西南石油大学学报(自然科学版) ›› 2026, Vol. 48 ›› Issue (3): 39-52.DOI: 10.11885/j.issn.1674-5086.2025.08.16.01

• 地质勘探 • 上一篇    下一篇

基于混合优化与改进的U-Net震源分离方法

李艳1,2, 吕晓雨1,2, 刘阳超1,2, 张全1,2, 彭博1,2, 唐书航3   

  1. 1. 西南石油大学计算机与软件学院, 四川 成都 610500;
    2. 西南石油大学智能油气实验室, 四川 成都 610500;
    3. 西南石油大学地球科学与技术学院, 四川 成都 610500
  • 收稿日期:2025-08-16 发布日期:2026-07-06
  • 通讯作者: 张全,E-mail:zhangquan@swpu.edu.cn
  • 基金资助:
    中国石油-西南石油大学创新联合体支持交叉学科发展“揭榜挂帅”项目(2024CXJB09);新型油气勘探开发国家科技重大专项(2025ZD1408800)

A Seismic Source Separation Method Based on Hybrid Optimization and Improved U-Net

LI Yan1,2, Lü Xiaoyu1,2, LIU Yangchao1,2, ZHANG Quan1,2, PENG Bo1,2, TANG Shuhang3   

  1. 1. School of Computer Science and Software Engineering, Southwest Petroleum University, Chengdu, Sichuan 610500, China;
    2. Intelligent Oil and Gas Laboratory, Southwest Petroleum University, Chengdu, Sichuan 610500, China;
    3. School of Geoscience and Technology, Southwest Petroleum University, Chengdu, Sichuan 610500, China
  • Received:2025-08-16 Published:2026-07-06

摘要: 传统单震源地震勘探存在效率低下和抗干扰能力不足的问题,而多震源技术虽然提高了勘探效率,但因混叠噪声的干扰导致数据质量下降。为此,提出了两种优化方法以解决震源分离问题。方法一:通过融合FISTA算法与ALBM算法构建动态加权混合优化算法(ALFT),在保证精度的同时提升了收敛速度,并结合滤波法与反演法的优势,形成了“初值预判-迭代修正”的流程。实验结果表明,相较于直接迭代方法,该方法可使信噪比提升10%~25%,迭代时间减少33%。方法二:提出了一种CSA-UNet深度学习网络模型,该模型基于U-Net网络架构,引入注意力局部对比度模块以增强对有效信号特征的捕获能力,并结合局部熵离散点抑制机制剔除辅震源干扰。验证结果显示,无论是在模拟数据集(Sigsbee2B)还是真实数据集上,CSA-UNet的分离信噪比明显优于ALFT_a和U-Net,同时有效保护了地层反射信号结构。本文所提出的方法为多震源地震勘探提供了高效且高精度的解决方案,在复杂地质条件下的成像应用中具有重要意义。

关键词: 多震源地震勘探, 震源混叠噪声, 主辅震源分离, U-Net

Abstract: Traditional single-source seismic exploration has problems of low efficiency and insufficient anti-interference ability. Although multi-source technology improves the exploration efficiency, the data quality deteriorates due to the interference of aliasing noise. For this reason, this paper proposes two optimization methods to solve the source separation problem. Method 1: A dynamic weighted hybrid optimization algorithm (ALFT) is constructed by integrating the FISTA algorithm and the ALBM algorithm. This algorithm improves the convergence speed while ensuring accuracy. By combining the advantages of the filtering method and the inversion method, a process of “initial value pre-judgment-iterative correction” is formed. The experimental results show that, compared with the direct iteration method, this method can increase the signal-to-noise ratio by 10%~25% and reduce the iteration time by 33%. Method 2: A CSA-Unet deep learning network model is proposed. Based on the U-Net network architecture, this model introduces an attention local contrast (ALC) module to enhance the ability to capture the characteristics of effective signals, and combines a local entropy discrete point suppression mechanism to eliminate the interference of auxiliary sources. The validation results demonstrate that CSA-UNet achieves a significantly higher separation signal-to-noise ratio than ALFT_a and U-Net on both the simulated dataset (Sigsbee2B) and the real dataset, while also effectively preserving the structure of the formation reflection signals. The methods proposed in this paper provide an efficient and high-precision solution for multi-source seismic exploration and are of great significance in imaging practices under complex geological conditions.

Key words: multi-source seismic exploration, source aliasing noise, separation of primary and auxiliary sources, U-Net

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