Travel time reliability is known to be a critical issue in the contexts of both travellers' choices and decisions and freight transportation. The temporal variability of travel time is known as reliability and is affected by numerous factors. Traffic volume, incidents and inclement weather are among the most profound factors, and their effects have been the subject of many studies. The work reported in this article is unique due to the simultaneous implementation of a genetic algorithm (GA) with multiple machine learning (ML) methods. A GA can eliminate overfitting, which is a common problem in ML models. The numerical results showed that the performance of the K-nearest neighbours method was significantly enhanced when a GA was imposed on it. In terms of the stability ratio, a 12% decrease was observed; the mean squared errors for the training set and the testing set decreased, but the reductions were not significant. To further illustrate the advantages of GA implementation, the numbers of predictions with a mean absolute percentage error greater than 0.05 were compared and a notable reduction was found. Sensitivity analysis was carried out to determine how the planning time index responds to fluctuations of independent variables.
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July 2024
Research Article|
December 15 2022
Travel time reliability prediction by genetic algorithm and machine learning models Available to Purchase
Shahriar Afandizadeh Zargari, PhD
;
Shahriar Afandizadeh Zargari, PhD
Professor, Department of Transportation, Iran University of Science and Technology, Tehran, Iran
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Navid Amoei Khorshidi, MSc
;
Navid Amoei Khorshidi, MSc
Researcher, Department of Transportation, Iran University of Science and Technology, Tehran, Iran
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Hamid Mirzahossein, PhD
;
Hamid Mirzahossein, PhD
Associate Professor, Department of Civil–Transportation Planning, Imam Khomeini International University, Qazvin, Iran (corresponding author: mirzahossein@eng.ikiu.ac.ir)
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Samim Shakoori, MSc;
Samim Shakoori, MSc
Researcher, Department of Transportation, Iran University of Science and Technology, Tehran, Iran
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Xia Jin, PhD
Xia Jin, PhD
Associate Professor, Department of Civil and Environmental Engineering, Florida International University, Miami, FL, USA
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Publisher: Emerald Publishing
Received:
July 29 2022
Accepted:
November 02 2022
Online ISSN: 1751-7710
Print ISSN: 0965-092X
Emerald Publishing Limited: All rights reserved
2022
Proceedings of the Institution of Civil Engineers - Transport (2024) 177 (4): 214–223.
Article history
Received:
July 29 2022
Accepted:
November 02 2022
Citation
Zargari SA, Khorshidi NA, Mirzahossein H, Shakoori S, Jin X (2024), "Travel time reliability prediction by genetic algorithm and machine learning models". Proceedings of the Institution of Civil Engineers - Transport, Vol. 177 No. 4 pp. 214–223, doi: https://doi.org/10.1680/jtran.22.00065
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