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Predicting the dynamic modulus of asphalt mixture using machine learning techniques: An application of multi biogeography-based programming

机译:使用机器学习技术预测沥青混合料的动态模量:基于多生物地理学的编程应用

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The dynamic modulus vertical bar E*vertical bar of asphalt mixtures can be used to characterize the behavior of asphalt pavements at a wide range of traffic and climate conditions. The use of predictive models instead of direct laboratory-based measurements can provide several advantages as they do not need trained personnel and expensive equipment. In this study, biogeography-based programming (BBP) was used to develop vertical bar E*vertical bar predictive models with improved accuracy compared to previously developed models. For this purpose, two models with different architectures were developed using a dataset containing information on 4022 asphalt mixture samples. Another dataset including the records of 90 asphalt mixtures was used for testing the developed models and comparing their performance with some of the most commonly used models for the prediction of vertical bar E*vertical bar. The results showed that both architectures provided vertical bar E*vertical bar predictive models with excellent accuracy. Moreover, the developed models were found to outperform the Witczak model, Hirsch model, and ANN model. The first BBP model included only four variables: temperature (T), frequency (F), voids in mineral aggregate (VMA), and low-temperature PG (PG(L)). The second BBP model included eight variables: T, F, VMA, PG(L), high temperature PG (PG(H)), asphalt content (AC), volume of effective bitumen content (V-beff), and recycled asphalt pavement (RAP) content. A parametric study and a sensitivity analysis indicated that T and F were the most influential factors affecting the values of vertical bar E*vertical bar. (C) 2020 Elsevier Ltd. All rights reserved.
机译:沥青混合物的动态模量垂直条E *垂直条可用于在各种交通和气候条件下表征沥青路面的行为。使用预测模型而不是直接实验室的测量可以提供几个优点,因为它们不需要培训的人员和昂贵的设备。在该研究中,基于生物地理的编程(BBP)用于开发垂直条E *垂直条预测模型,与先前开发的型号相比,精度提高。为此目的,使用包含在4022沥青混合混合物样品上的信息的数据集开发了两个具有不同架构的模型。包括90个沥青混合物的记录的另一个数据集用于测试开发的模型,并将其性能与一些最常用的模型进行比较,用于预测垂直条E *垂直条。结果表明,两种架构都提供了垂直条E *垂直条预测模型,精度优异。此外,发现开发的模型优于Witczak模型,Hirsch模型和Ann模型。第一BBP模型仅包括四个变量:温度(T),频率(F),矿物骨料(VMA)中的空隙和低温PG(PG(L))。第二BBP模型包括八个变量:T,F,VMA,PG(L),高温PG(PG(H)),沥青含量(AC),有效沥青含量的体积(V-BEFF)和再生沥青路面(说唱)内容。参数研究和灵敏度分析表明,T和F是影响垂直条E *垂直条值的最有影响力的因素。 (c)2020 elestvier有限公司保留所有权利。

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