倾角约束稀疏表征的地震复杂波场信噪分离方法OA
Seismic signal-to-noise separation method for complex wavefields based on dip-constrained sparse representation
去噪是地震资料处理的关键环节,传统字典学习方法缺乏对信号物理机制的约束,极易将具有线性或曲线特征的相干噪声误识为有效信号并纳入字典原子,从而导致重构过程中有效信号失真或噪声残留.针对上述问题,文中提出一种基于物理约束的稀疏基学习混合噪声压制方法.首先,采用平面波解构滤波器(PWD)实现局部倾角场的估计和更新,确保倾角场与迭代优化的信号匹配;继而,以 PWD 估计的局部倾角场为约束,引导稀疏基的学习过程,将稀疏变换的信号表示能力与有效信号的局部倾角特征结合,使字典原子仅匹配具有对应倾角特征的有效信号,避免相干噪声原子的误学习;最终,使有效信号在匹配其倾角特征的稀疏基上实现精准稀疏表示,各类噪声因不具备对应倾角特征难以被稀疏基匹配,从而实现高保真有效信号重建和多类型噪声的有效压制.复杂模拟数据和实际数据测试表明,所提方法在压制强异常振幅干扰、面波、随机噪声和相干噪声等混合噪声方面,较常规方法和工业标准去噪流程,具有更优的噪声压制效果与广泛的适用性.
Denoising is a critical step in seismic data processing.Traditional dictionary learning methods lack constraints on the physical mechanism of signals,easily misidentifying coherent noise with linear or curvilinear features as effective signals and incorporating them into dictionary atoms,which results in distortion of effective signals or residual noise during reconstruction.To address these problems,this paper proposes a hybrid noise suppression method based on sparse basis learning with physical constraints.Firstly,the plane-wave destruction(PWD)filter is used to estimate and update the local dip field,ensuring that the dip field matches the iteratively optimized signal.Then,the local dip field estimated by PWD is taken as a constraint to guide the sparse basis learning process,which combines the signal representation ability of sparse transform with the local dip charac-teristics of effective signals.This enables dictionary atoms to match only effective signals with corresponding dip characteristics,avoiding the mislearning of coherent noise atoms.Finally,effective signals can be accurately sparsely represented on the sparse basis matching their dip characteristics,while various noises are difficult to be matched by the sparse basis due to the absence of corresponding dip characteristics.Thereby,high-fidelity effective signal reconstruction and effective suppression of multi-type noises are achieved.Tests on both complex synthetic data and field data show that the proposed method has superior suppression performance and wide appli-cability in suppressing hybrid noises such as strong abnormal amplitude interference,surface waves,random noise,and coherent noise,compared with conventional methods and industrial standard denoising workflows.
雷刚林;王德英;段文胜;刘文卿;吴天麒;寇龙江
中国石油塔里木油田公司勘探开发研究院,新疆库尔勒 841000||中国石油天然气集团超深层复杂油气藏勘探开发技术研发中心,新疆库尔勒 841000||新疆维吾尔自治区超深层复杂油气藏勘探开发工程研究中心,新疆库尔勒 841000中国石油勘探开发研究院西北分院,甘肃 兰州 730020||中国石油大学(华东),山东 青岛 266580中国石油塔里木油田公司勘探开发研究院,新疆库尔勒 841000||中国石油天然气集团超深层复杂油气藏勘探开发技术研发中心,新疆库尔勒 841000||新疆维吾尔自治区超深层复杂油气藏勘探开发工程研究中心,新疆库尔勒 841000中国石油勘探开发研究院西北分院,甘肃 兰州 730020中国石油塔里木油田公司勘探开发研究院,新疆库尔勒 841000||中国石油天然气集团超深层复杂油气藏勘探开发技术研发中心,新疆库尔勒 841000||新疆维吾尔自治区超深层复杂油气藏勘探开发工程研究中心,新疆库尔勒 841000中国石油勘探开发研究院西北分院,甘肃 兰州 730020
天文与地球科学
多类型噪声压制字典学习倾角约束平面波解构滤波器
multiple-type noise suppressiondictionary learningdip constraintplane-wave destruction filter
《石油地球物理勘探》 2026 (3)
653-669,692,18
本项研究受塔里木油田横向项目"三维起伏地表各向异性建模及绕射波成像方法研究"(671024115004)资助.
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