Benutzer: Gast  Login
Titel:

Transfer Learning Enhanced Full Waveform Inversion

Dokumenttyp:
Konferenzbeitrag
Art des Konferenzbeitrags:
Textbeitrag / Aufsatz
Autor(en):
Kollmannsberger, Stefan and Singh, Divya and Herrmann, Leon
Abstract:
We propose a way to favorably employ neural networks in the field of non-destructive testing using Full Waveform Inversion (FWI). The presented methodology discretizes the unknown material distribution in the domain with a neural network within an adjoint optimization. To further increase efficiency of the FWI, pretrained neural networks are used to provide a good starting point for the inversion. This reduces the number of iterations in the Full Waveform Inversion for specific, yet generalizabl...     »
Stichworte:
Machine Learning (cs.LG), Computational Physics (physics.comp-ph), Geophysics (physics.geo-ph), FOS: Computer and information sciences, FOS: Computer and information sciences, FOS: Physical sciences, FOS: Physical sciences
Kongress- / Buchtitel:
Advanced Inteligent Meachatronics
Publikationsdatum:
23.02.2023
Jahr:
2023
Quartal:
1. Quartal
Jahr / Monat:
2023-01
Monat:
Jan
Seiten:
7
WWW:
https://arxiv.org/abs/2302.11259
 BibTeX