{"title":"Machine Learning for Prediction of the International Roughness Index on Flexible Pavements: A Review, Challenges, and Future Directions","authors":"Tiago Tamagusko, Adelino Ferreira","doi":"10.3390/infrastructures8120170","DOIUrl":null,"url":null,"abstract":"Timely maintenance of road pavements is crucial to ensure optimal performance. The accurate prediction of trends in pavement defects enables more efficient allocation of funds, leading to a safer, higher-quality road network. This article systematically reviews machine learning (ML) models for predicting the international roughness index (IRI), specifically focusing on flexible pavements, offering a comprehensive synthesis of the state-of-the-art. The study’s objective was to assess the effectiveness of various ML techniques in predicting IRI for flexible pavements. Among the evaluated ML models, tree ensembles and boosted trees are identified as the most effective, particularly in managing data related to traffic, pavement structure, and climatic conditions, which are essential for training these models. Our analysis reveals that traffic data are present in 89% of the studies, while pavement structure and climatic factors are featured in 78%. However, maintenance and rehabilitation history appears less frequently, included in 33% of the studies. This research underscores the need for high-quality, standardized datasets, and highlights the importance of model interpretability and computational efficiency. Addressing data consistency, model interpretability, and replicability across studies are crucial for leveraging ML’s full potential in fine-tuning IRI predictions. Future research directions include developing more interpretable, computationally efficient, and less complex models to maximize the impact of this research field in road infrastructure management.","PeriodicalId":13601,"journal":{"name":"Infrastructures","volume":null,"pages":null},"PeriodicalIF":2.7000,"publicationDate":"2023-11-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Infrastructures","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.3390/infrastructures8120170","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"CONSTRUCTION & BUILDING TECHNOLOGY","Score":null,"Total":0}
引用次数: 0
Abstract
Timely maintenance of road pavements is crucial to ensure optimal performance. The accurate prediction of trends in pavement defects enables more efficient allocation of funds, leading to a safer, higher-quality road network. This article systematically reviews machine learning (ML) models for predicting the international roughness index (IRI), specifically focusing on flexible pavements, offering a comprehensive synthesis of the state-of-the-art. The study’s objective was to assess the effectiveness of various ML techniques in predicting IRI for flexible pavements. Among the evaluated ML models, tree ensembles and boosted trees are identified as the most effective, particularly in managing data related to traffic, pavement structure, and climatic conditions, which are essential for training these models. Our analysis reveals that traffic data are present in 89% of the studies, while pavement structure and climatic factors are featured in 78%. However, maintenance and rehabilitation history appears less frequently, included in 33% of the studies. This research underscores the need for high-quality, standardized datasets, and highlights the importance of model interpretability and computational efficiency. Addressing data consistency, model interpretability, and replicability across studies are crucial for leveraging ML’s full potential in fine-tuning IRI predictions. Future research directions include developing more interpretable, computationally efficient, and less complex models to maximize the impact of this research field in road infrastructure management.
及时维护路面对确保最佳性能至关重要。对路面缺陷趋势的准确预测可以更有效地分配资金,从而实现更安全、更高质量的路网。本文系统地评述了预测国际粗糙度指数(IRI)的机器学习(ML)模型,尤其侧重于柔性路面,对最先进的技术进行了全面综合。研究的目的是评估各种 ML 技术在预测柔性路面 IRI 方面的有效性。在所评估的 ML 模型中,树集合和提升树被认为是最有效的,尤其是在管理与交通、路面结构和气候条件相关的数据方面,这些数据对于训练这些模型至关重要。我们的分析表明,89% 的研究涉及交通数据,78% 的研究涉及路面结构和气候因素。然而,养护和修复历史出现的频率较低,只有 33% 的研究包含这些内容。这项研究强调了对高质量、标准化数据集的需求,并突出了模型可解释性和计算效率的重要性。要充分发挥 ML 在微调 IRI 预测方面的潜力,解决数据一致性、模型可解释性和研究间可复制性问题至关重要。未来的研究方向包括开发可解释性更强、计算效率更高、复杂程度更低的模型,以最大限度地发挥这一研究领域在道路基础设施管理方面的影响。