Full Text Available

Note: Clicking the button above will open the full text document at the original institutional repository in a new window.

Prediction of Distresses in Pavement Networks: A Machine Learning Approach

The quality of pavement networks is greatly affected by different distresses. These distresses appear in many forms, such as cracking, potholes, rutting and different types of deformation. As a result, to ensure effective pavement management, accurate modeling of these different distresses has becom...

Full description

Saved in:
Bibliographic Details
Main Author: Kotb, Mahmoud
Format: Thesis
Published: AUC Knowledge Fountain 2024
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867613423243624448
access_status_str Open Access
author Kotb, Mahmoud
author_browse Kotb, Mahmoud
author_facet Kotb, Mahmoud
author_sort Kotb, Mahmoud
collection Thesis
description The quality of pavement networks is greatly affected by different distresses. These distresses appear in many forms, such as cracking, potholes, rutting and different types of deformation. As a result, to ensure effective pavement management, accurate modeling of these different distresses has become essential. Moreover, machine learning models have shown great potential in modeling pavement performance in recent years. The objective of this research is to develop machine learning models for modeling key parameters of pavement distress, specifically the International Roughness Index (IRI), fatigue and longitudinal cracking. Data for this investigation were extracted from the Long-Term Pavement Performance (LTPP) database, with a focus on areas exhibiting environmental conditions similar to those in Egypt. By doing so, the models would be applicable to Egyptian settings. The dataset comprised of 8537 datapoints on 221 different pavement sections. The variables collected include IRI, temperature, precipitation, Equivalent Single Axle Loads (ESALs), pavement age, time since last maintenance, asphalt concrete layer thickness, average asphalt content, bulk specific gravity, granular base thickness, percentage of fatigue cracking, and percentage of longitudinal cracking. Six machine learning algorithms were used for modeling each output variable: XGBoost, Random Forest, K-Nearest Neighbors (KNN), Bayesian Regression, Ridge Regression, and Decision Trees. Model performance was assessed using Mean Absolute Error (MAE) and R2 as evaluation metrics. Comparative analysis revealed that the XGBoost algorithm demonstrated superior performance in modeling all three output variables. The results showed a MAE of 0.17 and R2 of 0.729 for modeling IRI. For modeling fatigue cracking and longitudinal cracking, the model produced a MAE of 4.92% and 2.96%, respectively, with an R2 of 0.672 and 0.692 respectively. The findings are significant for many reasons. Firstly, they offer a framework for modeling pavement distress parameters, which is crucial for effective pavement management and maintenance strategies. Secondly, the study confirms the efficacy of machine learning algorithms in modeling pavement performance indicators, especially when using ensemble models. Lastly, the exceptional performance of the XGBoost algorithm indicates its reliability as a tool for both future research and practical applications in pavement management. Importantly, the models are tailored to be applicable in Egypt, providing a data-driven approach to improve the quality of road infrastructure in the region.
format Thesis
id oai:fount.aucegypt.edu:etds-3314
institution American University in Cairo (Egypt)
last_indexed 2026-06-10T12:35:54.296Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from AUC Knowledge Fountain — bepress
publishDate 2024
publishDateRange 2024
publishDateSort 2024
publisher AUC Knowledge Fountain
publisherStr AUC Knowledge Fountain
record_format dspace
source_str AUC Knowledge Fountain — bepress
spelling oai:fount.aucegypt.edu:etds-3314 Prediction of Distresses in Pavement Networks: A Machine Learning Approach Kotb, Mahmoud The quality of pavement networks is greatly affected by different distresses. These distresses appear in many forms, such as cracking, potholes, rutting and different types of deformation. As a result, to ensure effective pavement management, accurate modeling of these different distresses has become essential. Moreover, machine learning models have shown great potential in modeling pavement performance in recent years. The objective of this research is to develop machine learning models for modeling key parameters of pavement distress, specifically the International Roughness Index (IRI), fatigue and longitudinal cracking. Data for this investigation were extracted from the Long-Term Pavement Performance (LTPP) database, with a focus on areas exhibiting environmental conditions similar to those in Egypt. By doing so, the models would be applicable to Egyptian settings. The dataset comprised of 8537 datapoints on 221 different pavement sections. The variables collected include IRI, temperature, precipitation, Equivalent Single Axle Loads (ESALs), pavement age, time since last maintenance, asphalt concrete layer thickness, average asphalt content, bulk specific gravity, granular base thickness, percentage of fatigue cracking, and percentage of longitudinal cracking. Six machine learning algorithms were used for modeling each output variable: XGBoost, Random Forest, K-Nearest Neighbors (KNN), Bayesian Regression, Ridge Regression, and Decision Trees. Model performance was assessed using Mean Absolute Error (MAE) and R2 as evaluation metrics. Comparative analysis revealed that the XGBoost algorithm demonstrated superior performance in modeling all three output variables. The results showed a MAE of 0.17 and R2 of 0.729 for modeling IRI. For modeling fatigue cracking and longitudinal cracking, the model produced a MAE of 4.92% and 2.96%, respectively, with an R2 of 0.672 and 0.692 respectively. The findings are significant for many reasons. Firstly, they offer a framework for modeling pavement distress parameters, which is crucial for effective pavement management and maintenance strategies. Secondly, the study confirms the efficacy of machine learning algorithms in modeling pavement performance indicators, especially when using ensemble models. Lastly, the exceptional performance of the XGBoost algorithm indicates its reliability as a tool for both future research and practical applications in pavement management. Importantly, the models are tailored to be applicable in Egypt, providing a data-driven approach to improve the quality of road infrastructure in the region. 2024-02-28T08:00:00Z thesis application/pdf https://fount.aucegypt.edu/etds/2277 https://fount.aucegypt.edu/context/etds/article/3314/viewcontent/mahmoud_mostafa_kotb_thesis.pdf https://fount.aucegypt.edu/context/etds/article/3314/filename/0/type/additional/viewcontent/mahmoud_mostafa_kotb_turnitin.pdf https://fount.aucegypt.edu/context/etds/article/3314/filename/1/type/additional/viewcontent/mahmoud_mostafa_kotb_signatures.pdf https://fount.aucegypt.edu/context/etds/article/3314/filename/2/type/additional/viewcontent/mahmoud_mostafa_kotb_irb.pdf Theses and Dissertations AUC Knowledge Fountain pavement management prediction modeling machine learning Construction Engineering and Management
spellingShingle pavement management prediction modeling machine learning
Construction Engineering and Management
Kotb, Mahmoud
Prediction of Distresses in Pavement Networks: A Machine Learning Approach
title Prediction of Distresses in Pavement Networks: A Machine Learning Approach
title_full Prediction of Distresses in Pavement Networks: A Machine Learning Approach
title_fullStr Prediction of Distresses in Pavement Networks: A Machine Learning Approach
title_full_unstemmed Prediction of Distresses in Pavement Networks: A Machine Learning Approach
title_short Prediction of Distresses in Pavement Networks: A Machine Learning Approach
title_sort prediction of distresses in pavement networks a machine learning approach
topic pavement management prediction modeling machine learning
Construction Engineering and Management
url https://fount.aucegypt.edu/etds/2277
https://fount.aucegypt.edu/context/etds/article/3314/viewcontent/mahmoud_mostafa_kotb_thesis.pdf
https://fount.aucegypt.edu/context/etds/article/3314/filename/0/type/additional/viewcontent/mahmoud_mostafa_kotb_turnitin.pdf
https://fount.aucegypt.edu/context/etds/article/3314/filename/1/type/additional/viewcontent/mahmoud_mostafa_kotb_signatures.pdf
https://fount.aucegypt.edu/context/etds/article/3314/filename/2/type/additional/viewcontent/mahmoud_mostafa_kotb_irb.pdf
work_keys_str_mv AT kotbmahmoud predictionofdistressesinpavementnetworksamachinelearningapproach