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1.
航空电磁法由于高效和高精度的特点广泛应用于地质填图、矿产资源、地下水、及环境与工程等勘查.然而,航空电磁系统处于动态环境,噪声影响严重,航空电磁数据处理至关重要.航空电磁数据噪声除随机成分外,还包括有各种效应引起的畸变,数据去噪需要依据噪声特征进行处理.航空电磁数据调平是航空电磁数据处理中至关重要的步骤,它能有效去除数据中由飞机飞行条件变化导致系统状态变化而产生的异常.传统的调平方法由于效率较低、易产生数据畸变等受到限制.为了克服这些局限性,我们提出一种基于曲波变换的数据调平方法.该方法得益于曲波变换多尺度和多方向性特征,可以有效地提取数据中的调平误差并予以去除.与此同时,利用该方法我们可以对非规则测区数据进行直接调平,无需进行测区分割,显著提高调平效率和普适性.为了检验本文曲波变换调平方法的有效性,我们将其应用于理论数据以及在爱尔兰Waterford地区实测的航电数据调平.实验结果表明该方法有效地去除调平误差的同时很好地保留有用信号.  相似文献   

2.
高效的瞬变电磁数据处理对后续的精确地质解译具有决定性的作用,而数据信号的去噪是数据处理环节的重中之重.时频分析方法是当前广泛应用于瞬变电磁数据处理去噪领域的主要方法技术,但其基本是单域方法的应用探索,各自单域方法实际应用效果不尽人意.本文基于曲波变换、小波变换及高阶相关统计技术,进行了交叉型组合域瞬变电磁数据去噪技术的研究与探索.通过引入高阶相关统计理论提供自适应的阈值函数、采用小波变换进行残留噪声成分小波系数分解,结合曲波变换正反过程实现交叉型组合域去噪技术.设计了包含随机噪声、相关噪声的数值模拟合成数据去噪算例验证了本文方法的可行性.将本文方法应用于两个实测数据去噪分析,表明本文方法可有效解决不同复杂程度的含噪声瞬变电磁数据去噪领域.研究成果为瞬变电磁高精度数据处理提供了新的技术手段.  相似文献   

3.
探地雷达勘探工程目标及观测工程环境越加复杂给其精确的数据处理带来极大挑战,高效的探地雷达数据去噪算法是当前关注的重要研究领域.基于阈值去噪思想,小波变换和曲波变换去噪算法在探地雷达数据去噪应用中受到限制,有必要开展上述两种去噪算法适用性和实用性系统评价及改进.基于传统高阶相关统计阈值和块状复数域阈值函数,本文开展了小波变换及曲波变换去噪算法在合成含噪数据去噪效果对比分析;提出窗口高阶相关统计阈值小波变换去噪算法、探讨了块状复数域阈值函数取值变化对曲波变换去噪效果影响规律.通过对实测数据去噪分析,验证了窗口高阶相关统计阈值小波变换和估计块状复数域阈值函数曲波变换去噪算法的可行性及有效性.  相似文献   

4.
由于地震信号的非线性和非平稳性,导致频率域的去噪方法滤波效果不佳.鉴于此,本文设计了基于互补集合经验模态分解(CEEMD)的曲波最优化迭代阈值去噪方法.该方法首先利用CEEMD将非平稳信号分解为一系列相对平稳的固有模态函数,根据每个固有模态函数所含噪声强弱的不同,利用曲波最优化迭代阈值进行去噪处理,最后将处理后的固有模态函数进行重构,得到最终压制噪声后的结果.与FX反褶积相比,本文方法在压制随机噪声提高信噪比的同时,可以更好的保护有效信号.模型试算和实际资料处理验证了该方法的有效性.  相似文献   

5.
高密度采集可以提高地震资料品质,改善成像精度,但也会增加地震采集成本.为了提高采集效率降低生产成本,混采技术得到了推广应用.但是该采集方式会产生严重的混叠噪声,降低地震数据的信噪比.针对此问题,本文结合中值滤波、动校正(NMO)和复曲波变换阈值去噪的优势,设计了一种优化的复曲波变换压制混源噪声方法.该方法首先采用大步长中值滤波对经过NMO处理的数据进行滤波,再利用基于复曲波域的阈值去噪方法提取剩余信号,计算滤波结果的伪分离记录和原始混叠数据的差值,再将该差值返回到第一步进行迭代,每次迭代中值滤波步长逐步减小,直到达到初始设定的期望信噪比为止.与基于F-K域和curvelet域的迭代阈值方法相比,本文方法可以在压制混叠噪声的同时,更好的保护有效信号,由于本文方法仅需较少的迭代次数,计算效率也可以大大提高.  相似文献   

6.
对曲波变换的地震数据随机噪声衰减方法进行了探索,基于曲波(Curvelet)变换在图像处理方面的优越性,结合循环平移(Cycle spinning)技术提出了一种用于地震随机噪声衰减的新方法.在利用曲波变换闽值去噪算法基础上引入循环平移技术,可以消除曲波变换由于缺乏平移不变性所导致的信号伪吉布斯效应,并且较好地保留了有效信号.对地震正演模拟数据进行随机噪声衰减试验,对不同噪声含量数据进行去噪分析,并应用于实际地震数据,结果表明,新方法对去除地震随机噪音有较好的效果.  相似文献   

7.
海底地震仪(OBS)采集数据的去噪处理是开展OBS震相分析及后续处理反演的基础.本文结合曲波(Curvelet)变换及压缩感知提出一种稀疏化表达的OBS去噪方法,并通过与小波变化对比等探讨去噪效果.曲波变换具有抛物尺度及识别线性异常的优点,可以稀疏地表示OBS数据,再结合压缩感知思想对稀疏表达OBS数据进行去噪处理和重构.通过对变换后的系数进行基于L1范数的冷却阈值迭代滤波,获得最优的变换系数,本文指出基于曲波变换的冷却阈值迭代法能够很好地对OBS数据去噪.对比小波和曲波两种变换在相同迭代次数下对理论模型数据进行去噪处理,表明曲波变换得到的结果信噪比更高.利用本文方法对渤海地区采集的OBS数据进行去噪处理获得了更加清晰连续的震相,噪声压制效果更明显,为震相拾取及后续速度模型反演奠定了良好的基础.  相似文献   

8.
针对常用大地电磁(magnetotelluric,MT)信号小波阈值去噪中阈值函数和阈值选取的不足,选取一种新的阈值函数,并提出了基于小波变换多分辨Stein无偏风险估计,自适应的获得最优阈值的方法;给出了新函数和自适应阈值的确定方法;在与小波硬、软阈值去噪、小波模极大值法去噪结果对比的基础上,用仿真实验验证了方法的可行性;最后用内蒙某地实测的大地电磁数据进行了去噪效果的对比研究.结果表明:本文选取的新函数和自适应阈值的确定方法是正确、有效的,克服了常用小波硬、软阈值去噪的缺点;去噪后大地电磁信号变得平稳,估算的响应参数方差减小,曲线更为圆滑、连续,为后续的地质解释和评价提供了更为准确的信息.  相似文献   

9.
鉴于面波严重影响地震中深层有效反射,而传统的曲波变换面波压制方法无法根据数据实现自适应提取曲波基,影响了去噪效果,本文提出了一种经验曲波变换压制面波的方法。该方法不仅能将地震数据分为多个尺度和方向,而且不同于传统的曲波变换,能根据数据本身的信息,自适应提取曲波基,区分面波与有效波的频谱支集。由于一次有效波与面波能量十分接近,导致面波与有效波曲波系数出现少许重叠,结合奇异值分解的方法,最终在曲波域有效实现了面波与有效信号的信噪分离。模拟数据及实际资料处理结果表明,该方法比传统的曲波变换面波压制方法效果更好,自动化程度更高,是一种先进有效的相对保幅去噪技术。  相似文献   

10.
航空电磁数据主成分滤波重构的噪声去除方法   总被引:1,自引:0,他引:1       下载免费PDF全文
主成分分析方法利用低阶主成分重构航空电磁数据,解决了航空电磁探测中噪声与数据在频谱重叠情况下的噪声压制问题,但是参与重构的低阶主成分仍包含高频空间噪声,影响数据成像精度.本文提出的主成分滤波重构去噪方法,根据自适应窗宽平滑算法,设计了主成分低通滤波器组,对参与重构的低阶主成分进行测线滤波,再将滤波后的低阶主成分重构为电磁信号,不仅可以去除低阶主成分中的高频空间噪声,而且去除了高阶主成分包含的不相关噪声.仿真数据的去噪结果表明,主成分滤波重构获得较高的信噪比,较常规测线滤波与主成分重构分别提高了10.96dB和2.52dB;电导率深度成像结果证明了主成分滤波重构方法能够提高地下深部异常体的识别能力.最后通过实测数据的成像结果进一步验证了本文研究的主成分滤波重构去噪方法的有效性.  相似文献   

11.
A new seismic interpolation and denoising method with a curvelet transform matching filter, employing the fast iterative shrinkage thresholding algorithm (FISTA), is proposed. The approach treats the matching filter, seismic interpolation, and denoising all as the same inverse problem using an inversion iteration algorithm. The curvelet transform has a high sparseness and is useful for separating signal from noise, meaning that it can accurately solve the matching problem using FISTA. When applying the new method to a synthetic noisy data sets and a data sets with missing traces, the optimum matching result is obtained, noise is greatly suppressed, missing seismic data are filled by interpolation, and the waveform is highly consistent. We then verified the method by applying it to real data, yielding satisfactory results. The results show that the method can reconstruct missing traces in the case of low SNR (signal-to-noise ratio). The above three problems can be simultaneously solved via FISTA algorithm, and it will not only increase the processing efficiency but also improve SNR of the seismic data.  相似文献   

12.
噪声衰减是探地雷达信号处理中的关键问题之一。当探测目标埋藏深度比较浅时,其反射信号与直耦信号和地面回波信号相互重叠,直接影响目标反射波到达时刻的检测及目标的正确定位。针对这个问题,本文提出了一种基于Curvelet变换的噪声衰减方法。通过对理论数值模拟数据和实测数据的处理,以及与平均消去法和二维连续小波该方法处理结果的对比,验证了该方法的可行性和有效性。处理结果显示,该方法不仅可以去除背景噪声、同时可以衰减倾斜相关的相干干扰和数据中的随机噪声。与二维连续小波变换方法相比有更高的计算效率。  相似文献   

13.
We show how a denoising technique based on the wavelet transform can be used to deal with localized noise related to DC electrified railway lines. This method, which performs localized and sharp filtering of cultural noise, was applied to high‐resolution aeromagnetic data acquired in the Phlegrean volcanic area, southern Italy, in 1999 and 2001. The helicopter‐borne survey was aimed at giving new detailed insights into the distribution of the magnetization of the area and, therefore, into the volcanological characteristics of the region. The surveyed area is characterized by the presence of towns, buildings and DC electrified railway lines whose magnetic effects influenced the measurements and were responsible for some of the measured anomalies. This cultural noise has, therefore, to be minimized as much as possible in order to allow the data to be interpreted accurately. Due to the excellent space‐scale localization properties of the discrete wavelet transform, the cultural disturbance was removed very precisely, leaving the field in the adjacent areas unchanged.  相似文献   

14.
本文针对噪声成分和噪声结构的复杂性及弱信号的特征,发展了最新的在线字典学习去噪方法.在线字典学习去噪方法是以数据驱动的方式,反复进行学习构建字典方式,求得信号的稀疏性解以实现对信号的去噪,在此基础上,提出了数据驱动与模型驱动联合的模型约束下的在线字典学习去噪方法,先通过模型驱动方式获得一个较优质的学习样本以构建字典再进行去噪处理.通过和传统小波变换进行理论地震合成记录的效果对比,在高噪声比例的弱信号情况下远远优于传统的时频域去噪方法.实际数据去噪处理表明,模型约束下的在线字典学习去噪方法是一种有效的去噪方法,这种联合去噪方式能在高噪声背景下有效地提取出弱信号,具有广阔的推广应用前景.  相似文献   

15.
In this paper, a novel data denoising method is proposed for seismic exploration with a vibrator which produces a chirp-like signal. The method is based on fractional wavelet transform (FRWT), which is similar to the fractional Fourier transform (FRFT). It can represent signals in the fractional domain, and has the advantages of multi-resolution analysis as the wavelet transform (WT). The fractional wavelet transform can process the reflective chirp signal as pulse seismic signal and decompose it into multi-resolution domain to denoise. Compared with other methods, FRWT can offer wavelet transform for signal analysis in the timefractional-frequency plane which is suitable for processing vibratory seismic data. It can not only achieve better denoising performance, but also improve the quality and continuity of the reflection syncphase axis.  相似文献   

16.
Erratic noise often has high amplitudes and a non‐Gaussian distribution. Least‐squares–based approaches therefore are not optimal. This can be handled better with non–least‐squares approaches, for example based on Huber norm which is computationally expensive. An alternative method has been published which involves transforming the data with erratic noise to pseudodata that have Gaussian distributed noise. It can then be attenuated using traditional least‐squares approaches. This alternative method has previously been used in combination with a curvelet transform in an iterative scheme. In this paper, we introduce a median‐filtering step in this iterative scheme. The median filter is applied following the slope direction of the seismic data to maximally preserve the energy of useful signals. The new method can suppress stronger erratic noise compared with the previous iterative method, and can better deal with random noise compared with the single‐step implementation of the median filter. We apply the proposed robust denoising algorithm to a synthetic dataset and two field data examples and demonstrate its advantages over three different noise attenuation algorithms.  相似文献   

17.
Weak Seismic Signal Extraction Based on the Curvelet Transform   总被引:1,自引:1,他引:0  
Seismic signal denoising is a key step in seismic data processing. Airgun signals are easy to be interfered with by noise when it travels a long distance due to the weak energy of active source signal of the airgun. Aiming to solve this problem, and considering that the conventional Curvelet transform threshold processing method does not use the seismic spectrum information, we independently process the Curvelet scale layer corresponding to valid data based on the characteristics of the Curvelet transform of multi-scale, multi-direction and capable of expressing the sparse seismic signals in order to fully excavate the information features. Combined with the Curvelet adaptive threshold denoising the algorithm, we apply the Curvelet transform to denoising seismic signals while retaining the weak information in the signal as much as possible. The simulation experiments show that the improved threshold denoising method based on Curvelet transform is superior to the frequency domain filtering, wavelet denoising and traditional Curvelet denoising method in detailed information extraction and signal denoising of low SNR signals. The calculation accuracy of the relative wave velocity variation of underground medium is improved.  相似文献   

18.
Seismic data contain random noise interference and are affected by irregular subsampling. Presently, most of the data reconstruction methods are carried out separately from noise suppression. Moreover, most data reconstruction methods are not ideal for noisy data. In this paper, we choose the multiscale and multidirectional 2D curvelet transform to perform simultaneous data reconstruction and noise suppression of 3D seismic data. We introduce the POCS algorithm, the exponentially decreasing square root threshold, and soft threshold operator to interpolate the data at each time slice. A weighing strategy was introduced to reduce the reconstructed data noise. A 3D simultaneous data reconstruction and noise suppression method based on the curvelet transform was proposed. When compared with data reconstruction followed by denoizing and the Fourier transform, the proposed method is more robust and effective. The proposed method has important implications for data acquisition in complex areas and reconstructing missing traces.  相似文献   

19.
基于Curvelet变换的地震资料信噪分离技术   总被引:1,自引:1,他引:0       下载免费PDF全文
在地震资料中,噪声干扰严重影响了有效信号的提取,为此必须进行信噪分离处理.本文提出一种基于Curvelet变换和KL变换相结合的软硬阈值折衷处理方法.首先对地震数据进行Curvelet变换,然后对各尺度系数选取适当阈值压制噪声干扰,再利用KL变换提取数据中的相干有效信号,最后重构得到去噪后的记录.经合成记录和实际地震资料处理实验证明,该方法与小波变换法相比较,更能有效进行信噪分离,提高地震剖面信噪比和分辨率.  相似文献   

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