Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques

Pavement design is influenced by traffic load, which affects its lifespan. Traditional methods classify traffic load into fixed traffic, fixed vehicle, variable traffic, and vehicle/axle loads. In fixed traffic, pavement thickness is based on the maximum expected wheel load without considering load...

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Published in:APPLIED SCIENCES-BASEL
Main Authors: Alnadish, Adham Mohammed; Ramu, Madhusudhan Bangalore; Baarimah, Abdullah O.; Alawag, Aawag Mohsen
Format: Article
Language:English
Published: MDPI 2025
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001418438900001
author Alnadish
Adham Mohammed; Ramu
Madhusudhan Bangalore; Baarimah
Abdullah O.; Alawag
Aawag Mohsen
spellingShingle Alnadish
Adham Mohammed; Ramu
Madhusudhan Bangalore; Baarimah
Abdullah O.; Alawag
Aawag Mohsen
Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
Chemistry; Engineering; Materials Science; Physics
author_facet Alnadish
Adham Mohammed; Ramu
Madhusudhan Bangalore; Baarimah
Abdullah O.; Alawag
Aawag Mohsen
author_sort Alnadish
spelling Alnadish, Adham Mohammed; Ramu, Madhusudhan Bangalore; Baarimah, Abdullah O.; Alawag, Aawag Mohsen
Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
APPLIED SCIENCES-BASEL
English
Article
Pavement design is influenced by traffic load, which affects its lifespan. Traditional methods classify traffic load into fixed traffic, fixed vehicle, variable traffic, and vehicle/axle loads. In fixed traffic, pavement thickness is based on the maximum expected wheel load without considering load repetitions. Meanwhile, in fixed vehicle scenarios, it is calculated by the repetitions of a standard axle load. For nonstandard axle loads, the equivalent axle load is determined by multiplying repetitions by the corresponding equivalent load factor. In variable traffic, each axle and its repetitions are analyzed independently. This study proposes enhanced models for fixed traffic loads, focusing on single, dual, and tridem axles in a single-layer pavement model, to improve stress prediction accuracy. The results show that a quadratic model with a base-10 logarithmic transformation accurately predicts stresses. Additionally, machine learning models, especially Gradient Boosting, provided more accurate predictions than traditional models, with lower mean squared error (MSE) and root mean squared error (RMSE). The results show that these models are effective in predicting the stress in pavement. These findings provide valuable insights that can lead to better pavement design and more effective maintenance practices.
MDPI

2076-3417
2025
15
3
10.3390/app15031623
Chemistry; Engineering; Materials Science; Physics
gold
WOS:001418438900001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001418438900001
title Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
title_short Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
title_full Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
title_fullStr Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
title_full_unstemmed Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
title_sort Development of Enhanced Stress Prediction Models for Fixed Traffic Loads on Flexible Pavements Based on Response Surface Methodology (RSM) and Machine Learning (ML) Techniques
container_title APPLIED SCIENCES-BASEL
language English
format Article
description Pavement design is influenced by traffic load, which affects its lifespan. Traditional methods classify traffic load into fixed traffic, fixed vehicle, variable traffic, and vehicle/axle loads. In fixed traffic, pavement thickness is based on the maximum expected wheel load without considering load repetitions. Meanwhile, in fixed vehicle scenarios, it is calculated by the repetitions of a standard axle load. For nonstandard axle loads, the equivalent axle load is determined by multiplying repetitions by the corresponding equivalent load factor. In variable traffic, each axle and its repetitions are analyzed independently. This study proposes enhanced models for fixed traffic loads, focusing on single, dual, and tridem axles in a single-layer pavement model, to improve stress prediction accuracy. The results show that a quadratic model with a base-10 logarithmic transformation accurately predicts stresses. Additionally, machine learning models, especially Gradient Boosting, provided more accurate predictions than traditional models, with lower mean squared error (MSE) and root mean squared error (RMSE). The results show that these models are effective in predicting the stress in pavement. These findings provide valuable insights that can lead to better pavement design and more effective maintenance practices.
publisher MDPI
issn
2076-3417
publishDate 2025
container_volume 15
container_issue 3
doi_str_mv 10.3390/app15031623
topic Chemistry; Engineering; Materials Science; Physics
topic_facet Chemistry; Engineering; Materials Science; Physics
accesstype gold
id WOS:001418438900001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001418438900001
record_format wos
collection Web of Science (WoS)
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