Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control

This paper proposes a model predictive control method based on dynamic multi-objective optimization algorithms (MPC_CPDMO-NSGA-II) for reducing freeway congestion and relieving environment impact simultaneously. A new dynamic multi-objective optimization algorithm based on clustering and prediction...

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Main Authors: Juan Chen, Yuxuan Yu, Qi Guo
Format: Article
Language:English
Published: MDPI AG 2019-10-01
Series:Algorithms
Subjects:
Online Access:https://www.mdpi.com/1999-4893/12/10/220
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spelling doaj-228c731d26874db08531cc28b192d6622020-11-25T01:55:55ZengMDPI AGAlgorithms1999-48932019-10-01121022010.3390/a12100220a12100220Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive ControlJuan Chen0Yuxuan Yu1Qi Guo2SHU-UTS SILC Business School, Shanghai University, Shanghai 201899, ChinaSHU-UTS SILC Business School, Shanghai University, Shanghai 201899, ChinaSHU-UTS SILC Business School, Shanghai University, Shanghai 201899, ChinaThis paper proposes a model predictive control method based on dynamic multi-objective optimization algorithms (MPC_CPDMO-NSGA-II) for reducing freeway congestion and relieving environment impact simultaneously. A new dynamic multi-objective optimization algorithm based on clustering and prediction with NSGA-II (CPDMO-NSGA-II) is proposed. The proposed CPDMO-NSGA-II algorithm is used to realize on-line optimization at each control step in model predictive control. The performance indicators considered in model predictive control consists of total time spent, total travel distance, total emissions and total fuel consumption. Then TOPSIS method is adopted to select an optimal solution from Pareto front obtained from MPC_CPDMO-NSGA-II algorithm and is applied to the VISSIM environment. The control strategies are variable speed limit (VSL) and ramp metering (RM). In order to verify the performance of the proposed algorithm, the proposed algorithm is tested under the simulation environment originated from a real freeway network in Shanghai with one on-ramp. The result is compared with fixed speed limit strategy and single optimization method respectively. Simulation results show that it can effectively alleviate traffic congestion, reduce emissions and fuel consumption, as compared with fixed speed limit strategy and classical model predictive control method based on single optimization method.https://www.mdpi.com/1999-4893/12/10/220freeway transportationcongestion controlenvironment impactdynamic multi-objective optimizationmodel predict controlclustering and prediction
collection DOAJ
language English
format Article
sources DOAJ
author Juan Chen
Yuxuan Yu
Qi Guo
spellingShingle Juan Chen
Yuxuan Yu
Qi Guo
Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control
Algorithms
freeway transportation
congestion control
environment impact
dynamic multi-objective optimization
model predict control
clustering and prediction
author_facet Juan Chen
Yuxuan Yu
Qi Guo
author_sort Juan Chen
title Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control
title_short Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control
title_full Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control
title_fullStr Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control
title_full_unstemmed Freeway Traffic Congestion Reduction and Environment Regulation via Model Predictive Control
title_sort freeway traffic congestion reduction and environment regulation via model predictive control
publisher MDPI AG
series Algorithms
issn 1999-4893
publishDate 2019-10-01
description This paper proposes a model predictive control method based on dynamic multi-objective optimization algorithms (MPC_CPDMO-NSGA-II) for reducing freeway congestion and relieving environment impact simultaneously. A new dynamic multi-objective optimization algorithm based on clustering and prediction with NSGA-II (CPDMO-NSGA-II) is proposed. The proposed CPDMO-NSGA-II algorithm is used to realize on-line optimization at each control step in model predictive control. The performance indicators considered in model predictive control consists of total time spent, total travel distance, total emissions and total fuel consumption. Then TOPSIS method is adopted to select an optimal solution from Pareto front obtained from MPC_CPDMO-NSGA-II algorithm and is applied to the VISSIM environment. The control strategies are variable speed limit (VSL) and ramp metering (RM). In order to verify the performance of the proposed algorithm, the proposed algorithm is tested under the simulation environment originated from a real freeway network in Shanghai with one on-ramp. The result is compared with fixed speed limit strategy and single optimization method respectively. Simulation results show that it can effectively alleviate traffic congestion, reduce emissions and fuel consumption, as compared with fixed speed limit strategy and classical model predictive control method based on single optimization method.
topic freeway transportation
congestion control
environment impact
dynamic multi-objective optimization
model predict control
clustering and prediction
url https://www.mdpi.com/1999-4893/12/10/220
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