Predictive models for flexible pavement fatigue cracking based on machine learning

Q1 Engineering
Ali Juma Alnaqbi , Waleed Zeiada , Ghazi Al-Khateeb , Abdulmalek Abttan , Muamer Abuzwidah
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引用次数: 0

Abstract

Pavement performance prediction is crucial for ensuring the longevity and safety of road networks. In our extensive study, we employ a diverse array of techniques to enhance fatigue performance models in flexible pavements. The methodology begins with Random Forest feature selection, identifying the top 15 critical variables that significantly impact pavement performance. These variables form the basis for subsequent model development. Our investigation into model performance indicates the superiority of advanced machine learning methods such as Regression Trees (RT), Gaussian Process Regression (GPR), Support Vector Machines (SVM), Ensemble Trees (ET), and Artificial Neural Networks (ANN) over traditional linear regression methods. This consistent outperformance underscores their potential to reshape forecasting accuracy. Through extensive model optimization, we reveal robust performance across both complete and selected feature sets, emphasizing the importance of meticulous feature selection in enhancing forecast accuracy. The accuracy of our best optimized machine learning model is highlighted by its Performance Measurement metrics: RMSE of 22.416, MSE of 502.46, R-squared of 0.80848, and MAE of 8.9958. Additionally, comparative analysis with previous empirical models demonstrates that our best optimized machine learning model outperforms existing empirical models. This work underscores the significance of feature curation in pavement performance prediction, highlighting the potential of sophisticated modeling methodologies. Embracing cutting-edge technologies facilitates data-driven decisions, ultimately contributing to the development of more robust road networks, enhancing safety, and prolonging lifespan.

基于机器学习的柔性路面疲劳开裂预测模型
路面性能预测对于确保路网的使用寿命和安全性至关重要。在广泛的研究中,我们采用了多种技术来增强柔性路面的疲劳性能模型。该方法从随机森林特征选择开始,识别出对路面性能有重大影响的前 15 个关键变量。这些变量构成了后续模型开发的基础。我们对模型性能的研究表明,回归树 (RT)、高斯过程回归 (GPR)、支持向量机 (SVM)、集合树 (ET) 和人工神经网络 (ANN) 等先进的机器学习方法优于传统的线性回归方法。这种持续的优异表现凸显了它们重塑预测准确性的潜力。通过广泛的模型优化,我们揭示了完整特征集和选定特征集的强大性能,强调了精心选择特征对提高预测准确性的重要性。我们的最佳优化机器学习模型的准确性体现在其性能测量指标上:RMSE 为 22.416,MSE 为 502.46,R 方为 0.80848,MAE 为 8.9958。此外,与以往经验模型的比较分析表明,我们的最佳优化机器学习模型优于现有的经验模型。这项工作强调了路面性能预测中特征整理的重要性,突出了复杂建模方法的潜力。采用前沿技术有助于做出数据驱动的决策,最终有助于开发更强大的道路网络、提高安全性并延长使用寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Transportation Engineering
Transportation Engineering Engineering-Automotive Engineering
CiteScore
8.10
自引率
0.00%
发文量
46
审稿时长
90 days
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