一种改进的神经网络车辙深度预测模型

Shuzhan Xu, Junxin Yang, Changbai Wang
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引用次数: 0

摘要

车辙是沥青路面的主要病害形式,其预测精度直接关系到设计道路的可靠性。为提高路面性能指标车辙的预测能力,建立了神经网络模型,并与多元线性回归模型和已有的神经网络模型进行了比较。神经网络模型是使用Python中的TensorFlow包中的Keras模块开发的。由国家合作公路研究计划项目01-37A生成的两份报告和长期路面性能网站记录被用作训练神经网络模型的数据源,这些数据是经过多年监测保存下来的可靠数据。输入变量包括路面厚度、使用时间、卡车年均日交通量、沥青混凝土层、颗粒基层和路基层的变形量。本实验共使用440个样本,其中352个样本(80%)用于模型训练,88个样本(20%)用于测试。模型的训练结果表明,神经网络模型明显优于多元线性回归模型,并且新建立的神经网络模型在预测性能上优于其他同类神经网络。对于多元线性回归模型,测试集中实测值与预测值之间的相关系数R2值由0.265增加到0.712。相比之下,神经网络模型从0.867提升到0.902。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Neural Network Model for Enhancing Rutting Depth Prediction
Rutting is the main distress form of asphalt pavement, and its prediction accuracy is directly related to the reliability of the designed road. This research developed a neural network model to improve the prediction ability about the rutting of a pavement performance criterion and compared it with the multiple linear regression model and the existing neural network model. The neural network model is developed using the Keras module from the TensorFlow package in Python. Two reports generated by the National Cooperative Highway Research Program project 01-37A and the Long-Term Pavement Performance website records have been used as data sources for training the neural network model, which are reliable data preserved after years of monitoring. The input variables include the pavement thickness, service time, average annual daily traffic of trucks and the deformation of the asphalt concrete layer, granular base layer and subgrade layer. This experiment used 440 samples, of which 352 samples (80%) were used for model training and 88 samples (20%) for testing. The training results of the model reveal that the neural network model is significantly better than the multiple linear regression model, and the newly built neural network model performs better than another similar neural network in predictive performance. For the multiple linear regression model, the correlation coefficient R2 value between the measured and predicted in the testing set increased from 0.265 to 0.712. In contrast, it promotes from 0.867 to 0.902 for the neural network model.
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