A nonlinear differential semblance strategy for waveform inversion: Experiments in layered media
Author(s) -
Dong Sun,
William W. Symes
Publication year - 2009
Publication title -
rice university's digital scholarship archive (rice university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1190/1.3255370
Subject(s) - spurious relationship , maxima and minima , nonlinear system , inversion (geology) , convexity , synthetic data , waveform , algorithm , computer science , mathematical optimization , mathematics , geology , mathematical analysis , telecommunications , physics , seismology , radar , quantum mechanics , machine learning , tectonics , financial economics , economics
SUMMARY This paper proposes an alternative approach to the output leastsquares (OLS) seismic inversion for layered-media. The latter cannot guarantee a reliable solution for either synthetic or field data, because of the existence of many spurious local minima of the objective function for typical data, which lack low-frequency energy. To recover the low-frequency lacuna of typical data, we formulate waveform inversion as a differential semblance optimization (DSO) problem with artificial low-frequency data as control variables. This version of differential semblance with nonlinear modeling properly accounts for nonlinear effects of wave propagation, such as multiple reflections. Numerical experiments with synthetic data indicate the smoothness and convexity of the proposed objective function. These results suggest that gradient-related algorithms may successfully approximate a global minimizer from a crude initial guess for typical band-limited data.
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