Learning models for predicting pavement friction based on non-contact texture measurements: Comparative assessment

Xiuquan Lin , You Zhan , Zilong Nie , Joshua Qiang Li , Xinyu Zhu , Allen A. Zhang
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Abstract

Ensuring highway safety relies heavily on pavement friction resistance. To enable network-level pavement skid resistance monitoring and management, this study proposes a non-contact three-dimensional laser surface testing method to obtain detailed aggregate surface data. The existing contact-based skid resistance measurement methods suffer from poor reproducibility and repeatability, hindering their application for network-level management. In this research, traditional multiple linear regression and four machine learning methods, support vector machine (SVM), random forest (RF), gradient boosting decision tree (GBDT), and convolutional neural network (CNN), are utilized to evaluate and predict pavement frictional performance. To assess the proposed methods, data from 45 pavement sites in Oklahoma, including 6 major preventive maintenance (PM) treatments and 7 typical types of aggregates, are collected. Parallel data acquisition is conducted at highway speeds using a grip tester and a high-speed texture profiler to measure pavement skid resistance and surface macro-texture, respectively. Aggregate properties are captured in 3D using a portable ultra-high-resolution 3D laser imaging scanner, leading to the calculation of four types of 3D aggregate parameters characterizing the micro-texture of aggregate surfaces. The relationship between pavement surface friction and texture is explored using machine learning models. The results reveal that the random forest and gradient boosting decision tree models exhibit the highest accuracy, SVM and CNN perform moderately, while the traditional linear regression method fares the worst. By assessing the importance of the 38 parameter variables, the most critical 21 variables were selected for model development. Test results demonstrate that the GBDT model exhibits the best predictive performance, with an explanatory capability of 87.4​% for road friction performance. The findings demonstrate the feasibility of replacing contact-based pavement friction evaluation with non-contact texture measurements, offering promising prospects for a network-level pavement skid resistance monitoring and management system.
基于非接触纹理测量预测路面摩擦的学习模型:比较评估
保证公路安全在很大程度上依赖于路面摩擦阻力。为了实现网级路面防滑监测和管理,本研究提出了一种非接触式三维激光路面检测方法,以获得详细的路面汇总数据。现有的接触式防滑性测量方法存在再现性和可重复性差的问题,阻碍了其在网络级管理中的应用。本研究利用传统的多元线性回归和支持向量机(SVM)、随机森林(RF)、梯度增强决策树(GBDT)和卷积神经网络(CNN)四种机器学习方法对路面摩擦性能进行评估和预测。为了评估所提出的方法,收集了俄克拉荷马州45个路面站点的数据,包括6种主要的预防性养护(PM)处理和7种典型的骨料类型。采用高速抓地力测定仪和高速纹理测定仪在高速公路上进行并行数据采集,分别测量路面防滑性和路面宏观纹理。使用便携式超高分辨率3D激光成像扫描仪以3D方式捕获骨料特性,从而计算出表征骨料表面微观纹理的四种3D骨料参数。使用机器学习模型探索路面表面摩擦与纹理之间的关系。结果表明,随机森林和梯度增强决策树模型的准确率最高,SVM和CNN的准确率中等,而传统线性回归方法的准确率最差。通过评估38个参数变量的重要性,选择最关键的21个变量进行模型开发。试验结果表明,GBDT模型对路面摩擦性能的解释能力为87.4%,具有较好的预测效果。研究结果表明,用非接触式纹理测量取代接触式路面摩擦评价是可行的,为网络级路面防滑监测和管理系统提供了广阔的前景。
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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