论文标题
基于k-Support Norm的噪声,改进了地震数据的全波倒置
Improved full-waveform inversion for seismic data in the presence of noise based on the K-support norm
论文作者
论文摘要
全波形反演(FWI)被称为实现高分辨率成像的地震数据处理方法。在该方法的反转部分中,它带来了在模型空间中找到收敛点的高分辨率,局部数值优化算法使用最小二乘形式根据规范最小化了目标函数。由于规范对异常值和噪声敏感,因此该方法通常会导致成像结果不准确。因此,提出了一种具有更实际的放松形式的新调节形式,以解决由使用规范引起的过度贴合缺点,即K-Support Norm,其具有更合理且更紧密的约束形式。与将规范最小化的最小二乘方法相反,我们的K支持约束结合了规范和规范。然后,采用了二次惩罚方法来线性化非线性问题以减轻计算负载。本文介绍了K-Support规范的概念,并将该方案与二次惩罚问题集成在一起,以提高对背景噪声的融合和鲁棒性。在数值示例中,测试了两个合成模型,以通过与常规规范与嘈杂的数据集进行比较来阐明K-支持规范的有效性。实验结果表明,基于新的正则化形式的修饰的FWI有效提高了反转准确性和稳定性,从而显着增强了深度反转的横向分辨率,即使数据具有低信噪比(SNR)的数据。
Full-waveform inversion (FWI) is known as a seismic data processing method that achieves high-resolution imaging. In the inversion part of the method that brings high resolution in finding a convergence point in the model space, a local numerical optimization algorithm minimizes the objective function based on the norm using the least-square form. Since the norm is sensitive to outliers and noise, the method may often lead to inaccurate imaging results. Thus, a new regulation form with a more practical relaxation form is proposed to solve the overfitting drawback caused by the use of the norm,, namely the K-support norm, which has the form of more reasonable and tighter constraints. In contrast to the least-square method that minimizes the norm, our K-support constraints combine the and the norms. Then, a quadratic penalty method is adopted to linearize the non-linear problem to lighten the computational load. This paper introduces the concept of the K-support norm and integrates this scheme with the quadratic penalty problem to improve the convergence and robustness against background noise. In the numerical example, two synthetic models are tested to clarify the effectiveness of the K-support norm by comparison to the conventional norm with noisy data set. Experimental results indicate that the modified FWI based on the new regularization form effectively improves inversion accuracy and stability, which significantly enhances the lateral resolution of depth inversion even with data with a low signal-to-noise ratio (SNR).