利用主成分分析作为预处理的Infomax和FASTICA进行海底测井电波去除

Adeel Ansari, Afza Bt Shafie, S. Ansari, A. Said, Elisha Tadiwa Nyamasvisva, M. Abdulkarim, Muhammad Rauf
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引用次数: 1

摘要

本研究旨在利用主成分分析(PCA)作为预处理,将FASTICA和Infomax算法应用于海底测井领域。这三种算法都是用于信号反卷积的统计算法,分别属于独立分量分析(ICA)领域。海底测井(SBL)是指利用海洋可控源电磁(CSEM)技术探测海底下的碳氢化合物。SBL的结果表明碳氢化合物的存在,但由于存在以电波形式存在的噪声,干扰了来自地下的信号,并倾向于控制接收器的响应。因此,使用了Infomax和FASTICA反卷积算法,将PCA作为预处理器来过滤掉干扰接收器响应中的地下信号的无线电波。仿真结果和对比分析表明,采用informax算法的结果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Infomax and FASTICA using principle component analysis as preprocessor for airwave removal in seabed logging
This research aims to apply the FASTICA and Infomax algorithm in the field of seabed logging, by utilizing the Principal Component Analysis (PCA) as preprocessor. All the three algorithms are statistical algorithms used for signal deconvolution and are respectively in the field of Independent Component Analysis (ICA). In seabed logging (SBL) implies the marine controlled source electromagnetic (CSEM) technique for the detection of hydrocarbons underneath the seabed floor. The results from SBL, indicate the presence of Hydrocarbon, but due to the presence of noise, in the form of airwaves, interfere with the signals from the subsurface and tend to dominate the receiver response. Hence, the Infomax and FASTICA de-convolution algorithms are used, considering PCA as a pre-processor to filter out the airwaves which disrupt the subsurface signals within the receiver response. The results obtained from simulations and their comparative analysis, indicate that the results from the infomax algorithm are better.
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