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Marshall stability and flow analysis of asphalt concrete under progressive temperature conditions: An application of advance decision-making approach

机译:渐进温度条件下沥青混凝土的马歇尔稳定性和流动分析:推进决策方法的应用

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摘要

The behaviour of asphalt concrete mixtures is difficult to understand due to its complex nature under different loading conditions and environmental factors. For prediction, there is a need to find mathematical relations between multiple inputs and outputs using a simple and precise way. Recently, artificial neural networks (ANNs) has been widely used to study the mechanical parameters of asphalt concrete materials and its applications in civil engineering fields. This study presents the application of ANNs method for prediction of Marshall stability of asphalt concrete developed with two different types of aggregates based on mineralogy under four different testing temperatures ranging between 25 degrees C and 60 degrees C. The ANNs model established with six input variables including temperature, aggregate type, ultrasonic pulse velocity-time and space volume, unit volume of dry air, and saturated surface dry weight. The proposed model developed using six neurons in hidden layer for the prediction of experimental data. The feasibility of the proposed model checked in terms of root mean square error (RMSE) and coefficient of determination (R-2). The R-2 values found within range during both training (0.909-0.999) and validation phase (0.886-0.997) depending on estimated parameters. Moreover, the influence of different aggregate type has been investigated under varying temperatures conditions using the proposed ANNs method. The proposed model has shown the potential to understand the mechanical behaviour of sustainable asphalt concretes accurately under various temperature conditions. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于其在不同的负载条件和环境因素下,沥青混凝土混合物的行为难以理解。为了预测,需要使用简单且精确的方式找到多个输入和输出之间的数学关系。最近,人工神经网络(ANNS)已被广泛用于研究沥青混凝土材料的机械参数及其在土木工程领域的应用。本研究介绍了Anns方法的应用,以预测沥青混凝土的马歇尔稳定性,基于两种不同类型的矿物学在25摄氏度之间的四个不同测试温度下的矿物学中产生的两种不同类型的聚集体。与六个输入变量建立的ANNS模型包括温度,聚集型,超声波脉冲速度 - 时间和空间体积,单位体积的干燥空气和饱和表面干重。所提出的模型在隐藏层中使用六个神经元进行,以预测实验数据。所提出的模型的可行性在均方根误差(RMSE)和确定系数(R-2)方面进行检查。根据估计参数,训练(0.909-0.999)和验证阶段(0.886-0.997)的范围内发现的R-2值。此外,使用所提出的ANNS方法在不同温度条件下研究了不同骨料类型的影响。所提出的模型表明,在各种温度条件下精确地了解可持续沥青混凝土的机械性能。 (c)2020 elestvier有限公司保留所有权利。

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