地震反褶积试验时间正演模型自适应

IF 4.4
Peimeng Guan;Naveed Iqbal;Mark A. Davenport;Mudassir Masood
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引用次数: 0

摘要

地震反褶积是从噪声地震数据中提取层信息的关键,但它是一个非唯一解的不适定问题。受经典优化方法的启发,基于模型的深度学习架构,如循环展开(LU)方法,将优化过程展开为迭代步骤,并从数据中学习梯度更新。这些架构依赖于定义良好的正演模型,但在实际的地震反褶积场景中,这些模型通常是不准确的或未知的。以前的方法通过训练健壮的网络来解决模型的不确定性,无论是被动的还是主动的。然而,这些方法需要大量的对抗性示例和不同的数据结构,通常需要对看不见的前向模型结构进行再训练,这是资源密集型的。相反,我们提出了一种更有效的测试时间自适应(TTA)方法,该方法在推理过程中对前向模型进行了细化。这种方法将物理原理纳入重建过程,无需昂贵的再培训即可获得更高质量的结果。代码可从https://github.com/InvProbs/A-adaptive-seis-deconv获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Test-Time Forward Model Adaptation for Seismic Deconvolution
Seismic deconvolution is essential for extracting layer information from noisy seismic data, but it is an ill-posed problem with nonunique solutions. Inspired by classical optimization approaches, model-based deep learning architectures, such as loop unrolling (LU) methods, unfold the optimization process into iterative steps and learn gradient updates from data. These architectures rely on well-defined forward models, but in real seismic deconvolution scenarios, these models are often inaccurate or unknown. Previous approaches have addressed model uncertainty by training robust networks, either passively or actively. However, these methods require a large number of adversarial examples and diverse data structures, often necessitating retraining for unseen forward model structures, which is resource-intensive. In contrast, we propose a more efficient test-time adaptation (TTA) method for the LU architecture, which refines the forward model during inference. This approach incorporates physical principles into the reconstruction process, enabling higher quality results without the need for costly retraining. The code is available at: https://github.com/InvProbs/A-adaptive-seis-deconv
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