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Predictive models for road traffic sign: Retroreflectivity status, retroreflectivity coefficient, and lifespan
Dalarna University, School of Information and Engineering, Microdata Analysis. Swedish Transport Administration, Borlänge.
Dalarna University, School of Information and Engineering, Computer Engineering.ORCID iD: 0000-0002-1429-2345
2024 (English)In: International Journal of Transportation Science and Technology, ISSN 2046-0430, E-ISSN 2046-0449, Vol. 16, p. 276-291Article in journal (Refereed) Published
Sustainable development
SDG 3: Good health and well-being, SDG 11: Sustainable cities and communities
Abstract [en]

This study addresses the critical safety issue of declining retroreflectivity values of road traffic signs, which can lead to unsafe driving conditions, especially at night. The paper aims to predict the retroreflectivity coefficient values of these signs and to classify their status as acceptable or rejected (in need of replacement) using machine learning models. Moreover, logistic regression and survival analysis are used to predict the median lifespans of road traffic signs across various geographical locations, focusing on signs in Croatia and Sweden as case studies. The results indicate high accuracy in the predictive models, with classification accuracy at 94% and an R2 value of 94% for regression analysis. A significant finding is that a considerable number of signs maintain acceptable retroreflectivity levels within their warranty period, suggesting the feasibility of extending maintenance checks and warranty periods to 15 years which is longer than the current standard of 10 years. Additionally, the study reveals notable variations in the median lifespans of signs based on color and location. Blue signs in Croatia and Sweden exhibit the longest median lifespans (28 to 35 years), whereas white signs in Sweden and red signs in Croatia show the shortest (16 and 10 years, respectively). The high accuracy of logistic regression models (72–90%) for lifespan prediction confirms the effectiveness of this approach. These findings provide valuable insights for road authorities regarding the maintenance and management of road traffic signs, enhancing road safety standards. © 2024 Tongji University and Tongji University Press

Place, publisher, year, edition, pages
KeAi Communications Co. , 2024. Vol. 16, p. 276-291
Keywords [en]
Daylight Chromaticity, Machine learning algorithms, Prediction, Retroreflectivity, Road signs, Highway administration, Highway planning, Learning algorithms, Logistic regression, Machine learning, Motor transportation, Roads and streets, Traffic signs, Croatia, High-accuracy, Lifespans, Predictive models, Road traffic, Warranty period, Forecasting
National Category
Infrastructure Engineering Computer Systems
Identifiers
URN: urn:nbn:se:du-48218DOI: 10.1016/j.ijtst.2024.02.008ISI: 001392268200001Scopus ID: 2-s2.0-85186242464OAI: oai:DiVA.org:du-48218DiVA, id: diva2:1843897
Available from: 2024-03-12 Created: 2024-03-12 Last updated: 2025-10-09
In thesis
1. Towards Smart Maintenance: Machine-Learning Based Prediction of Retroreflectivity and Color of Road Traffic Signs
Open this publication in new window or tab >>Towards Smart Maintenance: Machine-Learning Based Prediction of Retroreflectivity and Color of Road Traffic Signs
2024 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

Proper maintenance of road traffic signs is vital for safety, as their low visibility can cause accidents and fatalities. Many countries, including Sweden, lack a systematic approach for replacing signs due to the risky, costly, and complex methods needed to measure their color and retroreflectivity.

This thesis introduces a predictive maintenance method for road traffic signs to ensure their visibility day and night. The proposed data-driven models predict sign degradation, helping maintain optimal visibility, decreasing accidents, and enhancing safety, and environmental sustainability by reducing material consumption and waste reduction.

This thesis suggests using machine learning methods to predict the values of retroreflectivity (coefficient of retroreflection) and color (daylight chromaticity), and to estimate the status (rejected/accepted) and longevity according to color and retroreflectivity. Datasets collected in Sweden, Denmark, and Croatia were used in this research.

Regression and classification models, employing Random Forest (RF), Support Vector Machine (SVM), and Artificial Neural Networks (ANN) utilized to predict the degradation of road traffic signs. ANN showed the highest performance, 94% R2 for retroreflectivity predictions and up to 94% accuracy for color and retroreflectivity status. SVM and RF also achieved acceptable accuracies.

Statistical methods, including linear and logarithmic regression, were also applied to examine the impact of age on the retroreflectivity values and status, chromaticity, and color status of road traffic signs. Findings revealed age as a significant factor, with a generally linear relationship between chromaticity values and age, except for yellow signs which displayed non-linear patterns between 8 and 22 years. Logarithmic regression models achieved R2 values of 50% and 95%, which are more accurate than those from previous studies. These models reveal an annual decrease in retroreflectivity of 4-5% and a negative correlation with the sign's direction, indicating that signs facing south and west degrade faster due to more solar exposure.

Logistic regression and Kaplan-Meier survival analyses were used to assess road traffic signs' longevity. The longevity based on retroreflectivity and color durability varies depending on color, retroreflective sheeting classes, direction, and location.

In Sweden, the median lifespan of road traffic signs estimated based on retroreflectivity lasts up to 25 years for red, 20 for yellow, 20 for white, and 35 for blue sheeting. In Croatia, the lifespan is shorter, 12 years for red, 16 for yellow, and 17 for white, 20 for blue.

Considering color degradation, the median lifespan of yellow road traffic signs is 45 years, 35 years for white, and blue signs, while red signs have a shorter lifespan. However, the red signs deteriorate in color before retroreflectivity with a median lifespan of 16 years, whereas other signs maintain their color longer. This emphasizes the effect of factors like pigment choice and environmental conditions on the durability of road traffic signs.

Place, publisher, year, edition, pages
Borlänge: Dalarna University, 2024
Series
Dalarna Doctoral Dissertations ; 32
Keywords
Road traffic signs, Retroreflectivity, Chromaticity, Maintenance, Predictive models, classification, Survival analysis, Kaplan Estimator, Machine Learning
National Category
Computer Systems Infrastructure Engineering
Identifiers
urn:nbn:se:du-48198 (URN)978-91-88679-61-1 (ISBN)
Public defence
2024-05-24, room Clas Ohlson and online, Campus Borlänge, 13:00 (English)
Opponent
Supervisors
Available from: 2024-04-22 Created: 2024-03-07 Last updated: 2025-10-09Bibliographically approved

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Saleh, RoxanFleyeh, Hasan

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