基于小波阈值和EEMD的磁异常数据处理研究

Liang Shuang, Wu Dan, Ren Xiu Yan, Xu Kun
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引用次数: 0

摘要

磁场信号能在不同介质中稳定传播,在磁目标检测中具有突出的优势。然而,磁性目标产生的磁异常信号容易受到背景磁场的干扰,难以从信号中区分出磁异常,因此在识别前需要对磁异常数据进行处理。本文讨论了磁异常信号的低信噪比问题,采用集合经验模态分解(EEMD)和小波分解(WT)对模拟磁异常信号进行处理。首先,利用EEMD对模拟磁异常信号进行处理。然后对分解后的IMF高阶分量进行小波阈值去噪。结果表明,与单独使用小波阈值或EEMD对信号进行仿真相比,该混合方法得到的数据更稳定,信噪比更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Magnetic Anomaly Data Processing Based on Wavelet Threshold and EEMD
Magnetic field signal can spread stably in different media, which has outstanding advantages in magnetic target detection. However, the magnetic anomaly signal caused by magnetic target are easy to be interfered by the background magnetic field, it is difficult to distinguish magnetic anomalies from the signal, so it is necessary to process the magnetic anomaly data before identification. In this paper, the problem of low signal-to-noise ratio (SNR) of magnetic anomaly signal is discussed and ensemble empirical mode decomposition (EEMD) and wavelet decomposition (WT) are used to process the simulated magnetic anomaly signal. Firstly, EEMD is used to process the simulated magnetic anomaly signal. Then the decomposed high-order IMF components are denoised by wavelet threshold denoising. The results show that compared with using wavelet threshold or EEMD to simulated signal alone, this hybrid method can get data which is more stable and have a taller SNR.
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