Machine learning techniques to estimate the degree of binder activity of reclaimed asphalt pavement

被引:0
作者
Ramon Botella
Davide Lo Presti
Kamilla Vasconcelos
Kinga Bernatowicz
Adriana H. Martínez
Rodrigo Miró
Luciano Specht
Edith Arámbula Mercado
Gustavo Menegusso Pires
Emiliano Pasquini
Chibuike Ogbo
Francesco Preti
Marco Pasetto
Ana Jiménez del Barco Carrión
Antonio Roberto
Marko Orešković
Kranthi K. Kuna
Gurunath Guduru
Amy Epps Martin
Alan Carter
Gaspare Giancontieri
Ahmed Abed
Eshan Dave
Gabrielle Tebaldi
机构
[1] Universitat Politècnica de Catalunya – BarcelonaTech,
[2] University of Palermo,undefined
[3] University of Nottingham,undefined
[4] University of São Paulo – Polytechnic School,undefined
[5] Valld’Hebron Institute of Oncology (VHIO),undefined
[6] Federal University of Santa Maria,undefined
[7] Texas A&M Transportation Institute,undefined
[8] Dynatest Latam,undefined
[9] University of Padua,undefined
[10] University of New Hampshire,undefined
[11] University of Parma,undefined
[12] University of Granada,undefined
[13] University of Belgrade,undefined
[14] Indian Institute of Technology Kharagpur,undefined
[15] École de Technologie Supérieure,undefined
来源
Materials and Structures | 2022年 / 55卷
关键词
Hot mix asphalt; Recycling; Reclaimed asphalt pavement; Degree of binder activity; Machine learning; Artificial neural networks; Random forest; Indirect tensile strength;
D O I
暂无
中图分类号
学科分类号
摘要
This paper describes the development of novel/state-of-art computational framework to accurately predict the degree of binder activity of a reclaimed asphalt pavement sample as a percentage of the indirect tensile strength (ITS) using a reduced number of input variables that are relatively easy to obtain, namely compaction temperature, air voids and ITS. Different machine learning (ML) techniques were applied to obtain the most accurate data representation model. Specifically, three ML techniques were applied: 6th-degree multivariate polynomial regression with regularization, artificial neural network and random forest regression. The three techniques produced models with very similar precision, reporting a mean absolute error ranging from 12.2 to 12.8% of maximum ITS on the test data set. The work presented in this paper is an evolution in terms of data analysis of the results obtained within the interlaboratory tests conducted by Task Group 5 of the RILEM Technical Committee 264 on Reclaimed Asphalt Pavement. Hence, despite it has strong bonds with this framework, this work was developed independently and can be considered as a natural follow-up.
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