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Batch seismic inversion using the iterative ensemble Kalman smoother

机译:使用迭代集合卡尔曼的批处理抗震反演

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An ensemble-based method for seismic inversion to estimate elastic attributes is considered, namely the iterative ensemble Kalman smoother. The main focus of this work is the challenge associated with ensemble-based inversion of seismic waveform data. The amount of seismic data is large and, depending on ensemble size, it cannot be processed in a single batch. Instead a solution strategy of partitioning the data recordings in time windows and processing these sequentially is suggested. This work demonstrates how this partitioning can be done adaptively, with a focus on reliable and efficient estimation. The adaptivity relies on an analysis of the update direction used in the iterative procedure, and an interpretation of contributions from prior and likelihood to this update. The idea is that these must balance; if the prior dominates, the estimation process is inefficient while the estimation is likely to overfit and diverge if data dominates. Two approaches to meet this balance are formulated and evaluated. One is based on an interpretation of eigenvalue distributions and how this enters and affects weighting of prior and likelihood contributions. The other is based on balancing the norm magnitude of prior and likelihood vector components in the update. Only the latter is found to sufficiently regularize the data window. Although no guarantees for avoiding ensemble divergence are provided in the paper, the results of the adaptive procedure indicate that robust estimation performance can be achieved for ensemble-based inversion of seismic waveform data.
机译:考虑了基于集的抗震反演来估计弹性属性的基于集合的方法,即迭代集合卡尔曼更顺畅。这项工作的主要重点是与基于集的地震波形数据的反演相关的挑战。地震数据量大,并且根据集合尺寸,不能单一批次处理。相反,提出了一种解决时间窗口中的数据记录和顺序处理这些解决方案策略。这项工作展示了如何自适应地完成该分区,重点是可靠和有效的估计。适应性依赖于迭代程序中使用的更新方向的分析,以及对此更新的前提和可能性的贡献的解释。这个想法是这些必须平衡;如果先前的主导地位,估计过程效率低下,而估计可能会过度使用,如果数据占主导地位。制定和评估了满足该余额的两种方法。一个是基于对特征值分布的解释以及如何进入和影响前后和可能性贡献的加权。另一个是基于平衡更新中的先前和似然矢量分量的规范幅度。只发现后者充分规范数据窗口。虽然本文提供了避免避免集合发散的保证,但自适应过程的结果表明可以实现稳健的估计性能,以实现基于地震波形数据的集合的反演。

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