MATHMODE: Applied Mathematical Modeling, Statistics, and Optimization
University of Texas at Austin
Austin, Estados UnidosPublicaciones en colaboración con investigadores/as de University of Texas at Austin (65)
2024
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Robust Variational Physics-Informed Neural Networks
Computer Methods in Applied Mechanics and Engineering, Vol. 425
2023
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A Deep Double Ritz Method (D2RM) for solving Partial Differential Equations using Neural Networks
Computer Methods in Applied Mechanics and Engineering, Vol. 405
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An exponential integration generalized multiscale finite element method for parabolic problems
Journal of Computational Physics, Vol. 479
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Fast parallel IGA-ADS solver for time-dependent Maxwell's equations
Computers and Mathematics with Applications, Vol. 151, pp. 36-49
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Physics-guided deep-learning inversion method for the interpretation of noisy logging-while-drilling resistivity measurements
Geophysical Journal International, Vol. 235, Núm. 1, pp. 150-165
2022
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2.5-D Deep Learning Inversion of LWD and Deep-Sensing em Measurements Across Formations with Dipping Faults
IEEE Geoscience and Remote Sensing Letters, Vol. 19
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Exploiting the Kronecker product structure of φ−functions in exponential integrators
International Journal for Numerical Methods in Engineering, Vol. 123, Núm. 9, pp. 2142-2161
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Real-Time 2.5D Inversion of LWD Resistivity Measurements Using Deep Learning for Geosteering Applications Across Faulted Formations
Petrophysics, Vol. 63, Núm. 4, pp. 506-518
2021
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A DPG-based time-marching scheme for linear hyperbolic problems
Computer Methods in Applied Mechanics and Engineering, Vol. 373
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Deep Learning Driven Self-adaptive Hp Finite Element Method
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
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Equivalence between the DPG method and the exponential integrators for linear parabolic problems
Journal of Computational Physics, Vol. 429
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Error control and loss functions for the deep learning inversion of borehole resistivity measurements
International Journal for Numerical Methods in Engineering, Vol. 122, Núm. 6, pp. 1629-1657
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Uncertainty Quantification on the Inversion of Geosteering Measurements using Deep Learning
3rd EAGE/SPE Geosteering Workshop
2020
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A deep learning approach to the inversion of borehole resistivity measurements
Computational Geosciences, Vol. 24, Núm. 3, pp. 971-994
2019
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Recent advances on the inversion of deep directional borehole resistivity measurements
Exploration Geophysics, Vol. 2019, Núm. 1
2018
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Fast 2.5D finite element simulations of borehole resistivity measurements
Computational Geosciences, Vol. 22, Núm. 5, pp. 1271-1281
2017
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1.5D based inversion of logging-while-drilling resistivity measurements in 3D formations
79th EAGE Conference and Exhibition 2017
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Fast inversion of logging-while-drilling resistivity measurements acquired in multiple wells
Geophysics, Vol. 82, Núm. 3, pp. E111-E120
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Fast simulation of 2.5D LWD resistivity tools
79th EAGE Conference and Exhibition 2017
2015
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Fast 1D inversion of logging-while-drilling resistivity measurements for improved estimation of formation resistivity in high-angle and horizontal wells
Geophysics, Vol. 80, Núm. 2, pp. E111-E124