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    基于局部正交化的表面多次波自适应相减方法研究

    Adaptive surface-related multiple subtraction based on local orthogonalization

    • 摘要: 地震数据表面多次波压制环节,自适应相减一直是波动理论预测相减法的关键瓶颈。当多次波与一次波相交时,自适应相减过程往往导致多次波压制不彻底或一次波受到损伤。针对该问题,研究了一种基于局部正交化的表面多次波自适应相减处理方法。首先在自适应相减阶段,采用保守相减策略,优先保护一次波能量,残留部分表面多次波;然后基于局部正交化(Local Primary-and-Multiple Orthogonalization,LPMO)算法,通过残余多次波与预测多次波的局部相关性求解其权重系数,在保护一次波的前提下,进一步压制残余表面多次波。为提升LPMO算法的计算效率,引入了数据分窗处理策略,将地震数据划分为若干独立窗口并分别处理,再依据原始空间位置完成数据拼接与融合,该策略在有效提升地震数据处理精度基础上,进一步提升算法整体计算效率。模型数据和实际数据测试结果表明,该方法能有效压制表面多次波,同时保护一次波。

       

      Abstract: Adaptive subtraction cannot fully attenuate surface-related multiples without damaging primaries when the two are difficult to separate. To address this issue, this study proposes an adaptive subtraction method for surface-related multiples based on local orthogonalization. A conservative subtraction strategy is first adopted to preserve primaries while retaining residual surface-related multiples. Using the local primary-multiple orthogonalization (LPMO) algorithm, weight coefficients are then estimated from the local correlation between residual and predicted multiples, which enables further suppression of residual multiples without damaging primaries. To improve the computational efficiency of the LPMO algorithm, a windowing strategy is introduced to divide seismic data into independent windows for separate processing, and then splice and fuse them based on their original spatial positions. This strategy enhances both processing accuracy and computational efficiency. Synthetic and field data tests demonstrate the method's ability to effectively suppress surface-related multiples while protecting primaries.

       

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