基于主成分分析的噪声地震道分类

H. Nuha, Abdi T. Abdalla
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引用次数: 1

摘要

地震数据是一种将能量或声波送入地球并记录声波反射的勘探方法,以揭示地下岩石的基本信息,包括类型、大小、形状和深度。地震数据采集通常会产生大量数据。勘探中的地震文件可能包含无用的噪声迹线,这会增加文件的大小。噪声痕迹有一些明显的特征,可以用来帮助去噪过程。在这项工作中,基于主成分分析(PCA)来制定特征,以自动区分优秀的迹线和噪声迹线。主成分分析将地震轨迹特征投影到只有两个特征的较低维度。为了对噪声轨迹进行分类和检测,我们首先选择数据集并产生高斯噪声,然后将噪声添加到所选数据集中,然后对轨迹进行归一化,然后提取特征:阈值算法、直方图算法和过零算法,最后应用主成分分析(PCA)获得投影数据。在这项工作中,产生了两种类型的人工噪声。结果表明,主成分分析法能够有效地分离出两类带噪的地震道。主成分分析结果表明,在噪声污染较大的情况下,该方法不能有效地分离出噪声和干净的地震道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noisy Seismic Traces Classification Using Principal Component Analysis
Seismic Data, an exploration method of sending energy or sound waves into the earth and recording the wave reflections to reveal essential subsurface rock information including type, size, shape and depth. Seismic data acquisition typically produces a significant data size. Seismic files within a survey may include useless noisy traces that increase the file size. Noisy traces have some noticeable features which can be exploited to aid the denoising process. In this work, the features were formulated based on the Principal Component Analysis (PCA) to automatically distinguish excellent traces from noisy traces. PCA projects the seismic trace features to a lower dimension with only two features. To classify and detect noisy traces, we first select the dataset and generate Gaussian noise, then add the noise to the selected dataset and then normalize the traces before extracting the features: threshold algorithm, histogram algorithm, and zero-crossing algorithm and finally apply the PCA to obtain the projected data. In this work, two types of artificial noises were generated. It is shown that PCA is able to separate two types of noisy seismic traces. PCA projections show that at high noise contamination, the method is unable to separate the noisy and clean seismic traces.
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