New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns

The estimation of the saturation flow rate is of utmost importance when defining the signal plan at intersections. Because of the numerous influential factors, the values of which are hard to be determined, the subject problem is to be regarded as an extremely complex one. This research deals with t...

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Main Authors: Veljko Radičević, Nikola Krstanoski, Marko Subotić
Format: Article
Language:English
Published: University of Zagreb, Faculty of Transport and Traffic Sciences 2020-07-01
Series:Promet (Zagreb)
Subjects:
Online Access:https://traffic.fpz.hr/index.php/PROMTT/article/view/3458
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spelling doaj-820f58eb4cb24a71ad7a8651553be6b52020-11-25T03:51:29ZengUniversity of Zagreb, Faculty of Transport and Traffic SciencesPromet (Zagreb)0353-53201848-40692020-07-0132457358310.7307/ptt.v32i4.34583458New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left TurnsVeljko Radičević0Nikola Krstanoski1Marko Subotić2Technical College of Applied Sciences-Urosevac (Leposavic)University "St. Kliment Ohridski", Faculty of Technical ScienceUniversity of East Sarajevo, Faculty of Transport and Traffic EngineeringThe estimation of the saturation flow rate is of utmost importance when defining the signal plan at intersections. Because of the numerous influential factors, the values of which are hard to be determined, the subject problem is to be regarded as an extremely complex one. This research deals with the estimation of a saturation flow rate of a shared lane with permitted left turns. The suggested algorithm is based on the application of the artificial neural networks where the data for training are received by simulation. The results obtained by the neural networks are compared with multiple linear regression and the known HCM 2010 approach for determining the saturated flow of a shared lane. The testing data have shown that the approach based on the artificial neural networks foresaw statistically significantly better values than the ones obtained by multiple linear regression, with an error of 27 veh/h against 49 veh/h. The HCM 2010 approach is significantly worse than the two others included in this research. The ways of the future development of the suggested method could include additional factors, such as the grade of the traffic lane, the proximity of the bus stops, and others.https://traffic.fpz.hr/index.php/PROMTT/article/view/3458artificial neural networksmultiple regressionpermitted left turnsshared lanesimulation
collection DOAJ
language English
format Article
sources DOAJ
author Veljko Radičević
Nikola Krstanoski
Marko Subotić
spellingShingle Veljko Radičević
Nikola Krstanoski
Marko Subotić
New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns
Promet (Zagreb)
artificial neural networks
multiple regression
permitted left turns
shared lane
simulation
author_facet Veljko Radičević
Nikola Krstanoski
Marko Subotić
author_sort Veljko Radičević
title New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns
title_short New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns
title_full New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns
title_fullStr New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns
title_full_unstemmed New Approach to Estimating the Saturation Flow Rate of a Shared Lane with Permitted Left Turns
title_sort new approach to estimating the saturation flow rate of a shared lane with permitted left turns
publisher University of Zagreb, Faculty of Transport and Traffic Sciences
series Promet (Zagreb)
issn 0353-5320
1848-4069
publishDate 2020-07-01
description The estimation of the saturation flow rate is of utmost importance when defining the signal plan at intersections. Because of the numerous influential factors, the values of which are hard to be determined, the subject problem is to be regarded as an extremely complex one. This research deals with the estimation of a saturation flow rate of a shared lane with permitted left turns. The suggested algorithm is based on the application of the artificial neural networks where the data for training are received by simulation. The results obtained by the neural networks are compared with multiple linear regression and the known HCM 2010 approach for determining the saturated flow of a shared lane. The testing data have shown that the approach based on the artificial neural networks foresaw statistically significantly better values than the ones obtained by multiple linear regression, with an error of 27 veh/h against 49 veh/h. The HCM 2010 approach is significantly worse than the two others included in this research. The ways of the future development of the suggested method could include additional factors, such as the grade of the traffic lane, the proximity of the bus stops, and others.
topic artificial neural networks
multiple regression
permitted left turns
shared lane
simulation
url https://traffic.fpz.hr/index.php/PROMTT/article/view/3458
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AT nikolakrstanoski newapproachtoestimatingthesaturationflowrateofasharedlanewithpermittedleftturns
AT markosubotic newapproachtoestimatingthesaturationflowrateofasharedlanewithpermittedleftturns
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