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Niklas Linde

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Efficient Bayesian travel-time tomography with geologically-complex priors using sensitivity-informed polynomial chaos expansion and deep generative networks

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Jul 29, 2023
Giovanni Angelo Meles, Macarena Amaya, Shiran Levy, Stefano Marelli, Niklas Linde

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Uncertainty Quantification and Experimental Design for large-scale linear Inverse Problems under Gaussian Process Priors

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Sep 08, 2021
Cédric Travelletti, David Ginsbourger, Niklas Linde

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Fast ABC with joint generative modelling and subset simulation

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Apr 16, 2021
Eliane Maalouf, David Ginsbourger, Niklas Linde

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Inversion using a new low-dimensional representation of complex binary geological media based on a deep neural network

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Oct 25, 2017
Eric Laloy, Romain Hérault, John Lee, Diederik Jacques, Niklas Linde

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Efficient training-image based geostatistical simulation and inversion using a spatial generative adversarial neural network

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Aug 16, 2017
Eric Laloy, Romain Hérault, Diederik Jacques, Niklas Linde

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