Numerical modeling using gprMax to identify a subsurface tack coat for SVM classification

G. Andreoli, A. Ihamouten, C. Fauchard, R. Jaufer, Shreedhar Savant Todkar, D. Guilbert, V. Buliuk, X. Dérobert
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Abstract

Summary Face to an increasing traffic volumes, a poor adhesion between bitumen layers combined with weather conditions can lead to premature deterioration of pavement structures. Therefore, it is essential to resort a tack coat where the wearing course and the binder course connect, so that they work as a monolithic block. The purpose of this study, carried out by using gprMax software, is to identify a thin millimetric subsurface tack coat from a modelled bilayer of bitumen and to differentiate the signals according to the modifications of some parameters like thickness, permittivity and conductivity. The so generated large database of time signals with diverse geometric and dielectric characteristics will enable to classify the datas by a supervised machine learning method namely, Support Vector Machines (SVM). Among existing methods, the algorithm of Two-Class SVM (TCSVM) allows to split the datas in two distinct classes. One data set is described as the “adhered” class, and another as the “non adhered” class. The supervised machine learning is conducted with a resolution by global approach to use the raw data set, without any pre-processing. Finally, the binary classification appears then as a promising method to identify clearly and automatically the presence of a tack coat.
利用gprMax进行数值模拟,识别地下粘性涂层,并进行SVM分类
面对日益增长的交通量,沥青层之间粘结力差,再加上天气条件,可能导致路面结构过早老化。因此,有必要在磨损层和粘结层连接的地方使用一层粘接层,使它们成为一个整体。本研究的目的是利用gprMax软件,从模拟的双层沥青中识别一层薄毫米的地下粘性涂层,并根据厚度、介电常数和电导率等参数的变化来区分信号。生成的具有不同几何和介电特性的大型时间信号数据库将能够通过监督机器学习方法即支持向量机(SVM)对数据进行分类。在现有的方法中,两类支持向量机(TCSVM)算法允许将数据分成两个不同的类。一个数据集被描述为“粘附”类,另一个被描述为“非粘附”类。监督式机器学习是通过全局方法解决原始数据集的问题,不进行任何预处理。最后,二元分类作为一种很有前途的方法,可以清晰、自动地识别粘性涂层的存在。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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