2024: A Year of Achievement for LTrace! π
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Weβre happy to share the productive year LTrace had in 2024. Check out the contributions our team made across scientific journals and conferences:
π Scientific Journals
β Ensemble Smoother with Fully Convolutional VAE for Seismic Facies Inversion β Computers & Geosciences
β GeosPIn: A MATLAB Library for Geostatistical Petrophysical Inversion β Geophysics
β Bayesian Joint Inversion of Seismic and Electromagnetic Data for Reservoir Litho-Fluid Facies Including Geophysical and Petrophysical Rock Properties β Geophysics
π€ Conferences
β Feature Extraction in Time-Lapse Seismic Using Deep Learning for Data Assimilation β SPE Journal
β Multiscale Analysis of Carbonate Rocks for the Digital Rocks Platform GeoSlicer, an Open Source Plugin β Rio Oil & Gas 2024
β Application of MPS to Image Log and CoreCT Images Inpainting β 85th EAGE Annual Conference
β Petrophysical Inversion Using the IGMN Neural Model with Uncertainty Propagation β Third Conference on Seismic Inversion
Weβre proud of these milestones and remain committed to advancing innovation in geosciences.
A special thanks to all the LTrace authors involved in these publications, Leandro Passos de Figueiredo, Rodrigo Exterkoetter, Fernando Bordignon, Ingrid Bertin, Ph D., Gustavo Rachid Dutra, JosΓ© VinΓcius Boing de Souza, Diego Emilio Zanellato, Marcel Mei.
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