Deconvolutional double-difference misfit measurements and the application for full-waveform inversion

Autor: Chen, Fuqiang, Peter, Daniel
Rok vydání: 2022
Předmět:
Druh dokumentu: Working Paper
Popis: It is challenging for full-waveform inversion to determine geologically informative models from field data. An inaccurate wavelet can make it more complicated. We develop a novel misfit function, entitled deconvolutional double-difference misfit measurement to cancel the influence of wavelet inaccuracy on inversion results. Unlike the popular double-difference misfit measurement in which the first difference is evaluated by cross-correlation, the proposed one employs deconvolution to do this step. Numerical examples demonstrate that full-waveform inversion with the new misfit function is resilient to the wavelet inaccuracy. It can also converge to plausible local minima even from rough initial models.
Databáze: arXiv