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首页> 外文期刊>Journal of Applied Geophysics >3D seismic data de-noising and reconstruction using Multichannel Time Slice Singular Spectrum Analysis
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3D seismic data de-noising and reconstruction using Multichannel Time Slice Singular Spectrum Analysis

机译:三维地震数据去噪与使用多通道时间切片奇异谱分析的重建

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摘要

Noises and data gaps complicate the seismic data processing and subsequently cause difficulties in the geological interpretation. We discuss a recent development and application of the Multi-channel Time Slice Singular Spectrum Analysis (MTSSSA) for 3D seismic data de-noising in time domain. In addition, L1 norm based simultaneous data gap filling of 3D seismic data using MTSSSA also discussed. We discriminated the noises from single individual time slices of 3D volumes by analyzing Eigen triplets of the trajectory matrix. We first tested the efficacy of the method on 3D synthetic seismic data contaminated with noise and then applied to the post stack seismic reflection data acquired from the Sleipner CO2 storage site (pre and post CO2 injection) from Norway. Our analysis suggests that the MTSSSA algorithm is efficient to enhance the S/N for better identification of amplitude anomalies along with simultaneous data gap filling. The bright spots identified in the de-noised data indicate upward migration of CO2 towards the top of the Utsira formation. The reflections identified applying MTSSSA to pre and post injection data correlate well with the geology of the Southern Viking Graben (SVG). (C) 2017 Elsevier B.V. All rights reserved.
机译:噪音和数据间隙使地震数据处理复杂化,随后对地质解释造成困难。我们讨论了多通道时间片奇异频谱分析(MTSSSA)的最新开发和应用,用于时域中的3D地震数据去噪。此外,还讨论了使用MTSSSA的3D地震数据的基于L1规范的同时数据间隙填充。通过分析轨迹矩阵的特征三态,我们通过分析特征三态度来区分从单个单独的3D体积的噪声。我们首先测试了噪声污染的3D合成地震数据的方法的功效,然后应用于从挪威的Sleipner Co2存储站点(Pre和Post Co2注射)获取的后堆叠地震反射数据。我们的分析表明,MTSSSA算法有效地增强S / N,以便更好地识别幅度异常以及同时数据间隙填充。在去噪数据中识别的明亮斑点表明CO2向UTSira形成的顶部向上迁移。鉴定米茨沙对预先和后后数据的反射与南方维京地质(SVG)的地质相关。 (c)2017 Elsevier B.v.保留所有权利。

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