探地雷达全波形反演,最新进展,未来机遇

J. van der Kruk, T. Liu, A. Mozaffari, N. Gueting, A. Klotzsche, H. Vereecken, C. Warren, A. Giannopoulos
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引用次数: 7

摘要

基于射线或近似的正演建模技术经常用于减少反演的计算需求。由于计算能力的提高和反演算法的并行化,精确的正演建模可以包含在先进的反演方法中,从而可以利用整个波形。本文讨论了全波形探地雷达(GPR)反演的最新进展,由于使用了基于麦克斯韦方程的精确建模工具,与传统方法相比,该方法可以获得更高的定量介质特性分辨率。对于有限数量的参数,可以使用洗牌复杂进化(SCE)的全局和局部联合搜索进行反演。对于大量的未知数,通常采用基于梯度的优化方法,这需要一个好的起始模型,以防止它们陷入局部极小值。将概述地面和井间探地雷达全波形反演方法的发展,并介绍几种应用。最后,将讨论最近的发展和未来的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GPR full-waveform inversion, recent developments, and future opportunities
Ray-based, or approximate, forward modeling techniques have often been used to reduce computational demands for inversion purposes. Due to increasing computational power and possible parallelization of inversion algorithms, accurate forward modeling can be included in advanced inversion approaches such that the full-waveform can be exploited. Here, recent developments of full-waveform ground penetrating radar (GPR) inversions are discussed that yield higher resolution of quantitative medium properties compared to conventional approaches, because of the use of accurate modeling tools that are based on Maxwell's equations. For a limited number of parameters, a combined global and local search using the shuffled complex evolution (SCE) can be used for inversion. For a large number of unknowns, gradient-based optimization methods are commonly used that need a good starting model to prevent them from being trapped in local minima. An overview of the methodological developments for surface and crosshole GPR full-waveform inversion will be given and several applications will be presented. Finally, recent developments and future opportunities will be discussed.
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