Machine learning techniques to estimate the degree of binder activity of reclaimed asphalt pavement
Metadata
Show full item recordEditorial
Springer
Materia
Hot mix asphalt Recycling Reclaimed asphalt pavement Degree of binder activity Machine learning Artificial neural networks Random forest Indirect tensile strength
Date
2022-04-16Referencia bibliográfica
Botella, R... [et al.]. Machine learning techniques to estimate the degree of binder activity of reclaimed asphalt pavement. Mater Struct 55, 112 (2022). [https://doi.org/10.1617/s11527-022-01933-9]
Sponsorship
Spanish Government RTI2018-096224-J-I00; European Commission; Ministry of Education, Universities and Research (MIUR) PRIN 2017 USR342Abstract
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