基于下一尺度预测的缺失数据重建条件自回归模型。

IF 3.8 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Shuang Wang, Xiangpeng Wang, Yuhan Yang, Peifan Jiang, Bin Wang, Yuanhao Li
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引用次数: 0

摘要

在复杂的野外条件下收集的地震数据往往含有缺失的痕迹。传统的理论驱动方法严重依赖于经验选择的参数,难以有效地重建连续缺失的轨迹。随着深度学习的发展,各种生成模型都表现出了强大的重构能力。然而,基于扩散模型的方法由于其迭代采样策略而面临着巨大的重构时间开销。现有的基于变压器的自回归方法将二维地震数据扁平化为一维序列,破坏了地震数据固有的二维结构,影响了地震信息的空间局部性。为了解决这些限制,我们提出了一个基于下尺度预测的条件自回归模型。该模型从最小尺度开始,利用之前较小尺度的信息增量预测更大尺度的数据,最终实现稳健的数据重建。这种下一尺度预测方法避免了数据的平坦化,从而保留了数据的空间结构。此外,自回归生成过程中的条件约束确保每个尺度上的预测数据保持一致,并与已知数据的分布保持一致。在现场和合成数据集上的重建实验表明,与现有方法相比,我们的方法具有更高的重建精度,并能有效地处理各种复杂的缺失数据场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conditional autoregressive model based on next scale prediction for missing data reconstruction.

Seismic data collected under complex field conditions often contain missing traces. Traditional theory-driven methods rely heavily on empirically selected parameters and struggle to reconstruct continuous missing traces effectively. With advancements in deep learning, various generative models have exhibited strong reconstruction capabilities. However, diffusion model-based methods face significant reconstruction time overhead due to their iterative sampling strategies. Existing transformer-based autoregressive methods flatten two-dimensional seismic data into one-dimensional sequences, disrupting the inherent two-dimensional structure and compromising the spatial locality of seismic information. To address these limitations, we propose a conditional autoregressive model based on next-scale prediction. Starting from the smallest scale, the model incrementally predicts larger-scale data using information from preceding smaller scales, ultimately achieving robust data reconstruction. This next-scale prediction approach avoids flattening the data, thereby preserving its spatial structure. Additionally, conditional constraints during autoregressive generation ensure that the predicted data at each scale remains consistent and aligns with the distribution of the known data. Reconstruction experiments on both field and synthetic datasets demonstrate that our method achieves superior reconstruction accuracy compared to existing approaches and effectively handles various complex missing data scenarios.

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来源期刊
Scientific Reports
Scientific Reports Natural Science Disciplines-
CiteScore
7.50
自引率
4.30%
发文量
19567
审稿时长
3.9 months
期刊介绍: We publish original research from all areas of the natural sciences, psychology, medicine and engineering. You can learn more about what we publish by browsing our specific scientific subject areas below or explore Scientific Reports by browsing all articles and collections. Scientific Reports has a 2-year impact factor: 4.380 (2021), and is the 6th most-cited journal in the world, with more than 540,000 citations in 2020 (Clarivate Analytics, 2021). •Engineering Engineering covers all aspects of engineering, technology, and applied science. It plays a crucial role in the development of technologies to address some of the world''s biggest challenges, helping to save lives and improve the way we live. •Physical sciences Physical sciences are those academic disciplines that aim to uncover the underlying laws of nature — often written in the language of mathematics. It is a collective term for areas of study including astronomy, chemistry, materials science and physics. •Earth and environmental sciences Earth and environmental sciences cover all aspects of Earth and planetary science and broadly encompass solid Earth processes, surface and atmospheric dynamics, Earth system history, climate and climate change, marine and freshwater systems, and ecology. It also considers the interactions between humans and these systems. •Biological sciences Biological sciences encompass all the divisions of natural sciences examining various aspects of vital processes. The concept includes anatomy, physiology, cell biology, biochemistry and biophysics, and covers all organisms from microorganisms, animals to plants. •Health sciences The health sciences study health, disease and healthcare. This field of study aims to develop knowledge, interventions and technology for use in healthcare to improve the treatment of patients.
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