个人信息Personal Information
副教授
硕士生导师
性别:男
毕业院校:大连理工大学
学位:博士
所在单位:交通运输系
学科:道路与铁道工程. 市政工程
办公地点:综合实验4号楼520室
电子邮箱:sunyiren@dlut.edu.cn
Use of random forests regression for predicting IRI of asphalt pavements
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论文类型:期刊论文
发表时间:2018-11-20
发表刊物:CONSTRUCTION AND BUILDING MATERIALS
收录刊物:SCIE
卷号:189
页面范围:890-897
ISSN号:0950-0618
关键字:Roughness; Pavement; Decision tree; Random forests; Machine learning; Management; LTPP; Regression tree; Ride quality
摘要:Random forest is a powerful machine learning algorithm with demonstrated success. In this study, the authors developed a random forests regression (RFR) model to estimate the international roughness index (IRI) of flexible pavements from distress measurements, traffic, climatic, maintenance and structural data. To validate the model, more than 11,000 samples were collected from the database of long-term pavement performance (LTPP) program, with 80% randomly sampled data for training and 20% of them for testing the RFR model. The performance of the RFR model was then compared with that of the regularized linear regression model. The results showed that the RFR model significantly outperformed the linear regression model, with coefficients of determination (R-2) greater than 0.95 in both the training and test sets. The variable importance score obtained from the RFR revealed that the initial IRI was the most important factor affecting the development of the IRI. In addition, the transverse cracking, fatigue cracking, rutting, annual average precipitation and service age had important influences on the IRI. Other distresses such as longitudinal cracking, edge cracking, aggregate polishing, and potholes exerted little impact on the evolution of the IRI. (C) 2018 Elsevier Ltd. All rights reserved.