模拟探地雷达的机器学习方法

I. Giannakis, A. Giannopoulos, C. Warren
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引用次数: 8

摘要

生成、存储和分析大量标记良好的数据的能力,以及最近在监督训练方面的进展,使机器学习重新受到欢迎。本文研究了机器学习在高频应用中模拟探地雷达(GPR)的适用性。利用时域有限差分(FDTD)方法合成了标记良好、分布均匀的训练集。为了以足够的精度对天线和土壤进行建模,需要特别注意。通过随机参数化,每个模型仅使用七个参数(即水分数的分形维数,天线的高度等)来表示。基于这些参数和综合生成的训练集,训练机器学习框架来实时预测生成的a扫描。因此,克服了等效时域有限差分模拟所需的耗时计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Approach For Simulating Ground Penetrating Radar
The ability to produce, store and analyse large amounts of well-labeled data as well as recent advancements on supervised training, led machine learning to gain a renewed popularity. In the present paper, the applicability of machine learning to simulate ground penetrating radar (GPR) for high frequency applications is examined. A well-labelled and equally distributed training set is generated synthetically using the finite-difference time-domain (FDTD) method. Special care was taken in order to model the antennas and the soils with sufficient accuracy. Through a stochastic parameterisation, each model is expressed using only seven parameters (i.e. the fractal dimension of water fraction, the height of the antenna and so on). Based on these parameters and the synthetically generated training set, a machine learning framework is trained to predict the resulting A-Scan in real-time. Thus, overcoming the time-consuming calculations required for an equivalent FDTD simulation.
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