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Prediction model for drivers' tendency to perpetrate a double parking violation on urban trips.

Authors :
Kadkhodaei, Masoud
Shad, Rouzbeh
Ziaee, Seyed Ali
Kadkhodaei, Mohsen
Source :
Transport Policy. Sep2023, Vol. 141, p331-339. 9p.
Publication Year :
2023

Abstract

Illegal parking during peak hours and on heavily traveled streets can significantly impact the severity of traffic congestion and related problems. A double parking violation is among the most significant instances of illegal parking. Double parking violations reduce road capacity and increase traffic congestion. Intensified traffic congestion also increases travel time and reduces road user satisfaction. Thus, the management of double parking violations is critical to managing traffic congestion in urban streets. In this study, the factors influencing the drivers' tendency to perpetrate a double parking violation were identified using the ordinal logistic regression model in the central area of Mashhad. Then, by redesigning the ordinal logistic regression model and utilizing the identified effective factors, a model was developed to predict the level of drivers' propensity to perpetrate a double parking violation during urban trips. Mashhad is one of the largest cities in Iran, and its central district experiences a high volume of daily traffic. The results indicated that parking duration is the main factor affecting drivers' propensity to perpetrate a double parking violation. Driver education level and driver presence in the vehicle ranked second and third, respectively. The P-value in the goodness-of-fit test was obtained at less than 0.05, indicating the designed model's acceptable accuracy. • The greater the necessity of parking, the greater the likelihood that the driver will commit a double parking violation. • Reducing the educational level of drivers to B.Sc. or less increase the likelihood that they will perpetrate double parking. • If the parking duration is less than 25 min, the driver's visual search distance for parking will be significantly reduced. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0967070X
Volume :
141
Database :
Academic Search Index
Journal :
Transport Policy
Publication Type :
Academic Journal
Accession number :
169948151
Full Text :
https://doi.org/10.1016/j.tranpol.2023.08.001