Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning

Energy-efficient train speed profile optimization problem in urban rail transit systems has attracted much attention in recent years because of the requirement of reducing operation cost and protecting the environment. Traditional methods on this problem mainly focused on formulating kinematical equ...

Full description

Bibliographic Details
Main Authors: Kang Huang, Jianjun Wu, Xin Yang, Ziyou Gao, Feng Liu, Yuting Zhu
Format: Article
Language:English
Published: Hindawi-Wiley 2019-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2019/7258986
id doaj-e05d63ea094843aa95f71920f66e6d09
record_format Article
spelling doaj-e05d63ea094843aa95f71920f66e6d092020-11-25T00:40:29ZengHindawi-WileyJournal of Advanced Transportation0197-67292042-31952019-01-01201910.1155/2019/72589867258986Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine LearningKang Huang0Jianjun Wu1Xin Yang2Ziyou Gao3Feng Liu4Yuting Zhu5State Key Laboratory of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaState Key Laboratory of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaState Key Laboratory of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaState Key Laboratory of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing 100044, ChinaTransportation Research Institute (IMOB), Hasselt University, Wetenschapspark 5, Bus 6, 3590 Diepenbeek, BelgiumSchool of Traffic and Transportation, Beijing Jiaotong University, Beijing 100044, ChinaEnergy-efficient train speed profile optimization problem in urban rail transit systems has attracted much attention in recent years because of the requirement of reducing operation cost and protecting the environment. Traditional methods on this problem mainly focused on formulating kinematical equations to derive the speed profile and calculate the energy consumption, which caused the possible errors due to some assumptions used in the empirical equations. To fill this gap, according to the actual speed and energy data collected from the real-world urban rail system, this paper proposes a data-driven model and integrated heuristic algorithm based on machine learning to determine the optimal speed profile with minimum energy consumption. Firstly, a data-driven optimization model (DDOM) is proposed to describe the relationship between energy consumption and discrete speed profile processed from actual data. Then, two typical machine learning algorithms, random forest regression (RFR) algorithm and support vector machine regression (SVR) algorithm, are used to identify the importance degree of velocity in the different positions of profile and calculate the traction energy consumption. Results show that the calculation average error is less than 0.1 kwh, and the energy consumption can be reduced by about 2.84% in a case study of Beijing Changping Line.http://dx.doi.org/10.1155/2019/7258986
collection DOAJ
language English
format Article
sources DOAJ
author Kang Huang
Jianjun Wu
Xin Yang
Ziyou Gao
Feng Liu
Yuting Zhu
spellingShingle Kang Huang
Jianjun Wu
Xin Yang
Ziyou Gao
Feng Liu
Yuting Zhu
Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning
Journal of Advanced Transportation
author_facet Kang Huang
Jianjun Wu
Xin Yang
Ziyou Gao
Feng Liu
Yuting Zhu
author_sort Kang Huang
title Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning
title_short Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning
title_full Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning
title_fullStr Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning
title_full_unstemmed Discrete Train Speed Profile Optimization for Urban Rail Transit: A Data-Driven Model and Integrated Algorithms Based on Machine Learning
title_sort discrete train speed profile optimization for urban rail transit: a data-driven model and integrated algorithms based on machine learning
publisher Hindawi-Wiley
series Journal of Advanced Transportation
issn 0197-6729
2042-3195
publishDate 2019-01-01
description Energy-efficient train speed profile optimization problem in urban rail transit systems has attracted much attention in recent years because of the requirement of reducing operation cost and protecting the environment. Traditional methods on this problem mainly focused on formulating kinematical equations to derive the speed profile and calculate the energy consumption, which caused the possible errors due to some assumptions used in the empirical equations. To fill this gap, according to the actual speed and energy data collected from the real-world urban rail system, this paper proposes a data-driven model and integrated heuristic algorithm based on machine learning to determine the optimal speed profile with minimum energy consumption. Firstly, a data-driven optimization model (DDOM) is proposed to describe the relationship between energy consumption and discrete speed profile processed from actual data. Then, two typical machine learning algorithms, random forest regression (RFR) algorithm and support vector machine regression (SVR) algorithm, are used to identify the importance degree of velocity in the different positions of profile and calculate the traction energy consumption. Results show that the calculation average error is less than 0.1 kwh, and the energy consumption can be reduced by about 2.84% in a case study of Beijing Changping Line.
url http://dx.doi.org/10.1155/2019/7258986
work_keys_str_mv AT kanghuang discretetrainspeedprofileoptimizationforurbanrailtransitadatadrivenmodelandintegratedalgorithmsbasedonmachinelearning
AT jianjunwu discretetrainspeedprofileoptimizationforurbanrailtransitadatadrivenmodelandintegratedalgorithmsbasedonmachinelearning
AT xinyang discretetrainspeedprofileoptimizationforurbanrailtransitadatadrivenmodelandintegratedalgorithmsbasedonmachinelearning
AT ziyougao discretetrainspeedprofileoptimizationforurbanrailtransitadatadrivenmodelandintegratedalgorithmsbasedonmachinelearning
AT fengliu discretetrainspeedprofileoptimizationforurbanrailtransitadatadrivenmodelandintegratedalgorithmsbasedonmachinelearning
AT yutingzhu discretetrainspeedprofileoptimizationforurbanrailtransitadatadrivenmodelandintegratedalgorithmsbasedonmachinelearning
_version_ 1725289752986386432