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Quantitative Analysis and Interpretation of Transient Electromagnetic Data via Principal Component Analysis

机译:主成分分析法对瞬态电磁数据进行定量分析和解释

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摘要

Transient electromagnetic (TEM) data in applied geophysics are invariably contaminated by random and coherent noise associated with acquisition, geology, and the environment. Advanced unexploded ordnance (UXO) detection and discrimination using TEM data require the suppression of the random noise and reliable separation of UXO signal from other coherent signals. The random noise is usually easier to remove, with coherent signal being more difficult to identify as well as separate. We have developed a method based on principal component analysis (PCA) to achieve both objectives. As a data-adaptive linear transformation, PCA is a fast and reliable method for the removal of random uncorrelated noise as well as for the separation of coherent undesired signals from those due to UXO and UXO-like anomalies. In this paper, we outline the PCA method, including the choice of data organization, construction of covariance matrices, and choice of principal components in reconstruction. We then show both synthetic and field data as examples of the efficacy of the method.
机译:应用地球物理学中的瞬变电磁(TEM)数据总是受到与采集,地质和环境相关的随机和相干噪声的污染。使用TEM数据进行先进的未爆弹药(UXO)检测和判别需要抑制随机噪声,以及将UXO信号与其他相干信号可靠分离。随机噪声通常更容易消除,相干信号更难以识别和分离。我们已经开发了一种基于主成分分析(PCA)的方法来实现两个目标。作为一种数据自适应线性变换,PCA是一种快速,可靠的方法,用于消除随机不相关的噪声,以及从由于UXO和类似UXO的异常中分离出相干的不想要信号。在本文中,我们概述了PCA方法,包括数据组织的选择,协方差矩阵的构造以及重建中的主成分的选择。然后,我们将显示合成数据和现场数据作为该方法功效的示例。

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