Development of a model for the estimation of indirect tensile strength of RAP speciments using machine learning methods

N. Milovanović, M. Orešković
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引用次数: 1

Abstract

A model for prediction of Indirect Tensile Strength (ITS) of Reclaimed Asphalt Pavement (RAP) specimens is developed in this study using Machine Learning (ML) technique. Principal Component Analysis (PCA) was used to transform grading curves of RAP and obtain reduced amount of data for further analysis. Different Multivariate Polynomial Regression (MPR) models were developed considering properties of RAP (aged binder content and its penetration, grading curves before and after extraction (black and white curves)), manufacturing process (preheating temperature) and properties of testing samples (air void content). Analysis showed that PCA can be adequately used to reduce the number of variables required to describe grading curves (74% of variance was described with first two principal components). Additionally, it was concluded that the simplest (Linear) MPR Model was the most precise overall - coefficient of the determination was 0.59, which can be considered as quite high for such a data set (more than 40 RAPs from different sources were analyzed).
利用机器学习方法建立RAP材料间接抗拉强度估算模型
本文利用机器学习(ML)技术建立了再生沥青路面(RAP)试件间接抗拉强度(ITS)预测模型。采用主成分分析(PCA)对RAP分级曲线进行变换,得到减少的数据量,便于进一步分析。考虑RAP的特性(老化粘结剂含量及其渗透度、提取前后的分级曲线(黑白曲线))、制作工艺(预热温度)和测试样品的特性(气孔含量),建立了不同的多元多项式回归(MPR)模型。分析表明,PCA可以充分地用于减少描述分级曲线所需的变量数量(74%的方差用前两个主成分描述)。此外,我们还得出结论,最简单的(线性)MPR模型是最精确的,总体确定系数为0.59,对于这样的数据集(分析了来自不同来源的40多个RAPs),可以认为这是相当高的。
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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6 weeks
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