Prediction of the optimum asphalt content using artificial neural networks

Kareem Othman, H. Abdelwahab
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引用次数: 9

Abstract

The performance of the asphalt mix is significantly influenced by the optimum asphalt content (OAC). The asphalt content is responsible for coating the aggregate surface and filling the voids between the aggregate particles. Thus, the aggregate gradation has a significant influence on the required asphalt content. The Marshall design process is the most common method used for estimating the OAC, and this process is called the asphalt mix design. However, this method is time consuming, labor intensive, and its results are subjected to variations. Thus, this paper employs the artificial neural network (ANN) to estimate the OAC from the aggregate gradation for the two most common gradations used in asphalt mixes in Egypt (3D, 4C). Results show that the proposed ANN can predict the OAC with a coefficient of correlation of 0.98 and an average error of 0.026%. As a result, a new approach for the Marshall test can be adopted using results of the proposed ANN, and only three specimens, instead of fifteen, are prepared and tested for estimating the remaining parameters. This approach saves the time, effort, and resources required for estimating the OAC. Additionally, the ANN was validated with previously developed models, and the ANN shows promising results.
应用人工神经网络预测最佳沥青掺量
最佳沥青掺量(OAC)对沥青混合料的性能有显著影响。沥青含量负责覆盖骨料表面并填充骨料颗粒之间的空隙。因此,骨料级配对所需沥青含量有显著影响。马歇尔设计过程是估计OAC最常用的方法,这一过程被称为沥青混合料设计。然而,这种方法耗时,劳动强度大,其结果也会发生变化。因此,本文采用人工神经网络(ANN)从埃及沥青混合料中最常用的两种级配的骨料级配中估计OAC (3D, 4C)。结果表明,所提出的人工神经网络预测OAC的相关系数为0.98,平均误差为0.026%。因此,可以使用所提出的人工神经网络的结果采用马歇尔测试的新方法,并且只准备和测试三个样本,而不是15个样本来估计剩余的参数。这种方法节省了估计OAC所需的时间、精力和资源。此外,用先前开发的模型对人工神经网络进行了验证,人工神经网络显示出令人满意的结果。
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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