Improved full-waveform inversion for seismic data in the presence of noise based on the K-support norm
Jiahang Li, Hitoshi Mikada, Junichi Takekawa

TL;DR
This paper introduces a novel regularization technique using the K-support norm in full-waveform inversion to enhance seismic imaging accuracy and robustness in noisy data conditions.
Contribution
It proposes integrating the K-support norm with a quadratic penalty method to improve convergence and noise resistance in seismic FWI.
Findings
Enhanced inversion accuracy with noisy data
Improved lateral resolution in depth imaging
Greater robustness against background noise
Abstract
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…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Reservoir Engineering and Simulation Methods · Hydraulic Fracturing and Reservoir Analysis
