首页|期刊导航|石油地球物理勘探|融合粒子群灰狼混合优化算法的XGBoost随机缺失地震数据重建

融合粒子群灰狼混合优化算法的XGBoost随机缺失地震数据重建OA

Reconstruction of randomly missing seismic data using XGBoost optimized by hybrid particle swarm-grey wolf algorithm

中文摘要英文摘要

针对野外地震采集因环境干扰导致非规则性缺失问题,文中提出了一种融合粒子群灰狼混合优化(HPSOGWO)算法的 XGBoost 局部学习重建方法.该方法将 HPSOGWO 算法与 XGBoost 机器学习模型相结合,通过构建地震道空间位置(道号、采样点)与振幅值的非线性映射关系,利用 HPSOGWO 算法自适应优化特征窗口,实现了相邻道数据的智能选择与缺失值的高精度预测.与传统凸集投影-Curvelet 变换(Curvelet-POCS)方法相比,该方法在复杂构造区域显著提高了重建精度;相较于 U-Net 深度学习方法,有效降低了对大量训练样本的依赖和计算成本.在 20%随机缺失条件下的三层水平层状模型实验中,该方法的峰值信噪比(PSNR)较 Curvelet-POCS 法提高了 11 dB,较 U-Net 法提高了 7 dB;F-K 谱分析进一步表明,该方法能更有效地保持地震波场的频域特征.实际陆上二维地震数据测试表明,20%缺失道的重建剖面振幅相对误差为 5.72%,具有良好的振幅保真度和相位一致性,为复杂地质条件下的地震数据重建提供了有效且实用的解决方案.

To address irregular missing seismic data caused by environmental interference during field acquisi-tion,this paper proposes a local learning-based reconstruction method that integrates particle swarm optimization and grey wolf optimizer(HPSOGWO)algorithm with the XGBoost model.The proposed method establishes a nonlinear mapping relationship between seismic trace spatial coordinates(trace number and sampling number)and amplitude values.By adaptively optimizing feature windows using the HPSOGWO algorithm,this method achieves intelligent selection of adjacent trace data and high-precision prediction of missing values.Compared with the traditional convex-set projection method based on the Curvelet transform(Curvelet-POCS),the pro-posed approach significantly improves reconstruction accuracy in complex structural areas.In contrast to deep learning methods such as U-Net,it reduces the reliance on large training datasets and lowers computational costs.Tests on a three-layer horizontal layered model with 20%random missing traces show that the proposed method achieves a peak signal-to-noise ratio(PSNR)improvement of 11 dB over Curvelet-POCS and 7 dB over U-Net.F-K spectrum analysis further confirms its effectiveness in preserving seismic wavefield characteristics in the fre-quency domain.Tests on real onshore 2D seismic data show that the reconstructed profile with 20%missing traces achieves a relative amplitude error of 5.72%,demonstrating high amplitude fidelity and phase consistency.The method thus provides an effective and practical solution for seismic data reconstruction under complex geo-logical conditions.

田仁飞;金江龙;李山;杨植富;程先琼

成都理工大学地球物理学院,四川 成都 610059成都理工大学地球物理学院,四川 成都 610059重庆市地质矿产勘查开发集团检验检测有限公司,重庆 400700成都理工大学地球物理学院,四川 成都 610059成都理工大学地球物理学院,四川 成都 610059

天文与地球科学

地震数据重建XGBoost算法粒子群灰狼混合算法凸集投影-Curvelet变换(Curvelet-POCS)方法U-Net方法

seismic data reconstructionXGBoost algorithmhybrid particle swarm-grey wolf(HPSOGWO)al-gorithmconvex-set projection method based on Curvelet transform(Curvelet-POCS)methodU-Net method

《石油地球物理勘探》 2026 (3)

545-557,13

本项研究受国家自然科学基金项目"准噶尔盆地春光区块岩性油藏倒频域烃类检测方法研究"(41304080)资助.

10.13810/j.cnki.issn.1000-7210.20250295

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