基于机器学习的前向求解器:gprMax中的一个自动框架

Utsav Akhaury, I. Giannakis, C. Warren, A. Giannopoulos
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引用次数: 0

摘要

一般的全波电磁求解方法,如利用时域有限差分(FDTD)方法,对模拟实际探地雷达问题的计算要求很高。我们探索了基于机器学习(ML)架构的探地雷达近实时前向建模方法的性能。为了简化这个过程,我们开发了一个能够自动生成这些基于ml的前向求解器的框架。该框架使用了一种创新的训练方法,该方法结合了预测降维技术和来自FDTD仿真软件gprMax的模拟GPR响应的大型数据集。前向求解器是针对特定的探地雷达应用参数化的,但该框架可以直接扩展到不同的电磁问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Forward Solver: An Automatic Framework in gprMax
General full-wave electromagnetic solvers, such as those utilizing the finite-difference time-domain (FDTD) method, are computationally demanding for simulating practical GPR problems. We explore the performance of a near-real-time, forward modeling approach for GPR that is based on a machine learning (ML) architecture. To ease the process, we have developed a framework that is capable of generating these ML-based forward solvers automatically. The framework uses an innovative training method that combines a predictive dimensionality reduction technique and a large data set of modeled GPR responses from our FDTD simulation software, gprMax. The forward solver is parameterized for a specific GPR application, but the framework can be extended in a straightforward manner to different electromagnetic problems.
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