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Artificial neural networks approach to predicting rut depth of asphalt concrete by using of visco-elastic parameters

机译:粘弹性参数预测沥青混凝土车辙深度的人工神经网络方法

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Performing comprehensive research on the functional behavior of asphalt pavements under the influence of various environmental and structural parameters can better assist the engineers in the design and maintenance of asphalt pavements. Using a solution that can reduce the cost and time of assessment is very important. Using artificial neural networks in many facilitates operations on data engineering sciences. It is necessary to ensure that a comprehensive study is performed through considering all or most of the parameters affecting the behavior. The aim of this study is to provide an experimental model to estimate the rut depth of asphalt concrete by using viscoelastic parameters and artificial neural networks. Accordingly the asphalt concrete specimens containing 3,5 and 7 percent void with two types of limestone and siliceous aggregates and PG64-22 and PG58-28 bitumens were made and exposed to dynamic creep tests under 50-60 degrees C and the stress range of 100-300 kPa. Then the viscoelastic parameters of asphalt specimens were extracted from the creep diagrams and eventually the asphalt concrete's rut depth prediction model was trained and provided by artificial neural network. Comparing the output results with the experimental test results show that by using this model it is possible to estimate the creep behavior and rut depth of asphalt concrete pavements based on the effective parameters without the need for costly and time-consuming tests. (C) 2017 Elsevier Ltd. All rights
机译:在各种环境和结构参数的影响下对沥青路面的功能性行为进行全面研究,可以更好地帮助工程师设计和维护沥青路面。使用可以减少评估成本和时间的解决方案非常重要。在许多情况下使用人工神经网络有助于进行数据工程科学的操作。有必要通过考虑影响行为的所有或大部分参数来确保进行全面的研究。这项研究的目的是提供一个实验模型,通过使用粘弹性参数和人工神经网络来估计沥青混凝土的车辙深度。因此,制备了含有3.5%和7%的空隙以及两种类型的石灰石和硅质骨料以及PG64-22和PG58-28沥青的沥青混凝土试样,并在50-60摄氏度和100应力范围内进行了动态蠕变测试。 -300 kPa。然后从蠕变图中提取出沥青试样的粘弹性参数,最终通过人工神经网络训练并提供了沥青混凝土车辙深度预测模型。将输出结果与实验测试结果进行比较表明,通过使用该模型,可以基于有效参数来估计沥青混凝土路面的蠕变特性和车辙深度,而无需进行昂贵且费时的测试。 (C)2017 Elsevier Ltd.版权所有

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