Magnetoteluric Modelling in High Noise of Low Frequency Signal

Agus Laesanpura, Nindia E. Larasati, A. Sugianto, Wahyu Eko Yunian
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Abstract

Magnetoteluric(MT) modelling geophysics in high noise areas is a challenging task. One part is the precious data for subsurface reconstruction, the other, the noise will a priori annoy the outcome. Through simulation and an example fact in the field, these two phenomena will be discussed. The simulation will propose the ideal model without and with noise, running on the Bostick inversion. Noise varies several schemas in two types of curves. Occam and Bostick algorithms will be used to run the inversion scheme. The trade of the advantages and disadvantages is then compared to a prior model in the field where MT data and geologic cross section are available. Two scenarios are available, one is to use data with treatment using available schema, and the other is to use data by cutting off the noise contaminant segment, and finally to see the resulted through 2D modelling process. The resultant shows the model use the ideal signal without noise through inversion resulting is a better than the other with a noisy signal experiencing treatment, notably in level shallow part. The geologic cross section and gravity model is available to support these results.
低频信号高噪声中的磁流体建模
在高噪声地区进行磁致伸缩(MT)地球物理建模是一项具有挑战性的任务。一方面是用于地下重建的珍贵数据,另一方面,噪声会先验地干扰结果。通过模拟和现场实例,我们将讨论这两种现象。模拟将提出无噪声和有噪声的理想模型,在 Bostick 反演中运行。噪声会在两类曲线中改变几种模式。将使用奥卡姆和博斯蒂克算法来运行反演方案。然后,将优缺点的权衡与现场的先验模型进行比较,因为现场有 MT 数据和地质横截面。有两种方案可供选择,一种是使用现有方案对数据进行处理,另一种是通过切断噪声污染物段来使用数据,最后通过二维建模过程查看结果。结果表明,通过反演使用无噪声理想信号的模型比使用经过处理的噪声信号的模型要好,尤其是在水平浅层部分。地质横截面和重力模型可为这些结果提供支持。
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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