Empirical Model for the Retained Stability Index of Asphalt Mixtures Using Hybrid Machine Learning Approach

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-10-18 DOI:10.3390/asi6050093
Yazeed S. Jweihan, Mazen J. Al-Kheetan, Musab Rabi
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Abstract

Moisture susceptibility is a complex phenomenon that induces various distresses in asphalt pavements and can be assessed by the Retained Stability Index (RSI). This study proposes a robust model to predict the RSI using a hybrid machine learning technique, including Artificial Neural Network (ANN) and Gene Expression Programming. The model is expressed as a simple and direct mathematical function with input variables of mineral filler proportion (F%), water absorption rate of combined aggregate (Ab%), asphalt content (AC%), and air void content (Va%). A relative importance analysis ranked AC% as the most influential variable on RSI, followed by Va%, F%, and Ab%. The experimental RSI results of 150 testing samples of various mixes were utilized along with other data points generated by the ANN to train and validate the proposed model. The model promotes a high level of accuracy for predicting the RSI with a 96.6% coefficient of determination (R2) and very low errors. In addition, the sensitivity of the model has been verified by considering the effect of the variables, which is in line with the results of network connection weight and previous studies in the literature. F%, Ab%, and Va% have an inverse relationship with the RSI values, whereas AC% has the opposite. The model helps forecast the water susceptibility of asphalt mixes by which the experimental effort is minimized and the mixes’ performance can be improved.
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基于混合机器学习方法的沥青混合料保持稳定指数经验模型
湿敏感性是沥青路面的一种复杂现象,可通过保持稳定指数(RSI)进行评价。本研究提出了一个鲁棒模型来预测RSI使用混合机器学习技术,包括人工神经网络(ANN)和基因表达编程。该模型以矿物填料比例(F%)、组合骨料吸水率(Ab%)、沥青含量(AC%)和空隙率(Va%)为输入变量,用简单直接的数学函数表示。相对重要性分析将AC%列为对RSI影响最大的变量,其次是Va%、F%和Ab%。将150个不同混合测试样本的RSI实验结果与人工神经网络生成的其他数据点一起用于训练和验证所提出的模型。该模型预测RSI的准确度为96.6%,误差极低。此外,通过考虑变量的影响,验证了模型的敏感性,这与网络连接权值和文献中已有的研究结果一致。F%、Ab%和Va%与RSI值呈反比关系,而AC%则相反。该模型有助于预测沥青混合料的水敏感性,从而减少试验工作量,提高混合料的性能。
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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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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