基于长短期记忆的时域 CSAMT 信号去噪

IF 1.6 3区 地球科学 Q3 GEOCHEMISTRY & GEOPHYSICS Journal of Geophysics and Engineering Pub Date : 2024-02-09 DOI:10.1093/jge/gxae017
Bingcheng Xu, Zhiguo An, Ying Han, Gaofeng Ye
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引用次数: 0

摘要

受控声源频率磁迹技术(CSAMT)是一种人工源电磁技术,可部分缓解微弱自然场信号的局限性。然而,实际野外勘测不可避免地会遇到强烈干扰,严重影响信号质量。傅立叶变换等传统方法直接从频域信息计算视电阻率,在这种情况下并不适用,因此我们需要其他去噪方法。然而,目前关于 CSAMT 去噪的研究还很有限。鉴于长短期记忆(LSTM)神经网络在处理磁突触(MT)数据方面的出色表现(之前的研究已经证明了这一点),本文提出使用 LSTM 对 CSAMT 信号进行时域去噪。与传统的去噪方法不同,我们的目标是从时间序列数据中直接提取目标频率信号进行去噪。对于 MT 数据,目标频率信号和噪声都混杂在一起,因此只能通过识别时间序列中的噪声特征来实现噪声抑制。然而,与 MT 数据不同的是,CSAMT 数据有一个人工发射源,有效信号的频率在时间间隔内是固定的。这样就可以直接提取目标频率信号,而无需考虑噪声的复杂特性。在本研究中,我们开发了一种基于双向 LSTM 的神经网络来完成噪声抑制任务。在进行了模拟和实测数据测试后,该方法能够将 CSAMT 数据的信噪比 (SNR) 平均提高约 20dB,并部分解决了数据信噪比低于 0dB 时的去噪难题。
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Denoising CSAMT signals in the time domain base on long short-term memory
Controlled-Source Audio Frequency Magnetotellurics (CSAMT) is an artificial-source electromagnetic technique that partially mitigates the limitations of weak natural field signals. However, practical field surveys inevitably encounter strong interference, severely affecting signal quality. Traditional methods like Fourier transformation, which directly computes apparent resistivity from frequency-domain information, are inadequate for this context, so we need alternative denoising approaches. However, research on CSAMT denoising is currently limited. Given the excellent performance of Long Short-Term Memory (LSTM) neural networks in the processing of Magnetotelluric (MT) data, as demonstrated by previous studies, this paper proposes the use of LSTM to denoise CSAMT signals in the time domain. Unlike traditional denoising methods, we aim to directly extract the target frequency signal from the time series data for denoising. For MT data, target frequency signals and noise are all mixed together, so noise suppression can only be achieved by identifying noise characteristics in the time series. However, unlike MT data, CSAMT data has an artificial transmitting source, and the frequency of the valid signal is fixed within a time interval. This allows for the direct extraction of target frequency signals without considering the complex characteristics of noise. In this study, we developed a neural network based on bidirectional LSTM to accomplish the task of noise suppression. After conducting both simulated and measured data tests, this method was able to, on average, improve the signal-to-noise ratio (SNR) of CSAMT data by approximately 20dB and partially address the challenge of denoising when the data's SNR falls below 0dB.
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来源期刊
Journal of Geophysics and Engineering
Journal of Geophysics and Engineering 工程技术-地球化学与地球物理
CiteScore
2.50
自引率
21.40%
发文量
87
审稿时长
4 months
期刊介绍: Journal of Geophysics and Engineering aims to promote research and developments in geophysics and related areas of engineering. It has a predominantly applied science and engineering focus, but solicits and accepts high-quality contributions in all earth-physics disciplines, including geodynamics, natural and controlled-source seismology, oil, gas and mineral exploration, petrophysics and reservoir geophysics. The journal covers those aspects of engineering that are closely related to geophysics, or on the targets and problems that geophysics addresses. Typically, this is engineering focused on the subsurface, particularly petroleum engineering, rock mechanics, geophysical software engineering, drilling technology, remote sensing, instrumentation and sensor design.
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