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1.
魏亚杰  张盼  许卓 《地球物理学报》2019,62(10):4000-4009
混合震源采集技术相对于传统的地震数据采集,在极大提高采集效率的同时引入了混叠噪声,很大程度上影响了成像结果的精度.二维混采数据中,我们通常利用混叠噪声在非共炮域呈非相干分布这一特点来压制混叠噪声,从而实现混合震源数据分离.相对于二维混采数据,三维混采数据具有数据量巨大,构建混合震源算子困难,混合度的增加引入了高强度混叠噪声的特点.针对上述问题,本文采用稀疏约束反演方法在Radon域实现混采数据分离,混叠噪声强度比较大的情况下,稀疏约束反演方法能够得到更高精度的分离结果;利用震源激发的GPS时间通过长记录的方式在共接收点道集对上一次迭代分离结果做混合、伪分离,实现了单个共接收点道集自身混合、伪分离,避免了对整个数据做运算,同时不需要构建混合震源算子.通过模拟数据和实际数据计算来验证上述方法的适用性.  相似文献   

2.
海上地震勘探中为提高采集效率会采取连续采集方案,导致地震记录尾端与下一炮起始记录重合,这种现象对浅层地震处理影响不大,但是会完全掩盖深层地震信号.由于混叠噪声与真实信号属于同方向及同震源采集,其频谱完全重叠,常规的噪声压制方法无法完全压制混叠噪声.本文提出了一种基于同相轴追踪的混叠记录分离方法,利用时域上混叠噪声与真实地震信号时距曲线的曲率差异得到混叠噪声的模型,再利用最小平方约束反演方法进行自适应相减,使有效信号误差最小,最终完成混叠炮集分离.通过理论分析与正演测试,混叠衰减的关键在于求取可靠的混叠模型,而自适应衰减则控制细微振幅与相位差异.通过对实际地震资料进行处理,并与F-K滤波方法进行了对比,证实了该方法的有效性.  相似文献   

3.
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   

4.
多源混合采集技术可以在不同炮点同时激发产生地震波场,极大的提高了生产效率,但是不同震源之间产生的混叠干扰严重降低了地震数据的信噪比,应在处理中予以压制.针对此问题,本文采用一种自适应中值滤波方法实现混叠噪声的分离.首先通过计算初始中值滤波后的数据和原始数据之间的相似度,根据数据的相似度选取不同的滤波窗口实现对混叠噪声的压制.与常规中值滤波方法相比,本文方法可以更好地压制掉混叠噪声,同时保持有效信号.通过模拟和实际数据试算,验证本文方法的有效性.  相似文献   

5.
随着高密度以及深层地震勘探的发展和普及,采集数据量随之急剧增加,常规采集方法已经不能有效地适应这些大数据量的勘探项目需求,高效地震采集方法成为必然.近几年来,混叠采集是较新发展的一种高效采集方法.本文在调研目前常用的混合源和同时源方法的基础上,总结提出了混叠采集的新概念.根据概念建立起理论正演模型进行模拟,模拟混叠采集方法与常规采集方法的区别、不同参数对混叠效果的影响等,得出相关的结论.在华北东部廊固凹陷进行了验证性试验.廊固凹陷地处华北平原,交通发达,村庄密集,存在较大的空炮率和超强的环境噪声,对资料品质有较大的影响,野外试验与模拟试验结果大致相同,也有一定的差异.与以往规则型的混叠方式不同,本研究在试验中创新性引入了任意随机与不同激发信号的混叠方式方法,取得了一些新的认识.研究结果表明:混叠采集方法能显著地提高生产效率;混叠带来的噪声可以通过不同域来去除;混叠采集需要一定的合适的空间间隔;混叠采集数据品质略差于常规方法,但可以通过提高采集密度和生产效率来弥补;混叠参数选取要考虑平衡施工效率、噪声水平和资料品质.  相似文献   

6.
基于脉冲检测的混合震源数据分离   总被引:1,自引:0,他引:1       下载免费PDF全文
混合震源采集技术相对于传统地震数据采集具有改善成像质量、提高采集效率的优势.减小混合炮中单炮之间的随机延时范围能够有效的提高采集效率,但这也给之后的混采数据分离带来了影响.混采数据经伪分离后非共炮域数据中的混叠噪声明显更加集中,不利于对混叠噪声进行压制.本文提出基于脉冲检测方法对混采数据进行分离,并且与迭代的多级中值滤波方法作对比,时间延时范围较大时,两种方法都能得到很好的分离结果;时间延时范围较小时,本文方法能更有效的去除混叠噪声,同时也能更好的保留细节信息.实际数据计算结果表明,本文方法一定程度上还能够有效压制其他随机噪声.  相似文献   

7.
同时震源数据包含了多炮之间的串扰噪声,不能直接用于常规数据处理流程.因此,需要对混叠的波场进行分离得到常规采集的单炮记录.本文基于稀疏迭代反演分离,提出了一种具有尺度与空间自适应的Wiener阈值选取方法.该阈值选取方法能够根据不同迭代环境计算不同尺度下串扰噪声的方差和不同空间位置有效信号的方差,从而自适应调整阈值大小,最终通过对变换域系数进行收缩来达到去除串扰噪声的目的.理论模型数据和实际数据测试结果表明,本文方法能够快速有效地压制串扰噪声和保护弱有效信号,取得了比Contourlet域子带一致Wiener阈值方法和Curvelet域指数衰减阈值方法更好的分离效果.  相似文献   

8.
经验模态分解算法(EMD)是一种基于有效波和噪声尺度差异进行波场分离的随机噪声压制方法,但由于实际地震数据波场复杂,导致模态混叠较严重,仅凭该方法进行去噪很难达到理想效果.本文基于EMD算法对信号多尺度的分解特性,结合Hausdorff维数约束条件,提出一种用于地震随机噪声衰减的新方法.首先对地震数据进行EMD自适应分解,得到一系列具有不同尺度的、分形自相似性的固有模态分量(IMF);在此基础上,基于有效信号和随机噪声的Hausdorff维数差异,识别混有随机噪声的IMF分量,对该分量进行相关的阈值滤波处理,从而实现有效信号和随机噪声的有效分离.文中从仿真信号试验出发,到模型地震数据和实际地震数据的测试处理,同时与传统的EMD处理结果相对比.结果表明,本文方法对地震随机噪声的衰减有更佳的压制效果.  相似文献   

9.
二维地震资料波动方程非线性反演   总被引:3,自引:3,他引:3       下载免费PDF全文
针对反演的要求和实际问题的需要,提出利用地震资料叠前数据进行二维波动方程反演,采用最小平方拟合修正模型参数的非线性反演方法,构造了问题的加速迭代算法.反演算法充分利用了冗余的叠前数据和多道相关性,可以分离噪声和信号,使噪声不参与或很少参与反演,算法抗噪能力强.数值模拟例子表明算法有效和稳定,得到了令人满意的结果.  相似文献   

10.
为了满足岩性勘探的需要,苏里格地区开展了高密度地震采集方法.采集技术的进步极大的提高了地震记录的品质,同时对开展以岩性预测为目标的保幅处理提出了更高的要求.而叠前去噪作为室内去噪处理的主战场,在保幅处理中起到重要作用.本文针对苏里格地区地震资料干扰波类型多、背景噪音强的特点,采用多域多方法联合去噪思路,对叠前地震数据上的噪声采用分频压制线性及异常强能量干扰、自适应单频波衰减及高精度反假频去除多次波等保幅去噪方法.在提高信噪比的同时,达到保幅处理效果,提高了处理结果的可靠性,使钻井成功率大大提高,从而大幅度提高了苏里格气田的经济效益.该技术系列对国内其它低孔低渗致密砂岩油气藏研究同样具有借鉴意义.  相似文献   

11.
We introduce a concept of generalized blending and deblending, develop its models and accordingly establish a method of deblended-data reconstruction using these models. The generalized models can handle real situations by including random encoding into the generalized operators both in the space and time domain, and both at the source and receiver side. We consider an iterative optimization scheme using a closed-loop approach with the generalized blending and deblending models, in which the former works for the forward modelling and the latter for the inverse modelling in the closed loop. We applied our method to existing real data acquired in Abu Dhabi. The results show that our method succeeded to fully reconstruct deblended data even from the fully generalized, thus quite complicated blended data. We discuss the complexity of blending properties on the deblending performance. In addition, we discuss the applicability to time-lapse seismic monitoring as it ensures high repeatability of the surveys. Conclusively, we should acquire blended data and reconstruct deblended data without serious problems but with the benefit of blended acquisition.  相似文献   

12.
The application of blended acquisition has drawn considerable attention owing to its ability to improve the operational efficiency as well as the data quality and health, safety and environment performance. Furthermore, the acquisition of less data contributes to the business aspect, while the desired data density is still realizable via subsequent data reconstruction. The use of fewer detectors and sources also minimizes operational risks in the field. Therefore, a combined implementation of these technologies potentially enhances the value of a seismic survey further. One way to encourage this is to minimize any imperfection in deblending and data reconstruction during processing. In addition, one may derive survey parameters that enable a further improvement in these processes as introduced in this study. The proposed survey design workflow iteratively performs the following steps to derive the survey parameters responsible for source blending as well as the spatial sampling of detectors and sources. The first step is the application of blending and sampling operators to unblended and well-sampled data. We then apply closed-loop deblending and data reconstruction. The residue for a given design from this step is evaluated and subsequently used by genetic algorithms to simultaneously update the survey parameters related to both blending and spatial sampling. The updated parameters are fed into the next iteration until they satisfy the given termination criteria. We also propose a repeated encoding sequence to form a parameter sequence in genetic algorithms, making the size of problem space manageable. The results of the proposed workflow are outlined using blended dispersed source array data incorporating different scenarios that represent acquisition in marine, transition zone and land environments. Clear differences attributed solely to the parameter design are easily recognizable. Additionally, a comparison among different optimization schemes illustrates the ability of genetic algorithms along with a repeated encoding sequence to find better solutions within a computationally affordable time. The optimized parameters yield a notable enhancement in the deblending and data reconstruction quality and consequently provide optimal acquisition scenarios.  相似文献   

13.
基于全变分原理的多震源混合数据直接偏移方法   总被引:4,自引:3,他引:1       下载免费PDF全文
多震源混合地震采集技术,即将多个震源以一定编码方式连续地激发,得到多炮混合的地震数据.该技术能减少地震采集时间,节约采集成本,但是混合数据的直接偏移会在成像剖面中引入严重的串扰噪声,影响成像效果.从数学上看,地震成像属于典型的数学物理反问题,可以采用线性反演方法求解一个正则化约束的最小二乘(LS)优化问题,获得更高质量的成像结果.全变分(TV)正则化方法是图像去噪和复原领域中广泛应用的热点技术,其能在去除噪声的过程中保留图像的边缘信息和不连续性.在对TV图像去噪复原方法原理分析的基础上,本文将多震源混合数据直接偏移成像问题转换成图像复原的极小化能量泛函问题,用TV正则化代替传统最小二乘偏移(LSM)中的L2范数正则化,提出基于全变分原理的混合数据直接偏移方法.该方法使用基于梯度的快速迭代收缩阈值与快速梯度投影组合算法——FISTA/FGP求解最优化问题,能有效压制串扰噪声,增强同相轴连续性,提高成像分辨率.理论模型测试结果表明:将本方法应用于混合数据,无论是去噪效果还是成像精度都得到显著改善.  相似文献   

14.
Multi-source seismic technology is an efficient seismic acquisition method that requires a group of blended seismic data to be separated into single-source seismic data for subsequent processing. The separation of blended seismic data is a linear inverse problem. According to the relationship between the shooting number and the simultaneous source number of the acquisition system, this separation of blended seismic data is divided into an easily determined or overdetermined linear inverse problem and an underdetermined linear inverse problem that is difficult to solve. For the latter, this paper presents an optimization method that imposes the sparsity constraint on wavefields to construct the object function of inversion, and the problem is solved by using the iterative thresholding method. For the most extremely underdetermined separation problem with single-shooting and multiple sources, this paper presents a method of pseudo-deblending with random noise filtering. In this method, approximate common shot gathers are received through the pseudo-deblending process, and the random noises that appear when the approximate common shot gathers are sorted into common receiver gathers are eliminated through filtering methods. The separation methods proposed in this paper are applied to three types of numerical simulation data, including pure data without noise, data with random noise, and data with linear regular noise to obtain satisfactory results. The noise suppression effects of these methods are sufficient, particularly with single-shooting blended seismic data, which verifies the effectiveness of the proposed methods.  相似文献   

15.
Within the field of seismic data acquisition with active sources, the technique of acquiring simultaneous data, also known as blended data, offers operational advantages. The preferred processing of blended data starts with a step of deblending, that is separation of the data acquired by the different sources, to produce data that mimic data from a conventional seismic acquisition and can be effectively processed by standard methods. Recently, deep learning methods based on the deep neural network have been applied to the deblending task with promising results, in particular using an iterative approach. We propose an enhancement to deblending with an iterative deep neural network, whereby we modify the training stage of the deep neural network in order to achieve better performance through the iterations. We refer to the method that only uses the blended data as the input data as the general training method. Our new multi-data training method allows the deep neural network to be trained by the data set with the input patches composed of blended data, noisy data with low amplitude crosstalk noise, and unblended data, which can improve the ability of the deep neural network to remove crosstalk noise and protect weak signal. Based on such an extended training data set, the multi-data training method embedded in the iterative separation framework can result in different outputs at different iterations and converge to the best result in a shorter iteration number. Transfer learning can further improve the generalization and separation efficacy of our proposed method to deblend the simultaneous-source data. Our proposed method is tested on two synthetic data and two field data to prove the effectiveness and superiority in the deblending of the simultaneous-source data compared with the general training method, generic noise attenuation network and low-rank matrix factorization methods.  相似文献   

16.
地震勘探目标日趋复杂化和精细化,"两宽一高"等采集技术获得了广泛应用,从而导致当前地震数据采集周期越来越长、成本越来越高,如何解决日益增长的勘探成本问题成为当前地震采集领域的研究热点之一.针对上述问题,本文首先开展了基于稀疏性的地震数据高效采集方法理论研究,对地震数据稀疏性基本理论、稀疏约束下随机采样及其数据重建方法进行了深入探讨,提出使用改进的分段随机采样方法灵活地进行实际地震采集测网设计;详细阐述了多源地震激发方法,对多源地震数据分离方法开展了深入研究,提出了基于小窗口中值滤波与稀疏约束联合随机去噪的多源数据分离方法,并在数据分离处理中取得了较好的效果;将上述两种地震数据采集方案有机结合,提出了1)规则多源、随机检波点(DmsRg)、2)随机多源、规则检波点(RmsDg)和3)随机多源、随机检波点(RmsRg)等三种高效采集方案及相应的数据重建方案,满足了后续常规化数据处理的要求,并讨论了多源激发对数据成像的影响.基于Marmousi模型数据的数值试验表明,本文构建的基于稀疏约束和多源激发的高效采集方法理论对于提高地震数据采集效率、降低勘探成本具有重要的应用价值,建立的数据重建方法流程可以取得和常规数据接近的成像结果.本文方法虽然在数值试验中取得了较为理想的效果,但还需要得到野外实际数据采集的进一步检验.  相似文献   

17.
Distance separated simultaneous sweeping DS3 is a new vibroseis technique that produces independent records, uncontaminated by simultaneous source interference, for a range of offsets and depths that span all target zones of interest. Use of DS3 on a recent seismic survey in Oman, resulted in a peak acquisition rate of 1024 records per hour. This survey employed 15 vibrators, with a distance separation of 12 km between simultaneous active sources, recorded by 8000 active channels across 22 live lines in an 18.5 km × 11 km receiver patch. Broad distribution of simultaneous sources, across an adequately sized recording patch, effectively partitions the sensors so that each trace records only one of the simultaneous sources. With proper source separation, on a scale similar to twice the maximum usable source receiver offset, wavefield overlap occurs below the zone of interest. This yields records that are indistinguishable from non-simultaneous source data, within temporal and spatial limits. This DS3 technique may be implemented using a wide variety of acquisition geometries, optimally with spatially large recording patches that enable appropriate source separation distances. DS3 improves acquisition efficiency without data quality degradation, eliminating the requirement for special data processing or noise attenuation.  相似文献   

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