Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections

This paper proposes a novel two-order optimization model of the division of time-of-day control segmented points of road intersection to address the limitations of the randomness of artificial experience, avoid the complex multi-factor division calculation, and optimize the traditional model over tr...

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Main Authors: Chen Xu, Decun Dong, Dongxiu Ou, Changxi Ma
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:International Journal of Environmental Research and Public Health
Subjects:
Online Access:http://www.mdpi.com/1660-4601/16/5/870
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spelling doaj-a5de067ae9b54d1985312602502a30ae2020-11-24T21:40:40ZengMDPI AGInternational Journal of Environmental Research and Public Health1660-46012019-03-0116587010.3390/ijerph16050870ijerph16050870Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven IntersectionsChen Xu0Decun Dong1Dongxiu Ou2Changxi Ma3The Key Laboratory of Road and Traffic Engineering, Ministry of Education, School of Transportation Engineering, Tongji University, Shanghai 201804, ChinaThe Key Laboratory of Road and Traffic Engineering, Ministry of Education, School of Transportation Engineering, Tongji University, Shanghai 201804, ChinaThe Key Laboratory of Road and Traffic Engineering, Ministry of Education, School of Transportation Engineering, Tongji University, Shanghai 201804, ChinaSchool of Traffic and Transportation, Lanzhou Jiaotong University, Lanzhou 730070, ChinaThis paper proposes a novel two-order optimization model of the division of time-of-day control segmented points of road intersection to address the limitations of the randomness of artificial experience, avoid the complex multi-factor division calculation, and optimize the traditional model over traffic safety and data-driven methods. For the first-order optimization—that is, deep optimization of the model input data—we first increase the dimension of traditional traffic flow data by data-driven and traffic safety methods, and develop a vector quantity to represent the size, direction, and time frequency with conflict point traffic of the total traffic flow at a certain intersection for a period by introducing a 3D vector of intersection traffic flow. Then, a time-series segmentation algorithm is used to recurse the distance amongst adjacent vectors to obtain the initial scheme of segmented points, and the segmentation points are finally divided by the combination of the preliminary scheme. For the second-order optimization—that is, model adaptability analysis—the traffic flow data at intersections are subjected to standardised processing by five-number summary. The different traffic flow characteristics of the intersection are categorised by the K central point clustering algorithm of big data, and an applicability analysis of each type of intersection is conducted by using an innovated piecewise point division model. The actual traffic flow data of 155 intersections in Yuecheng District, Shaoxing, China, in 2016 are tested. Four types of intersections in the tested range are evaluated separately by the innovated piecewise point division model and the traditional total flow segmentation model on the basis of Synchro 7 simulation software. It is shown that when the innovated double-order optimization model is used in the intersection according to the ‘hump-type’ traffic flow characteristic, its control is more accurate and efficient than that of the traditional total flow segmentation model. The total delay time is reduced by approximately 5.6%. In particular, the delay time in the near-peak-flow buffer period is significantly reduced by approximately 17%. At the same time, the traffic accident rate has also dropped significantly, effectively improving traffic safety at intersections.http://www.mdpi.com/1660-4601/16/5/870traffic safetytime-of-day controldouble-order optimizationdata-driven
collection DOAJ
language English
format Article
sources DOAJ
author Chen Xu
Decun Dong
Dongxiu Ou
Changxi Ma
spellingShingle Chen Xu
Decun Dong
Dongxiu Ou
Changxi Ma
Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections
International Journal of Environmental Research and Public Health
traffic safety
time-of-day control
double-order optimization
data-driven
author_facet Chen Xu
Decun Dong
Dongxiu Ou
Changxi Ma
author_sort Chen Xu
title Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections
title_short Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections
title_full Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections
title_fullStr Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections
title_full_unstemmed Time-of-day Control Double-Order Optimization of Traffic Safety and Data-Driven Intersections
title_sort time-of-day control double-order optimization of traffic safety and data-driven intersections
publisher MDPI AG
series International Journal of Environmental Research and Public Health
issn 1660-4601
publishDate 2019-03-01
description This paper proposes a novel two-order optimization model of the division of time-of-day control segmented points of road intersection to address the limitations of the randomness of artificial experience, avoid the complex multi-factor division calculation, and optimize the traditional model over traffic safety and data-driven methods. For the first-order optimization—that is, deep optimization of the model input data—we first increase the dimension of traditional traffic flow data by data-driven and traffic safety methods, and develop a vector quantity to represent the size, direction, and time frequency with conflict point traffic of the total traffic flow at a certain intersection for a period by introducing a 3D vector of intersection traffic flow. Then, a time-series segmentation algorithm is used to recurse the distance amongst adjacent vectors to obtain the initial scheme of segmented points, and the segmentation points are finally divided by the combination of the preliminary scheme. For the second-order optimization—that is, model adaptability analysis—the traffic flow data at intersections are subjected to standardised processing by five-number summary. The different traffic flow characteristics of the intersection are categorised by the K central point clustering algorithm of big data, and an applicability analysis of each type of intersection is conducted by using an innovated piecewise point division model. The actual traffic flow data of 155 intersections in Yuecheng District, Shaoxing, China, in 2016 are tested. Four types of intersections in the tested range are evaluated separately by the innovated piecewise point division model and the traditional total flow segmentation model on the basis of Synchro 7 simulation software. It is shown that when the innovated double-order optimization model is used in the intersection according to the ‘hump-type’ traffic flow characteristic, its control is more accurate and efficient than that of the traditional total flow segmentation model. The total delay time is reduced by approximately 5.6%. In particular, the delay time in the near-peak-flow buffer period is significantly reduced by approximately 17%. At the same time, the traffic accident rate has also dropped significantly, effectively improving traffic safety at intersections.
topic traffic safety
time-of-day control
double-order optimization
data-driven
url http://www.mdpi.com/1660-4601/16/5/870
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AT decundong timeofdaycontroldoubleorderoptimizationoftrafficsafetyanddatadrivenintersections
AT dongxiuou timeofdaycontroldoubleorderoptimizationoftrafficsafetyanddatadrivenintersections
AT changxima timeofdaycontroldoubleorderoptimizationoftrafficsafetyanddatadrivenintersections
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