering, Central South University, Changsha 410075, ChinaSchool of Transportation Engineering, Changsha University of Science and Technology, Changsha 410205, ChinaSmart Transport Key Laboratory of Hunan Province, School of Traffic and Transportation Engineering, Central South University, Changsha 410075, ChinaAccurate prediction and reliable significant factor analysis of incident clearance time are two main objects of traffic incident management (TIM) system, as it could help to relieve traffic congestion caused by traffic incidents. This study applies the extreme gradient boosting machine algorithm (XGBoost) to predict incident clearance time on freeway and analyze the significant factors of clearance time. The XGBoost integrates the superiority of statistical and machine learning methods, which can flexibly deal with the nonlinear data in high-dimensional space and quantify the relative importance of the explanatory variables. The data collected from the Washington Incident Tracking System in 2011 are used in this research. To investigate the potential philosophy hidden in data, K-means is chosen to cluster the data into two clusters. The XGBoost is built for each cluster. Bayesian optimization is used to optimize the parameters of XGBoost, and the MAPE is considered as the predictive indicator to evaluate the prediction performance. A comparative study confirms that the XGBoost outperforms other models. In addition, response time, AADT (annual average daily traffic), incident type, and lane closure type are identified as the significant explanatory variables for clearance time.http://dx.doi.org/10.1155/2020/6401082
collection DOAJ
language English
format Article
sources DOAJ
author Jinjun Tang
Lanlan Zheng
Chunyang Han
Fang Liu
Jianming Cai
spellingShingle Jinjun Tang
Lanlan Zheng
Chunyang Han
Fang Liu
Jianming Cai
Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model
Journal of Advanced Transportation
author_facet Jinjun Tang
Lanlan Zheng
Chunyang Han
Fang Liu
Jianming Cai
author_sort Jinjun Tang
title Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model
title_short Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model
title_full Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model
title_fullStr Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model
title_full_unstemmed Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model
title_sort traffic incident clearance time prediction and influencing factor analysis using extreme gradient boosting model
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 0197-6729
2042-3195
publishDate 2020-01-01
description Accurate prediction and reliable significant factor analysis of incident clearance time are two main objects of traffic incident management (TIM) system, as it could help to relieve traffic congestion caused by traffic incidents. This study applies the extreme gradient boosting machine algorithm (XGBoost) to predict incident clearance time on freeway and analyze the significant factors of clearance time. The XGBoost integrates the superiority of statistical and machine learning methods, which can flexibly deal with the nonlinear data in high-dimensional space and quantify the relative importance of the explanatory variables. The data collected from the Washington Incident Tracking System in 2011 are used in this research. To investigate the potential philosophy hidden in data, K-means is chosen to cluster the data into two clusters. The XGBoost is built for each cluster. Bayesian optimization is used to optimize the parameters of XGBoost, and the MAPE is considered as the predictive indicator to evaluate the prediction performance. A comparative study confirms that the XGBoost outperforms other models. In addition, response time, AADT (annual average daily traffic), incident type, and lane closure type are identified as the significant explanatory variables for clearance time.
url http://dx.doi.org/10.1155/2020/6401082
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AT chunyanghan trafficincidentclearancetimepredictionandinfluencingfactoranalysisusingextremegradientboostingmodel
AT fangliu trafficincidentclearancetimepredictionandinfluencingfactoranalysisusingextremegradientboostingmodel
AT jianmingcai trafficincidentclearancetimepredictionandinfluencingfactoranalysisusingextremegradientboostingmodel
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