论文标题
一种预测汉堡车辙曲线的深度学习方法
A Deep Learning Approach to Predict Hamburg Rutting Curve
论文作者
论文摘要
车辙仍然是全球沥青路面的主要困扰之一。 This type of distress is caused by permanent deformation and shear failure of the asphalt mix under the repetition of heavy loads.汉堡车轮跟踪测试(HWTT)是一种广泛使用的测试程序,旨在加速,并模拟实验室中的发情现象。作为HWTT的输出之一,车辙深度取决于与混合设计和测试条件相关的许多参数。这项研究介绍了一种新的模型,用于使用深度学习技术 - 卷积神经网络(CNN)预测沥青混合物的车辙深度。包含全面集合HWTT结果的数据库用于开发基于CNN的机器学习预测模型。该数据库包括在各种沥青混合物中测量的10,000个车辙深度数据点。该模型是根据已知影响混合变量(例如沥青粘合剂高温性能等级,混合物类型,骨料尺寸,骨料等级,沥青含量,总沥青粘合剂回收含量和测试参数)的模型制定的。使用严格的验证过程来评估模型的准确性,以预测总车辙深度和HWTT车辙曲线。提出了灵敏度分析,该分析评估了研究变量对CNN模型的发动深度预测的影响。当实验室测试不可行或节省成本的设计前试验时,该模型可用作估计沥青混合物中车辙深度的工具。
Rutting continues to be one of the principal distresses in asphalt pavements worldwide. This type of distress is caused by permanent deformation and shear failure of the asphalt mix under the repetition of heavy loads. The Hamburg wheel tracking test (HWTT) is a widely used testing procedure designed to accelerate, and to simulate the rutting phenomena in the laboratory. Rut depth, as one of the outputs of the HWTT, is dependent on a number of parameters related to mix design and testing conditions. This study introduces a new model for predicting the rutting depth of asphalt mixtures using a deep learning technique - the convolution neural network (CNN). A database containing a comprehensive collection of HWTT results was used to develop a CNN-based machine learning prediction model. The database includes 10,000 rutting depth data points measured across a large variety of asphalt mixtures. The model has been formulated in terms of known influencing mixture variables such as asphalt binder high temperature performance grade, mixture type, aggregate size, aggregate gradation, asphalt content, total asphalt binder recycling content, and testing parameters, including testing temperature and number of wheel passes. A rigorous validation process was used to assess the accuracy of the model to predict total rut depth and the HWTT rutting curve. A sensitivity analysis is presented, which evaluates the effect of the investigated variables on rutting depth predictions by the CNN model. The model can be used as a tool to estimate the rut depth in asphalt mixtures when laboratory testing is not feasible, or for cost saving, pre-design trials.